Mental disorders such as depression and suicidal ideation are hazardous, affecting more than 300 million people over the world. However, on social media, mental disorder symptoms can be observed, and automated approaches are increasingly capable of detecting them. The considerable number of social media users and the tremendous quantity of user-generated data on social platforms provide a unique opportunity for researchers to distinguish patterns that correlate with mental status. This research offers a roadmap for analysis, where mental state detection can be based on machine learning techniques. We describe the common approaches for predicting and identifying the disorder using user-generated content. This research is organized according to the data collection, feature extraction, and prediction algorithms. Furthermore, we review several recent studies conducted to explore different features of candidate profiles and their analytical methods. Following, we debate various aspects of the development of experimental auto-detection frameworks for identifying users who suffer from disorders, and we conclude with a discussion of future trends. The introduced methods can help complement screening procedures, identify at-risk people through social media monitoring on a large scale, and make disorders easier to treat in the future.
翻译:然而,在社交媒体上,可以观察到精神失常症状,而且自动化方法越来越能够检测这些症状。社会平台上大量社交媒体用户和大量用户生成的数据为研究人员提供了一个独特的机会,以辨别与精神状态相关的模式。这一研究提供了一个分析路线图,其中精神状态检测可以基于机器学习技术。我们描述了使用用户生成的内容预测和识别疾病的共同方法。这一研究是根据数据收集、特征提取和预测算法组织起来的。此外,我们审查了最近为探索候选人特征及其分析方法的不同特征而进行的若干研究。随后,我们辩论了为识别患有精神失常的用户而建立实验性自动检测框架的各个方面,我们最后讨论了未来趋势。引入的方法可以帮助补充筛查程序,通过大规模社交媒体监测查明高危人群,并使未来更容易治疗这些疾病。