Department of Computer Science and Engineering, Washington University in St. Louis, St. Louis, Missouri.
Department of Psychiatry, Washington University School of Medicine, St. Louis, Missouri.
Int J Eat Disord. 2019 Oct;52(10):1150-1156. doi: 10.1002/eat.23148. Epub 2019 Aug 5.
Online forums allow people to semi-anonymously discuss their struggles, often leading to greater honesty. This characteristic makes forums valuable for identifying users in need of immediate help from mental health professionals. Because it would be impractical to manually review every post on a forum to identify users in need of urgent help, there may be value to developing algorithms for automatically detecting posts reflecting a heightened risk of imminent plans to engage in disordered behaviors.
Five natural language processing techniques (tools to perform computational text analysis) were used on a data set of 4,812 posts obtained from six eating disorder-related subreddits. Two licensed clinical psychologists labeled 53 of these posts, deciding whether or not the content of the post indicated that its author needed immediate professional help. The remaining 4,759 posts were unlabeled.
Each of the five techniques ranked the 50 posts most likely to be intervention-worthy (the "top-50"). The two most accurate detection techniques had an error rate of 4% for their respective top-50.
This article demonstrates the feasibility of automatically detecting-with only a few dozen labeled examples-the posts of individuals in need of immediate mental health support for an eating disorder.
在线论坛允许人们半匿名地讨论他们的挣扎,这往往会带来更高的坦诚度。这种特点使得论坛在识别需要心理健康专业人员立即帮助的用户方面具有价值。由于人工审查论坛上的每一个帖子以识别需要紧急帮助的用户是不切实际的,因此开发自动检测反映出有立即实施紊乱行为计划的高风险帖子的算法可能具有价值。
五种自然语言处理技术(用于执行计算文本分析的工具)用于从六个与饮食失调相关的子版块中获取的 4812 个帖子的数据集。两名持照临床心理学家对其中的 53 个帖子进行了标记,决定帖子的内容是否表明其作者需要立即得到专业帮助。其余的 4759 个帖子没有标记。
五种技术中的每一种都对最有可能需要干预的 50 个帖子进行了排名(“前 50 名”)。两个最准确的检测技术的错误率为各自的前 50 名的 4%。
本文证明了仅使用几十个标记示例自动检测需要立即进行饮食失调心理健康支持的个人帖子的可行性。