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Large Language Models and Text Embeddings for Detecting Depression and Suicide in Patient Narratives
8
Zitationen
10
Autoren
2025
Jahr
Abstract
This cross-sectional study of SCT narratives from psychiatric patients suggests that LLMs and text-embedding models may effectively detect depression and suicide risk, particularly using self-concept narratives. However, while these models demonstrated potential for detecting mental health risks, further improvements in performance and safety are essential before clinical application.
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