Martin Steppan, Ronan Zimmermann, Lukas Fürer, Matthew Southward, Julian Koenig, Michael Kaess, Johann Roland Kleinbub, Volker Roth, Klaus Schmeck
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引用次数: 0
Abstract
Background: New advances in the field of machine learning make it possible to track facial emotional expression with high resolution, including micro-expressions. These advances have promising applications for psychotherapy research, since manual coding (e.g., the Facial Action Coding System), is time-consuming.
Purpose: We tested whether this technology can reliably identify in-session emotional expression in a naturalistic treatment setting, and how these measures relate to the outcome of psychotherapy.
Method: We applied a machine learning emotion classifier to video material from 389 psychotherapy sessions of 23 patients with borderline personality pathology. We validated the findings with human ratings according to the Clients Emotional Arousal Scale (CEAS) and explored associations with treatment outcomes.
Results: Overall, machine learning ratings showed significant agreement with human ratings. Machine learning emotion classifiers, particularly the display of positive emotions (smiling and happiness), showed medium effect size on median-split treatment outcome (d = 0.3) as well as continuous improvement (r = 0.49, p < 0.05). Patients who dropped out form psychotherapy, showed significantly more neutral expressions, and generally less social smiling, particularly at the beginning of psychotherapeutic sessions.
Conclusions: Machine learning classifiers are a highly promising resource for research in psychotherapy. The results highlight differential associations of displayed positive and negative feelings with treatment outcomes. Machine learning emotion recognition may be used for the early identification of drop-out risks and clinically relevant interactions in psychotherapy.
期刊介绍:
''Psychopathology'' is a record of research centered on findings, concepts, and diagnostic categories of phenomenological, experimental and clinical psychopathology. Studies published are designed to improve and deepen the knowledge and understanding of the pathogenesis and nature of psychopathological symptoms and psychological dysfunctions. Furthermore, the validity of concepts applied in the neurosciences of mental functions are evaluated in order to closely bring together the mind and the brain. Major topics of the journal are trajectories between biological processes and psychological dysfunction that can help us better understand a subject’s inner experiences and interpersonal behavior. Descriptive psychopathology, experimental psychopathology and neuropsychology, developmental psychopathology, transcultural psychiatry as well as philosophy-based phenomenology contribute to this field.