| Literature DB >> 30124903 |
Jennifer A Pacheco1, Luke V Rasmussen2, Richard C Kiefer3, Thomas R Campion4, Peter Speltz5, Robert J Carroll5, Sarah C Stallings6, Huan Mo7, Monika Ahuja4, Guoqian Jiang3, Eric R LaRose8, Peggy L Peissig8, Ning Shang9, Barbara Benoit10, Vivian S Gainer10, Kenneth Borthwick11, Kathryn L Jackson12, Ambrish Sharma12, Andy Yizhou Wu12, Abel N Kho12, Dan M Roden13,14, Jyotishman Pathak4, Joshua C Denny5,13, William K Thompson12.
Abstract
Electronic health record (EHR) algorithms for defining patient cohorts are commonly shared as free-text descriptions that require human intervention both to interpret and implement. We developed the Phenotype Execution and Modeling Architecture (PhEMA, http://projectphema.org) to author and execute standardized computable phenotype algorithms. With PhEMA, we converted an algorithm for benign prostatic hyperplasia, developed for the electronic Medical Records and Genomics network (eMERGE), into a standards-based computable format. Eight sites (7 within eMERGE) received the computable algorithm, and 6 successfully executed it against local data warehouses and/or i2b2 instances. Blinded random chart review of cases selected by the computable algorithm shows PPV ≥90%, and 3 out of 5 sites had >90% overlap of selected cases when comparing the computable algorithm to their original eMERGE implementation. This case study demonstrates potential use of PhEMA computable representations to automate phenotyping across different EHR systems, but also highlights some ongoing challenges.Entities:
Mesh:
Year: 2018 PMID: 30124903 PMCID: PMC6213083 DOI: 10.1093/jamia/ocy101
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497