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Combining machine learning models and screening to enhance suicide risk identification
Novelene Goklish;
Emily E Haroz;
Rohan R Dayal;
ValentÃn Q Sierra;
Roy Adams;
Francene Larzelere;
Paul Rebman;
Jacob L Taylor
ABSTRACT
Native Americans experience disproportionately high suicide rates. While machine learning (ML) models leveraging electronic health records have emerged as promising tools for suicide risk identification, the optimal integration of these models with existing practices, including screening approaches remains unclear. This study evaluated parallel and serial testing strategies combining an ML risk model with the Ask Suicide Questionnaire (ASQ) to identify patients at risk for suicide attempts or deaths within 90 days of Emergency Department visits at an Indian Health Service facility. Through the Native-RISE project, we examined 26,896 ED visits among 7,897 Native American patients to determine how combined approaches compare to screening alone in terms of sensitivity, specificity, and predictive values.
Citation
Please cite as:
Goklish N, Haroz EE, Dayal RR, Sierra VQ, Adams R, Larzelere F, Rebman P, Taylor JL
Combining Machine Learning Models and Screening to Enhance Suicide Risk Identification for American Indian Patients: Retrospective Cohort Study