Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach

Scientific understanding about the psychological impact of the COVID-19 global pandemic is in its nascent stage. Prior research suggests that demographic factors, such as gender and age, are associated with greater distress during a global health crisis. Less is known about how emotion regulation im...

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Main Authors: Tracy A. Prout, Sigal Zilcha-Mano, Katie Aafjes-van Doorn, Vera Békés, Isabelle Christman-Cohen, Kathryn Whistler, Thomas Kui, Mariagrazia Di Giuseppe
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-11-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fpsyg.2020.586202/full
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spelling doaj-15116a74cd4d44fe82198d853abae2da2020-11-25T03:59:14ZengFrontiers Media S.A.Frontiers in Psychology1664-10782020-11-011110.3389/fpsyg.2020.586202586202Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning ApproachTracy A. Prout0Sigal Zilcha-Mano1Katie Aafjes-van Doorn2Vera Békés3Isabelle Christman-Cohen4Kathryn Whistler5Thomas Kui6Mariagrazia Di Giuseppe7School-Clinical Child Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesDepartment of Psychology, University of Haifa, Haifa, IsraelClinical Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesClinical Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesSchool-Clinical Child Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesSchool-Clinical Child Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesSchool-Clinical Child Psychology Program, Ferkauf Graduate School of Psychology, Yeshiva University, Bronx, NY, United StatesDepartment of Surgical, Medical and Molecular Pathology and of Critical Care Medicine, University of Pisa, Pisa, ItalyScientific understanding about the psychological impact of the COVID-19 global pandemic is in its nascent stage. Prior research suggests that demographic factors, such as gender and age, are associated with greater distress during a global health crisis. Less is known about how emotion regulation impacts levels of distress during a pandemic. The present study aimed to identify predictors of psychological distress during the COVID-19 pandemic. Participants (N = 2,787) provided demographics, history of adverse childhood experiences, current coping strategies (use of implicit and explicit emotion regulation), and current psychological distress. The overall prevalence of clinical levels of anxiety, depression, and post-traumatic stress was higher than the prevalence outside a pandemic and was higher than rates reported among healthcare workers and survivors of severe acute respiratory syndrome. Younger participants (<45 years), women, and non-binary individuals reported higher prevalence of symptoms across all measures of distress. A random forest machine learning algorithm was used to identify the strongest predictors of distress. Regression trees were developed to identify individuals at greater risk for anxiety, depression, and post-traumatic stress. Somatization and less reliance on adaptive defense mechanisms were associated with greater distress. These findings highlight the importance of assessing individuals’ physical experiences of psychological distress and emotion regulation strategies to help mental health providers tailor assessments and treatment during a global health crisis.https://www.frontiersin.org/articles/10.3389/fpsyg.2020.586202/fullCOVID-19 pandemicemotion regulationsomatizationmachine learninganxietydepression
collection DOAJ
language English
format Article
sources DOAJ
author Tracy A. Prout
Sigal Zilcha-Mano
Katie Aafjes-van Doorn
Vera Békés
Isabelle Christman-Cohen
Kathryn Whistler
Thomas Kui
Mariagrazia Di Giuseppe
spellingShingle Tracy A. Prout
Sigal Zilcha-Mano
Katie Aafjes-van Doorn
Vera Békés
Isabelle Christman-Cohen
Kathryn Whistler
Thomas Kui
Mariagrazia Di Giuseppe
Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
Frontiers in Psychology
COVID-19 pandemic
emotion regulation
somatization
machine learning
anxiety
depression
author_facet Tracy A. Prout
Sigal Zilcha-Mano
Katie Aafjes-van Doorn
Vera Békés
Isabelle Christman-Cohen
Kathryn Whistler
Thomas Kui
Mariagrazia Di Giuseppe
author_sort Tracy A. Prout
title Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
title_short Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
title_full Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
title_fullStr Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
title_full_unstemmed Identifying Predictors of Psychological Distress During COVID-19: A Machine Learning Approach
title_sort identifying predictors of psychological distress during covid-19: a machine learning approach
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2020-11-01
description Scientific understanding about the psychological impact of the COVID-19 global pandemic is in its nascent stage. Prior research suggests that demographic factors, such as gender and age, are associated with greater distress during a global health crisis. Less is known about how emotion regulation impacts levels of distress during a pandemic. The present study aimed to identify predictors of psychological distress during the COVID-19 pandemic. Participants (N = 2,787) provided demographics, history of adverse childhood experiences, current coping strategies (use of implicit and explicit emotion regulation), and current psychological distress. The overall prevalence of clinical levels of anxiety, depression, and post-traumatic stress was higher than the prevalence outside a pandemic and was higher than rates reported among healthcare workers and survivors of severe acute respiratory syndrome. Younger participants (<45 years), women, and non-binary individuals reported higher prevalence of symptoms across all measures of distress. A random forest machine learning algorithm was used to identify the strongest predictors of distress. Regression trees were developed to identify individuals at greater risk for anxiety, depression, and post-traumatic stress. Somatization and less reliance on adaptive defense mechanisms were associated with greater distress. These findings highlight the importance of assessing individuals’ physical experiences of psychological distress and emotion regulation strategies to help mental health providers tailor assessments and treatment during a global health crisis.
topic COVID-19 pandemic
emotion regulation
somatization
machine learning
anxiety
depression
url https://www.frontiersin.org/articles/10.3389/fpsyg.2020.586202/full
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