Do it the transformer way: A comprehensive review of brain and vision transformers for autism spectrum disorder diagnosis and classification

被引:10
作者
Alharthi, Asrar G. [1 ]
Alzahrani, Salha M. [1 ]
机构
[1] Taif Univ, Coll Comp & Informat Technol, Dept Comp Sci, Taif, Saudi Arabia
关键词
Autism spectrum disorder; ASD; MRI; fMRI; sMRI; Neuroimaging; Classification; Deep learning; Transfer learning; Vision transformers; Brain transformers; CONNECTIVITY-BASED PREDICTION; FUNCTIONAL CONNECTIVITY;
D O I
10.1016/j.compbiomed.2023.107667
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Autism spectrum disorder (ASD) is a condition observed in children who display abnormal patterns of interaction, behavior, and communication with others. Despite extensive research efforts, the underlying causes of this neurodevelopmental disorder and its biomarkers remain unknown. However, advancements in artificial intelligence and machine learning have improved clinicians' ability to diagnose ASD. This review paper investigates various MRI modalities to identify distinct features that characterize individuals with ASD compared to typical control subjects. The review then moves on to explore deep learning models for ASD diagnosis, including convolutional neural networks (CNNs), autoencoders, graph convolutions, attention networks, and other models. CNNs and their variations are particularly effective due to their capacity to learn structured image representations and identify reliable biomarkers for brain disorders. Computer vision transformers often employ CNN architectures with transfer learning techniques like fine-tuning and layer freezing to enhance image classification performance, surpassing traditional machine learning models. This review paper contributes in three main ways. Firstly, it provides a comprehensive overview of a recommended architecture for using vision transformers in the systematic ASD diagnostic process. To this end, the paper investigates various pre-trained vision architectures such as VGG, ResNet, Inception, InceptionResNet, DenseNet, and Swin models that were fine-tuned for ASD diagnosis and classification. Secondly, it discusses the vision transformers of 2020th like BiT, ViT, MobileViT, and ConvNeXt, and applying transfer learning methods in relation to their prospective practicality in ASD classification. Thirdly, it explores brain transformers that are pre-trained on medically rich data and MRI neuroimaging datasets. The paper recommends a systematic architecture for ASD diagnosis using brain transformers. It also reviews recently developed brain transformer-based models, such as METAFormer, Com-BrainTF, Brain Network, ST-Transformer, STCAL, BolT, and BrainFormer, discussing their deep transfer learning architectures and results in ASD detection. Additionally, the paper summarizes and discusses brain-related transformers for various brain disorders, such as MSGTN, STAGIN, and MedTransformer, in relation to their potential usefulness in ASD. The study suggests that developing specialized transformer-based models, following the success of natural language processing (NLP), can offer new directions for image classification problems in ASD brain biomarkers learning and classification. By incorporating the attention mechanism, treating MRI modalities as sequence prediction tasks trained on brain disorder classification problems, and fine-tuned on ASD datasets, brain transformers can show a great promise in ASD diagnosis.
引用
收藏
页数:25
相关论文
共 124 条
[1]   DarkASDNet: Classification of ASD on Functional MRI Using Deep Neural Network [J].
Ahammed, Md Shale ;
Niu, Sijie ;
Ahmed, Md Rishad ;
Dong, Jiwen ;
Gao, Xizhan ;
Chen, Yuehui .
FRONTIERS IN NEUROINFORMATICS, 2021, 15
[2]   Classification of schizophrenia-associated brain regions in resting-state fMRI [J].
Ahmad, Fayyaz ;
Ahmad, Iftikhar ;
Guerrero-Sanchez, Yolanda .
EUROPEAN PHYSICAL JOURNAL PLUS, 2023, 138 (01)
[3]   Single Volume Image Generator and Deep Learning-Based ASD Classification [J].
Ahmed, Md Rishad ;
Zhang, Yuan ;
Liu, Yi ;
Liao, Hongen .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2020, 24 (11) :3044-3054
[4]   Autism Spectrum Disorder Detection Based on Wavelet Transform of BOLD fMRI Signals Using Pre-trained Convolution Neural Network [J].
Al-Hiyali, Mohammed I. ;
Yahya, Norashikin ;
Faye, Ibrahima ;
Khan, Zia .
INTERNATIONAL JOURNAL OF INTEGRATED ENGINEERING, 2021, 13 (05) :49-56
[5]   The Role of Structure MRI in Diagnosing Autism [J].
Ali, Mohamed T. ;
ElNakieb, Yaser ;
Elnakib, Ahmed ;
Shalaby, Ahmed ;
Mahmoud, Ali ;
Ghazal, Mohammed ;
Yousaf, Jawad ;
Abu Khalifeh, Hadil ;
Casanova, Manuel ;
Barnes, Gregory ;
El-Baz, Ayman .
DIAGNOSTICS, 2022, 12 (01)
[6]   ASD-SAENet: A Sparse Autoencoder, and Deep-Neural Network Model for Detecting Autism Spectrum Disorder (ASD) Using fMRI Data [J].
Almuqhim, Fahad ;
Saeed, Fahad .
FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2021, 15
[7]   Autism spectrum disorder characterization in children by capturing local-regional brain changes in MRI [J].
Alvarez-Jimenez, Charlems ;
Munera-Garzon, Nicolas ;
Zuluaga, Maria A. ;
Velasco, Nelson F. ;
Romero, Eduardo .
MEDICAL PHYSICS, 2020, 47 (01) :119-131
[8]   A3C-TL-GTO: Alzheimer Automatic Accurate Classification Using Transfer Learning and Artificial Gorilla Troops Optimizer [J].
Baghdadi, Nadiah A. ;
Malki, Amer ;
Balaha, Hossam Magdy ;
Badawy, Mahmoud ;
Elhosseini, Mostafa .
SENSORS, 2022, 22 (11)
[9]   Machine learning for autism spectrum disorder diagnosis using structural magnetic resonance imaging: Promising but challenging [J].
Bahathiq, Reem Ahmed ;
Banjar, Haneen ;
Bamaga, Ahmed K. ;
Jarraya, Salma Kammoun .
FRONTIERS IN NEUROINFORMATICS, 2022, 16
[10]  
Bannadabhavi A, 2023, Arxiv, DOI [arXiv:2307.10181, 10.48550/arXiv.2307.10181,arXiv]