Creating National Weights for a Patient-level Longitudinal Database

**Objective:** To create a nationally-representative estimate from longitudinal data by controlling for sociodemographic factors and health status. **Method:** The Agency for Healthcare Research and Quality’s (AHRQ) Medicare Expenditures Panel Survey (MEPS) was used as the basis for adjustment meth...

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Main Authors: Onur Baser, Li Wang, Jon Maguire
Format: Article
Language:English
Published: Columbia Data Analytics, LLC
Series:Journal of Health Economics and Outcomes Research
Online Access:http://jheor.scholasticahq.com/article/9828-creating-national-weights-for-a-patient-level-longitudinal-database.pdf
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spelling doaj-07b70104d698431d8df01dc1116188672020-11-24T21:25:00ZengColumbia Data Analytics, LLCJournal of Health Economics and Outcomes Research2327-2236Creating National Weights for a Patient-level Longitudinal DatabaseOnur BaserLi WangJon Maguire**Objective:** To create a nationally-representative estimate from longitudinal data by controlling for sociodemographic factors and health status. **Method:** The Agency for Healthcare Research and Quality’s (AHRQ) Medicare Expenditures Panel Survey (MEPS) was used as the basis for adjustment methodology. MEPS is a data source representing health insurance coverage cost and utilization, and comprises several large-scale surveys of families, individuals, employers, and health care providers. Using these data, we created subset populations. We then used multivariate logistic regression to construct demographics and case-mix-based weights, which were applied to create a population sample that is similar to the national population. The weight was derived using the inverse probability of the weighting approach, as well as a raking mechanism. We compared the results with the projected number of persons in the US population in the same categories to examine the validity of the weights. **Results:** The following variables were used in the logistic regression: Age group, gender, race, location, income level and health status (Charlson Comorbidity Index scores and chronic condition diagnosis). Relative to MEPS data, patients included in the private insurance data were more likely to be male, older, to have a chronic condition, and to be white (p=0.0000). Adjusted weighted values for patients in the commercial group ranged from 15.47 to 36.36 (median: 16.91). Commercial insurance and MEPS data populations were similar in terms of their socioeconomic and clinical categories. As an outcomes measure, the predicted annual number of patients with prescription claims from private insurance data was 6 963 034. The annual number of statin users were predicted as 6 709 438 using weighted MEPS data. **Conclusion:** National projections of large-scale patient longitudinal databases require adjustment utilizing demographic factors and case-mix differences related to health status.http://jheor.scholasticahq.com/article/9828-creating-national-weights-for-a-patient-level-longitudinal-database.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Onur Baser
Li Wang
Jon Maguire
spellingShingle Onur Baser
Li Wang
Jon Maguire
Creating National Weights for a Patient-level Longitudinal Database
Journal of Health Economics and Outcomes Research
author_facet Onur Baser
Li Wang
Jon Maguire
author_sort Onur Baser
title Creating National Weights for a Patient-level Longitudinal Database
title_short Creating National Weights for a Patient-level Longitudinal Database
title_full Creating National Weights for a Patient-level Longitudinal Database
title_fullStr Creating National Weights for a Patient-level Longitudinal Database
title_full_unstemmed Creating National Weights for a Patient-level Longitudinal Database
title_sort creating national weights for a patient-level longitudinal database
publisher Columbia Data Analytics, LLC
series Journal of Health Economics and Outcomes Research
issn 2327-2236
description **Objective:** To create a nationally-representative estimate from longitudinal data by controlling for sociodemographic factors and health status. **Method:** The Agency for Healthcare Research and Quality’s (AHRQ) Medicare Expenditures Panel Survey (MEPS) was used as the basis for adjustment methodology. MEPS is a data source representing health insurance coverage cost and utilization, and comprises several large-scale surveys of families, individuals, employers, and health care providers. Using these data, we created subset populations. We then used multivariate logistic regression to construct demographics and case-mix-based weights, which were applied to create a population sample that is similar to the national population. The weight was derived using the inverse probability of the weighting approach, as well as a raking mechanism. We compared the results with the projected number of persons in the US population in the same categories to examine the validity of the weights. **Results:** The following variables were used in the logistic regression: Age group, gender, race, location, income level and health status (Charlson Comorbidity Index scores and chronic condition diagnosis). Relative to MEPS data, patients included in the private insurance data were more likely to be male, older, to have a chronic condition, and to be white (p=0.0000). Adjusted weighted values for patients in the commercial group ranged from 15.47 to 36.36 (median: 16.91). Commercial insurance and MEPS data populations were similar in terms of their socioeconomic and clinical categories. As an outcomes measure, the predicted annual number of patients with prescription claims from private insurance data was 6 963 034. The annual number of statin users were predicted as 6 709 438 using weighted MEPS data. **Conclusion:** National projections of large-scale patient longitudinal databases require adjustment utilizing demographic factors and case-mix differences related to health status.
url http://jheor.scholasticahq.com/article/9828-creating-national-weights-for-a-patient-level-longitudinal-database.pdf
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