使用大型语言模型推进慢性背痛安慰剂反应的预测和理解。

Diogo A P Nunes, Dan Furrer, Sara Berger, Guillermo Cecchi, Joana Ferreira-Gomes, Fani Neto, David Martins de Matos, A Vania Apkarian, Paulo Branco
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摘要

慢性疼痛的安慰剂镇痛是一种被广泛研究的临床现象,当使用惰性治疗剂时,对治疗效果的期望可以导致实质性的疼痛缓解。虽然安慰剂为慢性疼痛的非药物治疗提供了机会,但并不是每个人都表现出镇痛反应。先前的研究已经确定了决定个体对安慰剂反应的可能性的生物心理社会因素,但由于无法解释动态的个人和治疗效果,这些研究的普遍性和生态有效性受到限制,这是众所周知的。在这里,我们评估了使用微调大语言模型(llm)的潜力,利用从患者访谈中提取的上下文特征来预测慢性腰痛的安慰剂应答者,因为他们谈论他们的生活方式,疼痛和治疗史。我们重新分析了两项临床试验的数据,在这些试验中,个人进行了开放式访谈,并利用这些数据建立了安慰剂反应的预测模型。我们的研究结果表明,用llm提取的语义特征准确地预测了安慰剂应答者,在未见数据中实现了74%的分类准确率,在独立队列中验证了70%的准确率。此外,法学硕士消除了预先选择搜索词或使用字典方法的需要,从而实现了完全数据驱动的方法。这种法学硕士方法进一步提供了对安慰剂反应背后的社会心理因素的可解释性见解,强调了与应答者状态相关的细微语言模式,这些模式利用了诸如“焦虑”、“辞职”和“希望”等语义维度。这些发现扩展了先前的研究,通过整合最先进的自然语言处理技术来解决标准方法(如词袋和基于字典的方法)在可解释性和上下文敏感性方面的局限性。该方法强调了语言模型在联系语言和心理状态方面的作用,为更深入的生物心理社会现象的定量探索铺平了道路,并为理解它们与治疗结果(包括安慰剂)的关系铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Advancing the prediction and understanding of placebo responses in chronic back pain using large language models.

Placebo analgesia in chronic pain is a widely studied clinical phenomenon, where expectations about the effectiveness of a treatment can result in substantial pain relief when using an inert treatment agent. While placebos offer an opportunity for non-pharmacological treatment in chronic pain, not everyone demonstrates an analgesic response. Prior research has identified biopsychosocial factors that determine the likelihood of an individual to respond to a placebo, yet generalizability and ecological validity in those studies have been limited due to the inability to account for dynamic personal and treatment effects-which are well-known to play a role. Here, we assessed the potential of using fine-tuned large language models (LLMs) to predict placebo responders in chronic low-back pain using contextual features extracted from patient interviews, as they speak about their lifestyle, pain, and treatment history. We re-analyzed data from two clinical trials where individuals performed open-ended interviews and used these to develop a predictive model of placebo response. Our findings demonstrate that semantic features extracted with LLMs accurately predicted placebo responders, achieving a classification accuracy of 74% in unseen data, and validating with 70% accuracy in an independent cohort. Further, LLMs eliminated the need for pre-selecting search terms or to use dictionary approaches, enabling a fully data-driven approach. This LLM method further provided interpretable insights into psychosocial factors underlying placebo responses, highlighting nuanced linguistic patterns linked to responder status, which tap into semantic dimensions such as "anxiety," "resignation," and "hope." These findings expand on prior research by integrating state-of-art NLP techniques to address limitations in interpretability and context sensitivity of standard methods like bag-of-words and dictionary-based approaches. This method highlights the role of language models to link language and psychological states, paving the way for a deeper yet quantitative exploration of biopsychosocial phenomena, and to understand how they relate to treatment outcomes, including placebo.

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