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Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning

The primary goal of this work was to apply data-driven machine learning regression to assess if resting state functional connectivity (rs-FC) could estimate measures of behavioral domains in stroke subjects who completed brain-computer interface (BCI) intervention for motor rehabilitation. The study...

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Autores principales: Mohanty, Rosaleena, Sinha, Anita M., Remsik, Alexander B., Dodd, Keith C., Young, Brittany M., Jacobson, Tyler, McMillan, Matthew, Thoma, Jaclyn, Advani, Hemali, Nair, Veena A., Kang, Theresa J., Caldera, Kristin, Edwards, Dorothy F., Williams, Justin C., Prabhakaran, Vivek
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6142044/
https://www.ncbi.nlm.nih.gov/pubmed/30271318
http://dx.doi.org/10.3389/fnins.2018.00624
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author Mohanty, Rosaleena
Sinha, Anita M.
Remsik, Alexander B.
Dodd, Keith C.
Young, Brittany M.
Jacobson, Tyler
McMillan, Matthew
Thoma, Jaclyn
Advani, Hemali
Nair, Veena A.
Kang, Theresa J.
Caldera, Kristin
Edwards, Dorothy F.
Williams, Justin C.
Prabhakaran, Vivek
author_facet Mohanty, Rosaleena
Sinha, Anita M.
Remsik, Alexander B.
Dodd, Keith C.
Young, Brittany M.
Jacobson, Tyler
McMillan, Matthew
Thoma, Jaclyn
Advani, Hemali
Nair, Veena A.
Kang, Theresa J.
Caldera, Kristin
Edwards, Dorothy F.
Williams, Justin C.
Prabhakaran, Vivek
author_sort Mohanty, Rosaleena
collection PubMed
description The primary goal of this work was to apply data-driven machine learning regression to assess if resting state functional connectivity (rs-FC) could estimate measures of behavioral domains in stroke subjects who completed brain-computer interface (BCI) intervention for motor rehabilitation. The study cohort consisted of 20 chronic-stage stroke subjects exhibiting persistent upper-extremity motor deficits who received the intervention using a closed-loop neurofeedback BCI device. Over the course of this intervention, resting state functional MRI scans were collected at four distinct time points: namely, pre-intervention, mid-intervention, post-intervention and 1-month after completion of intervention. Behavioral assessments were administered outside the scanner at each time-point to collect objective measures such as the Action Research Arm Test, Nine-Hole Peg Test, and Barthel Index as well as subjective measures including the Stroke Impact Scale. The present analysis focused on neuroplasticity and behavioral outcomes measured across pre-intervention, post-intervention and 1-month post-intervention to study immediate and carry-over effects. Rs-FC, changes in rs-FC within the motor network and the behavioral measures at preceding stages were used as input features and behavioral measures and associated changes at succeeding stages were used as outcomes for machine-learning-based support vector regression (SVR) models. Potential clinical confounding factors such as age, gender, lesion hemisphere, and stroke severity were included as additional features in each of the regression models. Sequential forward feature selection procedure narrowed the search for important correlates. Behavioral outcomes at preceding time-points outperformed rs-FC-based correlates. Rs-FC and changes associated with bilateral primary motor areas were found to be important correlates of across several behavioral outcomes and were stable upon inclusion of clinical variables as well. NIH Stroke Scale and motor impairment severity were the most influential clinical variables. Comparatively, linear SVR models aided in evaluation of contribution of individual correlates and seed regions while non-linear SVR models achieved higher performance in prediction of behavioral outcomes.
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spelling pubmed-61420442018-09-28 Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning Mohanty, Rosaleena Sinha, Anita M. Remsik, Alexander B. Dodd, Keith C. Young, Brittany M. Jacobson, Tyler McMillan, Matthew Thoma, Jaclyn Advani, Hemali Nair, Veena A. Kang, Theresa J. Caldera, Kristin Edwards, Dorothy F. Williams, Justin C. Prabhakaran, Vivek Front Neurosci Neuroscience The primary goal of this work was to apply data-driven machine learning regression to assess if resting state functional connectivity (rs-FC) could estimate measures of behavioral domains in stroke subjects who completed brain-computer interface (BCI) intervention for motor rehabilitation. The study cohort consisted of 20 chronic-stage stroke subjects exhibiting persistent upper-extremity motor deficits who received the intervention using a closed-loop neurofeedback BCI device. Over the course of this intervention, resting state functional MRI scans were collected at four distinct time points: namely, pre-intervention, mid-intervention, post-intervention and 1-month after completion of intervention. Behavioral assessments were administered outside the scanner at each time-point to collect objective measures such as the Action Research Arm Test, Nine-Hole Peg Test, and Barthel Index as well as subjective measures including the Stroke Impact Scale. The present analysis focused on neuroplasticity and behavioral outcomes measured across pre-intervention, post-intervention and 1-month post-intervention to study immediate and carry-over effects. Rs-FC, changes in rs-FC within the motor network and the behavioral measures at preceding stages were used as input features and behavioral measures and associated changes at succeeding stages were used as outcomes for machine-learning-based support vector regression (SVR) models. Potential clinical confounding factors such as age, gender, lesion hemisphere, and stroke severity were included as additional features in each of the regression models. Sequential forward feature selection procedure narrowed the search for important correlates. Behavioral outcomes at preceding time-points outperformed rs-FC-based correlates. Rs-FC and changes associated with bilateral primary motor areas were found to be important correlates of across several behavioral outcomes and were stable upon inclusion of clinical variables as well. NIH Stroke Scale and motor impairment severity were the most influential clinical variables. Comparatively, linear SVR models aided in evaluation of contribution of individual correlates and seed regions while non-linear SVR models achieved higher performance in prediction of behavioral outcomes. Frontiers Media S.A. 2018-09-11 /pmc/articles/PMC6142044/ /pubmed/30271318 http://dx.doi.org/10.3389/fnins.2018.00624 Text en Copyright © 2018 Mohanty, Sinha, Remsik, Dodd, Young, Jacobson, McMillan, Thoma, Advani, Nair, Kang, Caldera, Edwards, Williams and Prabhakaran. http://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 Neuroscience
Mohanty, Rosaleena
Sinha, Anita M.
Remsik, Alexander B.
Dodd, Keith C.
Young, Brittany M.
Jacobson, Tyler
McMillan, Matthew
Thoma, Jaclyn
Advani, Hemali
Nair, Veena A.
Kang, Theresa J.
Caldera, Kristin
Edwards, Dorothy F.
Williams, Justin C.
Prabhakaran, Vivek
Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title_full Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title_fullStr Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title_full_unstemmed Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title_short Early Findings on Functional Connectivity Correlates of Behavioral Outcomes of Brain-Computer Interface Stroke Rehabilitation Using Machine Learning
title_sort early findings on functional connectivity correlates of behavioral outcomes of brain-computer interface stroke rehabilitation using machine learning
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6142044/
https://www.ncbi.nlm.nih.gov/pubmed/30271318
http://dx.doi.org/10.3389/fnins.2018.00624
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