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Topological analyses of functional connectomics: A crucial role of global signal removal brain parcellation and null models

机译:功能连接组学的拓扑分析:全局信号去除脑部细胞分裂和无效模型的关键作用

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摘要

Recently, functional connectome studies based on resting‐state functional magnetic resonance imaging (R‐fMRI) and graph theory have greatly advanced our understanding of the topological principles of healthy and diseased brains. However, how different strategies for R‐fMRI data preprocessing and for connectome analyses jointly affect topological characterization and contrastive research of brain networks remains to be elucidated. Here, we used two R‐fMRI data sets, a healthy young adult data set and an Alzheimer's disease (AD) patient data set, and up to 42 analysis strategies to comprehensively investigate the joint influence of three key factors (global signal regression, regional parcellation schemes, and null network models) on the topological analysis and contrastive research of whole‐brain functional networks. At the global level, we first found that these three factors affected not only the quantitative values but also the individual variability profile in small‐world related metrics and modularity, wherein global signal regression exhibited the predominant influence. Moreover, strategies without global signal regression and with topological randomization null model enhanced the sensitivity of the detection of differences between AD and control groups in small‐worldness and modularity. At the nodal level, strategies of global signal regression dominantly influenced the spatial distribution of both hubs and between‐group differences in terms of nodal degree centrality. Together, we highlight the remarkable joint influence of global signal regression, regional parcellation schemes and null network models on functional connectome analyses in both health and diseases, which may provide guidance for the choice of analysis strategies in future functional network studies.
机译:最近,基于静止状态功能磁共振成像(R-fMRI)和图论的功能连接体研究极大地增进了我们对健康和患病大脑的拓扑原理的理解。然而,仍需阐明不同的R‐fMRI数据预处理策略和连接组分析策略如何共同影响大脑网络的拓扑特征和对比研究。在这里,我们使用了两个R‐fMRI数据集,一个健康的年轻成人数据集和一个阿尔茨海默氏病(AD)患者数据集,以及多达42种分析策略来全面研究三个关键因素(全局信号回归,区域性全脑功能网络的拓扑分析和对比研究)。在全球一级,我们首先发现这三个因素不仅影响定量值,而且还影响与小世界相关的指标和模块性中的个体变异性,其中全局信号回归显示出主要影响。此外,没有全局信号回归和具有拓扑随机无效模型的策略提高了在小世界性和模块化方面检测AD与对照组之间差异的敏感性。在节点级别,就节点度中心性而言,全局信号回归策略主要影响两个枢纽的空间分布和组间差异。我们共同强调了全局信号回归,区域分类方案和无效网络模型对健康和疾病中功能连接体分析的显着联合影响,这可能为将来功能网络研究中选择分析策略提供指导。

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