Storman Dawid, Jemioło Paweł, Swierz Mateusz Jan, Sawiec Zuzanna, Antonowicz Ewa, Prokop-Dorner Anna, Gotfryd-Burzyńska Marcelina, Bala Malgorzata M
Chair of Epidemiology and Preventive Medicine, Department of Hygiene and Dietetics, Jagiellonian University Medical College, Krakow, Poland.
AGH University of Science and Technology, Krakow, Poland.
JMIR Ment Health. 2022 Dec 5;9(12):e36056. doi: 10.2196/36056.
An increasing number of online support groups are providing advice and information on topics related to mental health.
This study aimed to investigate the needs that internet users meet through peer-to-peer interactions.
A search of 4 databases was performed until August 15, 2022. Qualitative or mixed methods (ie, qualitative and quantitative) studies investigating interactions among internet users with mental disorders were included. The φ coefficient was used and machine learning techniques were applied to investigate the associations between the type of mental disorders and web-based interactions linked to seeking help or support.
Of the 13,098 identified records, 44 studies (analyzed in 54 study-disorder pairs) that assessed 82,091 users and 293,103 posts were included. The most frequent interactions were noted for people with eating disorders (14/54, 26%), depression (12/54, 22%), and psychoactive substance use disorders (9/54, 17%). We grouped interactions between users into 42 codes, with the empathy or compassion code being the most common (41/54, 76%). The most frequently coexisting codes were request for information and network (35 times; φ=0.5; P<.001). The algorithms that provided the best accuracy in classifying disorders by interactions were decision trees (44/54, 81%) and logistic regression (40/54, 74%). The included studies were of moderate quality.
People with mental disorders mostly use the internet to seek support, find answers to their questions, and chat. The results of this analysis should be interpreted as a proof of concept. More data on web-based interactions among these people might help apply machine learning methods to develop a tool that might facilitate screening or even support mental health assessment.
越来越多的在线支持小组正在就与心理健康相关的主题提供建议和信息。
本研究旨在调查互联网用户通过 peer-to-peer 互动满足的需求。
对4个数据库进行检索,直至2022年8月15日。纳入调查患有精神障碍的互联网用户之间互动的定性或混合方法(即定性和定量)研究。使用φ系数并应用机器学习技术来研究精神障碍类型与与寻求帮助或支持相关的基于网络的互动之间的关联。
在13098条识别记录中,纳入了44项研究(在54个研究-障碍对中进行分析),这些研究评估了82091名用户和293103条帖子。饮食失调患者(14/54,26%)、抑郁症患者(12/54,22%)和精神活性物质使用障碍患者(9/54,17%)的互动最为频繁。我们将用户之间的互动归纳为42个代码,其中同理心或同情心代码最为常见(41/54,76%)。最常同时出现的代码是信息请求和社交网络(35次;φ=0.5;P<0.001)。通过互动对障碍进行分类时准确率最高的算法是决策树(44/54,81%)和逻辑回归(40/54,74%)。纳入的研究质量中等。
患有精神障碍的人大多使用互联网寻求支持、寻找问题答案和聊天。该分析结果应被解释为一个概念验证。关于这些人基于网络的互动的更多数据可能有助于应用机器学习方法开发一种工具,该工具可能有助于筛查甚至支持心理健康评估。