萧条(经济学)
心理学
自然语言处理
计算机科学
经济
宏观经济学
作者
Samantha Weber,Nicolas Deperrois,Reinhard Heun,Laura Frühschütz,Anna Monn,Stephanie Homan,Andrea Häfliger,Erich Seifritz,Tobias Kowatsch,Lena A. Jäger,Katharina Schultebraucks,Sapir Gershov,Jacopo Mocellin,Birgit Kleim,Sebastian Olbrich
标识
DOI:10.1038/s41746-025-01982-8
摘要
Recent advances in artificial intelligence, particularly large language models (LLMs), show promise for mental health applications, including the automated detection of depressive symptoms from natural language. We fine-tuned a German BERT-based LLM to predict individual Montgomery-Åsberg Depression Rating Scale (MADRS) scores using a regression approach across different symptom items (0-6 severity scale), based on structured clinical interviews with transdiagnostic patients as well as synthetically generated interviews. The fine-tuned model achieved a mean absolute error of 0.7-1.0 across items, with accuracies ranging from 79 to 88%, closely matching clinician ratings. Fine-tuning resulted in a 75% reduction in prediction errors relative to the untrained model. These findings demonstrate the potential of lightweight LLMs to accurately assess depressive symptom severity, offering a scalable tool for clinical decision-making, and monitoring treatment progress, particularly in low-resource settings.
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