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Multimodal Hyper-connectivity Networks for MCI Classification

机译:用于MCI分类的多模式超连接网络

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Hyper-connectivity network is a network where every edge is connected to more than two nodes, and can be naturally denoted using a hyper-graph. Hyper-connectivity brain network, either based on structural or functional interactions among the brain regions, has been used for brain disease diagnosis. However, the conventional hyper-connectivity network is constructed solely based on single modality data, ignoring potential complementary information conveyed by other modalities. The integration of complementary information from multiple modalities has been shown to provide a more comprehensive representation about the brain disruptions. In this paper, a novel multimodal hyper-network modelling method was proposed for improving the diagnostic accuracy of mild cognitive impairment (MCI). Specifically, we first constructed a multimodal hyper-connectivity network by simultaneously considering information from diffusion tensor imaging and resting-state functional magnetic resonance imaging data. We then extracted different types of network features from the hyper-connectivity network, and further exploited a manifold regularized multi-task feature selection method to jointly select the most discriminative features. Our proposed multimodal hyper-connectivity network demonstrated a better MCI classification performance than the conventional single modality based hyper-connectivity networks.
机译:超连接网络是每个边缘都连接到两个以上节点的网络,可以自然地使用超图表示。基于大脑区域之间的结构或功能相互作用的超连通性大脑网络已被用于脑部疾病的诊断。但是,传统的超连接网络仅基于单个模态数据构建,而忽略了其他模态传达的潜在补充信息。来自多种形式的补充信息的整合已被证明可以提供关于脑部破坏的更全面的描述。本文提出了一种新颖的多模式超网络建模方法,以提高轻度认知障碍(MCI)的诊断准确性。具体来说,我们首先通过同时考虑来自扩散张量成像和静止状态功能磁共振成像数据的信息,构建了一个多峰超连通性网络。然后,我们从超连通性网络中提取不同类型的网络特征,并进一步利用流形正则化多任务特征选择方法来共同选择最具区分性的特征。我们提出的多模式超连通性网络表现出比常规的基于单模态的超连通性网络更好的MCI分类性能。

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