Detection of autism spectrum disorder using multi-scale enhanced graph convolutional network

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation and Systems Pub Date : 2024-06-21 DOI:10.1049/ccs2.12108
Uday Singh, Shailendra Shukla, Manoj Madhava Gore
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Abstract

Magnetic Resonance Imaging (MRI) based Autism Spectrum Disorder (ASD) detection approaches face various challenges due to variations in brain connectivity patterns, limited sample sizes, and heterogeneity of available data. These challenges make it hard to find consistent imaging markers. To address these issues, researchers have focused on advanced analysis methods, such as multi-modal imaging techniques and graph-based approaches to gain a comprehensive understanding of ASD neurobiology. However, existing graph-based approaches for ASD detection have primarily focused on pairwise similarities between individuals, neglecting individual characteristics and features. A novel framework to detect ASD using a Multi-Scale Enhanced Graph Convolutional Network (MSE-GCN). The framework combines the functional connectivity of resting-state functional MRI (rs-fMRI) with non-imaging phenotype data from Autism Brain Imaging Data Exchange-I (ABIDE-I). The framework uses MSE-GCN to represent individuals as node in a population graph. Each node corresponds to an individual and connects to feature vectors from imaging data. Edge weights between nodes are assigned to integrate phenotypic information. Then, the multiple parallel GCN layers are designed using random walk embedding. The output of these GCN layers is then combined in the fully connected layer to detect ASD effectively. The performance of the framework is evaluated using the ABIDE-I dataset. In addition, Recursive Feature Elimination and Multilayer Perceptron are utilised for feature selection. The outcome of this approach shows more than 10% advancement in accuracy, achieving an accuracy of 83% by incorporating phenotypic data in conjunction with MRI data within a GCN.

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利用多尺度增强图卷积网络检测自闭症谱系障碍
基于磁共振成像(MRI)的自闭症谱系障碍(ASD)检测方法面临着各种挑战,原因包括大脑连接模式的变化、样本量有限以及可用数据的异质性。这些挑战导致很难找到一致的成像标记。为了解决这些问题,研究人员将重点放在了先进的分析方法上,如多模态成像技术和基于图的方法,以获得对 ASD 神经生物学的全面了解。然而,现有的基于图的 ASD 检测方法主要关注个体间的成对相似性,忽略了个体特征和特点。一种利用多尺度增强图卷积网络(MSE-GCN)检测 ASD 的新型框架。该框架将静息态功能磁共振成像(rs-fMRI)的功能连接性与自闭症脑成像数据交换-I(ABIDE-I)的非成像表型数据相结合。该框架使用 MSE-GCN 将个体表示为群体图中的节点。每个节点对应一个个体,并与成像数据中的特征向量相连。节点之间的边缘权重用于整合表型信息。然后,使用随机游走嵌入法设计多个并行 GCN 层。这些 GCN 层的输出在全连接层中进行组合,从而有效检测 ASD。我们使用 ABIDE-I 数据集对该框架的性能进行了评估。此外,还利用递归特征消除和多层感知器进行特征选择。通过在 GCN 中结合表型数据和磁共振成像数据,该方法的准确率提高了 10%以上,达到了 83%。
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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
期刊最新文献
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