结合主题模型和统计分析来调查治疗过程的有用性:一个个案研究。

IF 3 1区 心理学 Q2 PSYCHOLOGY, CLINICAL
Davide Liccione, Luisa Siciliano
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引用次数: 0

摘要

目的:本研究探讨了心理治疗过程中主题运动的模式是否能为心理治疗师提供单例分析的可行见解。它利用统计模型和人工智能驱动的工具来揭示这些动态。方法:我们记录了一个完整的心理治疗疗程,包括26个疗程。首先,确定所有疗法的共同话题,然后专家心理治疗师标记这种选定的心理疗法的每个对话回合。根据专家的决定,使用广义加性混合模型(GAMMs)分析主题动态,该模型捕获了数据中的非线性趋势和层次结构。随后,由专家识别的这些轨迹与使用称为潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)的主题建模算法以无监督方式提取的主题进行比较。结果:我们的研究结果证实,主题轨迹分析可靠地表明治疗进展。具体来说,随着时间的推移,与痛苦(SPS)相关的话题减少了,而与治疗性重构和洞察力(TRI)相关的话题增加了,反映了临床的改善。结论:该研究表明,GAMMs和LDA都是观察特定心理治疗中主题如何在治疗工作中发生改变的有用工具。结合经典的统计分析方法和人工智能驱动的主题分析,提高了评估的敏感性,提供了对心理治疗工作在不同阶段如何变化的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The usefulness of combining topic modelling and statistical analysis to investigate the therapeutic process: A single case study.

Objective: This study examines whether patterns in the movement of topics during psychotherapy sessions can provide psychotherapists with actionable insights for single-case analysis. It utilizes both statistical models and AI-driven tools to uncover these dynamics.

Method: We transcribed a completed psychotherapy session comprising 26 sessions. First, common topics across all therapies were identified, and then expert psychotherapists labelled each conversational turn of this selected psychotherapy. As determined by the experts, the topic dynamics were analysed using Generalized Additive Mixed Models (GAMMs), which captured non-linear trends and hierarchical structures within the data. Subsequently, these trajectories, as identified by the experts, were compared with the topics extracted in an unsupervised manner using a topic modelling algorithm, called Latent Dirichlet Allocation (LDA).

Results: Our findings confirm that topic trajectory analysis reliably indicates therapeutic progress. Specifically, topics related to suffering (SPS) decreased over time, while topics concerning therapeutic refiguration and insight (TRI) increased, reflecting clinical improvement.

Conclusion: The study demonstrates that both GAMMs and LDA are useful tools to see how the topics in specific psychotherapy are modified their occurrence during the therapeutic work. Combining classical methods of statistical analysis and AI-driven topic analysis enhances the sensitivity of assessments, providing insights into how the psychotherapy work changes across sessions.

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来源期刊
Psychotherapy Research
Psychotherapy Research PSYCHOLOGY, CLINICAL-
CiteScore
7.80
自引率
10.30%
发文量
68
期刊介绍: Psychotherapy Research seeks to enhance the development, scientific quality, and social relevance of psychotherapy research and to foster the use of research findings in practice, education, and policy formulation. The Journal publishes reports of original research on all aspects of psychotherapy, including its outcomes, its processes, education of practitioners, and delivery of services. It also publishes methodological, theoretical, and review articles of direct relevance to psychotherapy research. The Journal is addressed to an international, interdisciplinary audience and welcomes submissions dealing with diverse theoretical orientations, treatment modalities.
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