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Validation of a claims-based algorithm to identify pregestational diabetes among pregnant women in the United States

Authors :
Krista F. Huybrechts
Helen Mogun
Brian T. Bateman
Mollie Wood
Yanmin Zhu
Ellen W. Seely
Szu-Ta Chen
Kathryn J. Gray
Elisabetta Patorno
Sonia Hernandez-Diaz
Source :
Epidemiology
Publication Year :
2021

Abstract

BACKGROUND Identifying pregestational diabetes in pregnant women using administrative claims databases is important for studies of the safety of antidiabetic treatment in pregnancy, but limited data are available on the validity of case-identifying algorithms. The purpose of this study was to evaluate the validity of an administrative claims-based algorithm to identify pregestational diabetes. METHODS Using a cohort of pregnant women nested within the Medicaid Analytic Extract (MAX) database, we developed an algorithm to identify pregestational type 1 and type 2 diabetes, distinct from gestational diabetes. Within a single large healthcare system in the Boston area, we identified women who delivered an infant between 2000 and 2010 and were covered by Medicaid, and linked their electronic health records to their Medicaid claims within MAX. Medical records were reviewed by two physicians blinded to the algorithm classification to confirm or rule out pregestational diabetes, with disagreements resolved by discussion. We calculated positive predictive values with 95% confidence intervals using the medical record as the reference standard. RESULTS We identified 49 pregnancies classified by the claims-based algorithm as pregestational diabetes that were linked to the electronic health records and had records available for review. The PPV for any pregestational diabetes was 92% [95% confidence interval (CI) 82%, 97%], type 2 diabetes 87% (68%, 95%), and type 1 diabetes 57% (37%, 75%). CONCLUSIONS The claims-based algorithm for pregestational diabetes and type 2 diabetes performed well; however, the PPV was low for type 1 diabetes.

Details

Language :
English
Database :
OpenAIRE
Journal :
Epidemiology
Accession number :
edsair.doi.dedup.....1a01b371fc10c782c9b2da89a4d01a56