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MEPS Home Medical Expenditure Panel Survey
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MEPS HC-118A: 2008 Prescribed Medicines
October 2010
Agency for Healthcare Research and Quality
Center for Financing, Access, and Cost Trends
540 Gaither Road
Rockville, MD 20850
(301) 427-1406

Table of Contents

A. Data Use Agreement
B. Background
1.0 Household Component
2.0 Medical Provider Component
3.0 Survey Management and Data Collection
C. Technical Information
1.0 General Information
2.0 Data File Information
2.1 Using MEPS Data for Trend and Longitudinal Analysis
2.2 Codebook Structure
2.3 Reserved Codes
2.4 Codebook Format
2.5 Variable Naming Conventions
2.5.1 General
2.5.2 Expenditure and Source of Payment Variables
2.6 Data Collection
2.6.1 Methodology for Collecting Household Reported Variables
2.6.2 Methodology for Collecting Pharmacy Reported Variables
2.7 File Contents
2.7.1 Survey Administration Variables
2.7.1.1 Person Identifier Variables (DUID, PID, DUPERSID)
2.7.1.2 Record Identifier Variables (RXRECIDX, LINKIDX)
2.7.1.3 Panel Variable (PANEL)
2.7.1.4 Round Variable (PURCHRD)
2.7.1.5 Duplicate Purchase (DUP2007)
2.7.2 Characteristics of Prescribed Medicine Events
2.7.2.1 Date When Prescribed Medicine Was First Taken (RXBEGMM-RXBEGYRX)
2.7.2.2 Prescribed Medicine Attributes (RXNAME-RXSTRUNT)
2.7.2.3 Type of Pharmacy (PHARTP1-PHARTP17)
2.7.2.4 Analytic Flag Variables (RXFLG-INPCFLG)
2.7.2.5 The Sample Variable (SAMPLE)
2.7.2.6 Condition Codes (RXICD1X-RXICD3X) and Clinical Classification Codes (RXCCC1X-RXCCC3X)
2.7.3 Multum Lexicon Variables from Cerner Multum, Inc.
2.7.4 Expenditure Variables (RXSF08X-RXXP08X)
2.7.4.1 Definition of Expenditures
2.7.4.2 Sources of Payment
2.7.5 Sample Weight (PERWT08F)
2.7.5.1 Overview
2.7.5.2 Details on Person Weights Construction
2.7.5.3 MEPS Panel 12 Weight
2.7.5.4 MEPS Panel 13 Weight
2.7.5.5 The Final Weight for 2008
2.7.5.6 Additional Adjustment to 2008 Person Weights for Persons Age 65 and Over
2.7.5.7 Coverage
3.0 General Data Editing and Imputation Methodology
3.1 Rounding
3.2 Edited/Imputed Expenditure Variables (RXSF08X-RXXP08X)
4.0 Strategies for Estimation
4.1 Developing Event-Level Estimates
4.2 Person-Based Estimates for Prescribed Medicine Purchases
4.3 Variables with Missing Values
4.4 Variance Estimation (VARSTR, VARPSU)
5.0 Merging/Linking MEPS Data Files
5.1 Linking to the Person-Level File
5.2 Linking to the Medical Conditions File
5.3 Pooling Annual Files
5.4 Longitudinal Analysis
References
D. Variable-Source Crosswalk
Attachment 1 Definitions of Abbreviations for RXFORM
Attachment 2 Definitions of Codes and Abbreviations for RXFRMUNT
Attachment 3 Definitions of Abbreviations, Codes and Symbols for RXSTRUNT
Attachment 4 Theraputic Class Code Definitions

A. Data Use Agreement

Individual identifiers have been removed from the micro-data contained in these files. Nevertheless, under sections 308 (d) and 903 (c) of the Public Health Service Act (42 U.S.C. 242m and 42 U.S.C. 299 a-1), data collected by the Agency for Healthcare Research and Quality (AHRQ) and/or the National Center for Health Statistics (NCHS) may not be used for any purpose other than for the purpose for which they were supplied; any effort to determine the identity of any reported cases is prohibited by law.

Therefore in accordance with the above referenced Federal Statute, it is understood that:

  1. No one is to use the data in this data set in any way except for statistical reporting and analysis; and
  2. If the identity of any person or establishment should be discovered inadvertently, then (a) no use will be made of this knowledge, (b) the Director Office of Management AHRQ will be advised of this incident, (c) the information that would identify any individual or establishment will be safeguarded or destroyed, as requested by AHRQ, and (d) no one else will be informed of the discovered identity; and
  3. No one will attempt to link this data set with individually identifiable records from any data sets other than the Medical Expenditure Panel Survey or the National Health Interview Survey.

By using these data you signify your agreement to comply with the above stated statutorily based requirements with the knowledge that deliberately making a false statement in any matter within the jurisdiction of any department or agency of the Federal Government violates Title 18 part 1 Chapter 47 Section 1001 and is punishable by a fine of up to $10,000 or up to 5 years in prison.

The Agency for Healthcare Research and Quality requests that users cite AHRQ and the Medical Expenditure Panel Survey as the data source in any publications or research based upon these data.

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B. Background

1.0 Household Component (HC)

The Medical Expenditure Panel Survey (MEPS) provides nationally representative estimates of health care use, expenditures, sources of payment, and health insurance coverage for the U.S. civilian non-institutionalized population. The MEPS Household Component (HC) also provides estimates of respondents' health status, demographic and socio-economic characteristics, employment, access to care, and satisfaction with health care. Estimates can be produced for individuals, families, and selected population subgroups. The panel design of the survey, which includes 5 Rounds of interviews covering 2 full calendar years, provides data for examining person level changes in selected variables such as expenditures, health insurance coverage, and health status. Using computer assisted personal interviewing (CAPI) technology, information about each household member is collected, and the survey builds on this information from interview to interview. All data for a sampled household are reported by a single household respondent.

The MEPS-HC was initiated in 1996. Each year a new panel of households is selected. Because the data collected are comparable to those from earlier medical expenditure surveys conducted in 1977 and 1987, it is possible to analyze long-term trends. Each annual MEPS-HC sample size is about 15,000 households. Data can be analyzed at either the person or event level. Data must be weighted to produce national estimates.

The set of households selected for each panel of the MEPS HC is a subsample of households participating in the previous year's National Health Interview Survey (NHIS) conducted by the National Center for Health Statistics. The NHIS sampling frame provides a nationally representative sample of the U.S. civilian non-institutionalized population and reflects an oversample of blacks and Hispanics. In 2006, the NHIS implemented a new sample design, which included Asian persons in addition to households with black and Hispanic persons in the oversampling of minority populations. MEPS oversamples additional policy relevant sub-groups such as Asians and low income households. The linkage of the MEPS to the previous year's NHIS provides additional data for longitudinal analytic purposes.

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2.0 Medical Provider Component (MPC)

Upon completion of the household CAPI interview and obtaining permission from the household survey respondents, a sample of medical providers are contacted by telephone to obtain information that household respondents can not accurately provide. This part of the MEPS is called the Medical Provider Component (MPC) and information is collected on dates of visit, diagnosis and procedure codes, charges and payments. The Pharmacy Component (PC), a subcomponent of the MPC, does not collect charges or diagnosis and procedure codes but does collect drug detail information, including National Drug Code (NDC) and medicine name, as well as date filled and sources and amounts of payment. The MPC is not designed to yield national estimates. It is primarily used as an imputation source to supplement/replace household reported expenditure information.

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3.0 Survey Management and Data Collection

MEPS HC and MPC data are collected under the authority of the Public Health Service Act. Data are collected under contract with Westat, Inc. Data sets and summary statistics are edited and published in accordance with the confidentiality provisions of the Public Health Service Act and the Privacy Act. The National Center for Health statistics (NCHS) provides consultation and technical assistance.

As soon as data collection and editing are completed, the MEPS survey data are released to the public in staged releases of summary reports, micro data files, and tables via the MEPS web site: www.meps.ahrq.gov. Selected data can be analyzed through MEPSnet, an on-line interactive tool designed to give data users the capability to statistically analyze MEPS data in a menu-driven environment.

Additional information on MEPS is available from the MEPS project manager or the MEPS public use data manager at the Center for Financing Access and Cost Trends, Agency for Healthcare Research and Quality, 540 Gaither Road, Rockville, MD 20850 (301-427-1406).

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C. Technical Information

1.0 General Information

This documentation describes one in a series of public use event files from the 2008 Medical Expenditure Panel Survey (MEPS) Household Component (HC) and Medical Provider Component (MPC). Released as an ASCII data file(with related SAS and SPSS programming statements) and SAS transport file, the 2008 Prescribed Medicines public use file provides detailed information on household reported prescribed medicines for a nationally representative sample of the civilian noninstitutionalized population of the United States. Data from the Prescribed Medicines event file can be used to make estimates of prescribed medicine utilization and expenditures for calendar year 2008. The file contains 77 variables and has a logical record length of 531 with an additional 2-byte carriage return/line feed at the end of each record. As illustrated below, this file consists of MEPS survey data obtained in the 2008 portion of Round 3 and Rounds 4 and 5 for Panel 12, as well as Rounds 1, 2 and the 2008 portion of Round 3 for Panel 13 (i.e., the rounds for the MEPS panels covering calendar year 2008).

Incentive Experiment in Panel 13
With the encouragement of the Office of Management and Budget (OMB), an experiment was undertaken for MEPS Panel 13 (first fielded in 2008) to evaluate whether and how differential payments to household respondents might affect survey participation, the level of effort required to obtain participation, and the quality of the data collected. Each sampled household in Panel 13 was randomly assigned to one of three different levels of payment—$30, $50, or $70—with the experiment continuing through the panel’s five rounds of data collection. Households receiving the $30 payment represent the control group, since that amount had been offered to all households in the 2007 panel. To learn more about this experiment, refer to the Household Annual Contractor Methodology Report (located in the Household—Survey Basics section). Agency for Healthcare Research and Quality, Rockville, MD.

Each record on this event file represents a unique prescribed medicine event; that is, a prescribed medicine reported as being purchased by the household respondent. In addition to expenditures related to the prescribed medicine, each record contains household reported characteristics and medical conditions associated with the prescribed medicine.

Data from this event file can be merged with other 2008 MEPS-HC data files, for purposes of appending person characteristics such as demographic or health insurance coverage to each prescribed medicine record.

Counts of prescribed medicine utilization are based entirely on household reports. Information from the Pharmacy Component (PC) (within the MEPS-MPC, see section B.2.0 for more details on the MPC) was used to provide expenditure and payment data, as well as details of the medication (e.g., strength, quantity, etc.).

The file can be used to construct summary variables of expenditures, sources of payment, and other aspects of utilization of prescribed medicines. Aggregate annual person-level information on the use of prescribed medicines and other health services use is provided on the 2008 Full Year Consolidated Data File, where each record represents a MEPS sampled person.

The following documentation offers a brief overview of the types and levels of data provided and the content and structure of the files and the codebook. It contains the following sections:

Data File Information
Sample Weight
General Data Editing and Imputation Methods
Strategies for Estimation
Merging/Linking MEPS Data Files
References
Variable to Source Crosswalk

For more information on MEPS-HC survey design see S. Cohen, 1997; J. Cohen, 1997; and S. Cohen, 1996. For information on the MEPS-MPC design, see S. Cohen, 1998. A copy of the survey instrument used to collect the information on this file is available on the MEPS Web site at the following address: www.meps.ahrq.gov.

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2.0 Data File Information

The 2008 Prescribed Medicines public use data set contains 293,379 prescribed medicine records. Each record represents one household reported prescribed medicine that was purchased during calendar year 2008. Of the 293,379 prescribed medicine records, 287,606 records are associated with persons having a positive person-level weight (PERWT08F). The persons represented on this file had to meet either criterion a or b below:

  1. Be classified as a key in-scope person who responded for his or her entire period of 2008 eligibility (i.e., persons with a positive 2008 full-year person-level sampling weight (PERWT08F > 0), or
  2. Be an eligible member of a family all of whose key in-scope members have a positive person-level weight (PERWT08F > 0). (Such a family consists of all persons with the same value for FAMIDYR.) That is, the person must have a positive full-year family-level weight (FAMWT08F >0). Note that FAMIDYR and FAMWT08F are variables on the 2008 Population Characteristics file.

Persons with no prescribed medicine use for 2008 are not included on this file (but are represented on MEPS person-level files). A codebook for the data file is provided (in file H118ACB.PDF).

This file includes prescribed medicine records for all household survey respondents who resided in eligible responding households and reported at least one prescribed medicine. Only prescribed medicines that were purchased in calendar year 2008 are represented on this file. This file includes prescribed medicines identified in the Prescribed Medicines section of the HC survey instrument, as well as those prescribed medicines identified in association with other medical events. Each record on this file represents a single acquisition of a prescribed medicine reported by household respondents. Some household respondents may have multiple acquisitions of prescribed medicines and thus will be represented in multiple records on this file. Other household respondents may have reported no acquisitions of prescribed medicines and thus will have no records on this file.

When diabetic supplies, such as syringes and insulin, were mentioned in the Other Medical Equipment section of the MEPS-HC, the interviewer was directed to collect information on these items in the Prescription Medicines section of the MEPS questionnaire. The respondent was also asked the questions in the Charge and Payment section of the HC. To the extent that these items are purchased without a prescription, they represent a non-prescription addition to the MEPS prescription drug expenditure and utilization data. Although these items may be purchased without a prescription, a prescription purchase may be required to obtain third party payments. Analysts are free to code and define diabetic supply/equipment and insulin events utilizing their own coding mechanism. If desired, this would enable analysts to subset the Prescribed Medicines file to exclude these types of events.

It should also be noted that refills are included on this file. The HC obtains information on the name of the prescribed medicine and the number of times the medicine was obtained. The data collection design for the HC does not allow separate records to be created for multiple acquisitions of the same prescribed medicine. However, in the PC, each original purchase, as well as any refill, is considered a unique prescribed medicine event. Therefore, for the purposes of editing, imputation and analysis, all records in the HC were “unfolded” to create separate records for each original purchase and each refill. Please note: MEPS did not collect information in the HC to distinguish multiple acquisitions of the same drug between the original purchase and refills. The survey only collected data on the number of times a prescribed medicine was acquired during a round. In some cases, all purchases may have been refills of an original purchase in a prior round or prior to the survey year. The file also includes a variable, (SAMPLE), which indicates whether or not the household reported receiving a free sample of that drug in that round. (To obtain more details on free samples, please see section 2.7.2.5.)

Each record on this file includes the following: an identifier for each unique prescribed medicine; detailed characteristics associated with the event (e.g., national drug code (NDC), medicine name, selected Multum Lexicon variables [see section 2.7.3 for more information on the Multum Lexicon variables included on this file], etc.); conditions, if any, associated with the medicine; the date on which the person first used the medicine; total expenditure and sources of payments; types of pharmacies that filled the household’s prescriptions; whether the prescription is one in which the household received a free sample of it during the round; and a full-year person-level weight.

Data from this file can be merged with previously released MEPS-HC person-level data using the unique person identifier, DUPERSID, to append person characteristics such as demographic or health insurance coverage to each record. Data from this file can also be merged with the 2008 Full Year Consolidated Data File to estimate expenditures for persons with prescribed medicines. The Prescribed Medicines event file can also be linked to the MEPS 2008 Medical Conditions File and additional MEPS 2008 event files. Please see the 2008 Appendix File for details on how to link MEPS data files.

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2.1 Using MEPS Data for Trend and Longitudinal Analysis

MEPS began in 1996 and several annual data files have been released. As more years of data are produced, MEPS will become increasingly valuable for examining health care trends. However, it is important to consider a variety of factors when examining trends over time using MEPS. Statistical significance tests should be conducted to assess the likelihood that observed trends are attributable to sampling variation. MEPS expenditures estimates are especially sensitive to sampling variation due to the underlying skewed distribution of expenditures. For example, 1 percent of the population accounts for about one-quarter of all expenditures. The extent to which observations with extremely high expenditures are captured in the MEPS sample varies from year to year (especially for smaller population subgroups), which can produce substantial shifts in estimates of means or totals that are simply an artifact of the sample(s). The length of time being analyzed should also be considered. In particular, large shifts in survey estimates over short periods of time (e.g., from one year to the next) that are statistically significant should be interpreted with caution, unless they are attributable to known factors such as changes in public policy or MEPS survey methodology. In particular, beginning with the 2007 data, the rules used to identify outlier prices for prescription medications became much less stringent than in prior years. Starting with the 2007 Prescribed Medicine file, there is less editing of prices and quantities reported by pharmacies, more variation in prices for generics, lower mean prices for generics, higher mean prices for brand name drugs, greater differences in prices between generic and brand name drugs, and a somewhat lower proportion of spending on drugs is by families, as opposed to third-party payers. Starting with the 2008 Prescribed Medicine file, improvements in the data editing changed the distribution of payments by source: (1) more spending on Medicare beneficiaries is by private insurance, rather than Medicare, and (2) less out-of-pocket payments and more Medicaid payments among Medicaid enrollees. Therefore users should be cautious in the types of comparisons they make about prescription drug spending before and after 2007 and 2008. For other time periods or other characteristics of prescription drugs, looking at changes over longer periods of time can provide a more complete picture of underlying trends. Analysts may wish to consider using techniques to smooth or stabilize trends analyses of MEPS data such as pooling time periods for comparison (e.g., 1996-97 versus 1998-99), working with moving averages, or using modeling techniques with several consecutive years of MEPS data to test the fit of specified patterns over time. Finally, researchers should be aware of the impact of multiple comparisons on Type I error because performing numerous statistical significance tests of trends increases the likelihood of inappropriately concluding a change is statistically significant.

The records on this file can be linked to all other 2008 MEPS-HC public use data sets by the sample person identifier (DUPERSID). Panel 12 cases (PANEL=12) can be linked back to the 2007 MEPS-HC public use files by DUPERSID and the panel indicator (PANEL).

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2.2 Codebook Structure

For each variable on the file, both weighted and unweighted frequencies are provided. The codebook and data file sequence list variables in the following order:

Unique person identifiers
Unique prescribed medicine identifiers
Other survey administration variables
Prescribed medicine characteristics variables
ICD-9 codes for medical conditions
Clinical Classification Software codes for medical conditions
Multum Lexicon variables
Expenditure variables
Weight and variance estimation variables

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2.3 Reserved Codes

The following reserved code values are used:

Value

Definition

-1 INAPPLICABLE Question was not asked due to skip pattern.
-7 REFUSED Question was asked and respondent refused to answer question.
-8 DK Question was asked and respondent did not know answer.
-9 NOT ASCERTAINED Interviewer did not record the data.
-14 NOT YET TAKEN/USED Respondent answered that the medicine has not yet been used.

Generally, values of -1, -7, -8 and -9 have not been edited on this file. However, this is not true if the pharmacist determined a prescription drug name to be a confidentiality risk. In these instances, generally, the corresponding NDC was replaced with -9, and the Multum Lexicon therapeutic class was the replacement for the drug name determined a confidentiality risk. The values of -1 and -9 can be edited by analysts by following the skip patterns in the questionnaire. The value -14 was a valid value only for the variable representing the year the respondent reported having first used the medicine (RXBEGYRX). RXBEGYRX= -14 means that when the interviewer asked the respondent the year he/she first started using the medicine, he/she responded that he/she had not yet started using the medicine.

A copy of the Household Component questionnaire can be found on the World Wide Web at www.meps.ahrq.gov/survey_comp/survey.jsp by selecting Prescribed Medicines (PM) from the questionnaire section.

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2.4 Codebook Format

The codebook describes an ASCII data set (although the data are also being provided in a SAS transport file). The following codebook items are provided for each variable:

Identifier

Definition

Name Variable name (maximum of 8 characters)
Description Variable descriptor (maximum of 40 characters)
Format Number of bytes
Type Type of data: numeric (indicated by NUM) or character (indicated by CHAR)
Start Beginning column position of variable in record
End Ending column position of variable in record

 

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2.5 Variable Naming Conventions

In general, variable names reflect the content of the variable, with an eight-character limitation. Generally, imputed/edited variables end with an “X.”

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2.5.1 General

Variables contained on this file were derived from the HC questionnaire itself, the MPC data collection instrument, the CAPI, or from the Multum Lexicon database from Cerner Multum, Inc. The source of each variable is identified in section D, entitled “Variable-Source Crosswalk.” Sources for each variable are indicated in one of four ways: (1) variables which are derived from CAPI or assigned in sampling are so indicated; (2) variables which come from one or more specific questions have those numbers and the questionnaire section indicated in the “Source” column; (3) variables constructed from multiple questions using complex algorithms are labeled “Constructed” in the “Source” column; (4) variables which have been imputed are so indicated; and (5) variables derived from the Multum Lexicon database are so indicated.

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2.5.2 Expenditure and Source of Payment Variables

Only imputed/edited versions of the expenditure variables are provided on the file. Expenditure variables on this event file follow a standard naming convention and are 7 characters in length. The 12 source of payment variables and one sum of payments variable are named consistently in the following way:

The first two characters indicate the type of event:

IP - inpatient stay
ER - emergency room visit
HH - home health visit
OM - other medical equipment
OB - office-based visit
OP - outpatient visit
DV - dental visit
RX - prescribed medicine

In the case of the source of payment variables, the third and fourth characters indicate:

SF - self or family
MR - Medicare
MD - Medicaid
PV - private insurance
VA - Veterans
TR - TRICARE
OF - other Federal Government
SL - State/local government
WC - Worker’s Compensation
OT - other insurance
OR - other private
OU - other public
XP - sum of payments

The fifth and sixth characters indicate the year (08). The seventh character, “X”, indicates the variable is edited/imputed.

For example, RXSF08X is the edited/imputed amount paid by self or family for the 2008 prescribed medicine expenditure.

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2.6 Data Collection

Data regarding prescription drugs were obtained through the HC questionnaire and a pharmacy follow-back component (within the Medical Provider Component).

2.6.1 Methodology for Collecting Household Reported Variables

During each round of the MEPS-HC, all respondents were asked to supply the name of any prescribed medicine they or their family members purchased or otherwise obtained during that round. For each medicine in each round, the following information was collected: whether any free samples of the medicine were received; the name(s) of any health problems the medicine was prescribed for; the number of times the prescription medicine was obtained or purchased; the year and month on which the person first used the medicine; and a list of the names, addresses, and types of pharmacies that filled the household’s prescriptions. In the HC, respondents were asked if they send in claim forms for their prescriptions or if their pharmacy providers do this automatically for them at the point of purchase. For those who said their pharmacy providers automatically send in claims for them at the point of purchase, charge and payment information was collected in the pharmacy follow-back component (unless the purchase was an insulin or diabetic supply/equipment event that was mentioned in the household component; see section 3.0 for details). However, charge and payment information was collected for those who said they send in their own prescription claim forms, because it was thought that payments by private third-party payers for those who filed their own claim forms for prescription purchases would not be available from pharmacies. Uninsured persons were treated in the same manner as those whose pharmacies filed their prescription claims at the point of purchase. Persons who said they did not know if they sent in their own prescription claim forms were treated as those who said they did send in their own prescription claim forms.

In consultation with an industry expert, outlier values for the number of times a household reported purchasing or otherwise obtaining a prescription drug in a particular round were determined by comparing the number of days a respondent was in the round and the number times the person reported obtaining the drug in the round. For these events, a new value for the number of times a drug was purchased or otherwise obtained by a person in a round was imputed. In addition, the prescribed medicine events in which a household respondent did not know/remember the number of times a certain prescribed medicine was purchased or otherwise obtained were imputed a value for that variable.

For those rounds that spanned two years, drugs mentioned in that round were allocated between the years based on the number of times the respondent said the drug was purchased in the respective year, the year the person started taking the drug, the length of the person’s round, the dates of the person’s round, and the number of drugs for that person in the round. In addition, a “folded” version of the PC on a drug level, as opposed to an acquisition level, was used for these types of events to assist in determining how many acquisitions of the drug should be allocated between the years.

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2.6.2 Methodology for Collecting Pharmacy Reported Variables

If the respondent with the prescription gave written permission to release his or her pharmacy records, pharmacy providers identified by the household were contacted by telephone for the pharmacy follow-back component. Following an initial telephone contact, the signed permission forms and materials explaining the study were faxed (or mailed) to cooperating pharmacy providers. The materials informed the providers of all persons participating in the survey who had prescriptions filled at their place of business and requested a computerized printout of all prescriptions filled for each person. For each medication listed, the following information was requested: date filled; national drug code (NDC); medication name; strength of medicine (amount and unit); quantity (package size/amount dispensed); and payments by source.

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2.7 File Contents

2.7.1 Survey Administration Variables

2.7.1.1 Person Identifier Variables (DUID, PID, DUPERSID)

The dwelling unit ID (DUID) is a five-digit random number assigned after the case was sampled for MEPS. The three-digit person number (PID) uniquely identifies each person within the dwelling unit. The eight-character variable DUPERSID uniquely identifies each person represented on the file and is the combination of the variables DUID and PID. For detailed information on dwelling units and families, please refer to the documentation for the 2008 Full Year Population Characteristics File.

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2.7.1.2 Record Identifier Variables (RXRECIDX, LINKIDX)

The variable RXRECIDX uniquely identifies each record on the file. This 15-character variable is comprised of the following components: prescribed medicine drug-level identifier generated through the HC (positions 1-12) + enumeration number (positions 13-15). The prescribed medicine drug-level ID generated through the HC (positions 1-12) can be used to link a prescribed medicine event to the conditions file and to other event files, via link files, and is provided on this file as the variable LINKIDX. (For more details on linking, please refer to section 5.2 and to the 2008 Appendix File.)

The following hypothetical example illustrates the structure of these ID variables. This example illustrates a person in Round 1 of the household interview who reported having purchased Amoxicillin three times. The following example shows three acquisition-level records, all having the same RXNDC (00093310905), for one person (DUPERSID=00002026) in one round. Generally, one NDC is associated with a prescribed medicine event because matching was performed at a drug level, as opposed to an acquisition level. The LINKIDX (000020260083) remains the same for all three records, whereas the RXRECIDX (000020260083001, 000020260083002, 000020260083003) differs for all three records.

DUPERSID RXRECIDX LINKIDX RXNDC
00002026 000020260083001 000020260083 00093310905
00002026 000020260083002 000020260083 00093310905
00002026 000020260083003 000020260083 00093310905

 

Starting with the 2008 Prescribed Medicine file, there can be multiple RXNDCs for a LINKIDX. All the acquisitions in the LINKID represent the same drug (active ingredients), but the RXNDCs may represent different manufacturers. (For more details on matching, please see section 3.0).

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2.7.1.3 Panel Variable (PANEL)

PANEL is a constructed variable used to specify the panel number for the person. Panel will indicate either Panel 12 or Panel 13 for each person on the file. Panel 12 is the panel that started in 2007, and Panel 13 is the panel that started in 2008.

2.7.1.4 Round Variable (PURCHRD)

The variable PURCHRD indicates the round in which the prescribed medicine was purchased and takes on the value of 1, 2, 3, 4, or 5. Rounds 3, 4, and 5 are associated with MEPS survey data collection from Panel 12. Similarly, Rounds 1, 2, and 3 are associated with data collected from Panel 13.

2.7.1.5 Duplicate Purchase (DUP2007)

Starting with the 2008 Prescription Medicine file, the method used to allocate some round 3 records between years was changed. This change does not affect analyses using the full year file, because it was implemented for both panels. However, for users conducting analyses of Panel 12 that use both the 2007 and the 2008 drug data, the variable DUP2007 identifies records on the 2008 Prescription Medicine file that duplicate acquisitions on the 2007 Prescription Medicine file.

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2.7.2 Characteristics of Prescribed Medicine Events

2.7.2.1 Date When Prescribed Medicine Was First Taken (RXBEGMM-RXBEGYRX)

There are two variables which indicate when a prescribed medicine was first taken (used), as reported by the household. They are the following: RXBEGMM denotes the month in which a person first started taking a medication, and RXBEGYRX reflects the year in which a person first started taking a medicine. These “first taken” questions are only asked the first time a prescription is mentioned by the household. These questions are not asked of refills of the prescription for a person in subsequent rounds and result in a value of -1 being assigned to those types of events for these variables. For purposes of confidentiality, RXBEGYRX was bottom-coded at 1923 which makes RXBEGYRX consistent with the top-coding of the age variables on the 2008 Full Year Population Characteristics Public Use File (HC-115).

2.7.2.2 Prescribed Medicine Attributes (RXNAME-RXSTRUNT)

For each prescribed medicine included on this file, several data items collected describe in detail the medication obtained or purchased. These data items are the following:

  1. Medication name - pharmacy reported (RXNAME)
  2. National drug code (RXNDC)
  3. Quantity of the prescribed medicine dispensed (RXQUANTY); e.g., number of tablets in the prescription
  4. Form of the prescribed medicine (RXFORM); e.g., powder
  5. Unit of measurement for form of Rx/prescribed medicine (RXFRMUNT); e.g., oz
  6. Strength of the dose of the prescribed medicine (RXSTRENG); e.g., 10
  7. Unit of measurement for the strength of the dose of the prescribed medicine (RXSTRUNT); e.g., gm

Please refer to Attachments 1, 2, and 3 for definitions for RXFORM, RXFRMUNT, and RXSTRUNT abbreviations, codes and symbols. Please refer to Attachment 4 for therapeutic class code definitions.

The national drug code (NDC) generally, and on this file, is an 11-digit code. The first 5 digits indicate the manufacturer of the prescribed medicine. The next 4 digits indicate the form and strength of the prescription, and the last 2 digits indicate the package size from which the prescription was dispensed. NDC values were imputed from a proprietary database to certain PC prescriptions because the NDC reported by the pharmacy provider was not valid. These records are identified by RXFLG=3.

For the years 1996-2004, AHRQ’s licensing agreement with the proprietary database precluded the release of the imputed NDC values to the public, so for these prescriptions, the household reported name of the prescription (RXHHNAME) and the original NDC (RXNDC) and prescription name (RXNAME) reported by the pharmacy were provided on the file to allow users to do their own imputation. In addition, for the years 1996-2004, the imputed NDC values for the RXFLG=3 cases could be accessed through the MEPS Data Center. For those events not falling in the RXFLG=3 category, the reserve code (-13) was assigned to the household reported medication name (RXHHNAME). The household reported name of the prescription (RXHHNAME) is no longer provided on this file; however, this variable may be accessed through the MEPS Data Center as can the original pharmacy reported name and NDC. For information on accessing data through the MEPS Data Center, see the Data Center section of the MEPS Web site at: www.meps.ahrq.gov/data_stats/onsite_datacenter.jsp.



Imputed data on this event file, unlike other MEPS event files, may still have missing data. This is because imputed data on this file are imputed from the PC or from a proprietary database. These sources did not always include complete information for each variable but did include an NDC, which would typically enable an analyst to obtain any missing data items. For example, although there are a substantial number of missing values for the strength of the prescription that were not supplied by the pharmacist, these missing values were not imputed because this information is embedded in the NDC.

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2.7.2.3 Type of Pharmacy (PHARTP1-PHARTP17)

Household respondents were asked to list the type of pharmacy from which their medications were purchased. A household could list multiple pharmacies associated with their prescriptions in a given round or over the course of all rounds combined covering the survey year. All household reported pharmacies are provided on this file, but there was no link in the survey or in the data file enabling users to know the type of pharmacy from which a specific prescription was obtained if multiple pharmacies are listed. The set of variables (PHARTP1-PHARTP17) identify the types of pharmacy providers from which the person’s prescribed medicines were purchased. The possible types of pharmacies include the following: (1) mail-order, (2) another store, (3) HMO/clinic/hospital, (4) drug store, and (5) on-line. A -1 value for PHARTPn indicates that the household did not report an “nth” pharmacy.

2.7.2.4 Analytic Flag Variables (RXFLG-INPCFLG)

There are four flag variables included on this file (RXFLG, PCIMPFLG, CLMOMFLG, and INPCFLG).

The variable RXFLG indicates how the NDC for a specific prescribed medicine event was imputed. This variable indicates whether or not there was any imputation performed on this record for the NDC variable, and if imputed, from what source the NDC was imputed. If no imputation was performed, RXFLG=1. If the imputation source was another PC record, RXFLG=2. Similarly, if the imputation source was a secondary, proprietary database and not the PC database, RXFLG=3.

PCIMPFLG indicates the type of match between a household reported event and a PC reported event. There are only two possible values for this variable (PCIMPFLG =1 or =2). These values indicate the possible “match-types” and are the following: =1 is an exact match for a specific event for a person between the PC and the HC and =2 is not an exact match between the PC and HC for a specific person (not an exact match means that a person’s household reported event did not have a matched counterpart in their corresponding PC records). PCIMPFLG assists analysts in determining which records have the strongest link to data reported by a pharmacy. It should be noted that whenever there are multiple purchases of a unique prescribed medication in a given round, MEPS did not collect information that would enable designating any single purchase as the “original” purchase at the time the prescription was first filled, and then designating other purchases as “refills.” The user needs to keep this in mind when the purchases of a medication are referred to as “refills” in the documentation. Because matching was performed at a drug level as opposed to an acquisition level, the values for PCIMPFLG are either =1 or =2. (For more details on general data editing/imputation methodology, please see section 3.0).

CLMOMFLG indicates if a prescription medicine event went through the charge and payment section of the HC. Prescription medicine events that went through the charge and payment section of the HC include: (1) events where the person filed their own prescription claim forms with their insurance company, (2) events for persons who responded they did not know if they filed their own prescription claim forms with their insurance company, and (3) insulin and diabetic supply/equipment events (OMTYPE=2 or =3) that were mentioned in the Other Medical section of the HC. For these types of events information on payment sources was retained to the extent that these data were reported by the household in the charge and payment section of the HC.

INPCFLG denotes whether or not a household respondent had at least one prescription drug purchase in the PC (0=no, 1=yes).

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2.7.2.5 The Sample Variable (SAMPLE)

SAMPLE indicates if a respondent reported receiving a free sample of the prescription medicine in the round (0=no, 1=yes). Each household respondent was asked in each round whether or not they received any free samples of a reported prescribed medicine during the round. However, respondents were not asked to report the number of free samples received, nor was it made clear that free samples were included in the count of the number of times that the respondent reported purchasing or otherwise obtaining the prescribed medicine during the round. It is important for analysts to note, SAMPLE is not a count variable of free samples; SAMPLE =1 for all acquisitions of a prescribed medicine that a respondent reported getting a free sample of during the round. This flag variable simply allows individual analysts to determine for themselves how free samples should be handled in their analysis.

2.7.2.6 Condition Codes (RXICD1X-RXICD3X) and Clinical Classification Codes (RXCCC1X-RXCCC3X)

Information on household reported medical conditions associated with each prescribed medicine event are provided on this file. There are up to three condition and clinical classification codes listed for each prescribed medicine event (99.7 percent of prescribed medicine events have 0-3 condition records linked). To obtain complete information associated with an event, the analyst must link to the 2008 Medical Conditions File. Details on how to link to the MEPS 2008 Medical Conditions File are provided in the 2008 Appendix File. The user should note that due to confidentiality restrictions, provider reported condition information (for non-prescription medicines events) is not publicly available. Provider reported condition data (again, for non-prescription medicines events) can be accessed through the MEPS Data Center only.

The medical conditions reported by the HC respondent were recorded by the interviewer as verbatim text, which were then coded to fully-specified 2008 ICD-9-CM codes, including medical condition, V codes, and a small number of E codes, by professional coders. Although codes were verified and error rates did not exceed 2.5 percent for any coder, analysts should not presume this level of precision in the data; the ability of household respondents to report condition data that can be coded accurately should not be assumed. For detailed information on conditions, please refer to the documentation on the 2008 Medical Conditions File. For frequencies of conditions by event type, please see the 2008 Appendix File, HC-118I.

The ICD-9-CM condition codes were aggregated into clinically meaningful categories. These categories, included on the file as RXCCC1X-RXCCC3X, were generated using Clinical Classification Software (CCS) (formerly known as Clinical Classifications for Health Care Policy Research (CCHPR)), which aggregates conditions and V-codes into 263 mutually exclusive categories, most of which are clinically homogeneous.

In order to preserve respondent confidentiality, nearly all of the condition codes provided on this file have been collapsed from fully-specified codes to 3-digit code categories. The reported ICD-9-CM code values were mapped to the appropriate clinical classification category prior to being collapsed to the 3-digit categories. Because of this collapsing, it is possible for there to be duplicate 3-digit ICD-9-CM condition codes linked to a single prescribed medicine event when different fully-specified codes are collapsed into the same code. This would result in two or more of the condition code variables on this file being set to the same value on a single record. For more information on ICD-9-CM codes, see the HC-121 documentation.

The condition codes (and clinical classification codes) linked to each prescribed medicine event are sequenced in the order in which the conditions were reported by the household respondent, which was in chronological order of reporting and not in order of importance or severity. Analysts who use the 2008 Medical Conditions file in conjunction with this prescribed medicines event file should note that the conditions on this file are sorted differently than they appear on the Medical Conditions file.

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2.7.3 Multum Lexicon Variables from Cerner Multum, Inc.

Each record on this file contains the following Multum Lexicon variables:

PREGCAT - pregnancy category variable - identifies the FDA pregnancy category to which a particular drug has been assigned

TCn - therapeutic classification variable - assigns a drug to one or more therapeutic/chemical categories; can have up to three categories per drug

TCnSn - therapeutic sub-classification variable - assigns one or more sub-categories to a more general therapeutic class category given to a drug

TCnSn_n - therapeutic sub sub-classification variable - assigns one or more sub sub-categories to a more general therapeutic class category and sub-category given to a drug

For additional information on these and other Multum Lexicon variables, as well as the Multum Lexicon database itself, please refer to the following Web site: http://www.multum.com/Lexicon.htm

Researchers using the Multum Lexicon variables are requested to cite Multum Lexicon as the data source.

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2.7.4 Expenditure Variables (RXSF08X-RXXP08X)

2.7.4.1 Definition of Expenditures

Expenditures on this file refer to what is paid for health care services. More specifically, expenditures in MEPS are defined as the sum of payments for care received, including out of pocket payments and payments made by private insurance, Medicaid, Medicare and other sources. The definition of expenditures used in MEPS differs slightly from its predecessors, the 1987 NMES and 1977 NMCES surveys, where “charges” rather than “sum of payments” were used to measure expenditures. This change was adopted because charges became a less appropriate proxy for medical expenditures during the 1990s due to the increasingly common practice of discounting charges. Although measuring expenditures as the sum of payments incorporates discounts in the MEPS expenditure estimates, the estimates do not incorporate any manufacturer or other rebates associated with Medicaid or other purchases. Another general change from the two prior surveys is that charges associated with uncollected liability, bad debt, and charitable care (unless provided by a public clinic or hospital) are not counted as expenditures, because there are no payments associated with those classifications. For details on expenditure definitions, please reference the following, “Informing American Health Care Policy” (Monheit, Wilson, Arnett, 1999).

If examining trends in MEPS expenditures or performing longitudinal analysis on MEPS expenditures, please refer to section C, sub-section 2.1 for more information.

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2.7.4.2 Sources of Payment

In addition to total expenditures, variables are provided which itemize expenditures according to major source of payment categories. These categories are:

  1. Out-of-pocket by user (self) or family,
  2. Medicare,
  3. Medicaid,
  4. Private Insurance,
  5. Veterans Administration/CHAMPVA, excluding TRICARE,
  6. TRICARE,
  7. Other Federal sources - includes Indian Health Service, Military Treatment Facilities, and other care by the Federal government,
  8. Other State and Local Source - includes community and neighborhood clinics, State and local health departments, and State programs other than Medicaid,
  9. Worker’s Compensation, and
  10. Other Unclassified Sources - includes sources such as automobile, homeowner’s, and liability insurances, and other miscellaneous or unknown sources

Two additional source of payment variables were created to classify payments for events with apparent inconsistencies between insurance coverage and sources of payment based on data collected in the survey. These variables include:

  1. Other Private - any type of private insurance payments reported for persons not reported to have any private health insurance coverage during the year as defined in MEPS; and
  2. Other Public - Medicaid/Medicaid payments reported for persons who were not reported to be enrolled in the Medicaid/Medicaid program at any time during the year

Though relatively small in magnitude, data users/analysts should exercise caution when interpreting the expenditures associated with these two additional sources of payment. While these payments stem from apparent inconsistent responses to health insurance and source of payment questions in the survey, some of these inconsistencies may have logical explanations. For example, private insurance coverage in MEPS is defined as having a major medical plan covering hospital and physician services. If a MEPS sampled person did not have such coverage but had a single service type insurance plan (e.g., dental insurance) that paid for a particular episode of care, those payments may be classified as “other private.” Some of the “other public” payments may stem from confusion between Medicaid and other state and local programs or may be from persons who were not enrolled in Medicaid, but were presumed eligible by a provider who ultimately received payments from the program.

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2.7.5 Sample Weight (PERWT08F)

2.7.5.1 Overview

There is a single full year person-level weight (PERWT08F) assigned to each record for each key, in-scope person who responded to MEPS for the full period of time that he or she was in-scope during 2008. A key person either was a member of an NHIS household at the time of the NHIS interview, or became a member of a family associated with such a household after being out-of-scope at the time of the NHIS (the latter circumstance includes newborns as well as persons returning from military service, an institution, or living outside the United States). A person is in-scope whenever he or she is a member of the civilian noninstitutionalized portion of the U.S. population.

2.7.5.2 Details on Person Weights Construction

The person-level weight PERWT08F was developed in several stages. Person-level weights for Panels 12 and 13 were created separately. The weighting process for each panel included an adjustment for nonresponse over time and calibration to independent population figures. The calibration was initially accomplished separately for each panel by raking the corresponding sample weights to Current Population Survey (CPS) population estimates based on five variables. The five variables used in the establishment of the initial person-level control figures were: census region (Northeast, Midwest, South, West); MSA status (MSA, non-MSA); race/ethnicity (Hispanic, non-Hispanic with black as sole reported race, non-Hispanic with Asian as sole reported race, and other); sex; and age. A 2008 composite weight was then formed by multiplying each weight from Panel 12 by the factor .39 and each weight from Panel 13 by the factor .61. The choice of factors reflected the relative sample sizes of the two panels, helping to limit the variance of estimates obtained from pooling the two samples. The composite weight was again raked to the same set of CPS-based control totals. When poverty status information derived from income variables became available, a final raking was undertaken on the previously established weight variable. Control totals were established using poverty status (five categories: below poverty, from 100 to 125 percent of poverty, from 125 to 200 percent of poverty, from 200 to 400 percent of poverty, at least 400 percent of poverty) as well as the original five variables used in the previous calibrations.

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2.7.5.3 MEPS Panel 12 Weight

The person-level weight for MEPS Panel 12 was developed using the 2007 full year weight for an individual as a “base” weight for survey participants present in 2007. For key, in-scope respondents who joined an RU some time in 2008 after being out-of-scope in 2007, the 2007 family weight associated with the family the person joined served as a “base” weight. The weighting process included an adjustment for nonresponse over Rounds 4 and 5 as well as raking to population control figures for December 2008. These control figures were derived by scaling back the population totals obtained from the March 2009 CPS to correspond to a national estimate for the civilian noninstitutionalized population provided by the Census Bureau for December 2008. Variables used in the establishment of person-level control figures included: census region (Northeast, Midwest, South, West); MSA status (MSA, non-MSA); race/ethnicity (Hispanic, black but non-Hispanic, Asian but non-Hispanic, and other); sex; and age. Key, responding persons not in-scope on December 31, 2008 but in-scope earlier in the year retained, as their final Panel 12 weight, the weight after the nonresponse adjustment.

2.7.5.4 MEPS Panel 13 Weight

The person-level weight for MEPS Panel 13 was developed using the MEPS Round 1 person-level weight as a “base” weight. For key, in-scope respondents who joined an RU after Round 1, the Round 1 family weight served as a “base” weight. The weighting process included an adjustment for nonresponse over Round 2 and the 2008 portion of Round 3 as well as raking to the same population control figures for December 2008 used for the MEPS Panel 12 weights. The same five variables employed for Panel 12 raking (census region, MSA status, race/ethnicity, sex, and age) were used for Panel 13 raking. Similarly, for Panel 13, key, responding persons not in-scope on December 31, 2008 but in-scope earlier in the year retained, as their final Panel 13 weight, the weight after the nonresponse adjustment.

Note that the MEPS Round 1 weights incorporated the following components: the original household probability of selection for the NHIS; ratio-adjustment to NHIS-based national population estimates at the household (occupied dwelling unit) level; adjustment for nonresponse at the dwelling unit level for Round 1; and poststratification to figures at the family and person level obtained from the March CPS data base of the corresponding year (i.e., 2007 for Panel 12 and 2008 for Panel 13).

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2.7.5.5 The Final Weight for 2008

The composite weights of two groups of persons who were out-of-scope on December 31, 2008 were poststratified. Specifically, the weights of those who were in-scope some time during the year, out-of-scope on December 31, and entered a nursing home during the year were poststratified to a corresponding control total obtained from the 1996 MEPS Nursing Home Component. Those who died while in-scope during 2008 were poststratified to corresponding estimates derived using data obtained from the Medicare Current Beneficiary Survey (MCBS) and Vital Statistics information provided by the National Center for Health Statistics (NCHS). Separate decedent control totals were developed for the “65 and older” and “under 65” civilian noninstitutionalized populations. The sum of the person-level weights across all persons assigned a positive person level weight is 304,375,942.

2.7.5.6 Additional Adjustment to 2008 Person Weights for Persons Age 65 and Over

In developing the final 2008 person-level weights (PERWT08F), an adjustment was made at the end of the process to mitigate a noticeable decline in the proportion of elderly persons with at least one hospital stay based on the weight derived using the traditional MEPS weighting methodology. This decline is inconsistent with trends in MEPS and other data sources and the underlying explanation is under investigation. A ratio adjustment strategy was applied only to weights for persons age 65 and over (3,493 persons) and therefore it did not affect the weights for persons under age 65 (29,573 persons). Moreover, the adjustments were carried out by MSA status based on a logistic regression analysis that showed inconsistent changes from 2007 to 2008 in the likelihood of hospitalization for MSA residents versus non-MSA residents. The table below shows the derivations of the adjustment factors that were applied (total of 4 factors) to the previously described final weights.

Ratio Adjustment Factors Applied to Analytic Weight Variable for Persons Age 65 and older

# of Hospital Stays (IPDIS08)

MSA Resident

Non-MSA Resident

0 .808/.845 = 0.9562 .808/.780 = 1.0359
1 or more .192/.155 = 1.2387 .192/.220 = 0.8727

Within each of the 2 MSA subgroups, separate factors were developed for persons with no hospital stays and for persons with at least one stay. The numerators are based on MEPS annual averages of the proportion of elderly persons with at least one hospital stay for the preceding 3 year period (2005-07) and can be regarded as control proportions. The denominators of the factors reflect estimated proportions based on the traditional final weight. For MSA residents, applying these factors to the weights had the joint effect of inflating the estimated proportion of elderly persons with at least one hospital stay while proportionately deflating the proportion with no stays. For non-MSA residents, applying these factors to the weights had the joint effect of deflating the estimated proportion of elderly persons with at least one hospital stay while proportionately inflating the proportion with no stays.

Finally, the weights for the elderly were adjusted by a constant factor to compensate for the negligible impact of rounding on the aggregate weights that resulted from applying the factors in the table above. This factor was derived as the ratio of the sum of weights prior to applying the factors to the sum after applying the factors (39,742,176 / 39,737,780).

Overall, the weighted population estimate for the civilian noninstitutionalized population for December 31, 2008 is 300,257,026 (PERWT08F>0 and INSC1231=1). The sum of the person-level weights across all persons assigned a positive person-level weight is 304,375,942.

2.7.5.7 Coverage

The target population for MEPS in this file is the 2008 U.S. civilian noninstitutionalized population. However, the MEPS sampled households are a subsample of the NHIS households interviewed in 2006 (Panel 12) and 2007 (Panel 13). New households created after the NHIS interviews for the respective Panels and consisting exclusively of persons who entered the target population after 2006 (Panel 12) or after 2007 (Panel 13) are not covered by MEPS. Neither are previously out-of-scope persons who join an existing household but are unrelated to the current household residents. Persons not covered by a given MEPS panel thus include some members of the following groups: immigrants; persons leaving the military; U.S. citizens returning from residence in another country; and persons leaving institutions. The set of uncovered persons constitutes only a small segment of the MEPS target population.

3.0 General Data Editing and Imputation Methodology

The general approach to preparing the household prescription data for this file was to utilize the PC prescription data to impute information collected from pharmacy providers to the household drug mentions. For events that went through the charge and payment section of the HC (events where the person filed their own prescription claim forms with their insurance company, events for persons who responded they did not know if they filed their own prescription claim forms with their insurance company, and insulin and diabetic supply/equipment events (OMTYPE=2 or =3) that were mentioned in the Other Medical section of the HC), information on payment sources was retained to the extent that these data were reported by the household in the charge and payment section of the HC. A matching program was adopted to link PC drugs and the corresponding drug information to household drug mentions. To improve the quality of these matches, all drugs on the household and pharmacy files were coded using a proprietary database on the basis of the medication names provided by the household and pharmacy, and, when available, the NDC provided in the pharmacy follow-back component. The matching process was done at a drug (active ingredient) level, as opposed to an acquisition level. Considerable editing was done prior to the matching to correct data inconsistencies in both data sets and to fill in missing data and correct outliers on the pharmacy file.

Drug price-per-unit outliers were analyzed on the pharmacy file by first identifying the average wholesale unit price (AWUP) of the drug by linkage through the NDC to a secondary data file. In general, prescription drug unit prices were deemed to be outliers by comparing unit prices reported in the pharmacy database to the AWUP reported in the secondary data file and were edited, as necessary.

Beginning with the 2007 data, the rules used to identify outlier prices for prescription medications in the PC changed. New outlier thresholds were established based on the distribution of the ratio of retail unit prices relative to the AWUP in the 2006 MarketScan Outpatient Pharmaceutical Claims data base. The new thresholds vary by patent status, whereas in prior years they did not. These changes improve data quality in three ways: (1) the distribution of prices in the MEPS better benchmarks to MarketScan, overall and by patent status (Zodet et al. 2010), (2) fewer pharmacy-reported payments and quantities (for example, number of pills) are edited, and (3) imputed prices reflect prices paid, rather than AWUPs. As a result, compared with earlier years of the MEPS, starting with 2007 there is more variation in prices for generics, lower mean prices for generics, higher mean prices for brand name drugs, greater differences in prices between generic and brand name drugs, and a somewhat lower proportion of spending on drugs by families, as opposed to third-party payers. Beginning with the 2008 data, pharmacy reports of free antibiotics were not edited as if they were outliers.

Drug matches between household drug mentions and pharmacy drug events for a person in the PC were based on drug code, medication name, and the round in which the drug was reported. The matching of household drug mentions to pharmacy drugs was performed so that the most detailed and accurate information for each prescribed medicine event was obtained. Beginning with the 2008 Prescription Drug file, the criteria for matching were changed to allow multiple NDCs for the same drug reported by pharmacies (for example, different manufacturers) to match to one drug reported by the household. Exact dates of purchase were only available from the follow-back component. The matching program assigned scores to potential matches. Numeric variables required exact matches to receive a high score, while partial scores could be assigned to matches between character variables, such as prescription name, depending on the degree of similarity in the spelling and sound of the medication names. Household drug mentions that were deemed exact matches to PC drugs for the same person in the same round required sufficiently high scores to reflect a high quality match. Initially, exact matches were used only once and were taken out of the donor pool from that point on (i.e., these matches were made without replacement). Beginning with the 2008 Prescription Drug file, however, for remaining persons with pharmacy data from any round and unmatched household drugs, additional matches are made with replacement across rounds. Any refill of a household drug mention that had been matched to a pharmacy drug event was also matched to the same pharmacy drug event. All remaining unmatched household drug mentions for persons either in or out of the PC were statistically matched to the entire pharmacy donor base with replacement by medication name, drug code, type of third party coverage, health conditions, age, sex, and other characteristics of the individual. Potential PC donor records were omitted from these matches whenever a NDC was imputed to the PC record and was not an exact match on a generic product code applied to all records in the HC and PC. Some matches have inconsistencies between the PC donor’s potential sources of payment and those of the HC recipient, and these were resolved. Beginning with the 2008 data, the method used to resolve inconsistencies in potential payers was changed to better reflect the distribution of sources of payment among the acquisitions with consistent sources of payment. This change (1) reduced Medicare payments and increased private payments among Medicare beneficiaries, and (2) reduced out-of-pocket payments and increased Medicaid payments among Medicaid enrollees. In addition, Medicare, Medicaid, and private drug expenditures better benchmark totals in the National Health Expenditure Accounts.

For more information on the MEPS Prescribed Medicines editing and imputation procedures, please see J. Moeller, 2001.

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3.1 Rounding

Expenditure variables on the 2008 Prescribed Medicines file have been rounded to the nearest penny. Person-level expenditure variables released on the 2008 Full Year Consolidated Data File were rounded to the nearest dollar. It should be noted that using the 2008 MEPS event files to create person-level totals will yield slightly different totals than those found on the 2008 Full Year Consolidated Data File. These differences are due to rounding only. Moreover, in some instances, the number of persons having expenditures on the 2008 event files for a particular source of payment may differ from the number of persons with expenditures on the 2008 Full Year Consolidated Data File for that source of payment. This difference is also an artifact of rounding only. Please see the 2008 Appendix File for details on such rounding differences.

3.2 Edited/Imputed Expenditure Variables (RXSF08X-RXXP08X)

There are 13 expenditure variables included on this event file. All of these expenditures have gone through an editing and imputation process and have been rounded to the second decimal place. There is a sum of payments variable (RXXP08X) which for each prescribed medicine event sums all the expenditures from the various sources of payment. The 12 sources of payment expenditure variables for each prescribed medicine event are the following: amount paid by self or family (RXSF08X), amount paid by Medicare (RXMR08X), amount paid by Medicaid (RXMD08X), amount paid by private insurance (RXPV08X), amount paid by the Veterans Administration (RXVA08X), amount paid by TRICARE (RXTR08X), amount paid by other federal sources (RXOF08X), amount paid by state and local (non-federal) government sources (RXSL08X), amount paid by Worker’s Compensation (RXWC08X), and amount paid by some other source of insurance (RXOT08X). As mentioned previously, there are two additional expenditure variables called RXOR08X and RXOU08X (other private and other public, respectively). These two expenditure variables were created to maintain consistency between what the household reported as their private and public insurance status for hospitalization and physician coverage and third party prescription payments from other private and public sources (such as a separate private prescription policy or prescription coverage from the Veterans Administration, the Indian Health Service, or a State assistance program other than Medicaid). Users should exercise caution when interpreting the expenditures associated with these two additional sources of payment. While these payments stem from apparent inconsistent responses to health insurance and source of payment questions in the survey, some of these inconsistencies may have logical explanations. Please see section 2.7.4 for details on these and all other source of payment variables.

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4.0 Strategies for Estimation

4.1 Developing Event-Level Estimates

The data in this file can be used to develop national 2008 event level estimates for the U.S. civilian noninstitutionalized population on prescribed medicine purchases (events) as well as expenditures, and sources of payment for these purchases. Estimates of total number of purchases are the sum of the weight variable (PERWT08F) across relevant event records while estimates of other variables must be weighted by PERWT08F to be nationally representative. The tables below contain event-level estimates for selected variables.

Selected Event (Purchase) Level Estimates

All Prescribed Medicine Purchases

Estimate of Interest

Variable Name

    Estimate (SE)

Number of purchases (in millions)

PERWT08F

3149.9 (85.73)

Mean total payments per purchase

RXXP08X

$79 (1.1)

Mean out-of-pocket payment per purchase

RXSF08X

$20 (0.5)

Mean proportion of expenditures paid by private insurance per purchase

RXPV08X /RXXP08X

0.232 (0.0048)

Example by Drug Type: Statins (TC1S1_1=173 or TC1S1_2=173 or TC1S2_1=173 or TC1S3_1 =173 or TC2S1_1=173 or TC2S1_2=173)

Estimate of Interest

Variable Name

Estimate (SE)

Number of purchases (in millions)

PERWT08F

205.2 (7.48)

Mean total payments per purchase

RXXP08X

$102 (2.3)

Mean annual total payments per person

RXXP08X (aggregated across purchases within person)

$606 (13.8)

Example by Associated Condition: Hypertension (RXICD1X=”401” or RXICD2X=”401” or RXICD3X=”401”)

Estimate of Interest

Variable Name

Estimate (SE)

Number of purchases (in millions)

PERWT08F

504.1 (16.73)

Mean total payments per purchase

RXXP08X

$42 (0.9)

Mean annual total payments per person

RXXP08X (aggregated across purchases within person)

$407 (9.6)

 

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4.2 Person-Based Estimates for Prescribed Medicine Purchases

To enhance analyses of prescribed medicine purchases, analysts may link information about prescribed medicine purchases by sample persons in this file to the annual full year consolidated file (which has data for all MEPS sample persons), or conversely, link person-level information from the full year consolidated file to this event level file (see section 5 below for more details). Both this file and the Full Year Consolidated File may be used to derive estimates for persons with prescribed medicine purchases and annual estimates of total expenditures for these purchases. However, if the estimate relates to the entire population, this file cannot be used to calculate the denominator, as only those persons with at least one prescribed medicine purchase are represented on this data file. Therefore, the full year consolidated file must be used for person-level analyses that include both persons with and without prescribed medicine events.

4.3 Variables with Missing Values

It is essential that the analyst examine all variables for the presence of negative values used to represent missing values. For continuous or discrete variables, where means or totals may be taken, it may be necessary to set negative values to values appropriate to the analytic needs. That is, the analyst should either impute a value or set the value to one that will be interpreted as missing by the computing language used. For categorical and dichotomous variables, the analyst may want to consider whether to recode or impute a value for cases with negative values or whether to exclude or include such cases in the numerator and/or denominator when calculating proportions.

Methodologies used for the editing/imputation of expenditure variables (e.g., total expenditures and sources of payment) are described in Section 3.2.

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4.4 Variance Estimation (VARSTR, VARPSU)

MEPS has a complex sample design. To obtain estimates of variability (such as the standard error of sample estimates or corresponding confidence intervals) for MEPS estimates, analysts need to take into account the complex sample design of MEPS for both person-level and family-level analyses. Several methodologies have been developed for estimating standard errors for surveys with a complex sample design, including the Taylor-series linearization method, balanced repeated replication, and jackknife replication. Various software packages provide analysts with the capability of implementing these methodologies. Replicate weights have not been developed for the MEPS data. Instead, the variables needed to calculate appropriate standard errors based on the Taylor-series linearization method are included on this file as well as all other MEPS public use files. Software packages that permit the use of the Taylor-series linearization method include SUDAAN, Stata, SAS (version 8.2 and higher), and SPSS (version 12.0 and higher). For complete information on the capabilities of each package, analysts should refer to the corresponding software user documentation.

Using the Taylor-series linearization method, variance estimation strata and the variance estimation PSUs within these strata must be specified. The variance strata variable is named VARSTR, while the variance PSU variable is named VARPSU. Specifying a “with replacement” design in a computer software package, such as SUDAAN, provides standard errors appropriate for assessing the variability of MEPS survey estimates. It should be noted that the number of degrees of freedom associated with estimates of variability indicated by such a package may not appropriately reflect the actual number available. For MEPS sample estimates for characteristics generally distributed throughout the country (and thus the sample PSUs), one can expect at least 100 degrees of freedom for the 2008 full year data associated with the corresponding estimates of variance and usually substantially more.

Prior to 2002, MEPS variance strata and PSUs were developed independently from year to year, and the last two characters of the strata and PSU variable names denoted the year. However, beginning with the 2002 Point-in-Time PUF, the variance strata and PSUs were developed to be compatible with MEPS data associated with the NHIS sample design used through 2006. Such data can be pooled and the variance strata and PSU variables provided can be used without modification for variance estimation purposes for estimates covering multiple years of data.

As a result of the change in the NHIS sample design in 2006, a new set of variance strata and PSUs have been established for variance estimation purposes for use with MEPS Panel 12 and subsequent MEPS panels. There were 165 variance strata associated with both MEPS Panel 12 and Panel 13, providing a substantial number of degrees of freedom for subgroups as well as the nation as a whole. Each variance stratum contains either two or three variance estimation PSUs.

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5.0 Merging/Linking MEPS Data Files

Data from this file can be used alone or in conjunction with other files for different analytic purposes. This section summarizes various scenarios for merging/linking MEPS event files. Each MEPS panel can also be linked back to the previous years’ National Health Interview Survey public use data files. For information on obtaining MEPS/NHIS link files please see www.meps.ahrq.gov/data_stats/more_info_download_data_files.jsp.

5.1 Linking to the Person-Level File

Merging characteristics of interest from the person-level file (e.g., MEPS 2008 Full Year Consolidated File) expands the scope of potential estimates. For example, to estimate the total number of prescribed medicine purchases of persons with specific demographic characteristics (such as age, race, sex, and education), population characteristics from a person-level file need to be merged onto the prescribed medicines file. This procedure is illustrated below. The MEPS 2008 Appendix File, HC-118I, provides additional detail on how to merge MEPS data files.

  1. Create data set PERSX by sorting the 2008 Full Year Consolidated File by the person identifier, DUPERSID. Keep only variables to be merged onto the prescribed medicines file and DUPERSID.
  2. Create data set PMEDS by sorting the 2008 Prescribed Medicines File by person identifier, DUPERSID.
  3. Create final data set NEWPMEDS by merging these two files by DUPERSID, keeping only records on the prescribed medicines file.

The following is an example of SAS code, which completes these steps:

PROC SORT DATA=IN.HC121 (KEEP=DUPERSID AGE31X AGE42X AGE53X SEX RACEX EDUCYR)
OUT=PERSX;
BY DUPERSID;
RUN;

PROC SORT DATA=IN.HC118A
OUT=PMEDS;
BY DUPERSID;
RUN;

DATA NEWPMEDS;
MERGE PMEDS (IN=A) PERSX (IN=B);
BY DUPERSID;
IF A;
RUN;

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5.2 Linking to the Medical Conditions File

The CLNK provides a link from MEPS event files to the 2008 Medical Conditions File. When using the CLNK, data users/analysts should keep in mind that (1) conditions are self-reported, (2) there may be multiple conditions associated with a prescribed medicine purchase, and (3) a condition may link to more than one prescribed medicine purchase or any other type of purchase. Users should also note that not all prescribed medicine purchases link to the condition file.

5.3 Pooling Annual Files

To facilitate analysis of subpopulations and/or low prevalence events, it may be desirable to pool together more than one year of data to yield sample sizes large enough to generate reliable estimates. For more details on pooling MEPS data files see www.meps.ahrq.gov/data_stats/download_data_files_detail.jsp?cboPufNumber=HC-036.

www.meps.ahrq.gov/data_stats/download_data_files_detail.jsp?cboPufNumber=HC-036.

Starting in Panel 9, values for DUPERSID from previous panels will occasionally be re-used. Therefore, it is necessary to use the panel variable (PANEL) in combination with DUPERSID to ensure unique person-level identifiers across panels. Creating unique records in this manner is advised when pooling MEPS data across multiple annual files that have one or more identical values for DUPERSID.

5.4 Longitudinal Analysis

Panel-specific files containing estimation variables to facilitate longitudinal analysis are available for downloading in the data section of the MEPS Web site.

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References


Cohen, S.B. (1998). Sample Design of the 1996 Medical Expenditure Panel Survey Medical Provider Component. Journal of Economic and Social Measurement. Vol 24, 25-53.

Cohen, S.B. (1997). Sample Design of the 1996 Medical Expenditure Panel Survey Household Component. Rockville (MD): Agency for Health Care Policy and Research; 1997. MEPS Methodology Report, No. 2. AHCPR Pub. No. 97-0027.

Cohen, J.W. (1997). Design and Methods of the Medical Expenditure Panel Survey Household Component. Rockville (MD): Agency for Health Care Policy and Research; 1997. MEPS Methodology Report, No. 1. AHCPR Pub. No. 97-0026.

Cohen, S.B. (1996). The Redesign of the Medical Expenditure Panel Survey: A Component of the DHHS Survey Integration Plan. Proceedings of the COPAFS Seminar on Statistical Methodology in the Public Service.

Cox, B.G. and Cohen, S.B. (1985). Chapter 8: Imputation Procedures to Compensate for Missing Responses to Data Items. In Methodological Issues for Health Care Surveys. Marcel Dekker, New York.

Moeller J.F., Stagnitti, M., Horan, E., et al. Outpatient Prescription Drugs: Data Collection and Editing in the 1996 Medical Expenditure Panel Survey (HC-010A). Rockville (MD): Agency for Healthcare Research and Quality; 2001. MEPS Methodology Report No. 12. AHRQ Pub. No. 01-0002.

Monheit, A.C., Wilson, R., and Arnett, III, R.H. (Editors). Informing American Health Care Policy. (1999). Jossey-Bass Inc, San Francisco.

Shah, B.V., Barnwell, B.G., Bieler, G.S., Boyle, K.E., Folsom, R.E., Lavange, L., Wheeless, S.C., and Williams, R. (1996). Technical Manual: Statistical Methods and Algorithms Used in SUDAAN Release 7.0, Research Triangle Park, NC: Research Triangle Institute.

Zodet, M., Hill, S., and Miller, G.E. “Comparison of Retail Drug Prices in the MEPS and MarketScan: Implications for MEPS Editing Rules.” Agency for Healthcare Research and Quality Working Paper, 2009.

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D. Variable-Source Crosswalk

MEPS HC-118A: 2008 Prescribed Medicines Events

Survey Administration Variables

Variable

Description

Source

DUID

Dwelling unit ID

Assigned in sampling

PID

Person number

Assigned in sampling

DUPERSID

Sample person ID (DUID + PID)

Assigned in sampling

RXRECIDX

Record ID – Unique Prescribed Medicine Identifier

Constructed

LINKIDX

Link to condition and other event files

CAPI derived

PANEL

Panel indicator

Assigned in sampling

PURCHRD

Round in which the Rx/prescribed medicine was obtained/purchased

CAPI derived

DUP2007

Duplicate acquisition on 2007 PMED file

Constructed

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Prescribed Medicines Events Variables

Variable

Description

Source

RXBEGMM

Month person first used medicine

PM11OV2

RXBEGYRX

Year person first used medicine

PM11

RXNAME

Medication name (Imputed)

Imputed

RXNDC

National drug code (Imputed)

Imputed

RXQUANTY

Quantity of Rx/prescribed medicine (Imputed)

Imputed

RXFORM

Form of Rx/prescribed medicine (Imputed)

Imputed

RXFRMUNT

Unit of measurement for form of Rx/prescribed medicine (Imputed)

Imputed

RXSTRENG

Strength of Rx/prescribed medicine dose (Imputed)

Imputed

RXSTRUNT

Unit of measurement for strength of Rx/prescribed medicine dose (Imputed)

Imputed

PHARTP1-PHARTP17

Type of pharmacy provider – (1st-17th)

PM16

RXFLG

Flag variable indicating imputation source for NDC on pharmacy donor record

Constructed

PCIMPFLG

Flag indicating type of household to pharmacy prescription match

Constructed

CLMOMFLG

Charge/payment, Rx claim filing, and OMTYPE =2 or =3 (insulin and diabetic supply equipment events) status

CP01/Constructed

INPCFLG

Flag indicating if the person has at least one record in the pharmacy component

Constructed

SAMPLE

Flag indicating if a respondent received a free sample of this drug in the round

CAPI derived

RXICD1X

3 digit ICD-9 condition code

PM09

RXICD2X

3 digit ICD-9 condition code

PM09

RXICD3X

3 digit ICD-9 condition code

PM09

RXCCC1X

Modified Clinical Classification Code

Constructed/Edited

RXCCC2X

Modified Clinical Classification Code

Constructed/Edited

RXCCC3X

Modified Clinical Classification Code

Constructed/Edited

PREGCAT

Multum Pregnancy Category

Cerner Multum, Inc.

TC1

Multum Therapeutic Class #1   

Cerner Multum, Inc.

TC1S1

Multum Therapeutic Sub-Class #1 for TC1

Cerner Multum, Inc.

TC1S1_1

Multum Therapeutic Sub-Sub-Class for TC1S1

Cerner Multum, Inc.

TC1S1_2

Multum Therapeutic Sub-Sub-Class for TC1S1

Cerner Multum, Inc.

TC1S2

Multum Therapeutic Sub-Class #2 for TC1

Cerner Multum, Inc.

TC1S2_1

Multum Therapeutic Sub-Sub-Class for TC1S2

Cerner Multum, Inc.

TC1S3

Multum Therapeutic Sub-Class #3 for TC1

Cerner Multum, Inc.

TC1S3_1

Multum Therapeutic Sub-Sub-Class for TC1S3

Cerner Multum, Inc.

TC2

Multum Therapeutic Class #2

Cerner Multum, Inc.

TC2S1

Multum Therapeutic Sub-Class #1 for TC2

Cerner Multum, Inc.

TC2S1_1

Multum Therapeutic Sub-Sub-Class for TC2S1

Cerner Multum, Inc.

TC2S1_2

Multum Therapeutic Sub-Sub-Class for TC2S1

Cerner Multum, Inc.

TC2S2

Multum Therapeutic Sub-Class #2 for TC2

Cerner Multum, Inc.

TC3

Multum Therapeutic Class #3

Cerner Multum, Inc.

TC3S1

Multum Therapeutic Sub-Class #1 for TC3

Cerner Multum, Inc.

TC3S1_1

Multum Therapeutic Sub-Sub-Class for TC3S1

Cerner Multum, Inc.

RXSF08X

Amount paid, self or family (Imputed)

CP11/Edited/Imputed

RXMR08X

Amount paid, Medicare (Imputed)

CP12/CP13/Edited/Imputed

RXMD08X

Amount paid, Medicaid (Imputed)

CP12/CP13/Edited/Imputed

RXPV08X

Amount paid, private insurance (Imputed)

CP12/CP13/Edited/Imputed

RXVA08X

Amount paid, Veteran’s Administration (Imputed)

CP12/CP13/Edited/Imputed

RXTR08X

Amount paid, TRICARE (Imputed)

CP12/CP13/Edited/Imputed

RXOF08X

Amount paid, other Federal (Imputed)

CP12/CP13/Edited/Imputed

RXSL08X

Amount paid, state and local government (Imputed)

CP12/CP13/Edited/Imputed

RXWC08X

Amount paid, Worker’s Compensation (Imputed)

CP12/CP13/Edited/Imputed

RXOT08X

Amount paid, other insurance (Imputed)

CP12/CP13/Edited/Imputed

RXOR08X

Amount paid, other private (Imputed)

Constructed/Imputed

RXOU08X

Amount paid, other public (Imputed)

Constructed/Imputed

RXXP08X

Sum of payments RXSF08X – RXOU08X (Imputed)

CP12/CP13/Edited/Imputed

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Weights

Variable

Description

Source

PERWT08F

Poverty/mortality/nursing home adjusted person-level weight

Constructed

VARSTR

Variance estimation stratum, 2008

Constructed

VARPSU

Variance estimation PSU, 2008

Constructed

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Attachment 1

Definitions of Abbreviations for RXFORM

Dosage Form

Definition

-7

refused

-8

don’t know

-9

not ascertained

ACC

accessory

ADR

acetic acid drop

AE

aerosol

AER

aerosol

AER SPRAY

aerosol spray

AERO

aerosol

AEROSOL

 

AMP

ampule

ARO

aerosol solid

AUTO INJ

auto-injection

BACK SUPPORT BELT

 

BAG

 

BAL

balm

BALM

 

BAN

bandage

BANDAGE

 

BAR

 

BATTERY

 

BENCH

 

BOT

bottle

BOTTLE

 

BOX

 

BOXES

 

BRACE

 

BRIEF

 

BUT

butterfly

C

capsules, or cream (varies)

C12

12 hour extended-release capsule

C24

24 hour extended-release capsule

CA

capsule

CANE

 

CAP

capsule

CAP DR

delayed-release capsule

CAP ER

extended-release capsule

CAP SA

slow-acting capsule

CAPLET

 

CAPLT

caplet

CAPS

capsules

CAPSULE

 

CAPSULE SA

slow-acting capsule

CATHETER

 

CC

cubic centimeter

CER

extended-release capsule

CHAMBER

 

CHEW

chewable tablet

CHEW TAB

chewable tablet

CHEW TABS

chewable tablets

CHEWABLE

 

CHW

chewable tablets

CLEANSER

 

COLLAR

 

COMBO

 

COMPOUND

 

CON

condom

CONDOM

 

CONTAINER

 

COTTON

 

CPSR

slow-release capsule

CR

cream

CRE

cream

CREA

cream

CREAM

 

CRM

cream

CRY

crystal

CRYSTAL

 

CTB

chewable tablets

CTG

cartridge

CUTTER

 

DEV

device

DEVICE

 

DIA

diaper

DIAPER

 

DIAPHRAM

 

DIS

disk, or dermal infusion system

DISK

 

DOS PAK

dose pack

DR

drop

DRE

dressing

DRESSING

 

DRO

drop

DROP

 

DROPS

 

DROPS OPTH OTI

ophthalmic/otic drops

DROPS SUSP

drops suspension

DRP

drop

DRPS

drops

DSK

disk

DSPK

tablets in a dose pack

EAR DROP

 

EAR DROPS

 

EAR DRP

ear drop

EAR SUSP

ear suspension

EC TABS

enteric coated tablets

ECC

enteric coated capsules

ECT

enteric coated tablets

ELI

elixir

ELIX

elixir

ELIXIR

 

ELX

elixir

EMERGENCY KIT

 

EMO

emollient

EMU

emulsion

EMULSION

 

ENEMA

 

ERTA

extended-release tablets

EXTN CAP

extended-release capsule

EXTRACT

 

EYE DRO

eye drop

EYE DROP

 

EYE DROPS

 

EYE DRP

eye drop

EYE SO

eye solution

FIL

film

FILM ER

film, extended-release

FILMTAB

 

FILMTABS

 

FLOWMETER

 

FOA

foam

FOAM

 

GAU

gauze

GAUZE

 

GEF

effervescent granules

GEL

 

GEL CAP

gel capsule

GER

 

GFS

gel-forming solution

GLOVE

 

GRA

granules

GRANULES

 

GRR

grams

GTT

drops

GUM

 

HOSE

medical hosiery

HU

capsule

ICR

control-release insert

IMPLANT

 

IN

injectible

INH

inhalant

INH AER

inhalant aerosol

INHAL

inhalant

INHAL SOL

inhalant solution

INHALER

 

INHL

inhalant

INJ

injectible

INJECTION (S)

 

INSERT

 

INSULIN

 

IUD

intrauterine devise

IV

intravenous

JEL

jelly

JELLY

 

KIT

 

L

lotion

LANCET

 

LANCET (S)

 

LI

liquid

LINIMENT

 

LIQ

liquid

LIQUID

 

LOLLIPOP

 

LOT

lotion

LOTION

 

LOZ

lozenge

LOZENGE

 

MASK

 

MCG

microgram

METER

 

MG

milligram

MIS

miscellaneous

MIST

 

MONITOR

 

MOUTHWASH

 

NAS

nasal spray

NASAL

 

NASAL INHALER

 

NASAL POCKET HL

nasal inhaler, pocket

NASAL SOLN

nasal solution

NASAL SPR

nasal spray

NASAL SPRAY

 

NDL

needle

NE

nebulizer

NEB

nebulizer

NEBULIZER

 

NEEDLE

 

NEEDLES

 

NMA

enema

NMO

nanomole, millimicromole

ODR

ophthalmic drop (ointment)

ODT

oral disintegrating tablet

OIL

 

OIN

ointment

OINT

ointment

OINT TOP

topical ointment

OINTMENT

 

ONT

ointment

OP

ophthalmic solution

OP DROPS

ophthalmic drops

OP SOL

ophthalmic solution

OPH

ophthalmic

OPH S

ophthalmic solution or suspension

OPH SOL

ophthalmic solution

OPH SOLN

ophthalmic solution

OPHT SOL

ophthalmic solution

OPHTH DROP (S)

ophthalmic drops

OPHTH OINT

ophthalmic ointment

OPHTH SOLN

ophthalmic solution

OPT SLN

ophthalmic solution

OPT SOL

ophthalmic solution

OPTH

ophthalmic solution or suspension or ointment

OPTH S

ophthalmic solution or suspension

OPTH SLN

ophthalmic solution

OPTH SOL

ophthalmic solution

OPTH SUSP

ophthalmic suspension

OPTIC

 

ORAL

 

ORAL INHL

oral inhalant

ORAL INHALER

 

ORAL PWD

oral powder

ORAL RINSE

 

ORAL SOL

oral solution

ORAL SUS

oral suspension

ORAL SUSP

oral suspension

OTI

otic solution

OTIC

 

OTIC SOL

otic solution

OTIC SOLN

otic solution

OTIC SUS

otic suspension

OTIC SUSP

otic suspension

PA

tablet pack, pad or patch (varies)

PAC

pack

PACK

 

PAD

 

PADS

 

PAK

pack

PAS

paste

PASTE

 

PAT

patch

PATCH

 

PEN

 

PCH

patch

PDR

powder

PDS

powder for reconstitution

PEDIATRIC DROPS

 

PI1

powder for injection, 1 month

PI3

powder for injection, 3 months

PIH

powder for inhalation

PKG

package

PKT

packet

PLASTER

 

PLEDGETS

 

PO-SYRUP

syrup by mouth (oral syrup)

POPSICLE

 

POUCH

 

POW

powder

POWD

powder

POWDER

 

POWDER/SUSPENS

powder/suspension

PRO

prophylactic

PST

paste

PULVULE

 

PWD

powder

PWD F/SOL

powder for solution

RCTL SUPP

rectal suppository

RECTAL CREAM

 

REDITABS

 

REF

 

RIN

Rinse

RING

 

RINSE

 

ROLL

 

S

syrup, suspension, solution (varies)

SA CAPS

Slow-acting capsules

SA TAB

Slow-acting tablet

SA TABLETS

Slow-acting tablets

SA TABS

Slow-acting tablets

SAL

Salve

SCRUB

 

SER

extended-release suspension

SET

 

SGL

soft b23gel cap

SHA

shampoo

SHAM

shampoo

SHMP

shampoo

SHOE

 

SLT

sublingual tablet

SL TAB

sublingual tablet

SO

solution

SOA

Soap

SOL

solution

SOLN

solution

SOLUTION

 

SOLU

solution

SP

spray

SPG

sponge

SPN

 

SPONGE

 

SPR

spray

SPRAY

 

SRN

syringe

STOCKING

 

STP

Strip

STR

Strip

STRIP

 

STRIPS

 

SU

suspension, solution,
suppository, powder, or
granules for reconstitution (varies)

SUB

sublingual

SUP

suppository

SUPP

suppository

SUPPOSITORIES

 

SUPPOSITORY

 

SUS

suspension

SUS/LIQ

suspension/liquid

SUSP

suspension

SUSPEN

suspension

SUSPENDED RELEASE CAPLET

 

SUSPENSION

 

SWA

Swab

SWAB

 

SWABS

 

SYP

syrup

SYR

syrup

SYRG

syringe

SYRINGE

 

SYRP

syrup

SYRUP

 

T

tablet

T12

12 hour extended-release tablet

T24

24 hour extended-release tablet

TA

tablet

TAB

tablet

TAB CHEW

chewable tablet

TAB DR

delayed-release tablet

TAB EC

enteric coated tablet

TAB SL

Slow-acting tablet

TAB SUBL

sublingual tablet

TABL

tablet

TABLET

 

TABLET CUTTER

 

TABLET SPLITTER

 

TABLETS

 

TABS

tablets

TAP

Tape

TAPE

 

TB

tablet

TBCH

chewable tablet

TBS

tablets

TBSL

sublingual tablet

TBSR

Slow-release tablet

TCP

tablet, coated particles

TDM

extended-release film

TDR

orally disintegrating tablets

TDS

transdermal system

TEF

effervescent tablet

TER

extended-release tablet

TES

Test

TEST

 

TEST STRIP

 

TEST STRIPS

 

TIN

tincture

TOP CREAM

topical cream

TOP OINT

topical ointment

TOP SOL

topical solution

TOP SOLN

topical solution

TOPICAL

 

TOPICAL CREAM

 

TOPICAL SOLUTION

 

TRO

troche

TTB

Time release tablet

TUB

Tube

TUBE

 

UNDERWEAR

 

UNIT DOSE

 

UNT

Unit

VAGINAL CREAM

 

VAPORIZER

 

VIA

Vial

VIAL

 

VIAL(S)

 

VIL

Vial

WAF

wafer

WALKER

 

WASH

 

WIPES

 

Z-PAK

 

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Attachment 2

Definitions of Codes and Abbreviations for RXFRMUNT

Code

Description

-7

refused

-8

don’t know

-9

not ascertained

CC

Cubic centimeter

GM

Gram

L

Liter

ML

milliliter

OZ

ounce

Return To Table Of Contents

 

Attachment 3

Definitions of Abbreviations, Codes and Symbols for RXSTRUNT

Abbreviations, Codes and Symbols

Definition

-7

refused

-8

don't know

-9

not ascertained

%

percent

09

compound

ACTIVATION

activation

ACTUATION

actuation

CC

cubic centimeters

CM2

square centimeter

DOSE

dose

DRP

drop

EL

ELISA (enzyme linked immunosorbent assay)

G

gram

GM

gram

GR

grain

HR or HRS

hour, hours

INH

inhalation

IU

international unit

MCG

microgram

MEQ

microequivalent

MG

milligram

ML

milliliter

MMU

millimass units

OZ

ounce

PACKET

packet

PFU

plaque forming units

SQ CM

square centimeter

U

units

Return To Table Of Contents

Attachment 4

Theraputic Class Code Definitions

Theraputic Class Code

 Definition

1

anti-infectives

2

amebicides

3

anthelmintics

4

antifungals

5

antimalarial agents

6

antituberculosis agents

7

antiviral agents

8

carbapenems

9

cephalosporins

10

leprostatics

11

macrolide derivatives

12

miscellaneous antibiotics

13

penicillins

14

quinolones

15

sulfonamides

16

tetracyclines

17

urinary anti-infectives

18

aminoglycosides

19

antihyperlipidemic agents

20

antineoplastics

21

alkylating agents

22

antineoplastic antibiotics

23

antimetabolites

24

antineoplastic hormones

25

miscellaneous antineoplastics

26

mitotic inhibitors

27

radiopharmaceuticals

28

biologicals

30

antitoxins and antivenins

31

bacterial vaccines

32

colony stimulating factors

33

immune globulins

34

in vivo diagnostic biologicals

36

recombinant human erythropoietins

37

toxoids

38

viral vaccines

39

miscellaneous biologicals

40

cardiovascular agents

41

agents for hypertensive emergencies

42

angiotensin converting enzyme inhibitors

43

antiadrenergic agents, peripherally acting

44

antiadrenergic agents, centrally acting

45

antianginal agents

46

antiarrhythmic agents

47

beta-adrenergic blocking agents

48

calcium channel blocking agents

49

diuretics

50

inotropic agents

51

miscellaneous cardiovascular agents

52

peripheral vasodilators

53

vasodilators

54

vasopressors

55

antihypertensive combinations

56

angiotensin II inhibitors

57

central nervous system agents

58

analgesics

59

miscellaneous analgesics

60

narcotic analgesics

61

nonsteroidal anti-inflammatory agents

62

salicylates

63

analgesic combinations

64

anticonvulsants

65

antiemetic/antivertigo agents

66

antiparkinson agents

67

anxiolytics, sedatives, and hypnotics

68

barbiturates

69

benzodiazepines

70

miscellaneous anxiolytics, sedatives and hypnotics

71

CNS stimulants

72

general anesthetics

73

muscle relaxants

74

neuromuscular blocking agents

76

miscellaneous antidepressants

77

miscellaneous antipsychotic agents

79

psychotherapeutic combinations

80

miscellaneous central nervous system agents

81

coagulation modifiers

82

anticoagulants

83

antiplatelet agents

84

heparin antagonists

85

miscellaneous coagulation modifiers

86

thrombolytics

87

gastrointestinal agents

88

antacids

89

anticholinergics/antispasmodics

90

antidiarrheals

91

digestive enzymes

92

gallstone solubilizing agents

93

GI stimulants

94

H2 antagonists

95

laxatives

96

miscellaneous GI agents

97

hormones/hormone modifiers

98

adrenal cortical steroids

99

antidiabetic agents

100

miscellaneous hormones

101

sex hormones

102

contraceptives

103

thyroid hormones

104

immunosuppressive agents

105

miscellaneous agents

106

antidotes

107

chelating agents

108

cholinergic muscle stimulants

109

local injectable anesthetics

110

miscellaneous uncategorized agents

111

psoralens

112

radiocontrast agents

113

genitourinary tract agents

114

illicit (street) drugs

115

nutritional products

116

iron products

117

minerals and electrolytes

118

oral nutritional supplements

119

vitamins

120

vitamin and mineral combinations

121

intravenous nutritional products

122

respiratory agents

123

antihistamines

124

antitussives

125

bronchodilators

126

methylxanthines

127

decongestants

128

expectorants

129

miscellaneous respiratory agents

130

respiratory inhalant products

131

antiasthmatic combinations

132

upper respiratory combinations

133

topical agents

134

anorectal preparations

135

antiseptic and germicides

136

dermatological agents

137

topical anti-infectives

138

topical steroids

139

topical anesthetics

140

miscellaneous topical agents

141

topical steroids with anti-infectives

143

topical acne agents

144

topical antipsoriatics

146

mouth and throat products

147

ophthalmic preparations

148

otic preparations

149

spermicides

150

sterile irrigating solutions

151

vaginal preparations

153

plasma expanders

154

loop diuretics

155

potassium-sparing diuretics

156

thiazide diuretics

157

carbonic anhydrase inhibitors

158

miscellaneous diuretics

159

first generation cephalosporins

160

second generation cephalosporins

161

third generation cephalosporins

162

fourth generation cephalosporins

163

ophthalmic anti-infectives

164

ophthalmic glaucoma agents

165

ophthalmic steroids

166

ophthalmic steroids with anti-infectives

167

ophthalmic anti-inflammatory agents

168

ophthalmic lubricants and irrigations

169

miscellaneous ophthalmic agents

170

otic anti-infectives

171

otic steroids with anti-infectives

172

miscellaneous otic agents

173

HMG-CoA reductase inhibitors

174

miscellaneous antihyperlipidemic agents

175

protease inhibitors

176

NRTIs

177

miscellaneous antivirals

178

skeletal muscle relaxants

179

skeletal muscle relaxant combinations

180

adrenergic bronchodilators

181

bronchodilator combinations

182

androgens and anabolic steroids

183

estrogens

184

gonadotropins

185

progestins

186

sex hormone combinations

187

miscellaneous sex hormones

191

narcotic analgesic combinations

192

antirheumatics

193

antimigraine agents

194

antigout agents

195

5HT3 receptor antagonists

196

phenothiazine antiemetics

197

anticholinergic antiemetics

198

miscellaneous antiemetics

199

hydantoin anticonvulsants

200

succinimide anticonvulsants

201

barbiturate anticonvulsants

202

oxazolidinedione anticonvulsants

203

benzodiazepine anticonvulsants

204

miscellaneous anticonvulsants

205

anticholinergic antiparkinson agents

206

miscellaneous antiparkinson agents

208

SSRI antidepressants

209

tricyclic antidepressants

210

phenothiazine antipsychotics

211

platelet aggregation inhibitors

212

glycoprotein platelet inhibitors

213

sulfonylureas

214

biguanides

215

insulin

216

alpha-glucosidase inhibitors

217

bisphosphonates

218

alternative medicines

219

nutraceutical products

220

herbal products

222

penicillinase resistant penicillins

223

antipseudomonal penicillins

224

aminopenicillins

225

beta-lactamase inhibitors

226

natural penicillins

227

NNRTIs

228

adamantane antivirals

229

purine nucleosides

230

aminosalicylates

231

nicotinic acid derivatives

232

rifamycin derivatives

233

streptomyces derivatives

234

miscellaneous antituberculosis agents

235

polyenes

236

azole antifungals

237

miscellaneous antifungals

238

antimalarial quinolines

239

miscellaneous antimalarials

240

lincomycin derivatives

241

fibric acid derivatives

242

psychotherapeutic agents

243

leukotriene modifiers

244

nasal lubricants and irrigations

245

nasal steroids

246

nasal antihistamines and decongestants

247

nasal preparations

248

topical emollients

249

antidepressants

250

monoamine oxidase inhibitors

251

antipsychotics

252

bile acid sequestrants

253

anorexiants

254

immunologic agents

256

interferons

257

immunosuppressive monoclonal antibodies

261

heparins

262

coumarins and indandiones

263

impotence agents

264

urinary antispasmodics

265

urinary pH modifiers

266

miscellaneous genitourinary tract agents

267

ophthalmic antihistamines and decongestants

268

vaginal anti-infectives

269

miscellaneous vaginal agents

270

antipsoriatics

271

thiazolidinediones

272

proton pump inhibitors

273

lung surfactants

274

cardioselective beta blockers

275

non-cardioselective beta blockers

276

dopaminergic antiparkinsonism agents

277

5-aminosalicylates

278

cox-2 inhibitors

279

gonadotropin-releasing hormone and analogs

280

thioxanthenes

281

neuraminidase inhibitors

282

meglitinides

283

thrombin inhibitors

284

viscosupplementation agents

285

factor Xa inhibitors

286

mydriatics

287

ophthalmic anesthetics

288

5-alpha-reductase inhibitors

289

antihyperuricemic agents

290

topical antibiotics

291

topical antivirals

292

topical antifungals

293

glucose elevating agents

295

growth hormones

296

inhaled corticosteroids

297

mucolytics

298

mast cell stabilizers

299

anticholinergic bronchodilators

300

corticotropin

301

glucocorticoids

302

mineralocorticoids

303

agents for pulmonary hypertension

304

macrolides

305

ketolides

306

phenylpiperazine antidepressants

307

tetracyclic antidepressants

308

SSNRI antidepressants

309

miscellaneous antidiabetic agents

310

echinocandins

311

dibenzazepine anticonvulsants

312

cholinergic agonists

313

cholinesterase inhibitors

314

antidiabetic combinations

315

glycylcyclines

316

cholesterol absorption inhibitors

317

antihyperlipidemic combinations

318

insulin-like growth factor

319

vasopressin antagonists

320

smoking cessation agents

321

ophthalmic diagnostic agents

322

ophthalmic surgical agents

324

antineoplastic interferons

325

sclerosing agents

327

antiviral combinations

328

antimalarial combinations

329

antituberculosis combinations

330

antiviral interferons

331

radiologic agents

332

radiologic adjuncts

333

miscellaneous iodinated contrast media

334

lymphatic staining agents

335

magnetic resonance imaging contrast media

336

non-iodinated contrast media

337

ultrasound contrast media

338

diagnostic radiopharmaceuticals

339

therapeutic radiopharmaceuticals

340

aldosterone receptor antagonists

341

atypical antipsychotics

342

renin inhibitors

344

nasal anti-infectives

345

fatty acid derivative anticonvulsants

346

gamma-aminobutyric acid reuptake inhibitors

347

gamma-aminobutyric acid analogs

348

triazine anticonvulsants

349

carbamate anticonvulsants

350

pyrrolidine anticonvulsants

351

carbonic anhydrase inhibitor anticonvulsants

352

urea anticonvulsants

353

anti-angiogenic ophthalmic agents

354

H. pylori eradication agents

355

functional bowel disorder agents

356

serotoninergic neuroenteric modulators

357

growth hormone receptor blockers

358

metabolic agents

359

peripherally acting antiobesity agents

360

lysosomal enzymes

361

miscellaneous metabolic agents

362

chloride channel activators

363

probiotics

364

antiviral chemokine receptor antagonist

365

medical gas

366

integrase strand transfer inhibitor

368

non-ionic iodinated contrast media

369

ionic iodinated contrast media

370

otic steroids

371

dipeptidyl peptidase 4 inhibitors

372

amylin analogs

373

incretin mimetics

374

cardiac stressing agents

375

peripheral opioid receptor antagonists

376

radiologic conjugating agents

377

prolactin inhibitors

378

drugs used in alcohol dependence

379

next generation cephalosporins

380

topical debriding agents

381

topical depigmenting agents

382

topical antihistamines

383

antineoplastic detoxifying agents

384

platelet-stimulating agents

385

group I antiarrhythmics

386

group II antiarrhythmics

387

group III antiarrhythmics

388

group IV antiarrhythmics

389

group V antiarrhythmics

390

hematopoietic stem cell mobilizer

392

otic anesthetics

393

cerumenolytics

394

topical astringents

395

topical keratolytics

396

prostaglandin D2 antagonists

397

multikinase inhibitors

398

BCR-ABL tyrosine kinase inhibitors

399

CD52 monoclonal antibodies

400

CD33 monoclonal antibodies

401

CD20 monoclonal antibodies

402

VEGF/VEGFR  inhibitors

403

mTOR inhibitors

404

EGFR inhibitors

405

HER2 inhibitors

406

glycopeptide antibiotics

407

inhaled anti-infectives

408

histone deacetylase inhibitors

409

bone resorption inhibitors

410

adrenal corticosteroid inhibitors

411

calcitonin

412

uterotonic agents

413

antigonadotropic agents

414

antidiuretic hormones

415

miscellaneous bone resorption inhibitors

416

somatostatin and somatostatin analogs

417

selective estrogen receptor modulators

418

parathyroid hormone and analogs

419

gonadotropin-releasing hormone antagonists

420

antiandrogens

422

antithyroid agents

423

aromatase inhibitors

424

estrogen receptor antagonists

426

synthetic ovulation stimulants

427

tocolytic agents

428

progesterone receptor modulators

429

trifunctional monoclonal antibodies

430

anticholinergic chronotropic agents

431

anti-CTLA-4 monoclonal antibodies

Return To Table Of Contents

 

 


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