心理健康中的机器学习

Anja Thieme, D. Belgrave, Gavin Doherty
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引用次数: 124

摘要

精神疾病的高患病率和对有效精神保健的需求,加上人工智能的最新进展,导致人们越来越多地探索机器学习(ML)领域如何协助检测、诊断和治疗精神健康问题。机器学习技术可能为学习人类行为模式提供新的途径;确定心理健康症状和风险因素;对疾病进展进行预测;个性化和优化治疗。尽管在心理健康领域使用机器学习有潜在的机会,但这是一个新兴的研究领域,开发有效的、可在实践中实现的机器学习应用程序与一系列复杂的、相互交织的挑战息息相关。为了指导未来的研究并确定在这一重要领域推进发展的新方向,本文从计算和HCI文献中介绍并系统回顾了当前关于基于心理社会的心理健康状况的ML工作。对纳入分析的54篇论文进行了定量综合和定性叙述综述,揭示了这一领域的共同趋势、差距和挑战。在讨论我们的研究结果时,我们(i)反思了当前机器学习在心理健康方面的最新进展,(ii)为研究和开发中以人为中心和多学科方法的更强整合提供了具体建议,(iii)请更多地考虑机器学习模型和干预措施可能产生的潜在深远的个人、社会和伦理影响,如果它们在现实世界的心理健康环境中得到广泛、成功的采用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Mental Health
High prevalence of mental illness and the need for effective mental health care, combined with recent advances in AI, has led to an increase in explorations of how the field of machine learning (ML) can assist in the detection, diagnosis and treatment of mental health problems. ML techniques can potentially offer new routes for learning patterns of human behavior; identifying mental health symptoms and risk factors; developing predictions about disease progression; and personalizing and optimizing therapies. Despite the potential opportunities for using ML within mental health, this is an emerging research area, and the development of effective ML-enabled applications that are implementable in practice is bound up with an array of complex, interwoven challenges. Aiming to guide future research and identify new directions for advancing development in this important domain, this article presents an introduction to, and a systematic review of, current ML work regarding psycho-socially based mental health conditions from the computing and HCI literature. A quantitative synthesis and qualitative narrative review of 54 papers that were included in the analysis surfaced common trends, gaps, and challenges in this space. Discussing our findings, we (i) reflect on the current state-of-the-art of ML work for mental health, (ii) provide concrete suggestions for a stronger integration of human-centered and multi-disciplinary approaches in research and development, and (iii) invite more consideration of the potentially far-reaching personal, social, and ethical implications that ML models and interventions can have, if they are to find widespread, successful adoption in real-world mental health contexts.
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