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Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study

BACKGROUND: Generalized anxiety disorder (GAD) is difficult to recognize and hard to separate from major depression (MD) in clinical settings. Biomarkers might support diagnostic decisions. This study used machine learning on multimodal biobehavioral data from a sample of GAD, MD and healthy subject...

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Autores principales: Hilbert, Kevin, Lueken, Ulrike, Muehlhan, Markus, Beesdo‐Baum, Katja
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5346520/
https://www.ncbi.nlm.nih.gov/pubmed/28293473
http://dx.doi.org/10.1002/brb3.633
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author Hilbert, Kevin
Lueken, Ulrike
Muehlhan, Markus
Beesdo‐Baum, Katja
author_facet Hilbert, Kevin
Lueken, Ulrike
Muehlhan, Markus
Beesdo‐Baum, Katja
author_sort Hilbert, Kevin
collection PubMed
description BACKGROUND: Generalized anxiety disorder (GAD) is difficult to recognize and hard to separate from major depression (MD) in clinical settings. Biomarkers might support diagnostic decisions. This study used machine learning on multimodal biobehavioral data from a sample of GAD, MD and healthy subjects to differentiate subjects with a disorder from healthy subjects (case‐classification) and to differentiate GAD from MD (disorder‐classification). METHODS: Subjects with GAD (n = 19), MD without GAD (n = 14), and healthy comparison subjects (n = 24) were included. The sample was matched regarding age, sex, handedness and education and free of psychopharmacological medication. Binary support vector machines were used within a nested leave‐one‐out cross‐validation framework. Clinical questionnaires, cortisol release, gray matter (GM), and white matter (WM) volumes were used as input data separately and in combination. RESULTS: Questionnaire data were well‐suited for case‐classification but not disorder‐classification (accuracies: 96.40%, p < .001; 56.58%, p > .22). The opposite pattern was found for imaging data (case‐classification GM/WM: 58.71%, p = .09/43.18%, p > .66; disorder‐classification GM/WM: 68.05%, p = .034/58.27%, p > .15) and for cortisol data (38.02%, p = .84; 74.60%, p = .009). All data combined achieved 90.10% accuracy (p < .001) for case‐classification and 67.46% accuracy (p = .0268) for disorder‐classification. CONCLUSIONS: In line with previous evidence, classification of GAD was difficult using clinical questionnaire data alone. Particularly cortisol and GM volume data were able to provide incremental value for the classification of GAD. Findings suggest that neurobiological biomarkers are a useful target for further research to delineate their potential contribution to diagnostic processes.
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spelling pubmed-53465202017-03-14 Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study Hilbert, Kevin Lueken, Ulrike Muehlhan, Markus Beesdo‐Baum, Katja Brain Behav Original Research BACKGROUND: Generalized anxiety disorder (GAD) is difficult to recognize and hard to separate from major depression (MD) in clinical settings. Biomarkers might support diagnostic decisions. This study used machine learning on multimodal biobehavioral data from a sample of GAD, MD and healthy subjects to differentiate subjects with a disorder from healthy subjects (case‐classification) and to differentiate GAD from MD (disorder‐classification). METHODS: Subjects with GAD (n = 19), MD without GAD (n = 14), and healthy comparison subjects (n = 24) were included. The sample was matched regarding age, sex, handedness and education and free of psychopharmacological medication. Binary support vector machines were used within a nested leave‐one‐out cross‐validation framework. Clinical questionnaires, cortisol release, gray matter (GM), and white matter (WM) volumes were used as input data separately and in combination. RESULTS: Questionnaire data were well‐suited for case‐classification but not disorder‐classification (accuracies: 96.40%, p < .001; 56.58%, p > .22). The opposite pattern was found for imaging data (case‐classification GM/WM: 58.71%, p = .09/43.18%, p > .66; disorder‐classification GM/WM: 68.05%, p = .034/58.27%, p > .15) and for cortisol data (38.02%, p = .84; 74.60%, p = .009). All data combined achieved 90.10% accuracy (p < .001) for case‐classification and 67.46% accuracy (p = .0268) for disorder‐classification. CONCLUSIONS: In line with previous evidence, classification of GAD was difficult using clinical questionnaire data alone. Particularly cortisol and GM volume data were able to provide incremental value for the classification of GAD. Findings suggest that neurobiological biomarkers are a useful target for further research to delineate their potential contribution to diagnostic processes. John Wiley and Sons Inc. 2017-02-12 /pmc/articles/PMC5346520/ /pubmed/28293473 http://dx.doi.org/10.1002/brb3.633 Text en © 2017 The Authors. Brain and Behavior published by Wiley Periodicals, Inc. This is an open access article under the terms of the Creative Commons Attribution (http://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research
Hilbert, Kevin
Lueken, Ulrike
Muehlhan, Markus
Beesdo‐Baum, Katja
Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title_full Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title_fullStr Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title_full_unstemmed Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title_short Separating generalized anxiety disorder from major depression using clinical, hormonal, and structural MRI data: A multimodal machine learning study
title_sort separating generalized anxiety disorder from major depression using clinical, hormonal, and structural mri data: a multimodal machine learning study
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5346520/
https://www.ncbi.nlm.nih.gov/pubmed/28293473
http://dx.doi.org/10.1002/brb3.633
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