Abstract

Brain network analysis has been proved to be one of the most effective methods in brain disease diagnosis. In order to construct discriminative brain networks and improve the performance of disease diagnosis, many machine learning–based methods have been proposed. Recent studies show that combining functional and structural brain networks is more effective than using only single modality data. However, in the most of existing multi-modal brain network analysis methods, it is a common strategy that constructs functional and structural network separately, which is difficult to embed complementary information of different modalities of brain network. To address this issue, we propose a unified brain network construction algorithm, which jointly learns both functional and structural data and effectively face the connectivity and node features for improving classification. First, we conduct space alignment and brain network construction under a unified framework, and then build the correlation model among all brain regions with functional data by low-rank representation so that the global brain region correlation can be captured. Simultaneously, the local manifold with structural data is embedded into this model to preserve the local structural information. Second, the PageRank algorithm is adaptively used to evaluate the significance of different brain regions, in which the interaction of multiple brain regions is considered. Finally, a multi-kernel strategy is utilized to solve the data heterogeneity problem and merge the connectivity as well as node information for classification. We apply the proposed method to the diagnosis of epilepsy, and the experimental results show that our method can achieve a promising performance.

Highlights

  • Brain network analysis has been widely applied to analysis and diagnosis of brain diseases, such as epilepsy and Alzheimer’s disease (Osipowicz et al, 2016)

  • The experimental results show that, compared with a series of previous brain network analysis approaches, our approach can achieve a promising performance in the diagnosis of epilepsy on a real epilepsy dataset

  • The method in this paper achieves the highest accuracies in the three tasks: normal controls (NC) vs. frontal lobe epilepsy (FLE), NC vs. temporal lobe epilepsy (TLE), NC vs. (FLE and TLE)

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Summary

Introduction

Brain network analysis has been widely applied to analysis and diagnosis of brain diseases, such as epilepsy and Alzheimer’s disease (Osipowicz et al, 2016). It mainly benefits from more and more neuroimaging technologies that can give us insight into the neuroanatomical correlates of cognition. Functional MRI (fMRI) and diffusion tensor imaging (DTI) are of remarkable importance and widely used to construct brain networks (Osipowicz et al, 2016). Compared to the singlemodal brain network, the multi-modal brain network can achieve better analysis and diagnosis results (Song et al, 2020)

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