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Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports
Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making. While efforts to use symptom profiles or biomarkers to develop clinically useful prognostic subtypes have had limited success, a recent report showed that machine learning (ML) models developed from...
Autores principales: | , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
2016
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4935654/ https://www.ncbi.nlm.nih.gov/pubmed/26728563 http://dx.doi.org/10.1038/mp.2015.198 |
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author | Kessler, Ronald C. van Loo, Hanna M. Wardenaar, Klaas J. Bossarte, Robert M. Brenner, Lisa A. Cai, Tianxi Ebert, David Daniel Hwang, Irving Li, Junlong de Jonge, Peter Nierenberg, Andrew A. Petukhova, Maria V. Rosellini, Anthony J. Sampson, Nancy A. Schoevers, Robert A. Wilcox, Marsha A. Zaslavsky, Alan M. |
author_facet | Kessler, Ronald C. van Loo, Hanna M. Wardenaar, Klaas J. Bossarte, Robert M. Brenner, Lisa A. Cai, Tianxi Ebert, David Daniel Hwang, Irving Li, Junlong de Jonge, Peter Nierenberg, Andrew A. Petukhova, Maria V. Rosellini, Anthony J. Sampson, Nancy A. Schoevers, Robert A. Wilcox, Marsha A. Zaslavsky, Alan M. |
author_sort | Kessler, Ronald C. |
collection | PubMed |
description | Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making. While efforts to use symptom profiles or biomarkers to develop clinically useful prognostic subtypes have had limited success, a recent report showed that machine learning (ML) models developed from self-reports about incident episode characteristics and comorbidities among respondents with lifetime MDD in the World Health Organization World Mental Health (WMH) Surveys predicted MDD persistence, chronicity, and severity with good accuracy. We report results of model validation in an independent prospective national household sample of 1,056 respondents with lifetime MDD at baseline. The WMH ML models were applied to these baseline data to generate predicted outcome scores that were compared to observed scores assessed 10–12 years after baseline. ML model prediction accuracy was also compared to that of conventional logistic regression models. Area under the receiver operating characteristic curve (AUC) based on ML (.63 for high chronicity and .71–.76 for the other prospective outcomes) was consistently higher than for the logistic models (.62–.70) despite the latter models including more predictors. 34.6–38.1% of respondents with subsequent high persistence-chronicity and 40.8–55.8% with the severity indicators were in the top 20% of the baseline ML predicted risk distribution, while only 0.9% of respondents with subsequent hospitalizations and 1.5% with suicide attempts were in the lowest 20% of the ML predicted risk distribution. These results confirm that clinically useful MDD risk stratification models can be generated from baseline patient self-reports and that ML methods improve on conventional methods in developing such models. |
format | Online Article Text |
id | pubmed-4935654 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2016 |
record_format | MEDLINE/PubMed |
spelling | pubmed-49356542016-09-22 Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports Kessler, Ronald C. van Loo, Hanna M. Wardenaar, Klaas J. Bossarte, Robert M. Brenner, Lisa A. Cai, Tianxi Ebert, David Daniel Hwang, Irving Li, Junlong de Jonge, Peter Nierenberg, Andrew A. Petukhova, Maria V. Rosellini, Anthony J. Sampson, Nancy A. Schoevers, Robert A. Wilcox, Marsha A. Zaslavsky, Alan M. Mol Psychiatry Article Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making. While efforts to use symptom profiles or biomarkers to develop clinically useful prognostic subtypes have had limited success, a recent report showed that machine learning (ML) models developed from self-reports about incident episode characteristics and comorbidities among respondents with lifetime MDD in the World Health Organization World Mental Health (WMH) Surveys predicted MDD persistence, chronicity, and severity with good accuracy. We report results of model validation in an independent prospective national household sample of 1,056 respondents with lifetime MDD at baseline. The WMH ML models were applied to these baseline data to generate predicted outcome scores that were compared to observed scores assessed 10–12 years after baseline. ML model prediction accuracy was also compared to that of conventional logistic regression models. Area under the receiver operating characteristic curve (AUC) based on ML (.63 for high chronicity and .71–.76 for the other prospective outcomes) was consistently higher than for the logistic models (.62–.70) despite the latter models including more predictors. 34.6–38.1% of respondents with subsequent high persistence-chronicity and 40.8–55.8% with the severity indicators were in the top 20% of the baseline ML predicted risk distribution, while only 0.9% of respondents with subsequent hospitalizations and 1.5% with suicide attempts were in the lowest 20% of the ML predicted risk distribution. These results confirm that clinically useful MDD risk stratification models can be generated from baseline patient self-reports and that ML methods improve on conventional methods in developing such models. 2016-01-05 2016-10 /pmc/articles/PMC4935654/ /pubmed/26728563 http://dx.doi.org/10.1038/mp.2015.198 Text en http://www.nature.com/authors/editorial_policies/license.html#terms Users may view, print, copy, and download text and data-mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use:http://www.nature.com/authors/editorial_policies/license.html#terms |
spellingShingle | Article Kessler, Ronald C. van Loo, Hanna M. Wardenaar, Klaas J. Bossarte, Robert M. Brenner, Lisa A. Cai, Tianxi Ebert, David Daniel Hwang, Irving Li, Junlong de Jonge, Peter Nierenberg, Andrew A. Petukhova, Maria V. Rosellini, Anthony J. Sampson, Nancy A. Schoevers, Robert A. Wilcox, Marsha A. Zaslavsky, Alan M. Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title | Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title_full | Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title_fullStr | Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title_full_unstemmed | Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title_short | Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
title_sort | testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4935654/ https://www.ncbi.nlm.nih.gov/pubmed/26728563 http://dx.doi.org/10.1038/mp.2015.198 |
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