Leveraging unstructured electronic medical record notes to derive population-specific suicide risk models
- PMID: 35841702
- DOI: 10.1016/j.psychres.2022.114703
Leveraging unstructured electronic medical record notes to derive population-specific suicide risk models
Abstract
Electronic medical record (EMR)-based suicide risk prediction methods typically rely on analysis of structured variables such as demographics, visit history, and prescription data. Leveraging unstructured EMR notes may improve predictive accuracy by allowing access to nuanced clinical information. We utilized natural language processing (NLP) to analyze a large EMR note corpus to develop a data-driven suicide risk prediction model. We developed a matched case-control sample of U.S. Department of Veterans Affairs (VA) patients in 2015 and 2016. We randomly matched each case (all patients that died by suicide in that interval, n = 5029) with five controls (patients that remained alive). We processed note corpus using NLP methods and applied machine-learning classification algorithms to output. We calculated area under the curve (AUC) and risk tiers to determine predictive accuracy. NLP-derived models demonstrated strong predictive accuracy. Patients that scored within top 10% of risk model accounted for up to 29% of suicide decedents. NLP-derived model compares positively to other leading prediction methods. Our approach is highly implementable, only requiring access to text data and open-source software. Additional studies should evaluate ensemble models incorporating NLP-derived information alongside more typical structured variables.
Keywords: Electronic medical records; Natural language processing; Suicide prediction; Suicide prevention.
Copyright © 2022. Published by Elsevier B.V.
Publication types
MeSH terms
LinkOut - more resources
Full Text Sources
Medical
