LLM-Augmented Therapy Normalization and Aspect-Based Sentiment Analysis for Treatment-Resistant Depression on Reddit
arXiv cs.CL / 3/16/2026
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Key Points
- The study collects 5,059 Reddit posts about treatment-resistant depression from 3,480 subscribers across 28 mental health–related subreddits spanning 2010–2025 and identifies 23,399 medication mentions after normalization.
- It fine-tunes DeBERTa-v3 on the SMM4H 2023 therapy-sentiment Twitter corpus with large language model–based data augmentation to build an aspect-based sentiment classifier achieving a micro-F1 of 0.800 on the shared-task test set.
- Applying the classifier to Reddit data, the study quantifies sentiment toward medications in three categories (positive, neutral, negative) and finds 72.1% neutral, 14.8% negative, and 13.1% positive mentions, with SSRIs/SNRIs more negative and ketamine/esketamine comparatively more favorable.
- The work shows that normalized medication extraction paired with aspect-based sentiment analysis can characterize patient-perceived treatment experiences in TRD Reddit discourse, complementing clinical evidence with large-scale patient perspectives.
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