Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset

The accurate identification of an attention deficit hyperactivity disorder (ADHD) subject has remained a challenge for both neuroscience research and clinical diagnosis. Unfortunately, the traditional methods concerning the classification model and feature extraction usually depend on the single-cha...

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Main Authors: Tao Zhang, Cunbo Li, Peiyang Li, Yueheng Peng, Xiaodong Kang, Chenyang Jiang, Fali Li, Xuyang Zhu, Dezhong Yao, Bharat Biswal, Peng Xu
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Entropy
Subjects:
CNN
Online Access:https://www.mdpi.com/1099-4300/22/8/893
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spelling doaj-4e50ca6160184f919a067798c476d07a2020-11-25T03:52:02ZengMDPI AGEntropy1099-43002020-08-012289389310.3390/e22080893Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI DatasetTao Zhang0Cunbo Li1Peiyang Li2Yueheng Peng3Xiaodong Kang4Chenyang Jiang5Fali Li6Xuyang Zhu7Dezhong Yao8Bharat Biswal9Peng Xu10School of Science, Xihua University, Chengdu 610039, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Bioinformatics, Chongqing University of Posts and Telecommunications, Chongqing 400065, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSichuan 81 Rehabilitation Centre, Chengdu University of TCM, Chengdu 611137, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaSchool of Life Science and Technology, Center for Information in BioMedicine, University of Electronic Science and Technology of China, Chengdu 611731, ChinaThe accurate identification of an attention deficit hyperactivity disorder (ADHD) subject has remained a challenge for both neuroscience research and clinical diagnosis. Unfortunately, the traditional methods concerning the classification model and feature extraction usually depend on the single-channel model and static measurements (i.e., functional connectivity, FC) in the small, homogenous single-site dataset, which is limited and may cause the loss of intrinsic information in functional MRI (fMRI). In this study, we proposed a new two-stage network structure by combing a separated channel convolutional neural network (SC-CNN) with an attention-based network (SC-CNN-attention) to discriminate ADHD and healthy controls on a large-scale multi-site database (5 sites and <i>n</i> = 1019). To utilize both intrinsic temporal feature and the interactions of temporal dependent in whole-brain resting-state fMRI, in the first stage of our proposed network structure, a SC- CNN is used to learn the temporal feature of each brain region, and an attention network in the second stage is adopted to capture temporal dependent features among regions and extract fusion features. Using a “leave-one-site-out” cross-validation framework, our proposed method obtained a mean classification accuracy of 68.6% on five different sites, which is higher than those reported in previous studies. The classification results demonstrate that our proposed network is robust to data variants and is also replicated across sites. The combination of the SC-CNN with the attention network is powerful to capture the intrinsic fMRI information to discriminate ADHD across multi-site resting-state fMRI data. https://www.mdpi.com/1099-4300/22/8/893deep learningCNNattentionADHD
collection DOAJ
language English
format Article
sources DOAJ
author Tao Zhang
Cunbo Li
Peiyang Li
Yueheng Peng
Xiaodong Kang
Chenyang Jiang
Fali Li
Xuyang Zhu
Dezhong Yao
Bharat Biswal
Peng Xu
spellingShingle Tao Zhang
Cunbo Li
Peiyang Li
Yueheng Peng
Xiaodong Kang
Chenyang Jiang
Fali Li
Xuyang Zhu
Dezhong Yao
Bharat Biswal
Peng Xu
Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
Entropy
deep learning
CNN
attention
ADHD
author_facet Tao Zhang
Cunbo Li
Peiyang Li
Yueheng Peng
Xiaodong Kang
Chenyang Jiang
Fali Li
Xuyang Zhu
Dezhong Yao
Bharat Biswal
Peng Xu
author_sort Tao Zhang
title Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
title_short Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
title_full Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
title_fullStr Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
title_full_unstemmed Separated Channel Attention Convolutional Neural Network (SC-CNN-Attention) to Identify ADHD in Multi-Site Rs-fMRI Dataset
title_sort separated channel attention convolutional neural network (sc-cnn-attention) to identify adhd in multi-site rs-fmri dataset
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-08-01
description The accurate identification of an attention deficit hyperactivity disorder (ADHD) subject has remained a challenge for both neuroscience research and clinical diagnosis. Unfortunately, the traditional methods concerning the classification model and feature extraction usually depend on the single-channel model and static measurements (i.e., functional connectivity, FC) in the small, homogenous single-site dataset, which is limited and may cause the loss of intrinsic information in functional MRI (fMRI). In this study, we proposed a new two-stage network structure by combing a separated channel convolutional neural network (SC-CNN) with an attention-based network (SC-CNN-attention) to discriminate ADHD and healthy controls on a large-scale multi-site database (5 sites and <i>n</i> = 1019). To utilize both intrinsic temporal feature and the interactions of temporal dependent in whole-brain resting-state fMRI, in the first stage of our proposed network structure, a SC- CNN is used to learn the temporal feature of each brain region, and an attention network in the second stage is adopted to capture temporal dependent features among regions and extract fusion features. Using a “leave-one-site-out” cross-validation framework, our proposed method obtained a mean classification accuracy of 68.6% on five different sites, which is higher than those reported in previous studies. The classification results demonstrate that our proposed network is robust to data variants and is also replicated across sites. The combination of the SC-CNN with the attention network is powerful to capture the intrinsic fMRI information to discriminate ADHD across multi-site resting-state fMRI data.
topic deep learning
CNN
attention
ADHD
url https://www.mdpi.com/1099-4300/22/8/893
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