Khushbu Khatri Park, Mohammad Saleem, Mohammed Ali Al-Garadi, Abdulaziz Ahmed
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Included peer-reviewed studies reported using a method or application of ML in an MH context and focused on the populations of interest. We did not have date cutoffs. Publications were excluded if they were narrative or did not exclusively focus on a minority population from the respective country. Data including study context, the focus of mental healthcare, sample, data type, type of ML algorithm used, and algorithm performance were extracted from each.</p><p><strong>Results: </strong>Ultimately, 13 peer-reviewed publications were included. All the articles were published within the last 6 years, and over half of them studied populations within the US. Most reviewed studies used supervised learning to explain or predict MH outcomes. Some publications used up to 16 models to determine the best predictive power. Almost half of the included publications did not discuss their cross-validation method.</p><p><strong>Conclusions: </strong>The included studies provide proof-of-concept for the potential use of ML algorithms to address MH concerns in these special populations, few as they may be. 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引用次数: 0
摘要
背景:机器学习(ML)在心理健康(MH)研究中的应用日益增多,尤其是随着新的、更复杂的数据类型可供分析。通过审查已发表的文献,本综述旨在探讨当前机器学习在心理健康研究中的应用,尤其关注其在研究移民、难民、移民以及少数种族和少数民族等多元化弱势群体中的应用:从 2022 年 10 月到 2024 年 3 月,对 Google Scholar、EMBASE 和 PubMed 进行了查询。使用布尔运算符将与 ML 相关、与 MH 相关以及重点人群相关的检索词串在一起。同时还进行了后向参考文献搜索。纳入的同行评议研究报告了在 MH 背景下使用 ML 的方法或应用,并侧重于相关人群。我们没有设定日期截止日期。如果研究是叙述性的,或者不是专门针对相关国家的少数群体,则排除在外。从每篇文献中提取的数据包括研究背景、精神卫生保健的重点、样本、数据类型、所使用的 ML 算法类型以及算法性能:结果:最终纳入了 13 篇经同行评审的出版物。所有文章都是在过去 6 年内发表的,其中一半以上的研究对象是美国人。大多数综述研究使用监督学习来解释或预测 MH 结果。一些出版物使用了多达 16 个模型来确定最佳预测能力。几乎一半的收录出版物没有讨论交叉验证方法:所纳入的研究为可能使用 ML 算法解决这些特殊人群的 MH 问题提供了概念证明,尽管这些人可能很少。我们的综述发现,这些用于分类和预测 MH 疾病的模型的临床应用仍在发展之中。
Machine learning applications in studying mental health among immigrants and racial and ethnic minorities: an exploratory scoping review.
Background: The use of machine learning (ML) in mental health (MH) research is increasing, especially as new, more complex data types become available to analyze. By examining the published literature, this review aims to explore the current applications of ML in MH research, with a particular focus on its use in studying diverse and vulnerable populations, including immigrants, refugees, migrants, and racial and ethnic minorities.
Methods: From October 2022 to March 2024, Google Scholar, EMBASE, and PubMed were queried. ML-related, MH-related, and population-of-focus search terms were strung together with Boolean operators. Backward reference searching was also conducted. Included peer-reviewed studies reported using a method or application of ML in an MH context and focused on the populations of interest. We did not have date cutoffs. Publications were excluded if they were narrative or did not exclusively focus on a minority population from the respective country. Data including study context, the focus of mental healthcare, sample, data type, type of ML algorithm used, and algorithm performance were extracted from each.
Results: Ultimately, 13 peer-reviewed publications were included. All the articles were published within the last 6 years, and over half of them studied populations within the US. Most reviewed studies used supervised learning to explain or predict MH outcomes. Some publications used up to 16 models to determine the best predictive power. Almost half of the included publications did not discuss their cross-validation method.
Conclusions: The included studies provide proof-of-concept for the potential use of ML algorithms to address MH concerns in these special populations, few as they may be. Our review finds that the clinical application of these models for classifying and predicting MH disorders is still under development.