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Comparing connectivity pattern and small-world organization between structural correlation and resting-state networks in healthy adults

机译:比较健康成年人结构相关性和静息状态网络之间的连通性模式和小世界组织

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In recent years, coordinated variations in brain morphology (e.g. volume, thickness, surface area) have been employed as a measure of structural association between brain regions to infer large-scale structural correlation networks (SCNs). However, it remains unclear how morphometric correlations relate to functional connectivity between brain regions. Resting-state networks (RSNs), derived from coordinated variations in neural activity at rest, have been shown to reflect connectivity between functionally related regions as well as, to some extent, anatomical connectivity between brain regions. Therefore, it is intriguing to investigate similarities between SCN and RSN to help identify how morphometric correlations relate to connections defined by resting-state connectivity. We investigated the similarities in connectivity patterns and small-world organization between SCN, derived from correlations of regional gray matter volume across individuals, and RSN in 36 healthy individuals. The results showed a significant similarity between SCN and RSN (60% for positive connections and 40% for negative connections) that might be explained by shared experience-related functional connectivity underlying both SCN and RSN. Conversely, the small-world parameters of the networks were significantly different, suggesting that SCN topological parameters cannot be regarded as a substitute for topological organization in resting-state networks. While our data suggest that using structural correlation networks can be useful in understanding alterations in structural associations in various brain disorders, it should be noted that a portion of the observed alterations might be explained by factors other than those reflecting resting-state connectivity.
机译:近年来,大脑形态(例如体积,厚度,表面积)的协调变化已被用作衡量大脑区域之间结构关联的量度,以推断大规模的结构相关网络(SCN)。然而,目前尚不清楚形态计量学相关性如何与大脑区域之间的功能连接性相关。静止状态网络(RSNs)来自静止时神经活动的协调变化,已显示出反映功能相关区域之间的连通性,并且在一定程度上反映了大脑区域之间的解剖学连通性。因此,研究SCN和RSN之间的相似性以帮助识别形态计量相关性与静止状态连接定义的连接之间的关系很有趣。我们调查了SCN之间的连通性模式和小世界组织之间的相似性,这些相似性源于个体之间的区域灰质量与36名健康个体的RSN的相关性。结果显示,SCN和RSN之间存在显着相似性(正极连接为60%,负极连接为40%),这可能由SCN和RSN共享的与经验相关的功能连接所解释。相反,网络的小世界参数存在显着差异,这表明SCN拓扑参数不能被视为静态网络中拓扑组织的替代物。尽管我们的数据表明使用结构相关网络有助于理解各种脑部疾病中结构关联的变化,但应注意,观察到的变化的一部分可能由反映静止状态连通性的因素以外的其他因素解释。

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