Then and Now: Quantifying the Longitudinal Validity of Self-Disclosed Depression Diagnoses

June 22, 2022 ยท Declared Dead ยท ๐Ÿ› Workshop on Computational Linguistics and Clinical Psychology

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Authors Keith Harrigian, Mark Dredze arXiv ID 2206.11155 Category cs.LG: Machine Learning Cross-listed cs.CL, cs.CY Citations 4 Venue Workshop on Computational Linguistics and Clinical Psychology Last Checked 4 months ago
Abstract
Self-disclosed mental health diagnoses, which serve as ground truth annotations of mental health status in the absence of clinical measures, underpin the conclusions behind most computational studies of mental health language from the last decade. However, psychiatric conditions are dynamic; a prior depression diagnosis may no longer be indicative of an individual's mental health, either due to treatment or other mitigating factors. We ask: to what extent are self-disclosures of mental health diagnoses actually relevant over time? We analyze recent activity from individuals who disclosed a depression diagnosis on social media over five years ago and, in turn, acquire a new understanding of how presentations of mental health status on social media manifest longitudinally. We also provide expanded evidence for the presence of personality-related biases in datasets curated using self-disclosed diagnoses. Our findings motivate three practical recommendations for improving mental health datasets curated using self-disclosed diagnoses: 1) Annotate diagnosis dates and psychiatric comorbidities; 2) Sample control groups using propensity score matching; 3) Identify and remove spurious correlations introduced by selection bias.
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