Identifying Patients with Significant Problems Related to Social Determinants of Health with Natural Language Processing — David A Dorr (2019) | RDL Network
Social and behavioral factors influence health but are infrequently recorded in electronic health records (EHRs). Here, we demonstrate that psychosocial vital signs can be extracted from EHR data. We processed structured and unstructured EHR data using expert-driven queries and Natural Language Processing (NLP), validating results through structured annotation. We found that although these vital signs are present in EHRs, with 681 structured entries identified for psychosocial concepts, NLP identified a nearly 90-fold increase in patients.
Huan Mo, William K. Thompson, Luke V. Rasmussen, Jennifer A. Pacheco, Guoqian Jiang, Richard C. Kiefer, Qian Zhu, Jie Xu, Enid Montague, David Carrell, Todd Lingren, Frank Mentch, Yizhao Ni, Firas Wehbe, Peggy Peissig, Gerard Tromp, Eric B. Larson, Christopher G. Chute, Jyotishman Pathak, Joshua C. Denny, Peter Speltz, Abel Kho, Gail P. Jarvik, Adrian Bejan,
Discussion(0)
No comments yet. Be the first to comment.