Accelerating Chart Review Using Automated Methods on Electronic Health Record Data for Postoperative Complications

Zhen Hu, Genevieve B Melton-Meaux, Nathan D. Moeller, Elliot G. Arsoniadis, Yan Wang, Mary Kwaan, Eric H Jensen, Gyorgy J Simon

Research output: Contribution to journalArticlepeer-review

25 Scopus citations

Abstract

Manual Chart Review (MCR) is an important but labor-intensive task for clinical research and quality improvement. In this study, aiming to accelerate the process of extracting postoperative outcomes from medical charts, we developed an automated postoperative complications detection application by using structured electronic health record (EHR) data. We applied several machine learning methods to the detection of commonly occurring complications, including three subtypes of surgical site infection, pneumonia, urinary tract infection, sepsis, and septic shock. Particularly, we applied one single-task and five multi-task learning methods and compared their detection performance. The models demonstrated high detection performance, which ensures the feasibility of accelerating MCR. Specifically, one of the multi-task learning methods, propensity weighted observations (PWO) demonstrated the highest detection performance, with single-task learning being a close second.

Original languageEnglish (US)
Pages (from-to)1822-1831
Number of pages10
JournalAMIA ... Annual Symposium proceedings. AMIA Symposium
Volume2016
StatePublished - 2016

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