Department of Psychology, University of Illinois Urbana-Champaign, Champaign, IL, 61820, USA.
Res Child Adolesc Psychopathol. 2023 Sep;51(9):1327-1341. doi: 10.1007/s10802-023-01068-7. Epub 2023 May 24.
Adolescent suicide continues to rise despite burgeoning research on interpersonal risk for suicide. This may reflect challenges in applying developmental psychopathology research into clinical settings. In response, the present study used a translational analytic plan to examine indices of social well-being most accurate and statistically fair for indexing adolescent suicide. Data from the National Comorbidity Survey Replication Adolescent Supplement were used. Adolescents aged 13-17 (N = 9,900) completed surveys on traumatic events, current relationships, and suicidal thoughts and attempts. Both frequentist (e.g., receiver operating characteristics) and Bayesian (e.g., Diagnostic Likelihood Ratios; DLRs) techniques provided insight into classification, calibration, and statistical fairness. Final algorithms were compared to a machine learning-informed algorithm. Overall, parental care and family cohesion best classified suicidal ideation, while these indices and school engagement best classified attempts. Multi-indicator algorithms suggested adolescents at high risk across these indices were approximately 3-times more likely to engage in ideation (DLR = 3.26) and 5-times more likely to engage in attempts (DLR = 4.53). Although equitable for attempts, models for ideation underperformed in non-White adolescents. Supplemental, machine learning-informed algorithms performed similarly, suggesting non-linear and interactive effects did not improve model performance. Future directions for interpersonal theories for suicide are discussed and clinical implications for suicide screening are demonstrated.
尽管针对自杀的人际风险的研究不断增加,但青少年自杀仍在持续上升。这可能反映了将发展心理病理学研究应用于临床环境的挑战。为此,本研究使用了一种转化分析计划,以检查最准确和统计公平的社交幸福感指标,以评估青少年自杀。本研究的数据来自国家共病调查再调查青少年补充调查。年龄在 13-17 岁的青少年(N=9900)完成了关于创伤事件、当前关系和自杀想法和企图的调查。频率论(例如,接收者操作特征)和贝叶斯(例如,诊断似然比;DLR)技术都深入了解了分类、校准和统计公平性。最终算法与机器学习启发的算法进行了比较。总体而言,父母关爱和家庭凝聚力最能区分自杀意念,而这些指数和学校参与度最能区分自杀企图。多指标算法表明,在这些指数中处于高风险的青少年进行自杀意念的可能性大约增加了 3 倍(DLR=3.26),进行自杀企图的可能性增加了 5 倍(DLR=4.53)。虽然对企图的模型是公平的,但对意念的模型在非裔美国青少年中表现不佳。补充的、基于机器学习的算法表现相似,表明非线性和交互效应并没有提高模型性能。讨论了人际自杀理论的未来方向,并展示了自杀筛查的临床意义。