AI for Analyzing Mental Health Disorders Among Social Media Users: Quarter-Century Narrative Review of Progress and Challenges.

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
David Owen, Amy J Lynham, Sophie E Smart, Antonio F Pardiñas, Jose Camacho Collados
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引用次数: 0

Abstract

Background: Mental health disorders are currently the main contributor to poor quality of life and years lived with disability. Symptoms common to many mental health disorders lead to impairments or changes in the use of language, which are observable in the routine use of social media. Detection of these linguistic cues has been explored throughout the last quarter century, but interest and methodological development have burgeoned following the COVID-19 pandemic. The next decade may see the development of reliable methods for predicting mental health status using social media data. This might have implications for clinical practice and public health policy, particularly in the context of early intervention in mental health care.

Objective: This study aims to examine the state of the art in methods for predicting mental health statuses of social media users. Our focus is the development of artificial intelligence-driven methods, particularly natural language processing, for analyzing large volumes of written text. This study details constraints affecting research in this area. These include the dearth of high-quality public datasets for methodological benchmarking and the need to adopt ethical and privacy frameworks acknowledging the stigma experienced by those with a mental illness.

Methods: A Google Scholar search yielded peer-reviewed articles dated between 1999 and 2024. We manually grouped the articles by 4 primary areas of interest: datasets on social media and mental health, methods for predicting mental health status, longitudinal analyses of mental health, and ethical aspects of the data and analysis of mental health. Selected articles from these groups formed our narrative review.

Results: Larger datasets with precise dates of participants' diagnoses are needed to support the development of methods for predicting mental health status, particularly in severe disorders such as schizophrenia. Inviting users to donate their social media data for research purposes could help overcome widespread ethical and privacy concerns. In any event, multimodal methods for predicting mental health status appear likely to provide advancements that may not be achievable using natural language processing alone.

Conclusions: Multimodal methods for predicting mental health status from voice, image, and video-based social media data need to be further developed before they may be considered for adoption in health care, medical support, or as consumer-facing products. Such methods are likely to garner greater public confidence in their efficacy than those that rely on text alone. To achieve this, more high-quality social media datasets need to be made available and privacy concerns regarding the use of these data must be formally addressed. A social media platform feature that invites users to share their data upon publication is a possible solution. Finally, a review of literature studying the effects of social media use on a user's depression and anxiety is merited.

分析社交媒体用户心理健康障碍的人工智能:四分之一世纪进展与挑战叙事回顾》。
背景:目前,精神障碍是导致生活质量低下和残疾生活年限的主要原因。许多精神疾病的常见症状会导致语言使用的障碍或改变,这在社交媒体的日常使用中可以观察到。在过去的四分之一世纪里,人们一直在探索如何检测这些语言线索,但在 COVID-19 大流行之后,人们的兴趣和方法论的发展突飞猛进。在下一个十年中,可能会开发出利用社交媒体数据预测心理健康状况的可靠方法。这可能会对临床实践和公共卫生政策产生影响,尤其是在精神卫生保健的早期干预方面:本研究旨在考察社交媒体用户心理健康状况预测方法的最新进展。我们的重点是开发人工智能驱动的方法,尤其是自然语言处理方法,用于分析大量的书面文本。本研究详细介绍了影响该领域研究的制约因素。这些制约因素包括:缺乏高质量的公共数据集来进行方法学基准测试,以及需要采用伦理和隐私框架来承认精神疾病患者所经历的耻辱感:通过谷歌学术搜索,我们找到了 1999 年至 2024 年间经同行评审的文章。我们按照四个主要关注领域对文章进行了人工分组:社交媒体和心理健康数据集、心理健康状况预测方法、心理健康纵向分析以及心理健康数据和分析的伦理方面。我们从这几组文章中选取了部分文章进行叙述性综述:我们需要更大规模的数据集,并精确记录参与者的诊断日期,以支持心理健康状况预测方法的开发,尤其是对精神分裂症等严重疾病的预测。邀请用户捐献他们的社交媒体数据用于研究目的,有助于克服普遍存在的道德和隐私问题。无论如何,预测精神健康状况的多模态方法似乎有可能带来仅靠自然语言处理无法实现的进步:结论:从基于语音、图像和视频的社交媒体数据中预测心理健康状况的多模态方法需要进一步开发,然后才能考虑在医疗保健、医疗支持或面向消费者的产品中采用。与仅依赖文字的方法相比,这些方法可能会赢得更多公众对其有效性的信任。要实现这一目标,需要提供更多高质量的社交媒体数据集,并正式解决使用这些数据的隐私问题。社交媒体平台邀请用户在发布数据时分享数据的功能是一个可行的解决方案。最后,有必要回顾一下研究社交媒体的使用对用户抑郁和焦虑的影响的文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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