TY - JOUR AU - Sun, Yingcheng; Butler, Alex; Diallo, Ibrahim; Kim, Jae Hyun; Ta, Casey; Rogers, James R.; Liu, Hao; Weng, Chunhua TI - A Framework for Systematic Assessment of Clinical Trial Population Representativeness Using Electronic Health Records Data SN - 1869-0327 PY - 2021 JO - Appl Clin Inform JF - Applied Clinical Informatics LA - EN VL - 12 IS - 04 SP - 816 EP - 825 DA - 2021/09/08 KW - clinical trials KW - eligibility criteria KW - generalizability assessment KW - population representativeness KW - information extraction KW - natural language processing AB - Background Clinical trials are the gold standard for generating robust medical evidence, but clinical trial results often raise generalizability concerns, which can be attributed to the lack of population representativeness. The electronic health records (EHRs) data are useful for estimating the population representativeness of clinical trial study population.Objectives This research aims to estimate the population representativeness of clinical trials systematically using EHR data during the early design stage.Methods We present an end-to-end analytical framework for transforming free-text clinical trial eligibility criteria into executable database queries conformant with the Observational Medical Outcomes Partnership Common Data Model and for systematically quantifying the population representativeness for each clinical trial.Results We calculated the population representativeness of 782 novel coronavirus disease 2019 (COVID-19) trials and 3,827 type 2 diabetes mellitus (T2DM) trials in the United States respectively using this framework. With the use of overly restrictive eligibility criteria, 85.7% of the COVID-19 trials and 30.1% of T2DM trials had poor population representativeness.Conclusion This research demonstrates the potential of using the EHR data to assess the clinical trials population representativeness, providing data-driven metrics to inform the selection and optimization of eligibility criteria. PB - Georg Thieme Verlag KG DO - 10.1055/s-0041-1733846 UR - http://www.thieme-connect.com/products/ejournals/abstract/10.1055/s-0041-1733846 ER -