Literature DB >> 32619163

Understanding the relationship between patient language and outcomes in internet-enabled cognitive behavioural therapy: A deep learning approach to automatic coding of session transcripts.

M P Ewbank1, R Cummins1, V Tablan1, A Catarino1, S Buchholz1, A D Blackwell1.   

Abstract

Objective: Understanding patient responses to psychotherapy is important in developing effective interventions. However, coding patient language is a resource-intensive exercise and difficult to perform at scale. Our aim was to develop a deep learning model to automatically identify patient utterances during text-based internet-enabled Cognitive Behavioural Therapy and to determine the association between utterances and clinical outcomes. Method: Using 340 manually annotated transcripts we trained a deep learning model to categorize patient utterances into one or more of five categories. The model was used to automatically code patient utterances from our entire data set of transcripts (∼34,000 patients), and logistic regression analyses used to determine the association between both reliable improvement and engagement, and patient responses.
Results: Our model reached human-level agreement on three of the five patient categories. Regression analyses revealed that increased counter change-talk (movement away from change) was associated with lower odds of both reliable improvement and engagement, while increased change-talk (movement towards change or self-exploration) was associated with increased odds of improvement and engagement. Conclusions: Deep learning provides an effective means of automatically coding patient utterances at scale. This approach enables the development of a data-driven understanding of the relationship between therapist and patient during therapy.

Entities:  

Keywords:  cognitive behaviour therapy; outcome research; technology in psychotherapy research & training

Year:  2020        PMID: 32619163     DOI: 10.1080/10503307.2020.1788740

Source DB:  PubMed          Journal:  Psychother Res        ISSN: 1050-3307


  2 in total

1.  Multimodal Automatic Coding of Client Behavior in Motivational Interviewing.

Authors:  Leili Tavabi; Brian Borsari; Kalin Stefanov; Joshua D Woolley; Mohammad Soleymani; Larry Zhang; Stefan Scherer
Journal:  Proc ACM Int Conf Multimodal Interact       Date:  2020-10

2.  Analysis of Behavior Classification in Motivational Interviewing.

Authors:  Leili Tavabi; Trang Tran; Kalin Stefanov; Brian Borsari; Joshua D Woolley; Stefan Scherer; Mohammad Soleymani
Journal:  Proc Conf       Date:  2021-06
  2 in total

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