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A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood
BACKGROUND: Although major depressive disorder (MDD) is characterized by a pervasive negative mood, research indicates that the mood of depressed patients is rarely entirely stagnant. It is often dynamic, distinguished by highs and lows, and it is highly responsive to external and internal regulator...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2022
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8968132/ https://www.ncbi.nlm.nih.gov/pubmed/35370856 http://dx.doi.org/10.3389/fpsyt.2022.755809 |
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author | van Genugten, Claire R. Schuurmans, Josien Hoogendoorn, Adriaan W. Araya, Ricardo Andersson, Gerhard Baños, Rosa M. Berger, Thomas Botella, Cristina Cerga Pashoja, Arlinda Cieslak, Roman Ebert, David D. García-Palacios, Azucena Hazo, Jean-Baptiste Herrero, Rocío Holtzmann, Jérôme Kemmeren, Lise Kleiboer, Annet Krieger, Tobias Rogala, Anna Titzler, Ingrid Topooco, Naira Smit, Johannes H. Riper, Heleen |
author_facet | van Genugten, Claire R. Schuurmans, Josien Hoogendoorn, Adriaan W. Araya, Ricardo Andersson, Gerhard Baños, Rosa M. Berger, Thomas Botella, Cristina Cerga Pashoja, Arlinda Cieslak, Roman Ebert, David D. García-Palacios, Azucena Hazo, Jean-Baptiste Herrero, Rocío Holtzmann, Jérôme Kemmeren, Lise Kleiboer, Annet Krieger, Tobias Rogala, Anna Titzler, Ingrid Topooco, Naira Smit, Johannes H. Riper, Heleen |
author_sort | van Genugten, Claire R. |
collection | PubMed |
description | BACKGROUND: Although major depressive disorder (MDD) is characterized by a pervasive negative mood, research indicates that the mood of depressed patients is rarely entirely stagnant. It is often dynamic, distinguished by highs and lows, and it is highly responsive to external and internal regulatory processes. Mood dynamics can be defined as a combination of mood variability (the magnitude of the mood changes) and emotional inertia (the speed of mood shifts). The purpose of this study is to explore various distinctive profiles in real-time monitored mood dynamics among MDD patients in routine mental healthcare. METHODS: Ecological momentary assessment (EMA) data were collected as part of the cross-European E-COMPARED trial, in which approximately half of the patients were randomly assigned to receive the blended Cognitive Behavioral Therapy (bCBT). In this study a subsample of the bCBT group was included (n = 287). As part of bCBT, patients were prompted to rate their current mood (on a 1–10 scale) using a smartphone-based EMA application. During the first week of treatment, the patients were prompted to rate their mood on three separate occasions during the day. Latent profile analyses were subsequently applied to identify distinct profiles based on average mood, mood variability, and emotional inertia across the monitoring period. RESULTS: Overall, four profiles were identified, which we labeled as: (1) “very negative and least variable mood” (n = 14) (2) “negative and moderate variable mood” (n = 204), (3) “positive and moderate variable mood” (n = 41), and (4) “negative and highest variable mood” (n = 28). The degree of emotional inertia was virtually identical across the profiles. CONCLUSIONS: The real-time monitoring conducted in the present study provides some preliminary indications of different patterns of both average mood and mood variability among MDD patients in treatment in mental health settings. Such varying patterns were not found for emotional inertia. |
format | Online Article Text |
id | pubmed-8968132 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-89681322022-04-01 A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood van Genugten, Claire R. Schuurmans, Josien Hoogendoorn, Adriaan W. Araya, Ricardo Andersson, Gerhard Baños, Rosa M. Berger, Thomas Botella, Cristina Cerga Pashoja, Arlinda Cieslak, Roman Ebert, David D. García-Palacios, Azucena Hazo, Jean-Baptiste Herrero, Rocío Holtzmann, Jérôme Kemmeren, Lise Kleiboer, Annet Krieger, Tobias Rogala, Anna Titzler, Ingrid Topooco, Naira Smit, Johannes H. Riper, Heleen Front Psychiatry Psychiatry BACKGROUND: Although major depressive disorder (MDD) is characterized by a pervasive negative mood, research indicates that the mood of depressed patients is rarely entirely stagnant. It is often dynamic, distinguished by highs and lows, and it is highly responsive to external and internal regulatory processes. Mood dynamics can be defined as a combination of mood variability (the magnitude of the mood changes) and emotional inertia (the speed of mood shifts). The purpose of this study is to explore various distinctive profiles in real-time monitored mood dynamics among MDD patients in routine mental healthcare. METHODS: Ecological momentary assessment (EMA) data were collected as part of the cross-European E-COMPARED trial, in which approximately half of the patients were randomly assigned to receive the blended Cognitive Behavioral Therapy (bCBT). In this study a subsample of the bCBT group was included (n = 287). As part of bCBT, patients were prompted to rate their current mood (on a 1–10 scale) using a smartphone-based EMA application. During the first week of treatment, the patients were prompted to rate their mood on three separate occasions during the day. Latent profile analyses were subsequently applied to identify distinct profiles based on average mood, mood variability, and emotional inertia across the monitoring period. RESULTS: Overall, four profiles were identified, which we labeled as: (1) “very negative and least variable mood” (n = 14) (2) “negative and moderate variable mood” (n = 204), (3) “positive and moderate variable mood” (n = 41), and (4) “negative and highest variable mood” (n = 28). The degree of emotional inertia was virtually identical across the profiles. CONCLUSIONS: The real-time monitoring conducted in the present study provides some preliminary indications of different patterns of both average mood and mood variability among MDD patients in treatment in mental health settings. Such varying patterns were not found for emotional inertia. Frontiers Media S.A. 2022-03-17 /pmc/articles/PMC8968132/ /pubmed/35370856 http://dx.doi.org/10.3389/fpsyt.2022.755809 Text en Copyright © 2022 van Genugten, Schuurmans, Hoogendoorn, Araya, Andersson, Baños, Berger, Botella, Cerga Pashoja, Cieslak, Ebert, García-Palacios, Hazo, Herrero, Holtzmann, Kemmeren, Kleiboer, Krieger, Rogala, Titzler, Topooco, Smit and Riper. https://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) and the copyright owner(s) 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 | Psychiatry van Genugten, Claire R. Schuurmans, Josien Hoogendoorn, Adriaan W. Araya, Ricardo Andersson, Gerhard Baños, Rosa M. Berger, Thomas Botella, Cristina Cerga Pashoja, Arlinda Cieslak, Roman Ebert, David D. García-Palacios, Azucena Hazo, Jean-Baptiste Herrero, Rocío Holtzmann, Jérôme Kemmeren, Lise Kleiboer, Annet Krieger, Tobias Rogala, Anna Titzler, Ingrid Topooco, Naira Smit, Johannes H. Riper, Heleen A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title | A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title_full | A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title_fullStr | A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title_full_unstemmed | A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title_short | A Data-Driven Clustering Method for Discovering Profiles in the Dynamics of Major Depressive Disorder Using a Smartphone-Based Ecological Momentary Assessment of Mood |
title_sort | data-driven clustering method for discovering profiles in the dynamics of major depressive disorder using a smartphone-based ecological momentary assessment of mood |
topic | Psychiatry |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8968132/ https://www.ncbi.nlm.nih.gov/pubmed/35370856 http://dx.doi.org/10.3389/fpsyt.2022.755809 |
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