Send to

Choose Destination
Proc IEEE ACM Int Conf Adv Soc Netw Anal Min. 2017 Jul-Aug;2017:1191-1198. doi: 10.1145/3110025.3123028. Epub 2017 Jul 31.

Semi-Supervised Approach to Monitoring Clinical Depressive Symptoms in Social Media.

Author information

Kno.e.sis Center, Wright State University, Dayton, OH, USA.
Division of Health Informatics, Cornell University, New York, NY, USA.


With the rise of social media, millions of people are routinely expressing their moods, feelings, and daily struggles with mental health issues on social media platforms like Twitter. Unlike traditional observational cohort studies conducted through questionnaires and self-reported surveys, we explore the reliable detection of clinical depression from tweets obtained unobtrusively. Based on the analysis of tweets crawled from users with self-reported depressive symptoms in their Twitter profiles, we demonstrate the potential for detecting clinical depression symptoms which emulate the PHQ-9 questionnaire clinicians use today. Our study uses a semi-supervised statistical model to evaluate how the duration of these symptoms and their expression on Twitter (in terms of word usage patterns and topical preferences) align with the medical findings reported via the PHQ-9. Our proactive and automatic screening tool is able to identify clinical depressive symptoms with an accuracy of 68% and precision of 72%.


Mental Health; Natural Language Processing; Semi-supervised Machine Learning; Social Media

Supplemental Content

Full text links

Icon for PubMed Central
Loading ...
Support Center