TY - JOUR
T1 - A multi-domain connectome convolutional neural network for identifying schizophrenia from EEG connectivity patterns
AU - Phang, Chun Ren
AU - Noman, Fuad
AU - Hussain, Hadri
AU - Ting, Chee Ming
AU - Ombao, Hernando
N1 - Funding Information:
Manuscript received April 14, 2019; revised August 15, 2019; accepted September 2, 2019. Date of publication September 13, 2019; date of current version May 6, 2020. This work was supported in part by the Universiti Teknologi Malaysia and the Ministry of Higher Education, Malaysia under Grants Q.J130000.2545.19H3, R.J130000.7851.5F157, and R.J130000.7845.4L840 and in part by the King Abdullah University of Science and Technology under Baseline Research Fund. (Corresponding author: Chee-Ming Ting.) C.-R. Phang, F. Noman, and H. Hussain are with the School of Biomedical Engineering and Health Sciences, Universiti Teknologi Malaysia, 81310 Skudai, Malaysia (e-mail:, [email protected]; [email protected]; [email protected]).
Publisher Copyright:
© 2013 IEEE.
Copyright:
Copyright 2020 Elsevier B.V., All rights reserved.
PY - 2020/5
Y1 - 2020/5
N2 - Objective: We exploit altered patterns in brain functional connectivity as features for automatic discriminative analysis of neuropsychiatric patients. Deep learning methods have been introduced to functional network classification only very recently for fMRI, and the proposed architectures essentially focused on a single type of connectivity measure. Methods: We propose a deep convolutional neural network (CNN) framework for classification of electroencephalogram (EEG)-derived brain connectome in schizophrenia (SZ). To capture complementary aspects of disrupted connectivity in SZ, we explore combination of various connectivity features consisting of time and frequency-domain metrics of effective connectivity based on vector autoregressive model and partial directed coherence, and complex network measures of network topology. We design a novel multi-domain connectome CNN (MDC-CNN) based on a parallel ensemble of 1D and 2D CNNs to integrate the features from various domains and dimensions using different fusion strategies. We also consider an extension to dynamic brain connectivity using the recurrent neural networks. Results: Hierarchical latent representations learned by the multiple convolutional layers from EEG connectivity reveals apparent group differences between SZ and healthy controls (HC). Results on a large resting-state EEG dataset show that the proposed CNNs significantly outperform traditional support vector machine classifier. The MDC-CNN with combined connectivity features further improves performance over single-domain CNNs using individual features, achieving remarkable accuracy of 91.69% with a decision-level fusion. Conclusion: The proposed MDC-CNN by integrating information from diverse brain connectivity descriptors is able to accurately discriminate SZ from HC. Significance: The new framework is potentially useful for developing diagnostic tools for SZ and other disorders.
AB - Objective: We exploit altered patterns in brain functional connectivity as features for automatic discriminative analysis of neuropsychiatric patients. Deep learning methods have been introduced to functional network classification only very recently for fMRI, and the proposed architectures essentially focused on a single type of connectivity measure. Methods: We propose a deep convolutional neural network (CNN) framework for classification of electroencephalogram (EEG)-derived brain connectome in schizophrenia (SZ). To capture complementary aspects of disrupted connectivity in SZ, we explore combination of various connectivity features consisting of time and frequency-domain metrics of effective connectivity based on vector autoregressive model and partial directed coherence, and complex network measures of network topology. We design a novel multi-domain connectome CNN (MDC-CNN) based on a parallel ensemble of 1D and 2D CNNs to integrate the features from various domains and dimensions using different fusion strategies. We also consider an extension to dynamic brain connectivity using the recurrent neural networks. Results: Hierarchical latent representations learned by the multiple convolutional layers from EEG connectivity reveals apparent group differences between SZ and healthy controls (HC). Results on a large resting-state EEG dataset show that the proposed CNNs significantly outperform traditional support vector machine classifier. The MDC-CNN with combined connectivity features further improves performance over single-domain CNNs using individual features, achieving remarkable accuracy of 91.69% with a decision-level fusion. Conclusion: The proposed MDC-CNN by integrating information from diverse brain connectivity descriptors is able to accurately discriminate SZ from HC. Significance: The new framework is potentially useful for developing diagnostic tools for SZ and other disorders.
KW - brain connectivity networks
KW - convolution neural networks
KW - deep learning
KW - EEG
KW - ensemble classifiers
UR - http://www.scopus.com/inward/record.url?scp=85084720548&partnerID=8YFLogxK
U2 - 10.1109/JBHI.2019.2941222
DO - 10.1109/JBHI.2019.2941222
M3 - Article
C2 - 31536026
AN - SCOPUS:85084720548
SN - 2168-2194
VL - 24
SP - 1333
EP - 1343
JO - IEEE Journal of Biomedical and Health Informatics
JF - IEEE Journal of Biomedical and Health Informatics
IS - 5
ER -