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Main Authors: Zhou, Zhiyuan, Liu, Jilong, Wang, Sanwang, Hao, Shijie, Guo, Yanrong, Hong, Richang
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.14878
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author Zhou, Zhiyuan
Liu, Jilong
Wang, Sanwang
Hao, Shijie
Guo, Yanrong
Hong, Richang
author_facet Zhou, Zhiyuan
Liu, Jilong
Wang, Sanwang
Hao, Shijie
Guo, Yanrong
Hong, Richang
contents Depression poses significant challenges to patients and healthcare organizations, necessitating efficient assessment methods. Existing paradigms typically focus on a patient-doctor way that overlooks multi-role interactions, such as family involvement in the evaluation and caregiving process. Moreover, current automatic depression detection (ADD) methods usually model depression detection as a classification or regression task, lacking interpretability for the decision-making process. To address these issues, we developed InterMind, a doctor-patient-family interactive depression assessment system empowered by large language models (LLMs). Our system enables patients and families to contribute descriptions, generates assistive diagnostic reports for doctors, and provides actionable insights, improving diagnostic precision and efficiency. To enhance LLMs' performance in psychological counseling and diagnostic interpretability, we integrate retrieval-augmented generation (RAG) and chain-of-thoughts (CoT) techniques for data augmentation, which mitigates the hallucination issue of LLMs in specific scenarios after instruction fine-tuning. Quantitative experiments and professional assessments by clinicians validate the effectiveness of our system.
format Preprint
id arxiv_https___arxiv_org_abs_2409_14878
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle InterMind: Doctor-Patient-Family Interactive Depression Assessment Empowered by Large Language Models
Zhou, Zhiyuan
Liu, Jilong
Wang, Sanwang
Hao, Shijie
Guo, Yanrong
Hong, Richang
Human-Computer Interaction
Depression poses significant challenges to patients and healthcare organizations, necessitating efficient assessment methods. Existing paradigms typically focus on a patient-doctor way that overlooks multi-role interactions, such as family involvement in the evaluation and caregiving process. Moreover, current automatic depression detection (ADD) methods usually model depression detection as a classification or regression task, lacking interpretability for the decision-making process. To address these issues, we developed InterMind, a doctor-patient-family interactive depression assessment system empowered by large language models (LLMs). Our system enables patients and families to contribute descriptions, generates assistive diagnostic reports for doctors, and provides actionable insights, improving diagnostic precision and efficiency. To enhance LLMs' performance in psychological counseling and diagnostic interpretability, we integrate retrieval-augmented generation (RAG) and chain-of-thoughts (CoT) techniques for data augmentation, which mitigates the hallucination issue of LLMs in specific scenarios after instruction fine-tuning. Quantitative experiments and professional assessments by clinicians validate the effectiveness of our system.
title InterMind: Doctor-Patient-Family Interactive Depression Assessment Empowered by Large Language Models
topic Human-Computer Interaction
url https://arxiv.org/abs/2409.14878