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A two-part mixed-effects modeling framework for analyzing whole-brain network data

机译:由两部分组成的混合效果建模框架,用于分析全脑网络数据

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Whole-brain network analyses remain the vanguard in neuroimaging research, coming to prominence within the last decade. Network science approaches have facilitated these analyses and allowed examining the brain as an integrated system. However, statistical methods for modeling and comparing groups of networks have lagged behind. Fusing multivariate statistical approaches with network science presents the best path to develop these methods. Toward this end, we propose a two-part mixed-effects modeling framework that allows modeling both the probability of a connection (presence/absence of an edge) and the strength of a connection if it exists. Models within this framework enable quantifying the relationship between an outcome (e.g., disease status) and connectivity patterns in the brain while reducing spurious correlations through inclusion of confounding covariates. They also enable prediction about an outcome based on connectivity structure and vice versa, simulating networks to gain a better understanding of normal ranges of topological variability, and thresholding networks leveraging group information. Thus, they provide a comprehensive approach to studying system level brain properties to further our understanding of normal and abnormal brain function. (C) 2015 Elsevier Inc. All rights reserved.
机译:全脑网络分析仍然是神经成像研究的先驱,在过去十年中日益突出。网络科学方法促进了这些分析,并允许将大脑作为一个集成系统进行检查。但是,用于建模和比较网络组的统计方法落后了。将多元统计方法与网络科学相融合是开发这些方法的最佳途径。为此,我们提出了一个由两部分组成的混合效果建模框架,该框架允许对连接的概率(边缘的存在/不存在)和连接的强度(如果存在)进行建模。在此框架内的模型可以量化结局(例如疾病状态)与大脑中连通性模式之间的关系,同时通过包含混杂的协变量来减少虚假相关性。它们还可以根据连通性结构来预测结果,反之亦然,可以模拟网络以更好地理解拓扑变异性的正常范围,并利用组信息对网络进行阈值化。因此,它们提供了研究系统级大脑特性的综合方法,以进一步了解正常和异常的大脑功能。 (C)2015 Elsevier Inc.保留所有权利。

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