COMPASS:基于语言建模的患者-治疗师联盟策略的计算映射。

IF 5.8 1区 医学 Q1 PSYCHIATRY
Baihan Lin, Djallel Bouneffouf, Yulia Landa, Rachel Jespersen, Cheryl Corcoran, Guillermo Cecchi
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引用次数: 0

摘要

治疗工作联盟是心理治疗成功的关键预测因素。传统上,工作联盟评估依赖于由治疗师和患者共同完成的问卷调查。在本文中,我们提出了COMPASS,一个新的框架,直接从心理治疗过程中使用的自然语言推断治疗工作联盟。我们的方法利用先进的大型语言模型(llm)来分析会话记录并将其映射到分布式表示。这些表征捕获了对话和心理测量工具(如工作联盟量表)之间的语义相似性。分析了1970年至2012年间收集的950多个不同精神疾病的数据集,包括焦虑(N = 498)、抑郁(N = 377)、精神分裂症(N = 71)和自杀倾向(N = 12),我们证明了我们的方法在提供患者-治疗师一致性轨迹的细粒度映射、为临床实践提供可解释的见解以及识别与正在治疗的疾病相关的新模式方面的有效性。通过采用各种基于深度学习的主题建模技术,结合提示生成语言模型,我们分析了不同精神疾病的主题特征,以及这些主题在每次谈话中如何演变。这个综合框架增强了对治疗相互作用的理解,使治疗师能够及时反馈治疗关系的质量,并提供清晰、可操作的见解,以提高心理治疗的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COMPASS: Computational mapping of patient-therapist alliance strategies with language modeling.

The therapeutic working alliance is a critical predictor of psychotherapy success. Traditionally, working alliance assessment relies on questionnaires completed by both therapists and patients. In this paper, we present COMPASS, a novel framework to directly infer the therapeutic working alliance from the natural language used in psychotherapy sessions. Our approach leverages advanced large language models (LLMs) to analyze session transcripts and map them to distributed representations. These representations capture the semantic similarities between the dialogues and psychometric instruments, such as the Working Alliance Inventory. Analyzing a dataset of over 950 sessions spanning diverse psychiatric conditions -- including anxiety (N = 498), depression (N = 377), schizophrenia (N = 71), and suicidal tendencies (N = 12) -- collected between 1970 and 2012, we demonstrate the effectiveness of our method in providing fine-grained mapping of patient-therapist alignment trajectories, offering interpretable insights for clinical practice, and identifying emerging patterns related to the condition being treated. By employing various deep learning-based topic modeling techniques in combination with prompting generative language models, we analyze the topical characteristics of different psychiatric conditions and how these topics evolve during each turn of the conversation. This integrated framework enhances the understanding of therapeutic interactions, enables timely feedback for therapists on the quality of therapeutic relationships, and provides clear, actionable insights to improve the effectiveness of psychotherapy.

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来源期刊
CiteScore
11.50
自引率
2.90%
发文量
484
审稿时长
23 weeks
期刊介绍: Psychiatry has suffered tremendously by the limited translational pipeline. Nobel laureate Julius Axelrod''s discovery in 1961 of monoamine reuptake by pre-synaptic neurons still forms the basis of contemporary antidepressant treatment. There is a grievous gap between the explosion of knowledge in neuroscience and conceptually novel treatments for our patients. Translational Psychiatry bridges this gap by fostering and highlighting the pathway from discovery to clinical applications, healthcare and global health. We view translation broadly as the full spectrum of work that marks the pathway from discovery to global health, inclusive. The steps of translation that are within the scope of Translational Psychiatry include (i) fundamental discovery, (ii) bench to bedside, (iii) bedside to clinical applications (clinical trials), (iv) translation to policy and health care guidelines, (v) assessment of health policy and usage, and (vi) global health. All areas of medical research, including — but not restricted to — molecular biology, genetics, pharmacology, imaging and epidemiology are welcome as they contribute to enhance the field of translational psychiatry.
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