Xian Xuechang, Chang Angela, Xiang Yu-Tao, Liu Matthew Tingchi
Department of Communication, Faculty of Social Sciences, University of Macau, Macau SAR, China.
Department of Publicity, Zhaoqing University, Zhaoqing City, China.
Interact J Med Res. 2024 Aug 12;13:e53672. doi: 10.2196/53672.
Mental disorders have ranked among the top 10 prevalent causes of burden on a global scale. Generative artificial intelligence (GAI) has emerged as a promising and innovative technological advancement that has significant potential in the field of mental health care. Nevertheless, there is a scarcity of research dedicated to examining and understanding the application landscape of GAI within this domain.
This review aims to inform the current state of GAI knowledge and identify its key uses in the mental health domain by consolidating relevant literature.
Records were searched within 8 reputable sources including Web of Science, PubMed, IEEE Xplore, medRxiv, bioRxiv, Google Scholar, CNKI and Wanfang databases between 2013 and 2023. Our focus was on original, empirical research with either English or Chinese publications that use GAI technologies to benefit mental health. For an exhaustive search, we also checked the studies cited by relevant literature. Two reviewers were responsible for the data selection process, and all the extracted data were synthesized and summarized for brief and in-depth analyses depending on the GAI approaches used (traditional retrieval and rule-based techniques vs advanced GAI techniques).
In this review of 144 articles, 44 (30.6%) met the inclusion criteria for detailed analysis. Six key uses of advanced GAI emerged: mental disorder detection, counseling support, therapeutic application, clinical training, clinical decision-making support, and goal-driven optimization. Advanced GAI systems have been mainly focused on therapeutic applications (n=19, 43%) and counseling support (n=13, 30%), with clinical training being the least common. Most studies (n=28, 64%) focused broadly on mental health, while specific conditions such as anxiety (n=1, 2%), bipolar disorder (n=2, 5%), eating disorders (n=1, 2%), posttraumatic stress disorder (n=2, 5%), and schizophrenia (n=1, 2%) received limited attention. Despite prevalent use, the efficacy of ChatGPT in the detection of mental disorders remains insufficient. In addition, 100 articles on traditional GAI approaches were found, indicating diverse areas where advanced GAI could enhance mental health care.
This study provides a comprehensive overview of the use of GAI in mental health care, which serves as a valuable guide for future research, practical applications, and policy development in this domain. While GAI demonstrates promise in augmenting mental health care services, its inherent limitations emphasize its role as a supplementary tool rather than a replacement for trained mental health providers. A conscientious and ethical integration of GAI techniques is necessary, ensuring a balanced approach that maximizes benefits while mitigating potential challenges in mental health care practices.
精神障碍在全球范围内已位列导致负担的十大常见原因之中。生成式人工智能(GAI)已成为一项有前景的创新性技术进步,在精神卫生保健领域具有巨大潜力。然而,专门研究和理解GAI在该领域应用情况的研究却很匮乏。
本综述旨在通过整合相关文献,介绍GAI的现有知识状况,并确定其在精神卫生领域的关键用途。
在2013年至2023年期间,在8个著名来源中检索记录,包括科学网、PubMed、IEEE Xplore、medRxiv、bioRxiv、谷歌学术、中国知网和万方数据库。我们关注的是使用GAI技术促进精神健康的英文或中文原创实证研究。为了进行详尽搜索,我们还检查了相关文献引用的研究。两名评审员负责数据筛选过程,所有提取的数据根据所使用的GAI方法(传统检索和基于规则的技术与先进的GAI技术)进行综合和总结,以便进行简要和深入分析。
在对144篇文章的本次综述中,44篇(30.6%)符合详细分析的纳入标准。先进的GAI出现了六个关键用途:精神障碍检测、咨询支持、治疗应用、临床培训、临床决策支持和目标驱动优化。先进的GAI系统主要集中在治疗应用(n = 19,43%)和咨询支持(n = 13,30%),临床培训是最不常见的。大多数研究(n = 28,64%)广泛关注精神健康,而焦虑症(n = 1,2%)、双相情感障碍(n = 2,5%)、饮食失调(n = 1,2%)、创伤后应激障碍(n = 2,5%)和精神分裂症(n = 1,2%)等特定病症受到的关注有限。尽管被广泛使用,但ChatGPT在精神障碍检测方面的功效仍然不足。此外,还发现了100篇关于传统GAI方法的文章,表明先进的GAI可以在多个领域增强精神卫生保健。
本研究全面概述了GAI在精神卫生保健中的应用,为该领域未来的研究、实际应用和政策制定提供了有价值的指导。虽然GAI在增强精神卫生保健服务方面显示出前景,但其固有的局限性强调了它作为辅助工具的作用,而不是替代训练有素的精神卫生提供者。必须认真且符合道德地整合GAI技术,确保采取平衡的方法,在精神卫生保健实践中最大限度地提高益处,同时减轻潜在挑战。