A comprehensive survey of complex brain network representation

Haoteng Tang , Guixiang Ma , Yanfu Zhang , Kai Ye , Lei Guo , Guodong Liu , Qi Huang , Yalin Wang , Olusola Ajilore , Alex D. Leow , Paul M. Thompson , Heng Huang , Liang Zhan
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Abstract

Recent years have shown great merits in utilizing neuroimaging data to understand brain structural and functional changes, as well as its relationship to different neurodegenerative diseases and other clinical phenotypes. Brain networks, derived from different neuroimaging modalities, have attracted increasing attention due to their potential to gain system-level insights to characterize brain dynamics and abnormalities in neurological conditions. Traditional methods aim to pre-define multiple topological features of brain networks and relate these features to different clinical measures or demographical variables. With the enormous successes in deep learning techniques, graph learning methods have played significant roles in brain network analysis. In this survey, we first provide a brief overview of neuroimaging-derived brain networks. Then, we focus on presenting a comprehensive overview of both traditional methods and state-of-the-art deep-learning methods for brain network mining. Major models, and objectives of these methods are reviewed within this paper. Finally, we discuss several promising research directions in this field.

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复杂脑网络表征的全面调查
近年来,利用神经成像数据了解大脑结构和功能变化及其与不同神经退行性疾病和其他临床表型的关系已显示出巨大优势。从不同神经成像模式中提取的脑网络,因其在系统级洞察神经系统疾病中大脑动态和异常特征的潜力而日益受到关注。传统方法旨在预先定义大脑网络的多个拓扑特征,并将这些特征与不同的临床测量或人口统计学变量联系起来。随着深度学习技术的巨大成功,图学习方法在脑网络分析中发挥了重要作用。在本研究中,我们首先简要介绍了神经成像衍生脑网络。然后,我们将重点全面介绍用于脑网络挖掘的传统方法和最先进的深度学习方法。本文回顾了这些方法的主要模型和目标。最后,我们讨论了该领域几个前景广阔的研究方向。
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