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Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis

Background: The network analysis of intensive time series data collected using the Experience Sampling Method (ESM) may provide vital information in gaining insight into the link between emotion regulation and vulnerability to psychopathology. The aim of this study was to apply the network approach...

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Autores principales: Hasmi, Laila, Drukker, Marjan, Guloksuz, Sinan, Menne-Lothmann, Claudia, Decoster, Jeroen, van Winkel, Ruud, Collip, Dina, Delespaul, Philippe, De Hert, Marc, Derom, Catherine, Thiery, Evert, Jacobs, Nele, Rutten, Bart P. F., Wichers, Marieke, van Os, Jim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5673657/
https://www.ncbi.nlm.nih.gov/pubmed/29163289
http://dx.doi.org/10.3389/fpsyg.2017.01908
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author Hasmi, Laila
Drukker, Marjan
Guloksuz, Sinan
Menne-Lothmann, Claudia
Decoster, Jeroen
van Winkel, Ruud
Collip, Dina
Delespaul, Philippe
De Hert, Marc
Derom, Catherine
Thiery, Evert
Jacobs, Nele
Rutten, Bart P. F.
Wichers, Marieke
van Os, Jim
author_facet Hasmi, Laila
Drukker, Marjan
Guloksuz, Sinan
Menne-Lothmann, Claudia
Decoster, Jeroen
van Winkel, Ruud
Collip, Dina
Delespaul, Philippe
De Hert, Marc
Derom, Catherine
Thiery, Evert
Jacobs, Nele
Rutten, Bart P. F.
Wichers, Marieke
van Os, Jim
author_sort Hasmi, Laila
collection PubMed
description Background: The network analysis of intensive time series data collected using the Experience Sampling Method (ESM) may provide vital information in gaining insight into the link between emotion regulation and vulnerability to psychopathology. The aim of this study was to apply the network approach to investigate whether genetic liability (GL) to psychopathology and childhood trauma (CT) are associated with the network structure of the emotions “cheerful,” “insecure,” “relaxed,” “anxious,” “irritated,” and “down”—collected using the ESM method. Methods: Using data from a population-based sample of twin pairs and siblings (704 individuals), we examined whether momentary emotion network structures differed across strata of CT and GL. GL was determined empirically using the level of psychopathology in monozygotic and dizygotic co-twins. Network models were generated using multilevel time-lagged regression analysis and were compared across three strata (low, medium, and high) of CT and GL, respectively. Permutations were utilized to calculate p values and compare regressions coefficients, density, and centrality indices. Regression coefficients were presented as connections, while variables represented the nodes in the network. Results: In comparison to the low GL stratum, the high GL stratum had significantly denser overall (p = 0.018) and negative affect network density (p < 0.001). The medium GL stratum also showed a directionally similar (in-between high and low GL strata) but statistically inconclusive association with network density. In contrast to GL, the results of the CT analysis were less conclusive, with increased positive affect density (p = 0.021) and overall density (p = 0.042) in the high CT stratum compared to the medium CT stratum but not to the low CT stratum. The individual node comparisons across strata of GL and CT yielded only very few significant results, after adjusting for multiple testing. Conclusions: The present findings demonstrate that the network approach may have some value in understanding the relation between established risk factors for mental disorders (particularly GL) and the dynamic interplay between emotions. The present finding partially replicates an earlier analysis, suggesting it may be instructive to model negative emotional dynamics as a function of genetic influence.
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spelling pubmed-56736572017-11-21 Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis Hasmi, Laila Drukker, Marjan Guloksuz, Sinan Menne-Lothmann, Claudia Decoster, Jeroen van Winkel, Ruud Collip, Dina Delespaul, Philippe De Hert, Marc Derom, Catherine Thiery, Evert Jacobs, Nele Rutten, Bart P. F. Wichers, Marieke van Os, Jim Front Psychol Psychology Background: The network analysis of intensive time series data collected using the Experience Sampling Method (ESM) may provide vital information in gaining insight into the link between emotion regulation and vulnerability to psychopathology. The aim of this study was to apply the network approach to investigate whether genetic liability (GL) to psychopathology and childhood trauma (CT) are associated with the network structure of the emotions “cheerful,” “insecure,” “relaxed,” “anxious,” “irritated,” and “down”—collected using the ESM method. Methods: Using data from a population-based sample of twin pairs and siblings (704 individuals), we examined whether momentary emotion network structures differed across strata of CT and GL. GL was determined empirically using the level of psychopathology in monozygotic and dizygotic co-twins. Network models were generated using multilevel time-lagged regression analysis and were compared across three strata (low, medium, and high) of CT and GL, respectively. Permutations were utilized to calculate p values and compare regressions coefficients, density, and centrality indices. Regression coefficients were presented as connections, while variables represented the nodes in the network. Results: In comparison to the low GL stratum, the high GL stratum had significantly denser overall (p = 0.018) and negative affect network density (p < 0.001). The medium GL stratum also showed a directionally similar (in-between high and low GL strata) but statistically inconclusive association with network density. In contrast to GL, the results of the CT analysis were less conclusive, with increased positive affect density (p = 0.021) and overall density (p = 0.042) in the high CT stratum compared to the medium CT stratum but not to the low CT stratum. The individual node comparisons across strata of GL and CT yielded only very few significant results, after adjusting for multiple testing. Conclusions: The present findings demonstrate that the network approach may have some value in understanding the relation between established risk factors for mental disorders (particularly GL) and the dynamic interplay between emotions. The present finding partially replicates an earlier analysis, suggesting it may be instructive to model negative emotional dynamics as a function of genetic influence. Frontiers Media S.A. 2017-11-02 /pmc/articles/PMC5673657/ /pubmed/29163289 http://dx.doi.org/10.3389/fpsyg.2017.01908 Text en Copyright © 2017 Hasmi, Drukker, Guloksuz, Menne-Lothmann, Decoster, van Winkel, Collip, Delespaul, De Hert, Derom, Thiery, Jacobs, Rutten, Wichers and van Os. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychology
Hasmi, Laila
Drukker, Marjan
Guloksuz, Sinan
Menne-Lothmann, Claudia
Decoster, Jeroen
van Winkel, Ruud
Collip, Dina
Delespaul, Philippe
De Hert, Marc
Derom, Catherine
Thiery, Evert
Jacobs, Nele
Rutten, Bart P. F.
Wichers, Marieke
van Os, Jim
Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title_full Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title_fullStr Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title_full_unstemmed Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title_short Network Approach to Understanding Emotion Dynamics in Relation to Childhood Trauma and Genetic Liability to Psychopathology: Replication of a Prospective Experience Sampling Analysis
title_sort network approach to understanding emotion dynamics in relation to childhood trauma and genetic liability to psychopathology: replication of a prospective experience sampling analysis
topic Psychology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5673657/
https://www.ncbi.nlm.nih.gov/pubmed/29163289
http://dx.doi.org/10.3389/fpsyg.2017.01908
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