Frontiers in Human Neuroscience (Jun 2021)

Large-Scale Brain Functional Network Integration for Discrimination of Autism Using a 3-D Deep Learning Model

  • Ming Yang,
  • Ming Yang,
  • Ming Yang,
  • Menglin Cao,
  • Menglin Cao,
  • Menglin Cao,
  • Yuhao Chen,
  • Yuhao Chen,
  • Yuhao Chen,
  • Yanni Chen,
  • Geng Fan,
  • Geng Fan,
  • Geng Fan,
  • Chenxi Li,
  • Chenxi Li,
  • Chenxi Li,
  • Jue Wang,
  • Jue Wang,
  • Jue Wang,
  • Tian Liu,
  • Tian Liu,
  • Tian Liu

DOI
https://doi.org/10.3389/fnhum.2021.687288
Journal volume & issue
Vol. 15

Abstract

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GoalBrain functional networks (BFNs) constructed using resting-state functional magnetic resonance imaging (fMRI) have proven to be an effective way to understand aberrant functional connectivity in autism spectrum disorder (ASD) patients. It is still challenging to utilize these features as potential biomarkers for discrimination of ASD. The purpose of this work is to classify ASD and normal controls (NCs) using BFNs derived from rs-fMRI.MethodsA deep learning framework was proposed that integrated convolutional neural network (CNN) and channel-wise attention mechanism to model both intra- and inter-BFN associations simultaneously for ASD diagnosis. We investigate the effects of each BFN on performance and performed inter-network connectivity analysis between each pair of BFNs. We compared the performance of our CNN model with some state-of-the-art algorithms using functional connectivity features.ResultsWe collected 79 ASD patients and 105 NCs from the ABIDE-I dataset. The mean accuracy of our classification algorithm was 77.74% for classification of ASD versus NCs.ConclusionThe proposed model is able to integrate information from multiple BFNs to improve detection accuracy of ASD.SignificanceThese findings suggest that large-scale BFNs is promising to serve as reliable biomarkers for diagnosis of ASD.

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