Deep Learning Framework using Siamese Neural Network for Diagnosis of Autism from Brain Magnetic Resonance Imaging

被引:10
作者
Tummala, Sudhakar [1 ]
机构
[1] Velagapudi Ramakrishna Siddhartha Engn Coll, Dept Elect & Commun Engn, Vijayawada, Andhra Pradesh, India
来源
2021 6TH INTERNATIONAL CONFERENCE FOR CONVERGENCE IN TECHNOLOGY (I2CT) | 2021年
关键词
deep learning; Siamese network; ResNet50; autism; magnetic resonance imaging;
D O I
10.1109/I2CT51068.2021.9418143
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Autism spectrum disorder (ASD) is characterized by structural and functional brain changes that contribute to memory, attention and social interaction. The aim of this research is to develop a deep learning framework using Siamese neural nets for computer aided diagnosis of ASD using T1-weighted magnetic resonance imaging (MRI) of 102 control and 112 ASD patients from autism brain imaging data exchange. The preprocessing of the images involves reorientation to a standard space, cropping followed by affine registration to a template. Siamese Neural Network (SNN) with pre-trained ResNet50 model was employed for this study. After preprocessing, the affine registered images are down sampled and reshaped to match with the required input size of the ResNet50. Further, 1070 positive and negative image pairs are formed for training and validation of the SNN model. Final layer of ResNet50 is global averaged and an extra dense layer is added which represents the input image embedding. Further, L1-distance is computed between the embeddings of the two inputs which is further used to backpropagate the error computed using the contrastive loss function. The quality metrics used during 5-fold stratified cross-validation are accuracy, recall, precision and f1-score and these metrics reached a value of 0.99 during validation. Therefore, the developed SNN based tool could be used for diagnosis of autism from T1-weighted MRI.
引用
收藏
页数:5
相关论文
共 18 条
  • [1] Chicco D, 2021, METHODS MOL BIOL, V2190, P73, DOI 10.1007/978-1-0716-0826-5_3
  • [2] Classification of Alzheimer's Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50
    Fulton, Lawrence, V
    Dolezel, Diane
    Harrop, Jordan
    Yan, Yan
    Fulton, Christopher P.
    [J]. BRAIN SCIENCES, 2019, 9 (09)
  • [3] Autism spectrum disorders: developmental disconnection syndromes
    Geschwind, Daniel H.
    Levitt, Pat
    [J]. CURRENT OPINION IN NEUROBIOLOGY, 2007, 17 (01) : 103 - 111
  • [4] Gorgolewski Krzysztof, 2011, Front Neuroinform, V5, P13, DOI 10.3389/fninf.2011.00013
  • [5] Deep Learning in Alzheimer's Disease: Diagnostic Classification and Prognostic Prediction Using Neuroimaging Data
    Jo, Taeho
    Nho, Kwangsik
    Saykin, Andrew J.
    [J]. FRONTIERS IN AGING NEUROSCIENCE, 2019, 11
  • [6] Residual Deep Convolutional Neural Network Predicts MGMT Methylation Status
    Korfiatis, Panagiotis
    Kline, Timothy L.
    Lachance, Daniel H.
    Parney, Ian F.
    Buckner, Jan C.
    Erickson, Bradley J.
    [J]. JOURNAL OF DIGITAL IMAGING, 2017, 30 (05) : 622 - 628
  • [7] Metric learning with spectral graph convolutions on brain connectivity networks
    Ktena, Sofia Ira
    Parisot, Sarah
    Ferrante, Enzo
    Rajchl, Martin
    Lee, Matthew
    Glocker, Ben
    Rueckert, Daniel
    [J]. NEUROIMAGE, 2018, 169 : 431 - 442
  • [8] Marjane Khodatars A.S., 2020, DEEP LEARN NEUROIMAG DEEP LEARN NEUROIMAG
  • [9] A Deep Siamese Convolution Neural Network for Multi-Class Classification of Alzheimer Disease
    Mehmood, Atif
    Maqsood, Muazzam
    Bashir, Muzaffar
    Yang Shuyuan
    [J]. BRAIN SCIENCES, 2020, 10 (02)
  • [10] Three shades of grey: detecting brain abnormalities in children with autism using source-, voxel- and surface-based morphometry
    Pappaianni, Edoardo
    Siugzdaite, Roma
    Vettori, Sofie
    Venuti, Paola
    Job, Remo
    Grecucci, Alessandro
    [J]. EUROPEAN JOURNAL OF NEUROSCIENCE, 2018, 47 (06) : 690 - 700