LCGNet:利用 fMRI 进行功能连接网络分析的局部序列特征耦合全局表征学习。

Jie Zhou, Biao Jie, Zhengdong Wang, Zhixiang Zhang, Tongchun Du, Weixin Bian, Yang Yang, Jun Jia
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引用次数: 0

摘要

对静息态功能磁共振成像(rs-fMRI)得出的功能连接网络(FCN)进行分析,极大地促进了我们对阿尔茨海默病(AD)和注意缺陷多动障碍(ADHD)等脑部疾病的了解。先进的机器学习技术,如卷积神经网络(CNN),已被用于学习 FCN 的高级特征表征,以实现脑部疾病的自动分类。尽管卷积神经网络中的卷积运算能很好地提取 FCN 的局部属性,但通常不能很好地捕捉 FCN 的全局时间表示。最近,变换器技术在各种任务中表现出了不俗的性能,这归功于它在捕捉全局时间特征表征方面有效的自我注意机制。然而,它无法有效模拟 FCN 的局部网络特征。为此,我们在本文中提出了一种用于局部序列特征耦合全局表征学习(LCGNet)的新型网络结构,以利用卷积运算和自注意机制来增强 FCN 表征学习。具体来说,我们首先使用重叠滑动窗口方法为每个受试者构建一个动态 FCN。然后,我们利用 CNN 的双主干分支和转换器构建了三个连续组件(即边缘到顶点层、顶点到网络层和网络到时序层),以提取和耦合大脑网络的局部到全局拓扑信息。在两个真实数据集(即 ADNI 和 ADHD-200)的 rs-fMRI 数据上的实验结果表明了我们的 LCGNet 的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LCGNet: Local Sequential Feature Coupling Global Representation Learning for Functional Connectivity Network Analysis with fMRI.

Analysis of functional connectivity networks (FCNs) derived from resting-state functional magnetic resonance imaging (rs-fMRI) has greatly advanced our understanding of brain diseases, including Alzheimer's disease (AD) and attention deficit hyperactivity disorder (ADHD). Advanced machine learning techniques, such as convolutional neural networks (CNNs), have been used to learn high-level feature representations of FCNs for automated brain disease classification. Even though convolution operations in CNNs are good at extracting local properties of FCNs, they generally cannot well capture global temporal representations of FCNs. Recently, the transformer technique has demonstrated remarkable performance in various tasks, which is attributed to its effective self-attention mechanism in capturing the global temporal feature representations. However, it cannot effectively model the local network characteristics of FCNs. To this end, in this paper, we propose a novel network structure for Local sequential feature Coupling Global representation learning (LCGNet) to take advantage of convolutional operations and self-attention mechanisms for enhanced FCN representation learning. Specifically, we first build a dynamic FCN for each subject using an overlapped sliding window approach. We then construct three sequential components (i.e., edge-to-vertex layer, vertex-to-network layer, and network-to-temporality layer) with a dual backbone branch of CNN and transformer to extract and couple from local to global topological information of brain networks. Experimental results on two real datasets (i.e., ADNI and ADHD-200) with rs-fMRI data show the superiority of our LCGNet.

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