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首页> 外文期刊>NeuroImage >Improved statistical evaluation of group differences in connectomes by screening-filtering strategy with application to study maturation of brain connections between childhood and adolescence
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Improved statistical evaluation of group differences in connectomes by screening-filtering strategy with application to study maturation of brain connections between childhood and adolescence

机译:通过筛选过滤策略改进连接组的群体差异的统计评估,并应用于研究儿童和青少年之间的大脑连接的成熟度

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摘要

Detecting local differences between groups of connectomes is a great challenge in neuroimaging, because the large number of tests that have to be performed and the impact on multiplicity correction. Any available information should be exploited to increase the power of detecting true between-group effects. We present an adaptive strategy that exploits the data structure and the prior information concerning positive dependence between nodes and connections, without relying on strong assumptions. As a first step, we decompose the brain network, i.e., the connectome, into subnetworks and we apply a screening at the subnetwork level. The subnetworks are defined either according to prior knowledge or by applying a data driven algorithm. Given the results of the screening step, a filtering is performed to seek real differences at the node/connection level. The proposed strategy could be used to strongly control either the family-wise error rate or the false discovery rate. We show by means of different simulations the benefit of the proposed strategy, and we present a real application of comparing connectomes of preschool children and adolescents. (C) 2014 Elsevier Inc. All rights reserved.
机译:在神经影像学中,检测连接体组之间的局部差异是一项巨大的挑战,因为必须执行大量的测试,并且会对多重校正产生影响。应该利用任何可用信息来增强检测真正的群体间效应的能力。我们提出了一种自适应策略,该策略利用了数据结构和有关节点与连接之间的正相关性的先验信息,而无需依赖强大的假设。第一步,我们将大脑网络(即连接体)分解为子网,然后在子网级别进行筛选。根据现有知识或通过应用数据驱动算法来定义子网。给定筛选步骤的结果,将执行过滤以在节点/连接级别上查找实际差异。所提出的策略可用于强烈控制家庭错误率或错误发现率。我们通过不同的模拟显示了所提出策略的好处,并且我们提出了一个比较学龄前儿童和青少年连接组的实际应用。 (C)2014 Elsevier Inc.保留所有权利。

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