School of Population Health, Faculty of Health Sciences, Curtin University, Perth, Australia.
Faculty of Health Sciences, enAble Institute, Curtin University, Perth, Australia.
Psychol Med. 2024 Apr;54(5):971-979. doi: 10.1017/S0033291723002714. Epub 2023 Sep 21.
Suicidal behaviors are prevalent among college students; however, students remain reluctant to seek support. We developed a predictive algorithm to identify students at risk of suicidal behavior and used telehealth to reduce subsequent risk.
Data come from everal waves of a prospective cohort study (2016-2022) of college students ( = 5454). All first-year students were invited to participate as volunteers. (Response rates range: 16.00-19.93%). A stepped-care approach was implemented: (i) all students received a comprehensive list of services; (ii) those reporting past 12-month suicidal ideation were directed to a safety planning application; (iii) those identified as high risk of suicidal behavior by the algorithm or reporting 12-month suicide attempt were contacted via telephone within 24-h of survey completion. Intervention focused on support/safety-planning, and referral to services for this high-risk group.
5454 students ranging in age from 17-36 (s.d. = 5.346) participated; 65% female. The algorithm identified 77% of students reporting subsequent suicidal behavior in the top 15% of predicted probabilities (Sensitivity = 26.26 [95% CI 17.93-36.07]; Specificity = 97.46 [95% CI 96.21-98.38], PPV = 53.06 [95% CI 40.16-65.56]; AUC range: 0.895 [95% CIs 0.872-0.917] to 0.966 [95% CIs 0.939-0.994]). High-risk students in the Intervention Cohort showed a 41.7% reduction in probability of suicidal behavior at 12-month follow-up compared to high-risk students in the Control Cohort.
Predictive risk algorithms embedded into universal screening, coupled with telehealth intervention, offer significant potential as a suicide prevention approach for students.
自杀行为在大学生中很普遍,但学生们仍然不愿意寻求支持。我们开发了一种预测算法来识别有自杀行为风险的学生,并使用远程医疗来降低后续风险。
数据来自一项针对大学生的前瞻性队列研究(2016-2022 年)的多个波次(=5454)。所有一年级学生都被邀请作为志愿者参加。(回应率范围:16.00-19.93%)。实施了一种分步护理方法:(一)所有学生都收到了一份全面的服务清单;(二)报告过去 12 个月有自杀意念的学生被引导使用安全规划应用程序;(三)通过算法识别为自杀行为高风险或报告 12 个月自杀企图的学生在调查完成后 24 小时内通过电话联系。干预措施侧重于为高风险群体提供支持/安全规划和转介服务。
共有 5454 名年龄在 17-36 岁之间的学生(s.d. = 5.346)参加了研究;其中 65%为女性。该算法在预测概率的前 15%中识别出了 77%报告随后自杀行为的学生(敏感度=26.26[95%CI 17.93-36.07];特异性=97.46[95%CI 96.21-98.38],PPV=53.06[95%CI 40.16-65.56];AUC 范围:0.895[95%CI 0.872-0.917]至 0.966[95%CI 0.939-0.994])。与对照组相比,干预组中的高风险学生在 12 个月随访时自杀行为的可能性降低了 41.7%。
嵌入到普遍筛查中的预测风险算法,加上远程医疗干预,为学生的自杀预防提供了巨大的潜力。