Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model
Resting-state functional magnetic resonance imaging (rs-fMRI) based on the blood-oxygen-level-dependent (BOLD) signal has been widely used in healthy individuals and patients to investigate brain functions when the subjects are in a resting or task-negative state. Head motion considerably confounds...
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doaj-331f9ade377e44559d5956f7e32d8caa2020-11-24T23:34:59ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2019-02-011310.3389/fnins.2019.00169440347Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network ModelZhengshi Yang0Xiaowei Zhuang1Karthik Sreenivasan2Virendra Mishra3Dietmar Cordes4Dietmar Cordes5the Alzheimer’s Disease Neuroimaging InitiativeCleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, United StatesCleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, United StatesCleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, United StatesCleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, United StatesCleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV, United StatesDepartment of Psychology and Neuroscience, University of Colorado, Boulder, Boulder, CO, United StatesResting-state functional magnetic resonance imaging (rs-fMRI) based on the blood-oxygen-level-dependent (BOLD) signal has been widely used in healthy individuals and patients to investigate brain functions when the subjects are in a resting or task-negative state. Head motion considerably confounds the interpretation of rs-fMRI data. Nuisance regression is commonly used to reduce motion-related artifacts with six motion parameters estimated from rigid-body realignment as regressors. To further compensate for the effect of head movement, the first-order temporal derivatives of motion parameters and squared motion parameters were proposed previously as possible motion regressors. However, these additional regressors may not be sufficient to model the impact of head motion because of the complexity of motion artifacts. In addition, while using more motion-related regressors could explain more variance in the data, the neural signal may also be removed with increasing number of motion regressors. To better model how in-scanner motion affects rs-fMRI data, a robust and automated convolutional neural network (CNN) model is developed in this study to obtain optimal motion regressors. The CNN network consists of two temporal convolutional layers and the output from the network are the derived motion regressors used in the following nuisance regression. The temporal convolutional layer in the network can non-parametrically model the prolonged effect of head motion. The set of regressors derived from the neural network is compared with the same number of regressors used in a traditional nuisance regression approach. It is demonstrated that the CNN-derived regressors can more effectively reduce motion-related artifacts.https://www.frontiersin.org/article/10.3389/fnins.2019.00169/fullfMRIdenoisingconvolutional neural networkmotion artifactnuisance regression |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhengshi Yang Xiaowei Zhuang Karthik Sreenivasan Virendra Mishra Dietmar Cordes Dietmar Cordes the Alzheimer’s Disease Neuroimaging Initiative |
spellingShingle |
Zhengshi Yang Xiaowei Zhuang Karthik Sreenivasan Virendra Mishra Dietmar Cordes Dietmar Cordes the Alzheimer’s Disease Neuroimaging Initiative Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model Frontiers in Neuroscience fMRI denoising convolutional neural network motion artifact nuisance regression |
author_facet |
Zhengshi Yang Xiaowei Zhuang Karthik Sreenivasan Virendra Mishra Dietmar Cordes Dietmar Cordes the Alzheimer’s Disease Neuroimaging Initiative |
author_sort |
Zhengshi Yang |
title |
Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model |
title_short |
Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model |
title_full |
Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model |
title_fullStr |
Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model |
title_full_unstemmed |
Robust Motion Regression of Resting-State Data Using a Convolutional Neural Network Model |
title_sort |
robust motion regression of resting-state data using a convolutional neural network model |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2019-02-01 |
description |
Resting-state functional magnetic resonance imaging (rs-fMRI) based on the blood-oxygen-level-dependent (BOLD) signal has been widely used in healthy individuals and patients to investigate brain functions when the subjects are in a resting or task-negative state. Head motion considerably confounds the interpretation of rs-fMRI data. Nuisance regression is commonly used to reduce motion-related artifacts with six motion parameters estimated from rigid-body realignment as regressors. To further compensate for the effect of head movement, the first-order temporal derivatives of motion parameters and squared motion parameters were proposed previously as possible motion regressors. However, these additional regressors may not be sufficient to model the impact of head motion because of the complexity of motion artifacts. In addition, while using more motion-related regressors could explain more variance in the data, the neural signal may also be removed with increasing number of motion regressors. To better model how in-scanner motion affects rs-fMRI data, a robust and automated convolutional neural network (CNN) model is developed in this study to obtain optimal motion regressors. The CNN network consists of two temporal convolutional layers and the output from the network are the derived motion regressors used in the following nuisance regression. The temporal convolutional layer in the network can non-parametrically model the prolonged effect of head motion. The set of regressors derived from the neural network is compared with the same number of regressors used in a traditional nuisance regression approach. It is demonstrated that the CNN-derived regressors can more effectively reduce motion-related artifacts. |
topic |
fMRI denoising convolutional neural network motion artifact nuisance regression |
url |
https://www.frontiersin.org/article/10.3389/fnins.2019.00169/full |
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