利用 ChatGPT,通过可解释的深度学习优化抑郁症干预措施

Yang Liu, Xingchen Ding, Shun Peng, Chengzhi Zhang
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引用次数: 0

摘要

心理健康问题给世界各地的个人和社会带来了沉重的负担。最近,大型语言模型 ChatGPT 显示了抑郁症干预的潜力。本研究的主要目的是确定 ChatGPT 作为辅助心理咨询师与患者互动的工具的可行性,同时评估其与人工生成内容(HGC)的可比性。我们提出了一个新颖的框架,该框架整合了最先进的人工智能技术,包括 ChatGPT、BERT 和 SHAP,以提高心理健康干预的准确性和有效性。ChatGPT 生成对用户询问的回复,然后使用 BERT 对其进行分类,以确保内容的可靠性。随后使用 SHAP 深入了解人工智能生成的建议的基本语义结构,从而提高干预的可解释性。值得注意的是,我们提出的方法始终保持着令人印象深刻的 93.76% 的准确率。我们发现,ChatGPT 在回复中始终使用礼貌和体贴的语气。它避免使用复杂或非常规的词汇,并保持一种非个人化的风度。这些发现强调了 AIGC 的潜在意义,它是加强传统干预策略的宝贵补充成分。这项研究揭示了在医疗保健领域使用大型语言模型的巨大前景,标志着向开发能够增强病人护理和咨询实践的先进医疗保健系统迈出了关键的一步。
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Leveraging ChatGPT to optimize depression intervention through explainable deep learning
Mental health issues bring a heavy burden to individuals and societies around the world. Recently, the large language model ChatGPT has demonstrated potential in depression intervention. The primary objective of this study was to ascertain the viability of ChatGPT as a tool for aiding counselors in their interactions with patients while concurrently evaluating its comparability to human-generated content (HGC). We propose a novel framework that integrates state-of-the-art AI technologies, including ChatGPT, BERT, and SHAP, to enhance the accuracy and effectiveness of mental health interventions. ChatGPT generates responses to user inquiries, which are then classified using BERT to ensure the reliability of the content. SHAP is subsequently employed to provide insights into the underlying semantic constructs of the AI-generated recommendations, enhancing the interpretability of the intervention. Remarkably, our proposed methodology consistently achieved an impressive accuracy rate of 93.76%. We discerned that ChatGPT always employs a polite and considerate tone in its responses. It refrains from using intricate or unconventional vocabulary and maintains an impersonal demeanor. These findings underscore the potential significance of AIGC as an invaluable complementary component in enhancing conventional intervention strategies.This study illuminates the considerable promise offered by the utilization of large language models in the realm of healthcare. It represents a pivotal step toward advancing the development of sophisticated healthcare systems capable of augmenting patient care and counseling practices.
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