Li Yang, Liu Jingyu, Jiang Yiqiao, Liu Yu, Lei Baiying
IEEE Trans Med Imaging. 2022 Jan;41(1):237-251. doi: 10.1109/TMI.2021.3110829. Epub 2021 Dec 30.
Dynamic functional connectivity (dFC) network inferred from resting-state fMRI reveals macroscopic dynamic neural activity patterns for brain disease identification. However, dFC methods ignore the causal influence between the brain regions. Furthermore, due to the complex non-Euclidean structure of brain networks, advanced deep neural networks are difficult to be applied for learning high-dimensional representations from brain networks. In this paper, a group constrained Kalman filter (gKF) algorithm is proposed to construct dynamic effective connectivity (dEC), where the gKF provides a more comprehensive understanding of the directional interaction within the dynamic brain networks than the dFC methods. Then, a novel virtual adversarial training convolutional neural network (VAT-CNN) is employed to extract the local features of dEC. The VAT strategy improves the robustness of the model to adversarial perturbations, and therefore avoids the overfitting problem effectively. Finally, we propose the high-order connectivity weight-guided graph attention networks (cwGAT) to aggregate features of dEC. By injecting the weight information of high-order connectivity into the attention mechanism, the cwGAT provides more effective high-level feature representations than the conventional GAT. The high-level features generated from the cwGAT are applied for binary classification and multiclass classification tasks of mild cognitive impairment (MCI). Experimental results indicate that the proposed framework achieves the classification accuracy of 90.9%, 89.8%, and 82.7% for normal control (NC) vs. early MCI (EMCI), EMCI vs. late MCI (LMCI), and NC vs. EMCI vs. LMCI classification respectively, outperforming the state-of-the-art methods significantly.
从静息态功能磁共振成像(fMRI)推断出的动态功能连接(dFC)网络揭示了用于脑部疾病识别的宏观动态神经活动模式。然而,dFC方法忽略了脑区之间的因果影响。此外,由于脑网络复杂的非欧几里得结构,先进的深度神经网络难以应用于从脑网络学习高维表示。本文提出了一种组约束卡尔曼滤波器(gKF)算法来构建动态有效连接(dEC),其中gKF比dFC方法能更全面地理解动态脑网络内的定向相互作用。然后,采用一种新颖的虚拟对抗训练卷积神经网络(VAT-CNN)来提取dEC的局部特征。VAT策略提高了模型对对抗性扰动的鲁棒性,从而有效避免了过拟合问题。最后,我们提出了高阶连接权重引导的图注意力网络(cwGAT)来聚合dEC的特征。通过将高阶连接的权重信息注入注意力机制,cwGAT比传统的图注意力网络(GAT)提供了更有效的高级特征表示。由cwGAT生成的高级特征应用于轻度认知障碍(MCI)的二分类和多分类任务。实验结果表明,所提出的框架在正常对照(NC)与早期MCI(EMCI)、EMCI与晚期MCI(LMCI)以及NC与EMCI与LMCI分类任务中分别达到了90.9%、89.8%和82.7%的分类准确率,显著优于现有方法。