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机器学习模型在预测自杀意念、自杀尝试和自杀死亡方面的性能:一项荟萃分析和系统评价。

The performance of machine learning models in predicting suicidal ideation, attempts, and deaths: A meta-analysis and systematic review.

机构信息

Black Dog Institute, University of New South Wales, Hospital Road, Randwick NSW, 2031, Australia.

Black Dog Institute, University of New South Wales, Hospital Road, Randwick NSW, 2031, Australia.

出版信息

J Psychiatr Res. 2022 Nov;155:579-588. doi: 10.1016/j.jpsychires.2022.09.050. Epub 2022 Sep 29.

Abstract

Research has posited that machine learning could improve suicide risk prediction models, which have traditionally performed poorly. This systematic review and meta-analysis evaluated the performance of machine learning models in predicting longitudinal outcomes of suicide-related outcomes of ideation, attempt, and death and examines outcome, data, and model types as potential covariates of model performance. Studies were extracted from PubMed, Web of Science, Embase, and PsycINFO. A bivariate mixed effects meta-analysis and meta-regression analyses were performed for studies using machine learning to predict future events of suicidal ideation, attempts, and/or deaths. Risk of bias was assessed for each study using an adaptation of the Prediction model Risk Of Bias Assessment Tool. Narrative review included 56 studies, and analyses examined 54 models from 35 studies. The models achieved a very good pooled AUC of 0.86, sensitivity of 0.66 (95% CI [0.60, 0.72)], and specificity of 0.87 (95% CI [0.84, 0.90]). Pooled AUCs for ideation, attempt, and death were similar at 0.88, 0.87, and 0.84 respectively. Model performance was highly varied; however, meta-regressions did not provide evidence that performance varied by outcome, data, or model types. Findings suggest that machine learning has the potential to improve suicide risk detection, with pooled estimates of machine learning performance comparing favourably to performance of traditional suicide prediction models. However, more studies with lower risk of bias are necessary to improve the application of machine learning in suicidology.

摘要

研究提出,机器学习可以改进传统上表现不佳的自杀风险预测模型。本系统评价和荟萃分析评估了机器学习模型在预测与自杀意念、尝试和死亡相关的纵向结局方面的表现,并探讨了结局、数据和模型类型作为模型性能的潜在协变量。研究从 PubMed、Web of Science、Embase 和 PsycINFO 中提取。对使用机器学习预测未来自杀意念、尝试和/或死亡事件的研究进行了双变量混合效应荟萃分析和荟萃回归分析。使用预测模型风险偏倚评估工具的改编版对每项研究的偏倚风险进行了评估。叙述性综述包括 56 项研究,分析中考察了 35 项研究中的 54 个模型。这些模型的汇总 AUC 为 0.86,灵敏度为 0.66(95%CI[0.60,0.72]),特异性为 0.87(95%CI[0.84,0.90])。意念、尝试和死亡的汇总 AUC 分别为 0.88、0.87 和 0.84。模型性能差异很大;然而,荟萃回归并未提供证据表明性能因结局、数据或模型类型而异。研究结果表明,机器学习有可能改善自杀风险检测,机器学习的汇总估计性能与传统自杀预测模型的性能相比具有优势。然而,需要更多低偏倚风险的研究来提高机器学习在自杀学中的应用。

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