TY - JOUR
T1 - Multimodal Mental Health Analysis in Social Media
AU - Yazdavar, Amir Hossein
AU - Mahdavinejad, Mohammad Saeid
AU - Bajaj, Goonmeet
AU - Romine, William
AU - Sheth, Amit
AU - Monadjemi, Amir Hassan
AU - Thirunarayan, Krishnaprasad
AU - Meddar, John M.
AU - Myers, Annie
AU - Pathak, Jyotishman
AU - Hitzler, Pascal
PY - 2020/4/10
Y1 - 2020/4/10
N2 - Depression is a major public health concern in the U.S. and globally. While successful early identification and treatment can lead to many positive health and behavioral outcomes, depression, remains undiagnosed, untreated or undertreated due to several reasons, including denial of the illness as well as cultural and social stigma. With the ubiquity of social media platforms, millions of people are now sharing their online persona by expressing their thoughts, moods, emotions, and even their daily struggles with mental health on social media. Unlike traditional observational cohort studies conducted through questionnaires and self-reported surveys, we explore the reliable detection of depressive symptoms from tweets obtained, unobtrusively. Particularly, we examine and exploit multimodal big (social) data to discern depressive behaviors using a wide variety of features including individual-level demographics. By developing a multimodal framework and employing statistical techniques to fuse heterogeneous sets of features obtained through the processing of visual, textual, and user interaction data, we significantly enhance the current state-of-the-art approaches for identifying depressed individuals on Twitter (improving the average F1-Score by 5 percent) as well as facilitate demographic inferences from social media. Besides providing insights into the relationship between demographics and mental health, our research assists in the design of a new breed of demographic-aware health interventions.
AB - Depression is a major public health concern in the U.S. and globally. While successful early identification and treatment can lead to many positive health and behavioral outcomes, depression, remains undiagnosed, untreated or undertreated due to several reasons, including denial of the illness as well as cultural and social stigma. With the ubiquity of social media platforms, millions of people are now sharing their online persona by expressing their thoughts, moods, emotions, and even their daily struggles with mental health on social media. Unlike traditional observational cohort studies conducted through questionnaires and self-reported surveys, we explore the reliable detection of depressive symptoms from tweets obtained, unobtrusively. Particularly, we examine and exploit multimodal big (social) data to discern depressive behaviors using a wide variety of features including individual-level demographics. By developing a multimodal framework and employing statistical techniques to fuse heterogeneous sets of features obtained through the processing of visual, textual, and user interaction data, we significantly enhance the current state-of-the-art approaches for identifying depressed individuals on Twitter (improving the average F1-Score by 5 percent) as well as facilitate demographic inferences from social media. Besides providing insights into the relationship between demographics and mental health, our research assists in the design of a new breed of demographic-aware health interventions.
KW - Depression
KW - Twitter
KW - Emotions
KW - Face
KW - Social media
KW - Mental health and psychiatry
KW - Facial expressions
KW - Language
UR - https://corescholar.libraries.wright.edu/cse/550
UR - https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0226248
U2 - 10.1371/journal.pone.0226248
DO - 10.1371/journal.pone.0226248
M3 - Article
C2 - 32275658
VL - 15
JO - PLoS One
JF - PLoS One
IS - 4
M1 - e0226248
ER -