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机器学习对青少年自杀的预测性能:系统评价与荟萃分析

Predictive Performance of Machine Learning for Suicide in Adolescents: Systematic Review and Meta-Analysis.

作者信息

Liu Lingjiang, Li Zhiyuan, Hu Yaxin, Li Chunyou, He Shuhan, Zhang Shibei, Gao Jie, Zhu Huaiyi, Huang Guoping

机构信息

Department of Psychiatry, North Sichuan Medical College, Nanchong, China.

Sichuan Mental Health Center, Department of Psychiatry, The Third Hospital of Mianyang, Mianyang, China.

出版信息

J Med Internet Res. 2025 Jun 16;27:e73052. doi: 10.2196/73052.

Abstract

BACKGROUND

In the context of escalating global mental health challenges, adolescent suicide has become a critical public health concern. In current clinical practices, considerable challenges are encountered in the early identification of suicide risk, as traditional assessment tools demonstrate limited predictive accuracy. Recent advancements in machine learning (ML) present promising solutions for risk prediction. However, comprehensive evaluations of their efficacy in adolescent populations remain insufficient.

OBJECTIVE

This study systematically assessed the performance of ML-based prediction models across various suicide-related behaviors in adolescents, aiming to establish an evidence-based foundation for the development of clinically applicable risk assessment tools.

METHODS

This review assessed ML for predicting adolescent suicide-related behaviors. PubMed, Embase, Cochrane, and Web of Science databases were rigorously searched until April 20, 2024, and a multivariate prediction model was employed to assess the risk of bias. The c-index was used as the primary outcome measure to conduct a meta-analysis on nonsuicidal self-injury (NSSI), suicidal ideation, suicide attempts, suicide attempts combined with suicidal ideation, and suicide attempts combined with NSSI, evaluating their accuracy in the validation set.

RESULTS

A total of 42 studies published from 2018 to 2024 were included, encompassing 104 distinct ML models and 1,408,375 adolescents aged 11 to 20 years. The combined area under the receiver operating characteristic curve values for ML models in predicting NSSI, suicidal ideation, suicide attempts, suicide attempts combined with suicidal ideation, and suicide attempts combined with NSSI were 0.79 (95% CI 0.72-0.86), 0.77 (95% CI 0.71-0.83), 0.84 (95% CI 0.83-0.86), 0.82 (95% CI 0.79-0.84), and 0.75 (95% CI 0.73-0.76), respectively. The ML models demonstrated the highest combined sensitivity for suicide attempt prediction, with a value of 0.80 (95% CI 0.75-0.84), and the highest combined specificity for NSSI prediction, with a value of 0.96 (95% CI 0.94-0.99).

CONCLUSIONS

Our findings suggest that ML techniques exhibit promising predictive performance for forecasting suicide risk in adolescents, particularly in predicting suicide attempts. Notably, ensemble methods, such as random forest and extreme gradient boosting, showed superior performance across multiple outcome types. However, this study has several limitations, including the predominance of internal validation methods employed in the included literature, with few studies employing external validation, which may limit the generalizability of the results. Future research should incorporate larger and more diverse datasets and conduct external validation to improve the prediction capability of these models, ultimately contributing to the development of ML-based adolescent suicide risk prediction tools.

摘要

背景

在全球心理健康挑战不断升级的背景下,青少年自杀已成为一个关键的公共卫生问题。在当前的临床实践中,自杀风险的早期识别面临诸多挑战,因为传统评估工具的预测准确性有限。机器学习(ML)的最新进展为风险预测提供了有前景的解决方案。然而,对其在青少年人群中的疗效进行全面评估仍显不足。

目的

本研究系统评估了基于ML的预测模型在青少年各种自杀相关行为中的表现,旨在为开发临床适用的风险评估工具奠定循证基础。

方法

本综述评估了用于预测青少年自杀相关行为的ML。对PubMed、Embase、Cochrane和Web of Science数据库进行了严格检索,直至2024年4月20日,并采用多变量预测模型评估偏倚风险。以c指数作为主要结局指标,对非自杀性自伤(NSSI)、自杀意念、自杀未遂、自杀未遂合并自杀意念以及自杀未遂合并NSSI进行Meta分析,评估其在验证集中的准确性。

结果

共纳入2018年至2024年发表的42项研究,涵盖104个不同的ML模型以及1408375名11至20岁的青少年。ML模型在预测NSSI、自杀意念、自杀未遂、自杀未遂合并自杀意念以及自杀未遂合并NSSI时,受试者工作特征曲线下面积的合并值分别为0.79(95%CI 0.72 - 0.86)、0.77(95%CI 0.71 - 0.83)、0.84(95%CI 0.83 - 0.86)、0.82(95%CI 0.79 - 0.84)和0.75(95%CI 0.73 - 0.76)。ML模型在自杀未遂预测方面表现出最高的合并敏感性,值为0.80(95%CI 0.75 - 0.84),在NSSI预测方面表现出最高的合并特异性,值为0.96(95%CI 0.94 - 0.99)。

结论

我们的研究结果表明,ML技术在预测青少年自杀风险方面表现出有前景的预测性能,尤其是在预测自杀未遂方面。值得注意的是,诸如随机森林和极端梯度提升等集成方法在多种结局类型中表现出卓越性能。然而,本研究存在若干局限性,包括纳入文献中主要采用内部验证方法,很少有研究采用外部验证,这可能会限制结果的可推广性。未来的研究应纳入更大、更多样化的数据集并进行外部验证,以提高这些模型的预测能力,最终推动基于ML的青少年自杀风险预测工具的开发。

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