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Artificial intelligence in prediction of mental health disorders induced by the COVID-19 pandemic among health care workers

机译:人工智能在医护人员中预测由COVID-19大流行引起的精神疾病

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摘要

The coronavirus disease 2019 (COVID-19) pandemic and its immediate aftermath present a serious threat to the mental health of health care workers (HCWs), who may develop elevated rates of anxiety, depression, posttraumatic stress disorder, or even suicidal behaviors. Therefore, the aim of this article is to address the problem of prevention of HCWs’ mental health disorders by early prediction of individuals at a higher risk of later chronic mental health disorders due to high distress during the COVID-19 pandemic. The article proposes a methodology for prediction of mental health disorders induced by the pandemic, which includes: Phase 1) objective assessment of the intensity of HCWs’ stressor exposure, based on information retrieved from hospital archives and clinical records; Phase 2) subjective self-report assessment of stress during the COVID-19 pandemic experienced by HCWs and their relevant psychological traits; Phase 3) design and development of appropriate multimodal stimulation paradigms to optimally elicit specific neuro-physiological reactions; Phase 4) objective measurement and computation of relevant neuro-physiological predictor features based on HCWs’ reactions; and Phase 5) statistical and machine learning analysis of highly heterogeneous data sets obtained in previous phases. The proposed methodology aims to expand traditionally used subjective self-report predictors of mental health disorders with more objective metrics, which is aligned with the recent literature related to predictive modeling based on artificial intelligence. This approach is generally applicable to all those exposed to high levels of stress during the COVID-19 pandemic and might assist mental health practitioners to make diagnoses more quickly and accurately.
机译:2019年冠状病毒病(COVID-19)大流行及其直接后果严重威胁着医护人员(HCW)的心理健康,他们可能会出现焦虑症,抑郁症,创伤后应激障碍甚至自杀行为。因此,本文的目的是通过及早预测因COVID-19大流行引起的高危而在以后患慢性精神卫生疾病的风险较高的个体,从而解决预防HCW精神疾病的问题。这篇文章提出了一种预测由大流行引起的精神健康疾病的方法,其中包括:1)基于从医院档案和临床记录中检索到的信息,对医务工作者应激源暴露强度的客观评估;第2阶段)对医护人员经历的COVID-19大流行期间的压力及其相关的心理特征进行主观自我报告评估;第三阶段)设计和开发适当的多峰刺激范例,以最佳地引发特定的神经生理反应;阶段4)根据医护人员的反应进行客观的测量和相关神经生理预测指标的计算;和阶段5)对先前阶段获得的高度异构数据集进行统计和机器学习分析。拟议的方法旨在通过更客观的指标来扩展传统上使用的精神健康障碍的主观自我报告预测因子,这与基于人工智能的预测模型相关的最新文献一致。这种方法通常适用于在COVID-19大流行期间暴露于高压力下的所有患者,并且可以帮助精神卫生从业人员更快,更准确地进行诊断。

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