Brain morphometric similarity and flexibility.

Cerebral cortex communications Pub Date : 2022-06-16 eCollection Date: 2022-01-01 DOI:10.1093/texcom/tgac024
Vesna Vuksanović
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引用次数: 1

Abstract

Background: The cerebral cortex is represented through multiple multilayer morphometric similarity networks to study their modular structures. The approach introduces a novel way for studying brain networks' metrics across individuals, and can quantify network properties usually not revealed using conventional network analyses.

Methods: A total of 8 combinations or types of morphometric similarity networks were constructed - 4 combinations of the inter-regional cortical features on 2 brain atlases. The networks' modular structures were investigated by identifying those modular interactions that stay consistent across the combinations of inter-regional morphometric features and individuals.

Results: The results provide evidence of the community structures as the property of (i) cortical lobar divisions, and also as (ii) the product of different combinations of morphometric features used for the construction of the multilayer representations of the cortex. For the first time, this study has mapped out flexible and inflexible morphometric similarity hubs, and evidence has been provided about variations of the modular network topology across the multilayers with age and IQ.

Conclusions: The results contribute to understanding of intra-regional characteristics in cortical interactions, which potentially can be used to map heterogeneous neurodegeneration patterns in diseased brains.

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脑形态相似性和灵活性。
背景:通过多层形态相似性网络表征大脑皮层,研究其模块化结构。该方法引入了一种研究个体大脑网络指标的新方法,并且可以量化通常使用传统网络分析无法揭示的网络特性。方法:共构建了8种形态相似性网络组合或类型,其中4种是2个脑地图集的区域间皮质特征组合。通过识别那些在区域间形态特征和个体组合中保持一致的模块相互作用,研究了网络的模块化结构。结果:这些结果提供了证据,证明群落结构是(i)皮层叶分裂的属性,也是(ii)用于构建皮层多层表征的形态测量特征的不同组合的产物。本研究首次绘制了灵活和不灵活的形态相似性中心,并提供了关于多层模块化网络拓扑随年龄和智商变化的证据。结论:该结果有助于理解皮层相互作用的区域内特征,这可能用于绘制病变大脑的异质神经退行性模式。
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