Betzel Richard F, Medaglia John D, Papadopoulos Lia, Baum Graham L, Gur Ruben, Gur Raquel, Roalf David, Satterthwaite Theodore D, Bassett Danielle S
Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, 19104.
Department of Psychology, University of Pennsylvania, Philadelphia, PA, 19104.
Netw Neurosci. 2017 Feb 1;1(1):42-68. doi: 10.1162/NETN_a_00002. eCollection 2017.
Brain networks are expected to be modular. However, existing techniques for estimating a network's modules make it difficult to assess the influence of organizational principles such as wiring cost reduction on the detected modules. Here we present a modification of an existing module detection algorithm that allowed us to focus on connections that are unexpected under a cost-reduction wiring rule and to identify modules from among these connections. We applied this technique to anatomical brain networks and showed that the modules we detected differ from those detected using the standard technique. We demonstrated that these novel modules are spatially distributed, exhibit unique functional fingerprints, and overlap considerably with rich clubs, giving rise to an alternative and complementary interpretation of the functional roles of specific brain regions. Finally, we demonstrated that, using the modified module detection approach, we can detect modules in a developmental dataset that track normative patterns of maturation. Collectively, these findings support the hypothesis that brain networks are composed of modules and provide additional insight into the function of those modules.
脑网络预计具有模块化特征。然而,现有的估计网络模块的技术难以评估诸如降低布线成本等组织原则对检测到的模块的影响。在此,我们对现有的模块检测算法进行了修改,使我们能够关注在降低成本的布线规则下意外出现的连接,并从这些连接中识别模块。我们将此技术应用于解剖学脑网络,结果表明我们检测到的模块与使用标准技术检测到的模块不同。我们证明了这些新模块在空间上是分布的,展现出独特的功能特征,并且与富俱乐部有相当大的重叠,从而对特定脑区的功能作用产生了另一种互补性的解释。最后,我们证明,使用修改后的模块检测方法,我们能够在追踪正常成熟模式的发育数据集中检测到模块。总的来说,这些发现支持了脑网络由模块组成的假设,并为这些模块的功能提供了更多见解。