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Stability of graph theoretical measures in structural brain networks in Alzheimer’s disease

机译:阿尔茨海默病结构脑网络中图形理论措施的稳定性

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Graph analysis has become a popular approach to study structural brain networks in neurodegenerative disorders such as Alzheimer’s disease (AD). However, reported results across similar studies are often not consistent. In this paper we investigated the stability of the graph analysis measures clustering, path length, global efficiency and transitivity in a cohort of AD (N?=?293) and control subjects (N?=?293). More specifically, we studied the effect that group size and composition, choice of neuroanatomical atlas, and choice of cortical measure (thickness or volume) have on binary and weighted network properties and relate them to the magnitude of the differences between groups of AD and control subjects. Our results showed that specific group composition heavily influenced the network properties, particularly for groups with less than 150 subjects. Weighted measures generally required fewer subjects to stabilize and all assessed measures showed robust significant differences, consistent across atlases and cortical measures. However, all these measures were driven by the average correlation strength, which implies a limitation of capturing more complex features in weighted networks. In binary graphs, significant differences were only found in the global efficiency and transitivity measures when using cortical thickness measures to define edges. The findings were consistent across the two atlases, but no differences were found when using cortical volumes. Our findings merits future investigations of weighted brain networks and suggest that cortical thickness measures should be preferred in future AD studies if using binary networks. Further, studying cortical networks in small cohorts should be complemented by analyzing smaller, subsampled groups to reduce the risk that findings are spurious.
机译:图分析已成为研究神经退行性疾病(如Alzheimer疾病)的结构脑网络(AD)的流行方法。然而,据报道类似研究的结果通常不是一致的。在本文中,我们调查了图形分析衡量广告队(n?=Δ293)和控制主题中的聚类,路径长度,全球效率和传递率的稳定性(n?=Δ293)。更具体地说,我们研究了组大小和组成,神经杀菌图集的选择,以及皮质测量(厚度或体积)的选择对二进制和加权网络属性的选择,并将它们与广告组和控制组之间的差异相关主题。我们的研究结果表明,特定的组组成严重影响了网络性质,特别是对于少于150个受试者的群体。加权措施通常要求较少的受试者稳定,所有评估措施都显示出强劲的显着差异,横跨地图集和皮质措施一致。但是,所有这些措施都是由平均相关强度驱动的,这意味着捕获加权网络中更复杂的功能的限制。在二进制图中,当使用皮质厚度措施来定义边缘时,仅在全球效率和传递测量中发现了显着差异。调查结果一致地遍布这两个地毯,但在使用皮质体积时没有发现差异。我们的调查结果可使加权脑网络的未来调查,并建议在未来的广告研究中应该优先考虑到皮质厚度措施,如果使用二进制网络。此外,应通过分析较小的副取样组来研究小群组中的皮质网络,以减少发现假杂散的风险。

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