Women's Health Sciences Division, National Center for Posttraumatic Stress Disorder (PTSD), VA Boston Healthcare System, 150 S. Huntington Ave, Boston, MA, 02130, USA.
Department of Psychiatry, Boston University Chobanian and Avedesian School of Medicine, Boston, MA, USA.
Soc Psychiatry Psychiatr Epidemiol. 2024 Feb;59(2):261-271. doi: 10.1007/s00127-023-02511-2. Epub 2023 Jun 8.
Identifying predictors of suicidal ideation (SI) is important to inform suicide prevention efforts, particularly among high-risk populations like military veterans. Although many studies have examined the contribution of psychopathology to veterans' SI, fewer studies have examined whether experiencing good psychosocial well-being with regard to multiple aspects of life can protect veterans from SI or evaluated whether SI risk prediction can be enhanced by considering change in life circumstances along with static factors.
The study drew from a longitudinal population-based sample of 7141 U.S. veterans assessed throughout the first three years after leaving military service. Machine learning methods (cross-validated random forests) were applied to examine the predictive utility of static and change-based well-being indicators to veterans' SI, as compared to psychopathology predictors.
Although psychopathology models performed better, the full set of well-being predictors demonstrated acceptable discrimination in predicting new-onset SI and accounted for approximately two-thirds of cases of SI in the top strata (quintile) of predicted risk. Greater engagement in health promoting behavior and social well-being were most important in predicting reduced SI risk, with several change-based predictors of SI identified but stronger associations observed for static as compared to change-based indicator sets as a whole.
Findings support the value of considering veterans' broader well-being in identifying individuals at risk for suicidal ideation and suggest the possibility that well-being promotion efforts may be useful in reducing suicide risk. Findings also highlight the need for additional attention to change-based predictors to better understand their potential value in identifying individuals at risk for SI.
识别自杀意念 (SI) 的预测因素对于指导自杀预防工作至关重要,特别是在军事退伍军人等高危人群中。尽管许多研究已经研究了精神病理学对退伍军人 SI 的贡献,但很少有研究研究生活中多个方面的良好心理社会幸福感是否可以保护退伍军人免受 SI 的影响,或者评估是否可以通过考虑生活环境的变化以及静态因素来增强 SI 风险预测。
该研究基于一项对 7141 名美国退伍军人的纵向基于人群的样本进行,这些退伍军人在离开军队后的头三年内接受了评估。机器学习方法(交叉验证随机森林)被应用于检查静态和基于变化的幸福感指标对退伍军人 SI 的预测效用,与精神病理学预测因素相比。
尽管精神病理学模型表现更好,但完整的幸福感预测因子集在预测新发生的 SI 方面具有可接受的区分能力,并解释了预测风险最高层(五分位数)中大约三分之二的 SI 病例。更积极地参与促进健康的行为和社会幸福感对预测 SI 风险降低最为重要,确定了几个基于变化的 SI 预测因子,但与整个静态和基于变化的指标集相比,观察到更强的关联。
研究结果支持在识别有自杀意念风险的个体时考虑退伍军人更广泛的幸福感的价值,并表明幸福感促进努力可能有助于降低自杀风险。研究结果还强调了需要更多关注基于变化的预测因子,以更好地了解它们在识别有 SI 风险的个体方面的潜在价值。