Hostname: page-component-78c5997874-s2hrs Total loading time: 0 Render date: 2024-11-15T07:29:49.406Z Has data issue: false hasContentIssue false

Automatic Analysis of Psychotherapy Videos by Using Synchrony Signal

Published online by Cambridge University Press:  23 March 2020

T. Gargot
Affiliation:
Hopital de la pitie salpetriere, Departement de psychiatrie de l’enfant et de l’adolescent, Paris, France
G. Varni
Affiliation:
Universite Pierre et Marie Curie, Institut des Systemes Intelligents et de la Robotique, Paris, France
M. Chetouani
Affiliation:
Universite Pierre et Marie Curie, Institut des Systemes Intelligents et de la Robotique, Paris, France
D. Cohen
Affiliation:
Hopital de la pitie salpetriere, Departement de psychiatrie de l’enfant et de l’adolescent, Paris, France

Abstract

Introduction

Some techniques of psychotherapy are now widely evidence-based and very cost effective, especially cognitive and behavioral therapies. Most of the studies are indirectly based on patient reported outcomes or problematic behaviors evaluated before and after the psychotherapy. Unfortunately, studies struggle to control for what is actually happening during psychotherapy, especially the non-specific aspects, like the interaction between the patient and the therapist, that is a known predictor of psychotherapeutic efficacy. Consequently, it is difficult to make precise links between theory and practice, control its application and understand which of its ingredients are the most important.

Objectives

Here, we suggest a research framework to extract automatically social signals from psychotherapy videos. We focused on the extraction of synchrony of the motor signal since it was considered to be a predictor of psychotherapeutic outcome in an earlier study and a relevant signal for the study of mother-child interactions.

Methods

We developed open source python and R scripts to compute this synchrony of motion history on a database of interaction between a parent and a child http://bit.ly/syncpsy

Results

We confirmed that synchrony, was a relevant signal for studying social interactions since the scores are completely different from synchrony scores computed on shuffle motion history data. However, these scores alone are unable to distinguish the two periods of the videos (with and without disagreement).

Conclusion

Synchrony of motion history is a promising marker of social interactions.

Type
e-Poster walk: E-mental health
Copyright
Copyright © European Psychiatric Association 2017

Disclosure of interest

The authors have not supplied their declaration of competing interest.

Submit a response

Comments

No Comments have been published for this article.