Dagani Jessica, Buizza Chiara, Ferrari Clarissa, Ghilardi Alberto
Department of Clinical and Experimental Sciences, Section of Clinical and Dynamic Psychology, University of Brescia, Viale Europa, 11, 25123, Brescia, Italy.
Istituto Ospedaliero Fondazione Poliambulanza, Via Bissolati, 57, 25124, Brescia, Italy.
Psicol Reflex Crit. 2024 May 17;37(1):19. doi: 10.1186/s41155-024-00301-6.
Suicide is one of the leading causes of death among young people and university students. Research has identified numerous socio-demographic, relational, and clinical factors as potential predictors of suicide risk, and machine learning techniques have emerged as promising ways to improve risk assessment.
This cross-sectional observational study aimed at identifying predictors and college student profiles associated with suicide risk through a machine learning approach.
A total of 3102 students were surveyed regarding potential suicide risk, socio-demographic characteristics, academic career, and physical/mental health and well-being. The classification tree technique and the multiple correspondence analysis were applied to define students' profiles in terms of suicide risk and to detect the main predictors of such a risk.
Among the participating students, 7% showed high potential suicide risk and 3.8% had a history of suicide attempts. Psychological distress and use of alcohol/substance were prominent predictors of suicide risk contributing to define the profile of high risk of suicide: students with significant psychological distress, and with medium/high-risk use of alcohol and psychoactive substances. Conversely, low psychological distress and low-risk use of alcohol and substances, together with religious practice, represented the profile of students with low risk of suicide.
Machine learning techniques could hold promise for assessing suicide risk in college students, potentially leading to the development of more effective prevention programs. These programs should address both risk and protective factors and be tailored to students' needs and to the different categories of risk.
自杀是年轻人和大学生死亡的主要原因之一。研究已确定众多社会人口统计学、人际关系和临床因素为自杀风险的潜在预测因素,而机器学习技术已成为改善风险评估的有前景的方法。
这项横断面观察性研究旨在通过机器学习方法确定与自杀风险相关的预测因素和大学生特征。
对总共3102名学生进行了关于潜在自杀风险、社会人口统计学特征、学业生涯以及身心健康和幸福感的调查。应用分类树技术和多重对应分析来根据自杀风险定义学生特征,并检测此类风险的主要预测因素。
在参与调查的学生中,7%表现出较高的潜在自杀风险,3.8%有自杀未遂史。心理困扰以及酒精/物质的使用是自杀风险的突出预测因素,有助于定义自杀高风险特征:有明显心理困扰、酒精和精神活性物质中度/高风险使用的学生。相反,低心理困扰、酒精和物质低风险使用以及宗教活动代表自杀低风险学生的特征。
机器学习技术有望用于评估大学生的自杀风险,可能会促成更有效的预防方案的制定。这些方案应同时关注风险因素和保护因素,并根据学生的需求和不同风险类别进行量身定制。