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Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder

BACKGROUND: Alterations in static and dynamic functional connectivity during resting state have been widely reported in major depressive disorder (MDD). The objective of this study was to compare the performances of whole-brain dynamic and static functional connectivity combined with machine learnin...

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Autores principales: Niu, Heng, Li, Weirong, Wang, Guiquan, Hu, Qiong, Hao, Rui, Li, Tianliang, Zhang, Fan, Cheng, Tao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9360427/
https://www.ncbi.nlm.nih.gov/pubmed/35958666
http://dx.doi.org/10.3389/fpsyt.2022.973921
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author Niu, Heng
Li, Weirong
Wang, Guiquan
Hu, Qiong
Hao, Rui
Li, Tianliang
Zhang, Fan
Cheng, Tao
author_facet Niu, Heng
Li, Weirong
Wang, Guiquan
Hu, Qiong
Hao, Rui
Li, Tianliang
Zhang, Fan
Cheng, Tao
author_sort Niu, Heng
collection PubMed
description BACKGROUND: Alterations in static and dynamic functional connectivity during resting state have been widely reported in major depressive disorder (MDD). The objective of this study was to compare the performances of whole-brain dynamic and static functional connectivity combined with machine learning approach in differentiating MDD patients from healthy controls at the individual subject level. Given the dynamic nature of brain activity, we hypothesized that dynamic connectivity would outperform static connectivity in the classification. METHODS: Seventy-one MDD patients and seventy-one well-matched healthy controls underwent resting-state functional magnetic resonance imaging scans. Whole-brain dynamic and static functional connectivity patterns were calculated and utilized as classification features. Linear kernel support vector machine was employed to design the classifier and a leave-one-out cross-validation strategy was used to assess classifier performance. RESULTS: Experimental results of dynamic functional connectivity-based classification showed that MDD patients could be discriminated from healthy controls with an excellent accuracy of 100% irrespective of whether or not global signal regression (GSR) was performed (permutation test with P < 0.0002). Brain regions with the most discriminating dynamic connectivity were mainly and reliably located within the default mode network, cerebellum, and subcortical network. In contrast, the static functional connectivity-based classifiers exhibited unstable classification performances, i.e., a low accuracy of 38.0% without GSR (P = 0.9926) while a high accuracy of 96.5% with GSR (P < 0.0002); moreover, there was a considerable variability in the distribution of brain regions with static connectivity most informative for classification. CONCLUSION: These findings suggest the superiority of dynamic functional connectivity in machine learning-based classification of depression, which may be helpful for a better understanding of the neural basis of MDD as well as for the development of effective computer-aided diagnosis tools in clinical settings.
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spelling pubmed-93604272022-08-10 Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder Niu, Heng Li, Weirong Wang, Guiquan Hu, Qiong Hao, Rui Li, Tianliang Zhang, Fan Cheng, Tao Front Psychiatry Psychiatry BACKGROUND: Alterations in static and dynamic functional connectivity during resting state have been widely reported in major depressive disorder (MDD). The objective of this study was to compare the performances of whole-brain dynamic and static functional connectivity combined with machine learning approach in differentiating MDD patients from healthy controls at the individual subject level. Given the dynamic nature of brain activity, we hypothesized that dynamic connectivity would outperform static connectivity in the classification. METHODS: Seventy-one MDD patients and seventy-one well-matched healthy controls underwent resting-state functional magnetic resonance imaging scans. Whole-brain dynamic and static functional connectivity patterns were calculated and utilized as classification features. Linear kernel support vector machine was employed to design the classifier and a leave-one-out cross-validation strategy was used to assess classifier performance. RESULTS: Experimental results of dynamic functional connectivity-based classification showed that MDD patients could be discriminated from healthy controls with an excellent accuracy of 100% irrespective of whether or not global signal regression (GSR) was performed (permutation test with P < 0.0002). Brain regions with the most discriminating dynamic connectivity were mainly and reliably located within the default mode network, cerebellum, and subcortical network. In contrast, the static functional connectivity-based classifiers exhibited unstable classification performances, i.e., a low accuracy of 38.0% without GSR (P = 0.9926) while a high accuracy of 96.5% with GSR (P < 0.0002); moreover, there was a considerable variability in the distribution of brain regions with static connectivity most informative for classification. CONCLUSION: These findings suggest the superiority of dynamic functional connectivity in machine learning-based classification of depression, which may be helpful for a better understanding of the neural basis of MDD as well as for the development of effective computer-aided diagnosis tools in clinical settings. Frontiers Media S.A. 2022-07-26 /pmc/articles/PMC9360427/ /pubmed/35958666 http://dx.doi.org/10.3389/fpsyt.2022.973921 Text en Copyright © 2022 Niu, Li, Wang, Hu, Hao, Li, Zhang and Cheng. 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
Niu, Heng
Li, Weirong
Wang, Guiquan
Hu, Qiong
Hao, Rui
Li, Tianliang
Zhang, Fan
Cheng, Tao
Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title_full Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title_fullStr Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title_full_unstemmed Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title_short Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
title_sort performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder
topic Psychiatry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9360427/
https://www.ncbi.nlm.nih.gov/pubmed/35958666
http://dx.doi.org/10.3389/fpsyt.2022.973921
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