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Graph theory approaches to functional network organization in brain disorders: A critique for a brave new small-world

机译:图论方法在脑部疾病中的功能网络组织:对一个勇敢的新小世界的批评

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摘要

Over the past two decades, resting-state functional connectivity (RSFC) methods have provided new insights into the network organization of the human brain. Studies of brain disorders such as Alzheimer’s disease or depression have adapted tools from graph theory to characterize differences between healthy and patient populations. Here, we conducted a review of clinical network neuroscience, summarizing methodological details from 106 RSFC studies. Although this approach is prevalent and promising, our review identified four challenges. First, the composition of networks varied remarkably in terms of region parcellation and edge definition, which are fundamental to graph analyses. Second, many studies equated the number of connections across graphs, but this is conceptually problematic in clinical populations and may induce spurious group differences. Third, few graph metrics were reported in common, precluding meta-analyses. Fourth, some studies tested hypotheses at one level of the graph without a clear neurobiological rationale or considering how findings at one level (e.g., global topology) are contextualized by another (e.g., modular structure). Based on these themes, we conducted network simulations to demonstrate the impact of specific methodological decisions on case-control comparisons. Finally, we offer suggestions for promoting convergence across clinical studies in order to facilitate progress in this important field.
机译:在过去的二十年中,静止状态功能连接(RSFC)方法为人脑的网络组织提供了新的见解。对诸如阿尔茨海默氏病或​​抑郁症之类的大脑疾病的研究已经采用了图论工具,以描述健康人群和患者人群之间的差异。在这里,我们对临床网络神经科学进行了综述,总结了来自106个RSFC研究的方法学细节。尽管这种方法普遍存在并且很有希望,但我们的审查发现了四个挑战。首先,网络的组成在区域分割和边缘定义方面显着变化,这是图形分析的基础。其次,许多研究将图之间的连接数等同起来,但是从概念上讲,这在临床人群中是有问题的,并且可能导致虚假的组差异。第三,很少有图表指标被共同报道,不包括荟萃分析。第四,一些研究在图表的一个层次上测试了假设,但没有明确的神经生物学原理,也没有考虑一个层次(例如全局拓扑)的结果如何与另一层次(例如模块化结构)相联系。基于这些主题,我们进行了网络模拟,以演示特定方法决策对案例控制比较的影响。最后,我们提供了促进跨临床研究趋同的建议,以促进这一重要领域的进步。

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