2021
DOI: 10.2196/26589
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Understanding Side Effects of Antidepressants: Large-scale Longitudinal Study on Social Media Data

Abstract: Background Antidepressants are known to show heterogeneous effects across individuals and conditions, posing challenges to understanding their efficacy in mental health treatment. Social media platforms enable individuals to share their day-to-day concerns with others and thereby can function as unobtrusive, large-scale, and naturalistic data sources to study the longitudinal behavior of individuals taking antidepressants. Objective We aim to understand… Show more

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Cited by 35 publications
(28 citation statements)
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“…In this context, infodemiology, an area of medical research focused on scanning the internet for user-contributed health-related content, has emerged as a means for understanding trends in public health ( 21 , 22 ). Moreover, multiple studies have explored the interests and feelings of the general population regarding certain health problems through the analysis of social media posts ( 23 25 ). Nevertheless, there is a lack of data assessing social interest toward psychotherapy.…”
Section: Introductionmentioning
confidence: 99%
“…In this context, infodemiology, an area of medical research focused on scanning the internet for user-contributed health-related content, has emerged as a means for understanding trends in public health ( 21 , 22 ). Moreover, multiple studies have explored the interests and feelings of the general population regarding certain health problems through the analysis of social media posts ( 23 25 ). Nevertheless, there is a lack of data assessing social interest toward psychotherapy.…”
Section: Introductionmentioning
confidence: 99%
“…Computational studies that have focused on selfdisclosed diagnoses have not comprehensively reviewed how individual activity evolves over long periods of time (Saha et al, 2021). Our study thus fulfills an important void in the research space by providing a new understanding of long term mental health dynamics in social media, and more particularly, within convenience samples curated using self-disclosed diagnoses.…”
Section: Introductionmentioning
confidence: 88%
“…12 Twitter data are majority text-based compared to Facebook data, and Saha et al relied on tweet keywords to identify associations with antidepressant side-effects. 13 Equitable models need to be exposed to data types across devices and platforms, or they will only cater to subsets of the population who engage with a particular device or platform. Although a single clinic can validate digital biomarkers across multiple data types, the heterogeneity of devices and platforms internationally, many of which are country specific, make universal assessment infeasible within a clinic's local population.…”
Section: Digital Biomarker Data Collection Challengesmentioning
confidence: 99%