Deep Annotation of Therapeutic Working Alliance in Psychotherapy
- URL: http://arxiv.org/abs/2204.05522v1
- Date: Tue, 12 Apr 2022 04:42:51 GMT
- Title: Deep Annotation of Therapeutic Working Alliance in Psychotherapy
- Authors: Baihan Lin, Guillermo Cecchi, Djallel Bouneffouf
- Abstract summary: The therapeutic working alliance is an important predictor of the outcome of the psychotherapy treatment.
In this work, we propose an analytical framework of directly inferring the therapeutic working alliance from the natural language within the psychotherapy sessions.
- Score: 27.80555922579736
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The therapeutic working alliance is an important predictor of the outcome of
the psychotherapy treatment. In practice, the working alliance is estimated
from a set of scoring questionnaires in an inventory that both the patient and
the therapists fill out. In this work, we propose an analytical framework of
directly inferring the therapeutic working alliance from the natural language
within the psychotherapy sessions in a turn-level resolution with deep
embeddings such as the Doc2Vec and SentenceBERT models. The transcript of each
psychotherapy session can be transcribed and generated in real-time from the
session speech recordings, and these embedded dialogues are compared with the
distributed representations of the statements in the working alliance
inventory. We demonstrate, in a real-world dataset with over 950 sessions of
psychotherapy treatments in anxiety, depression, schizophrenia and suicidal
patients, the effectiveness of this method in mapping out trajectories of
patient-therapist alignment and the interpretability that can offer insights in
clinical psychiatry. We believe such a framework can be provide timely feedback
to the therapist regarding the quality of the conversation in interview
sessions.
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