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Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach

BACKGROUND: Cognitive dysfunction is widespread in psychiatric disorders and can significantly impact quality of life. Deficits cut across traditional diagnostic boundaries, necessitating new approaches to understand how cognitive function relates to large-scale brain activity and psychiatric sympto...

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Autores principales: Sargent, Kaia, Chavez-Baldini, UnYoung, Master, Sarah L., Verweij, Karin J.H., Lok, Anja, Sutterland, Arjen L., Vulink, Nienke C., Denys, Damiaan, Smit, Dirk J.A., Nieman, Dorien H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7985402/
https://www.ncbi.nlm.nih.gov/pubmed/33752077
http://dx.doi.org/10.1016/j.nicl.2021.102617
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author Sargent, Kaia
Chavez-Baldini, UnYoung
Master, Sarah L.
Verweij, Karin J.H.
Lok, Anja
Sutterland, Arjen L.
Vulink, Nienke C.
Denys, Damiaan
Smit, Dirk J.A.
Nieman, Dorien H.
author_facet Sargent, Kaia
Chavez-Baldini, UnYoung
Master, Sarah L.
Verweij, Karin J.H.
Lok, Anja
Sutterland, Arjen L.
Vulink, Nienke C.
Denys, Damiaan
Smit, Dirk J.A.
Nieman, Dorien H.
author_sort Sargent, Kaia
collection PubMed
description BACKGROUND: Cognitive dysfunction is widespread in psychiatric disorders and can significantly impact quality of life. Deficits cut across traditional diagnostic boundaries, necessitating new approaches to understand how cognitive function relates to large-scale brain activity and psychiatric symptoms across the diagnostic spectrum. OBJECTIVE: Using random forest regression, we aimed to identify transdiagnostic patterns linking cognitive function to resting-state EEG oscillations. METHODS: 216 participants recruited through an outpatient psychiatric clinic completed the Cambridge Neuropsychological Test Automated Battery and underwent a 5-minute eyes-closed resting state EEG recording. We built random forest regression models to predict performance on each cognitive test using the resting-state EEG power spectrum as input, and we compared model performance to a sampling distribution constructed with random permutations. For models that performed significantly better than chance, we used feature importance estimates to identify features of the EEG power spectrum that are predictive of cognitive functioning. RESULTS: Random forest models successfully predicted performance on measures of episodic memory and associative learning (Paired Associates Learning, PAL), information processing speed (Choice Reaction Time, CRT), and attentional set-shifting and executive function (Intra-Extra Dimensional Set Shift, IED). Oscillatory power in the upper alpha range was associated with better performance on PAL and CRT, while low alpha power was associated with worse CRT performance. Beta power predicted poor performance on all three tests. Theta power was associated with good performance on PAL, and delta and theta oscillations were identified as predictors of good performance on IED. No differences in cognitive performance were found between diagnostic categories. CONCLUSION: Resting oscillations are predictive of certain dimensions of cognitive function across various psychiatric disorders. These findings may inform treatment development to improve cognition.
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spelling pubmed-79854022021-03-25 Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach Sargent, Kaia Chavez-Baldini, UnYoung Master, Sarah L. Verweij, Karin J.H. Lok, Anja Sutterland, Arjen L. Vulink, Nienke C. Denys, Damiaan Smit, Dirk J.A. Nieman, Dorien H. Neuroimage Clin Regular Article BACKGROUND: Cognitive dysfunction is widespread in psychiatric disorders and can significantly impact quality of life. Deficits cut across traditional diagnostic boundaries, necessitating new approaches to understand how cognitive function relates to large-scale brain activity and psychiatric symptoms across the diagnostic spectrum. OBJECTIVE: Using random forest regression, we aimed to identify transdiagnostic patterns linking cognitive function to resting-state EEG oscillations. METHODS: 216 participants recruited through an outpatient psychiatric clinic completed the Cambridge Neuropsychological Test Automated Battery and underwent a 5-minute eyes-closed resting state EEG recording. We built random forest regression models to predict performance on each cognitive test using the resting-state EEG power spectrum as input, and we compared model performance to a sampling distribution constructed with random permutations. For models that performed significantly better than chance, we used feature importance estimates to identify features of the EEG power spectrum that are predictive of cognitive functioning. RESULTS: Random forest models successfully predicted performance on measures of episodic memory and associative learning (Paired Associates Learning, PAL), information processing speed (Choice Reaction Time, CRT), and attentional set-shifting and executive function (Intra-Extra Dimensional Set Shift, IED). Oscillatory power in the upper alpha range was associated with better performance on PAL and CRT, while low alpha power was associated with worse CRT performance. Beta power predicted poor performance on all three tests. Theta power was associated with good performance on PAL, and delta and theta oscillations were identified as predictors of good performance on IED. No differences in cognitive performance were found between diagnostic categories. CONCLUSION: Resting oscillations are predictive of certain dimensions of cognitive function across various psychiatric disorders. These findings may inform treatment development to improve cognition. Elsevier 2021-03-19 /pmc/articles/PMC7985402/ /pubmed/33752077 http://dx.doi.org/10.1016/j.nicl.2021.102617 Text en © 2021 The Author(s) http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Regular Article
Sargent, Kaia
Chavez-Baldini, UnYoung
Master, Sarah L.
Verweij, Karin J.H.
Lok, Anja
Sutterland, Arjen L.
Vulink, Nienke C.
Denys, Damiaan
Smit, Dirk J.A.
Nieman, Dorien H.
Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title_full Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title_fullStr Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title_full_unstemmed Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title_short Resting-state brain oscillations predict cognitive function in psychiatric disorders: A transdiagnostic machine learning approach
title_sort resting-state brain oscillations predict cognitive function in psychiatric disorders: a transdiagnostic machine learning approach
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7985402/
https://www.ncbi.nlm.nih.gov/pubmed/33752077
http://dx.doi.org/10.1016/j.nicl.2021.102617
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