布里氏评分
心理学
自杀未遂
召回
自杀风险
自杀预防
机器学习
毒物控制
人为因素与人体工程学
人工智能
伤害预防
认知心理学
编码(集合论)
计算机科学
医疗急救
医学
集合(抽象数据类型)
程序设计语言
作者
Colin G. Walsh,Jessica D. Ribeiro,Joseph C. Franklin
标识
DOI:10.1177/2167702617691560
摘要
Traditional approaches to the prediction of suicide attempts have limited the accuracy and scale of risk detection for these dangerous behaviors. We sought to overcome these limitations by applying machine learning to electronic health records within a large medical database. Participants were 5,167 adult patients with a claim code for self-injury (i.e., ICD-9, E95x); expert review of records determined that 3,250 patients made a suicide attempt (i.e., cases), and 1,917 patients engaged in self-injury that was nonsuicidal, accidental, or nonverifiable (i.e., controls). We developed machine learning algorithms that accurately predicted future suicide attempts (AUC = 0.84, precision = 0.79, recall = 0.95, Brier score = 0.14). Moreover, accuracy improved from 720 days to 7 days before the suicide attempt, and predictor importance shifted across time. These findings represent a step toward accurate and scalable risk detection and provide insight into how suicide attempt risk shifts over time.
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