Literature DB >> 29890408

Disease prediction using graph convolutional networks: Application to Autism Spectrum Disorder and Alzheimer's disease.

Sarah Parisot1, Sofia Ira Ktena2, Enzo Ferrante3, Matthew Lee2, Ricardo Guerrero4, Ben Glocker2, Daniel Rueckert2.   

Abstract

Graphs are widely used as a natural framework that captures interactions between individual elements represented as nodes in a graph. In medical applications, specifically, nodes can represent individuals within a potentially large population (patients or healthy controls) accompanied by a set of features, while the graph edges incorporate associations between subjects in an intuitive manner. This representation allows to incorporate the wealth of imaging and non-imaging information as well as individual subject features simultaneously in disease classification tasks. Previous graph-based approaches for supervised or unsupervised learning in the context of disease prediction solely focus on pairwise similarities between subjects, disregarding individual characteristics and features, or rather rely on subject-specific imaging feature vectors and fail to model interactions between them. In this paper, we present a thorough evaluation of a generic framework that leverages both imaging and non-imaging information and can be used for brain analysis in large populations. This framework exploits Graph Convolutional Networks (GCNs) and involves representing populations as a sparse graph, where its nodes are associated with imaging-based feature vectors, while phenotypic information is integrated as edge weights. The extensive evaluation explores the effect of each individual component of this framework on disease prediction performance and further compares it to different baselines. The framework performance is tested on two large datasets with diverse underlying data, ABIDE and ADNI, for the prediction of Autism Spectrum Disorder and conversion to Alzheimer's disease, respectively. Our analysis shows that our novel framework can improve over state-of-the-art results on both databases, with 70.4% classification accuracy for ABIDE and 80.0% for ADNI.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Alzheimer’s disease; Autism Spectrum Disorder; Graph convolutional networks; Graphs; Semi-supervised classification; Spectral theory

Mesh:

Year:  2018        PMID: 29890408     DOI: 10.1016/j.media.2018.06.001

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  44 in total

1.  Interpretation of Brain Morphology in Association to Alzheimer's Disease Dementia Classification Using Graph Convolutional Networks on Triangulated Meshes.

Authors:  Emanuel Azcona; Pierre Besson; Yunan Wu; Arjun Punjabi; Adam Martersteck; Amil Dravid; Todd B Parrish; S Kathleen Bandt; Aggelos K Katsaggelos
Journal:  Shape Med Imaging (2020)       Date:  2020-10-03

2.  Multiple Deep Learning Architectures Achieve Superior Performance Diagnosing Autism Spectrum Disorder Using Features Previously Extracted from Structural and Functional MRI.

Authors:  Cooper Mellema; Alex Treacher; Kevin Nguyen; Albert Montillo
Journal:  Proc IEEE Int Symp Biomed Imaging       Date:  2019-07-11

3.  Predicting lung nodule malignancies by combining deep convolutional neural network and handcrafted features.

Authors:  Shulong Li; Panpan Xu; Bin Li; Liyuan Chen; Zhiguo Zhou; Hongxia Hao; Yingying Duan; Michael Folkert; Jianhua Ma; Shiying Huang; Steve Jiang; Jing Wang
Journal:  Phys Med Biol       Date:  2019-09-04       Impact factor: 3.609

4.  Improving Diagnosis of Autism Spectrum Disorder and Disentangling its Heterogeneous Functional Connectivity Patterns Using Capsule Networks.

Authors:  Zhicheng Jiao; Hongming Li; Yong Fan
Journal:  Proc IEEE Int Symp Biomed Imaging       Date:  2020-05-22

5.  Functional Connectivity-Based Prediction of Autism on Site Harmonized ABIDE Dataset.

Authors:  Madhura Ingalhalikar; Sumeet Shinde; Arnav Karmarkar; Archith Rajan; D Rangaprakash; Gopikrishna Deshpande
Journal:  IEEE Trans Biomed Eng       Date:  2021-11-19       Impact factor: 4.538

6.  A Mutual Multi-Scale Triplet Graph Convolutional Network for Classification of Brain Disorders Using Functional or Structural Connectivity.

Authors:  Dongren Yao; Jing Sui; Mingliang Wang; Erkun Yang; Yeerfan Jiaerken; Na Luo; Pew-Thian Yap; Mingxia Liu; Dinggang Shen
Journal:  IEEE Trans Med Imaging       Date:  2021-04-01       Impact factor: 10.048

7.  Sex Differences of Cerebellum and Cerebrum: Evidence from Graph Convolutional Network.

Authors:  Yang Gao; Yan Tang; Hao Zhang; Yuan Yang; Tingting Dong; Qiaolan Jia
Journal:  Interdiscip Sci       Date:  2022-02-01       Impact factor: 2.233

8.  Patch-Based Abnormality Maps for Improved Deep Learning-Based Classification of Huntington's Disease.

Authors:  Kilian Hett; Rémi Giraud; Hans Johnson; Jane S Paulsen; Jeffrey D Long; Ipek Oguz
Journal:  Med Image Comput Comput Assist Interv       Date:  2020-09-29

9.  Identifying resting-state effective connectivity abnormalities in drug-naïve major depressive disorder diagnosis via graph convolutional networks.

Authors:  Eunji Jun; Kyoung-Sae Na; Wooyoung Kang; Jiyeon Lee; Heung-Il Suk; Byung-Joo Ham
Journal:  Hum Brain Mapp       Date:  2020-08-19       Impact factor: 5.038

Review 10.  Brain imaging-based machine learning in autism spectrum disorder: methods and applications.

Authors:  Ming Xu; Vince Calhoun; Rongtao Jiang; Weizheng Yan; Jing Sui
Journal:  J Neurosci Methods       Date:  2021-06-24       Impact factor: 2.390

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