Metri Priya, Kukreja Swetta
Amity School of Engineering and Technology, Amity University, Mumbai, Maharashtra, India.
MethodsX. 2025 Jun 19;15:103454. doi: 10.1016/j.mex.2025.103454. eCollection 2025 Dec.
Suicidal ideation prevalence among students is a growing concern that requires urgent attention. This review systematically analyzes 28 studies on the application of machine learning techniques for the early detection of suicidal ideation. Among these, Random Forest and SVM emerged as the most commonly used algorithms, featured in 35 % and 27 % of studies respectively. Reported model accuracies ranged from 70 % to 95 %, with deep learning approaches showing slightly higher average precision and recall values. Most studies relied on survey-based data (68 %) and employed PHQ-9 or GAD-7 scales for input features. This review highlights existing gaps in cross-cultural generalization and calls for the development of interpretable and hybrid models for improved risk prediction.This review aims to conduct a comprehensive examination of the etiological factors contributing to the development of suicidal thoughts in students, with the goal of enabling early detection through the application of AI and machine learning techniques.This paper aims to review the current state-of-the-art, highlight the limitations, and emphasizes the need to shift toward hybrid and ensemble deep learning models, which have shown early promise but lack extensive analysis in current literature.
学生中自杀意念的流行率是一个日益受到关注的问题,需要紧急关注。本综述系统地分析了28项关于应用机器学习技术早期检测自杀意念的研究。其中,随机森林和支持向量机是最常用的算法,分别在35%和27%的研究中出现。报告的模型准确率在70%至95%之间,深度学习方法的平均精度和召回值略高。大多数研究依赖基于调查的数据(68%),并采用PHQ-9或GAD-7量表作为输入特征。本综述强调了跨文化泛化方面存在的差距,并呼吁开发可解释的混合模型以改进风险预测。本综述旨在全面考察导致学生产生自杀念头的病因,目标是通过应用人工智能和机器学习技术实现早期检测。本文旨在回顾当前的技术现状,突出局限性,并强调需要转向混合和集成深度学习模型,这些模型已初现成效,但在当前文献中缺乏广泛分析。