Leveraging Natural Language Processing to Study Emotional Coherence in Psychotherapy

The association between emotional experience and expression, known as emotional coherence, is considered important for individual functioning. Recent advances in natural language processing (NLP) make it possible to automatically recognize verbally expressed emotions in psychotherapy dialogues and t...

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Veröffentlicht in:Psychotherapy (Chicago, Ill.) Ill.), 2024-03, Vol.61 (1), p.82-92
Hauptverfasser: Atzil-Slonim, Dana, Eliassaf, Amir, Warikoo, Neha, Paz, Adar, Haimovitz, Shira, Mayer, Tobias, Gurevych, Iryna
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container_end_page 92
container_issue 1
container_start_page 82
container_title Psychotherapy (Chicago, Ill.)
container_volume 61
creator Atzil-Slonim, Dana
Eliassaf, Amir
Warikoo, Neha
Paz, Adar
Haimovitz, Shira
Mayer, Tobias
Gurevych, Iryna
description The association between emotional experience and expression, known as emotional coherence, is considered important for individual functioning. Recent advances in natural language processing (NLP) make it possible to automatically recognize verbally expressed emotions in psychotherapy dialogues and to explore emotional coherence with larger samples and finer granularity than previously. The present study used state-of-the-art emotion recognition models to automatically label clients' emotions at the utterance level, employed these labeled data to examine the coherence between verbally expressed emotions and self-reported emotions, and examined the associations between emotional coherence and clients' improvement in functioning throughout treatment. The data comprised 872 transcribed sessions from 68 clients. Clients self-reported their functioning before each session and their emotions after each. A subsample of 196 sessions were manually coded. A transformer-based approach was used to automatically label the remaining data for a total of 139,061 utterances. Multilevel modeling was used to assess emotional coherence and determine whether it was associated with changes in clients' functioning throughout treatment. The emotion recognition model demonstrated moderate performance. The findings indicated a significant association between verbally expressed emotions and self-reported emotions. Coherence in clients' negative emotions was associated with improvement in functioning. The results suggest an association between clients' subjective experience and their verbal expression of emotions and underscore the importance of this coherence to functioning. NLP may uncover crucial emotional processes in psychotherapy. Clinical Impact Statement Question: The present study examined the coherence between clients' verbal expressions of emotions and their subjective experience of emotions and whether this coherence was associated with an improvement in clients' functioning. Findings: The findings demonstrate the usefulness of computerized text analytic techniques to automatically annotate clients' emotions. The results confirm the association between clients' subjective experience and their verbal expression of emotions. Meaning: The findings highlight the relevance of emotional coherence for clients' functioning, especially with regard to negative emotions. Next Steps: Automatic emotion recognition models can be integrated into existing feedback systems to provide an in
doi_str_mv 10.1037/pst0000517
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Recent advances in natural language processing (NLP) make it possible to automatically recognize verbally expressed emotions in psychotherapy dialogues and to explore emotional coherence with larger samples and finer granularity than previously. The present study used state-of-the-art emotion recognition models to automatically label clients' emotions at the utterance level, employed these labeled data to examine the coherence between verbally expressed emotions and self-reported emotions, and examined the associations between emotional coherence and clients' improvement in functioning throughout treatment. The data comprised 872 transcribed sessions from 68 clients. Clients self-reported their functioning before each session and their emotions after each. A subsample of 196 sessions were manually coded. A transformer-based approach was used to automatically label the remaining data for a total of 139,061 utterances. Multilevel modeling was used to assess emotional coherence and determine whether it was associated with changes in clients' functioning throughout treatment. The emotion recognition model demonstrated moderate performance. The findings indicated a significant association between verbally expressed emotions and self-reported emotions. Coherence in clients' negative emotions was associated with improvement in functioning. The results suggest an association between clients' subjective experience and their verbal expression of emotions and underscore the importance of this coherence to functioning. NLP may uncover crucial emotional processes in psychotherapy. Clinical Impact Statement Question: The present study examined the coherence between clients' verbal expressions of emotions and their subjective experience of emotions and whether this coherence was associated with an improvement in clients' functioning. Findings: The findings demonstrate the usefulness of computerized text analytic techniques to automatically annotate clients' emotions. The results confirm the association between clients' subjective experience and their verbal expression of emotions. Meaning: The findings highlight the relevance of emotional coherence for clients' functioning, especially with regard to negative emotions. 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Multilevel modeling was used to assess emotional coherence and determine whether it was associated with changes in clients' functioning throughout treatment. The emotion recognition model demonstrated moderate performance. The findings indicated a significant association between verbally expressed emotions and self-reported emotions. Coherence in clients' negative emotions was associated with improvement in functioning. The results suggest an association between clients' subjective experience and their verbal expression of emotions and underscore the importance of this coherence to functioning. NLP may uncover crucial emotional processes in psychotherapy. Clinical Impact Statement Question: The present study examined the coherence between clients' verbal expressions of emotions and their subjective experience of emotions and whether this coherence was associated with an improvement in clients' functioning. Findings: The findings demonstrate the usefulness of computerized text analytic techniques to automatically annotate clients' emotions. The results confirm the association between clients' subjective experience and their verbal expression of emotions. Meaning: The findings highlight the relevance of emotional coherence for clients' functioning, especially with regard to negative emotions. 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subjects Clients
Emotion Recognition
Expressed Emotion
Female
Human
Male
Natural Language Processing
Outpatient
Psychotherapy
Treatment Outcomes
title Leveraging Natural Language Processing to Study Emotional Coherence in Psychotherapy
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