Literature DB >> 34274419

MEGnet: Automatic ICA-based artifact removal for MEG using spatiotemporal convolutional neural networks.

Alex H Treacher1, Prabhat Garg2, Elizabeth Davenport3, Ryan Godwin4, Amy Proskovec3, Leonardo Guimaraes Bezerra4, Gowtham Murugesan5, Ben Wagner3, Christopher T Whitlow4, Joel D Stitzel4, Joseph A Maldjian6, Albert A Montillo7.   

Abstract

Magnetoencephalography (MEG) is a functional neuroimaging tool that records the magnetic fields induced by neuronal activity; however, signal from non-neuronal sources can corrupt the data. Eye-blinks, saccades, and cardiac activity are three of the most common sources of non-neuronal artifacts. They can be measured by affixing eye proximal electrodes, as in electrooculography (EOG), and chest electrodes, as in electrocardiography (ECG), however this complicates imaging setup, decreases patient comfort, and can induce further artifacts from movement. This work proposes an EOG- and ECG-free approach to identify eye-blinks, saccades, and cardiac activity signals for automated artifact suppression. The contribution of this work is three-fold. First, using a data driven, multivariate decomposition approach based on Independent Component Analysis (ICA), a highly accurate artifact classifier is constructed as an amalgam of deep 1-D and 2-D Convolutional Neural Networks (CNNs) to automate the identification and removal of ubiquitous whole brain artifacts including eye-blink, saccade, and cardiac artifacts. The specific architecture of this network is optimized through an unbiased, computer-based hyperparameter random search. Second, visualization methods are applied to the learned abstraction to reveal what features the model uses and to bolster user confidence in the model's training and potential for generalization. Finally, the model is trained and tested on both resting-state and task MEG data from 217 subjects, and achieves a new state-of-the-art in artifact detection accuracy of 98.95% including 96.74% sensitivity and 99.34% specificity on the held out test-set. This work automates MEG processing for both clinical and research use, adapts to the acquired acquisition time, and can obviate the need for EOG or ECG electrodes for artifact detection.
Copyright © 2021. Published by Elsevier Inc.

Entities:  

Keywords:  Artifact; Automation; Convolutional neural network; Deep learning; ICA; MEG

Mesh:

Year:  2021        PMID: 34274419      PMCID: PMC9125748          DOI: 10.1016/j.neuroimage.2021.118402

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   7.400


  33 in total

Review 1.  Exploring the brain network: a review on resting-state fMRI functional connectivity.

Authors:  Martijn P van den Heuvel; Hilleke E Hulshoff Pol
Journal:  Eur Neuropsychopharmacol       Date:  2010-05-14       Impact factor: 4.600

2.  Ocular and cardiac artifact rejection for real-time analysis in MEG.

Authors:  Lukas Breuer; Jürgen Dammers; Timothy P L Roberts; N Jon Shah
Journal:  J Neurosci Methods       Date:  2014-06-19       Impact factor: 2.390

3.  Predicting dementia in Parkinson disease by combining neurophysiologic and cognitive markers.

Authors:  Kim T E Olde Dubbelink; Arjan Hillebrand; Jos W R Twisk; Jan Berend Deijen; Diederick Stoffers; Ben A Schmand; Cornelis J Stam; Henk W Berendse
Journal:  Neurology       Date:  2013-12-18       Impact factor: 9.910

4.  Comparing MEG and high-density EEG for intrinsic functional connectivity mapping.

Authors:  N Coquelet; X De Tiège; F Destoky; L Roshchupkina; M Bourguignon; S Goldman; P Peigneux; V Wens
Journal:  Neuroimage       Date:  2020-01-20       Impact factor: 6.556

5.  Identification of major depressive disorder and prediction of treatment response using functional connectivity between the prefrontal cortices and subgenual anterior cingulate: A real-world study.

Authors:  Qiang Wang; Shui Tian; Hao Tang; Xiaoxue Liu; Rui Yan; Lingling Hua; Jiabo Shi; Yu Chen; Rongxin Zhu; Qing Lu; Zhijian Yao
Journal:  J Affect Disord       Date:  2019-04-08       Impact factor: 4.839

6.  Autoreject: Automated artifact rejection for MEG and EEG data.

Authors:  Mainak Jas; Denis A Engemann; Yousra Bekhti; Federico Raimondo; Alexandre Gramfort
Journal:  Neuroimage       Date:  2017-06-20       Impact factor: 6.556

7.  Adding dynamics to the Human Connectome Project with MEG.

Authors:  L J Larson-Prior; R Oostenveld; S Della Penna; G Michalareas; F Prior; A Babajani-Feremi; J-M Schoffelen; L Marzetti; F de Pasquale; F Di Pompeo; J Stout; M Woolrich; Q Luo; R Bucholz; P Fries; V Pizzella; G L Romani; M Corbetta; A Z Snyder
Journal:  Neuroimage       Date:  2013-05-20       Impact factor: 6.556

8.  ICA-based artifact correction improves spatial localization of adaptive spatial filters in MEG.

Authors:  Zainab Fatima; Maher A Quraan; Natasa Kovacevic; Anthony Randal McIntosh
Journal:  Neuroimage       Date:  2013-04-18       Impact factor: 6.556

9.  Brainstorm: a user-friendly application for MEG/EEG analysis.

Authors:  François Tadel; Sylvain Baillet; John C Mosher; Dimitrios Pantazis; Richard M Leahy
Journal:  Comput Intell Neurosci       Date:  2011-04-13

10.  Loss of brain inter-frequency hubs in Alzheimer's disease.

Authors:  J Guillon; Y Attal; O Colliot; V La Corte; B Dubois; D Schwartz; M Chavez; F De Vico Fallani
Journal:  Sci Rep       Date:  2017-09-07       Impact factor: 4.379

View more
  2 in total

1.  ABOT: an open-source online benchmarking tool for machine learning-based artefact detection and removal methods from neuronal signals.

Authors:  Marcos Fabietti; Mufti Mahmud; Ahmad Lotfi; M Shamim Kaiser
Journal:  Brain Inform       Date:  2022-09-01

2.  Interference suppression techniques for OPM-based MEG: Opportunities and challenges.

Authors:  Robert A Seymour; Nicholas Alexander; Stephanie Mellor; George C O'Neill; Tim M Tierney; Gareth R Barnes; Eleanor A Maguire
Journal:  Neuroimage       Date:  2021-12-18       Impact factor: 6.556

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.