Federation University, School of Science, Engineering & Information Technology,Melbourne,Australia.
Deakin University, Centre for Social and Early Emotional Development, School of Psychology, Faculty of Health,Geelong,Australia.
Psychol Med. 2019 Jul;49(9):1426-1448. doi: 10.1017/S0033291719000151. Epub 2019 Feb 12.
This paper aims to synthesise the literature on machine learning (ML) and big data applications for mental health, highlighting current research and applications in practice.
We employed a scoping review methodology to rapidly map the field of ML in mental health. Eight health and information technology research databases were searched for papers covering this domain. Articles were assessed by two reviewers, and data were extracted on the article's mental health application, ML technique, data type, and study results. Articles were then synthesised via narrative review.
Three hundred papers focusing on the application of ML to mental health were identified. Four main application domains emerged in the literature, including: (i) detection and diagnosis; (ii) prognosis, treatment and support; (iii) public health, and; (iv) research and clinical administration. The most common mental health conditions addressed included depression, schizophrenia, and Alzheimer's disease. ML techniques used included support vector machines, decision trees, neural networks, latent Dirichlet allocation, and clustering.
Overall, the application of ML to mental health has demonstrated a range of benefits across the areas of diagnosis, treatment and support, research, and clinical administration. With the majority of studies identified focusing on the detection and diagnosis of mental health conditions, it is evident that there is significant room for the application of ML to other areas of psychology and mental health. The challenges of using ML techniques are discussed, as well as opportunities to improve and advance the field.
本文旨在综合机器学习(ML)和大数据在心理健康领域的应用文献,重点介绍当前实践中的研究和应用。
我们采用范围综述方法快速绘制心理健康领域的 ML 领域图。在八个健康和信息技术研究数据库中搜索涵盖该领域的论文。由两名审稿人评估文章,并提取文章的心理健康应用、ML 技术、数据类型和研究结果的数据。然后通过叙述性综述对文章进行综合。
确定了 300 篇专注于将 ML 应用于心理健康的论文。文献中出现了四个主要的应用领域,包括:(i)检测和诊断;(ii)预后、治疗和支持;(iii)公共卫生;和(iv)研究和临床管理。文献中最常涉及的心理健康状况包括抑郁症、精神分裂症和阿尔茨海默病。使用的 ML 技术包括支持向量机、决策树、神经网络、潜在狄利克雷分配和聚类。
总体而言,ML 在心理健康领域的应用在诊断、治疗和支持、研究和临床管理等方面都显示出了一系列的好处。已确定的大多数研究都集中在心理健康状况的检测和诊断上,显然,ML 在心理学和心理健康的其他领域也有很大的应用空间。本文讨论了使用 ML 技术的挑战,以及改进和推进该领域的机会。