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Analyzing complex functional brain networks: Fusing statistics and network science to understand the brain

机译:分析复杂的脑功能网络:熔合统计数据和网络科学了解大脑

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摘要

Complex functional brain network analyses have exploded over the last decade, gaining traction due to their profound clinical implications. The application of network science (an interdisciplinary offshoot of graph theory) has facilitated these analyses and enabled examining the brain as an integrated system that produces complex behaviors. While the field of statistics has been integral in advancing activation analyses and some connectivity analyses in functional neuroimaging research, it has yet to play a commensurate role in complex network analyses. Fusing novel statistical methods with network-based functional neuroimage analysis will engender powerful analytical tools that will aid in our understanding of normal brain function as well as alterations due to various brain disorders. Here we survey widely used statistical and network science tools for analyzing fMRI network data and discuss the challenges faced in filling some of the remaining methodological gaps. When applied and interpreted correctly, the fusion of network scientific and statistical methods has a chance to revolutionize the understanding of brain function.
机译:在过去的十年中,复杂的功能性大脑网络分析迅猛发展,由于其深远的临床意义而受到关注。网络科学的应用(图论的跨学科分支)促进了这些分析,并使大脑能够作为产生复杂行为的集成系统进行检查。尽管统计领域在功能性神经影像研究中促进激活分析和某些连通性分析方面一直是不可或缺的,但它在复杂的网络分析中尚未发挥相应的作用。将新颖的统计方法与基于网络的功能神经图像分析相融合,将产生功能强大的分析工具,这些工具将有助于我们了解正常的脑功能以及各种脑部疾病引起的改变。在这里,我们调查了广泛使用的统计和网络科学工具来分析fMRI网络数据,并讨论了在填补一些剩余的方法学空白方面面临的挑战。当正确地应用和解释时,网络科学和统计方法的融合就有可能彻底改变对脑功能的理解。

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