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基于深度学习的图变换功能连接预测

Functional Connectivity Prediction With Deep Learning for Graph Transformation.

作者信息

Etemadyrad Negar, Gao Yuyang, Li Qingzhe, Guo Xiaojie, Krueger Frank, Lin Qixiang, Qiu Deqiang, Zhao Liang

出版信息

IEEE Trans Neural Netw Learn Syst. 2024 Apr;35(4):4862-4875. doi: 10.1109/TNNLS.2022.3197337. Epub 2024 Apr 4.

Abstract

Inferring resting-state functional connectivity (FC) from anatomical brain wiring, known as structural connectivity (SC), is of enormous significance in neuroscience for understanding biological neuronal networks and treating mental diseases. Both SC and FC are networks where the nodes are brain regions, and in SC, the edges are the physical fiber nerves among the nodes, while in FC, the edges are the nodes' coactivation relations. Despite the importance of SC and FC, until very recently, the rapidly growing research body on this topic has generally focused on either linear models or computational models that rely heavily on heuristics and simple assumptions regarding the mapping between FC and SC. However, the relationship between FC and SC is actually highly nonlinear and complex and contains considerable randomness; additional factors, such as the subject's age and health, can also significantly impact the SC-FC relationship and hence cannot be ignored. To address these challenges, here, we develop a novel SC-to-FC generative adversarial network (SF-GAN) framework for mapping SC to FC, along with additional metafeatures based on a newly proposed graph neural network-based generative model that is capable of learning the stochasticity. Specifically, a new graph-based conditional generative adversarial nets model is proposed, where edge convolution layers are leveraged to encode the graph patterns in the SC in the form of a graph representation. New edge deconvolution layers are then utilized to decode the representation back to FC. Additional metafeatures of subjects' profile information are integrated into the graph representation with newly designed sparse-regularized layers that can automatically select features that impact FC. Finally, we have also proposed new post hoc explainer of our SF-GAN, which can identify which subgraphs in SC strongly influence which subgraphs in FC by a new multilevel edge-correlation-guided graph clustering problem. The results of experiments conducted to test the new model confirm that it significantly outperforms existing state-of-the-art methods, with additional interpretability for identifying important metafeatures and subgraphs.

摘要

从大脑解剖布线推断静息态功能连接(FC),即所谓的结构连接(SC),在神经科学中对于理解生物神经网络和治疗精神疾病具有极其重要的意义。SC和FC都是以脑区为节点的网络,在SC中,边是节点之间的物理纤维神经,而在FC中,边是节点的共激活关系。尽管SC和FC很重要,但直到最近,关于这个主题的快速增长的研究主体通常集中在线性模型或严重依赖启发式方法以及关于FC和SC之间映射的简单假设的计算模型上。然而,FC和SC之间的关系实际上是非线性且复杂的,并且包含相当大的随机性;其他因素,如受试者的年龄和健康状况,也会显著影响SC-FC关系,因此不能被忽视。为了应对这些挑战,我们在此开发了一种新颖的从SC到FC的生成对抗网络(SF-GAN)框架,用于将SC映射到FC,并基于一种新提出的能够学习随机性的基于图神经网络的生成模型添加额外的元特征。具体而言,提出了一种新的基于图的条件生成对抗网络模型,其中利用边卷积层以图表示的形式对SC中的图模式进行编码。然后使用新的边反卷积层将该表示解码回FC。受试者概况信息的额外元特征通过新设计的稀疏正则化层集成到图表示中,该层可以自动选择影响FC的特征。最后,我们还提出了我们的SF-GAN的新的事后解释器,它可以通过一个新的多级边相关引导的图聚类问题来识别SC中的哪些子图对FC中的哪些子图有强烈影响。测试新模型的实验结果证实,它显著优于现有的最先进方法,并且在识别重要元特征和子图方面具有额外的可解释性。

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