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Disentangling Brain Graphs: A Note on the Conflation of Network and Connectivity Analyses

机译:解开脑图:关于网络和连通性分析的融合的注记

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摘要

Understanding the human brain remains the holy grail in biomedical science, and arguably in all of the sciences. Our brains represent the most complex systems in the world (and some contend the universe) comprising nearly 100 billion neurons with septillions of possible connections between them. The structure of these connections engenders an efficient hierarchical system capable of consciousness, as well as complex thoughts, feelings, and behaviors. Brain connectivity and network analyses have exploded over the last decade due to their potential in helping us understand both normal and abnormal brain function. Functional connectivity (FC) analysis examines functional associations between time series pairs in specified brain voxels or regions. Brain network analysis serves as a distinct subfield of connectivity analysis, in which associations are quantified for all time series pairs to create an interconnected representation of the brain (a brain network), which allows studying its systemic properties. While connectivity analyses underlie network analyses, the subtle distinction between the two research areas has generally been overlooked in the literature, with them often being referred to synonymously. However, developing more useful analytic methods and allowing for more precise biological interpretations require distinguishing these two complementary domains.
机译:了解人类的大脑仍然是生物医学科学的圣杯,而且在所有科学领域都可以说是圣杯。我们的大脑代表着世界上最复杂的系统(有的竞争着整个宇宙),其中包括近1000亿个神经元,它们之间有数十亿个可能的联系。这些联系的结构产生了一种有效的等级系统,该等级系统能够意识以及复杂的思想,感觉和行为。在过去十年中,由于大脑连接和网络分析有潜力帮助我们了解正常和异常的大脑功能,因此爆炸式增长。功能连接性(FC)分析检查特定大脑体素或区域中时间序列对之间的功能关联。脑网络分析是连通性分析的一个独特子领域,其中对所有时间序列对进行关联量化,以创建大脑(大脑网络)的互连表示形式,从而可以研究其系统特性。尽管连接性分析是网络分析的基础,但是两个研究领域之间的细微区别在文献中通常被忽略,它们经常被同义地提及。但是,开发更有用的分析方法并允许更精确的生物学解释需要区分这两个互补域。

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