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A Machine Learning Approach to Predicting New‐onset Depression in a Military Population

OBJECTIVE: Depression is one of the most common mental disorders in the United States in both civilian and military populations, but few prospective studies assess a wide range of predictors across multiple domains for new‐onset (incident) depression in adulthood. Supervised machine learning methods...

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Autores principales: Sampson, Laura, Jiang, Tammy, Gradus, Jaimie L., Cabral, Howard J., Rosellini, Anthony J., Calabrese, Joseph R., Cohen, Gregory H., Fink, David S., King, Anthony P., Liberzon, Israel, Galea, Sandro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8562467/
https://www.ncbi.nlm.nih.gov/pubmed/34734165
http://dx.doi.org/10.1176/appi.prcp.20200031
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author Sampson, Laura
Jiang, Tammy
Gradus, Jaimie L.
Cabral, Howard J.
Rosellini, Anthony J.
Calabrese, Joseph R.
Cohen, Gregory H.
Fink, David S.
King, Anthony P.
Liberzon, Israel
Galea, Sandro
author_facet Sampson, Laura
Jiang, Tammy
Gradus, Jaimie L.
Cabral, Howard J.
Rosellini, Anthony J.
Calabrese, Joseph R.
Cohen, Gregory H.
Fink, David S.
King, Anthony P.
Liberzon, Israel
Galea, Sandro
author_sort Sampson, Laura
collection PubMed
description OBJECTIVE: Depression is one of the most common mental disorders in the United States in both civilian and military populations, but few prospective studies assess a wide range of predictors across multiple domains for new‐onset (incident) depression in adulthood. Supervised machine learning methods can identify predictors of incident depression out of many different candidate variables, without some of the assumptions and constraints that underlie traditional regression analyses. The objectives of this study were to identify predictors of incident depression across 5 years of follow‐up using machine learning, and to assess prediction accuracy of the algorithms. METHODS: Data were from a cohort of Army National Guard members free of history of depression at baseline (n = 1951 men and 298 women), interviewed once per year for probable depression. Classification trees and random forests were constructed and cross‐validated, using 84 candidate predictors from the baseline interviews. RESULTS: Stressors and traumas such as emotional mistreatment and adverse childhood experiences, demographics such as being a parent or student, and military characteristics including paygrade and deployment location were predictive of probable depression. Cross‐validated random forest algorithms were moderately accurate (68% for women and 73% for men). CONCLUSIONS: Events and characteristics throughout the life course, both in and outside of deployment, predict incident depression in adulthood among military personnel. Although replication studies are needed, these results may help inform potential intervention targets to reduce depression incidence among military personnel. Future research should further refine and explore interactions between identified variables.
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spelling pubmed-85624672021-11-02 A Machine Learning Approach to Predicting New‐onset Depression in a Military Population Sampson, Laura Jiang, Tammy Gradus, Jaimie L. Cabral, Howard J. Rosellini, Anthony J. Calabrese, Joseph R. Cohen, Gregory H. Fink, David S. King, Anthony P. Liberzon, Israel Galea, Sandro Psychiatr Res Clin Pract Research Articles OBJECTIVE: Depression is one of the most common mental disorders in the United States in both civilian and military populations, but few prospective studies assess a wide range of predictors across multiple domains for new‐onset (incident) depression in adulthood. Supervised machine learning methods can identify predictors of incident depression out of many different candidate variables, without some of the assumptions and constraints that underlie traditional regression analyses. The objectives of this study were to identify predictors of incident depression across 5 years of follow‐up using machine learning, and to assess prediction accuracy of the algorithms. METHODS: Data were from a cohort of Army National Guard members free of history of depression at baseline (n = 1951 men and 298 women), interviewed once per year for probable depression. Classification trees and random forests were constructed and cross‐validated, using 84 candidate predictors from the baseline interviews. RESULTS: Stressors and traumas such as emotional mistreatment and adverse childhood experiences, demographics such as being a parent or student, and military characteristics including paygrade and deployment location were predictive of probable depression. Cross‐validated random forest algorithms were moderately accurate (68% for women and 73% for men). CONCLUSIONS: Events and characteristics throughout the life course, both in and outside of deployment, predict incident depression in adulthood among military personnel. Although replication studies are needed, these results may help inform potential intervention targets to reduce depression incidence among military personnel. Future research should further refine and explore interactions between identified variables. John Wiley and Sons Inc. 2021-02-12 /pmc/articles/PMC8562467/ /pubmed/34734165 http://dx.doi.org/10.1176/appi.prcp.20200031 Text en © 2021 The Authors. Psychiatric Research and Clinical Practice published by Wiley Periodicals LLC. on behalf of the American Psychiatric Association https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Research Articles
Sampson, Laura
Jiang, Tammy
Gradus, Jaimie L.
Cabral, Howard J.
Rosellini, Anthony J.
Calabrese, Joseph R.
Cohen, Gregory H.
Fink, David S.
King, Anthony P.
Liberzon, Israel
Galea, Sandro
A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title_full A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title_fullStr A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title_full_unstemmed A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title_short A Machine Learning Approach to Predicting New‐onset Depression in a Military Population
title_sort machine learning approach to predicting new‐onset depression in a military population
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8562467/
https://www.ncbi.nlm.nih.gov/pubmed/34734165
http://dx.doi.org/10.1176/appi.prcp.20200031
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