Language markers of emotion flexibility predict depression and anxiety treatment outcomes
By: Benjamin Brindle , George Bonanno , Thomas Derrick Hull and more
Predicting treatment non-response for anxiety and depression is challenging, in part because of sparse symptom assessments in real-world care. We examined whether passively captured, fine-grained emotions serve as linguistic markers of treatment outcomes by analyzing 12 weeks of de-identified teletherapy transcripts from 12,043 U.S. patients with moderate-to-severe anxiety and depression symptoms. A transformer-based small language model extracted patients' emotions at the talk-turn level; a state-space model (VISTA) clustered subgroups based on emotion dynamics over time and produced temporal networks. Two groups emerged: an improving group (n=8,230) and a non-response group (n=3813) showing increased odds of symptom deterioration, and lower likelihood of clinically significant improvement. Temporal networks indicated that sadness and fear exerted most influence on emotion dynamics in non-responders, whereas improving patients showed balanced joy, sadness, and neutral expressions. Findings suggest that linguistic markers of emotional inflexibility can serve as scalable, interpretable, and theoretically grounded indicators for treatment risk stratification.
Similar Papers
AI in Mental Health: Emotional and Sentiment Analysis of Large Language Models' Responses to Depression, Anxiety, and Stress Queries
Computation and Language
AI answers about feelings show different emotions.
Enhanced Large Language Models for Effective Screening of Depression and Anxiety
Computation and Language
Helps find mental health problems by talking.
Multilingual Lexical Feature Analysis of Spoken Language for Predicting Major Depression Symptom Severity
Computation and Language
Listens to your voice to check depression.