Yuqi Wu, Kaining Mao, Liz Dennett, Yanbo Zhang, Jie Chen
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引用次数: 0
摘要
由于创伤后应激障碍(PTSD)的临床和生物学异质性,它经常被诊断不足。在世界范围内,许多人在获得准确及时的诊断方面面临障碍。机器学习(ML)技术已被用于早期评估和结果预测,以应对这些挑战。本文旨在开展一项系统性综述,研究 ML 是否是诊断创伤后应激障碍的有效方法。在这篇综述中,我们采用了统计方法来综合所包含的研究成果,并就实施 ML 任务的关键注意事项提供指导。这些考虑因素包括:(a) 为可用数据集选择最合适的 ML 模型;(b) 根据所选诊断方法确定最佳 ML 特征;(c) 根据数据分布确定适当的样本大小;以及 (d) 使用合适的验证工具来评估所选 ML 模型的性能。我们筛选了 3186 项研究,并根据资格标准将 41 篇文章纳入最终综述。我们在此报告,对所纳入研究的分析凸显了人工智能(AI)在创伤后应激障碍诊断中的潜力。然而,在实际临床环境中实施基于人工智能的诊断系统需要解决几个限制因素,包括适当的监管、伦理考虑和患者隐私保护。
Systematic review of machine learning in PTSD studies for automated diagnosis evaluation
Post-traumatic stress disorder (PTSD) is frequently underdiagnosed due to its clinical and biological heterogeneity. Worldwide, many people face barriers to accessing accurate and timely diagnoses. Machine learning (ML) techniques have been utilized for early assessments and outcome prediction to address these challenges. This paper aims to conduct a systematic review to investigate if ML is a promising approach for PTSD diagnosis. In this review, statistical methods were employed to synthesize the outcomes of the included research and provide guidance on critical considerations for ML task implementation. These included (a) selection of the most appropriate ML model for the available dataset, (b) identification of optimal ML features based on the chosen diagnostic method, (c) determination of appropriate sample size based on the distribution of the data, and (d) implementation of suitable validation tools to assess the performance of the selected ML models. We screened 3186 studies and included 41 articles based on eligibility criteria in the final synthesis. Here we report that the analysis of the included studies highlights the potential of artificial intelligence (AI) in PTSD diagnosis. However, implementing AI-based diagnostic systems in real clinical settings requires addressing several limitations, including appropriate regulation, ethical considerations, and protection of patient privacy.