Cargando…

Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm

In psychotherapy, movement synchrony seems to be associated with higher patient satisfaction and treatment outcome. However, it remains unclear whether movement synchrony rated by humans and movement synchrony identified by automated methods reflect the same construct. To address this issue, video s...

Descripción completa

Detalles Bibliográficos
Autores principales: Schoenherr, Désirée, Paulick, Jane, Strauss, Bernhard M., Deisenhofer, Anne-Katharina, Schwartz, Brian, Rubel, Julian A., Lutz, Wolfgang, Stangier, Ulrich, Altmann, Uwe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6370201/
https://www.ncbi.nlm.nih.gov/pubmed/30742651
http://dx.doi.org/10.1371/journal.pone.0211494
_version_ 1783394328816648192
author Schoenherr, Désirée
Paulick, Jane
Strauss, Bernhard M.
Deisenhofer, Anne-Katharina
Schwartz, Brian
Rubel, Julian A.
Lutz, Wolfgang
Stangier, Ulrich
Altmann, Uwe
author_facet Schoenherr, Désirée
Paulick, Jane
Strauss, Bernhard M.
Deisenhofer, Anne-Katharina
Schwartz, Brian
Rubel, Julian A.
Lutz, Wolfgang
Stangier, Ulrich
Altmann, Uwe
author_sort Schoenherr, Désirée
collection PubMed
description In psychotherapy, movement synchrony seems to be associated with higher patient satisfaction and treatment outcome. However, it remains unclear whether movement synchrony rated by humans and movement synchrony identified by automated methods reflect the same construct. To address this issue, video sequences showing movement synchrony of patients and therapists (N = 10) or not (N = 10), were analyzed using motion energy analysis. Three different synchrony conditions with varying levels of complexity (naturally embedded, naturally isolated, and artificial) were generated for time series analysis with windowed cross-lagged correlation/ -regression (WCLC, WCLR). The concordance of ratings (human rating vs. automatic assessment) was computed for 600 different parameter configurations of the WCLC/WCLR to identify the parameter settings that measure movement synchrony best. A parameter configuration was rated as having a good identification rate if it yields high concordance with human-rated intervals (Cohen’s kappa) and a low amount of over-identified data points. Results indicate that 76 configurations had a good identification rate (IR) in the least complex condition (artificial). Two had an acceptable IR with regard to the naturally isolated condition. Concordance was low with regard to the most complex (naturally embedded) condition. A valid identification of movement synchrony strongly depends on parameter configuration and goes beyond the identification of synchrony by human raters. Differences between human-rated synchrony and nonverbal synchrony measured by algorithms are discussed.
format Online
Article
Text
id pubmed-6370201
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-63702012019-02-22 Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm Schoenherr, Désirée Paulick, Jane Strauss, Bernhard M. Deisenhofer, Anne-Katharina Schwartz, Brian Rubel, Julian A. Lutz, Wolfgang Stangier, Ulrich Altmann, Uwe PLoS One Research Article In psychotherapy, movement synchrony seems to be associated with higher patient satisfaction and treatment outcome. However, it remains unclear whether movement synchrony rated by humans and movement synchrony identified by automated methods reflect the same construct. To address this issue, video sequences showing movement synchrony of patients and therapists (N = 10) or not (N = 10), were analyzed using motion energy analysis. Three different synchrony conditions with varying levels of complexity (naturally embedded, naturally isolated, and artificial) were generated for time series analysis with windowed cross-lagged correlation/ -regression (WCLC, WCLR). The concordance of ratings (human rating vs. automatic assessment) was computed for 600 different parameter configurations of the WCLC/WCLR to identify the parameter settings that measure movement synchrony best. A parameter configuration was rated as having a good identification rate if it yields high concordance with human-rated intervals (Cohen’s kappa) and a low amount of over-identified data points. Results indicate that 76 configurations had a good identification rate (IR) in the least complex condition (artificial). Two had an acceptable IR with regard to the naturally isolated condition. Concordance was low with regard to the most complex (naturally embedded) condition. A valid identification of movement synchrony strongly depends on parameter configuration and goes beyond the identification of synchrony by human raters. Differences between human-rated synchrony and nonverbal synchrony measured by algorithms are discussed. Public Library of Science 2019-02-11 /pmc/articles/PMC6370201/ /pubmed/30742651 http://dx.doi.org/10.1371/journal.pone.0211494 Text en © 2019 Schoenherr et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Schoenherr, Désirée
Paulick, Jane
Strauss, Bernhard M.
Deisenhofer, Anne-Katharina
Schwartz, Brian
Rubel, Julian A.
Lutz, Wolfgang
Stangier, Ulrich
Altmann, Uwe
Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title_full Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title_fullStr Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title_full_unstemmed Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title_short Identification of movement synchrony: Validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
title_sort identification of movement synchrony: validation of windowed cross-lagged correlation and -regression with peak-picking algorithm
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6370201/
https://www.ncbi.nlm.nih.gov/pubmed/30742651
http://dx.doi.org/10.1371/journal.pone.0211494
work_keys_str_mv AT schoenherrdesiree identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT paulickjane identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT straussbernhardm identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT deisenhoferannekatharina identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT schwartzbrian identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT rubeljuliana identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT lutzwolfgang identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT stangierulrich identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm
AT altmannuwe identificationofmovementsynchronyvalidationofwindowedcrosslaggedcorrelationandregressionwithpeakpickingalgorithm