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Using Pareto optimality to explore the topology and dynamics of the human connectome

机译:使用帕累托最优性探索人类连接组的拓扑和动力学

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摘要

Graph theory has provided a key mathematical framework to analyse the architecture of human brain networks. This architecture embodies an inherently complex relationship between connection topology, the spatial arrangement of network elements, and the resulting network cost and functional performance. An exploration of these interacting factors and driving forces may reveal salient network features that are critically important for shaping and constraining the brain's topological organization and its evolvability. Several studies have pointed to an economic balance between network cost and network efficiency with networks organized in an ‘economical’ small-world favouring high communication efficiency at a low wiring cost. In this study, we define and explore a network morphospace in order to characterize different aspects of communication efficiency in human brain networks. Using a multi-objective evolutionary approach that approximates a Pareto-optimal set within the morphospace, we investigate the capacity of anatomical brain networks to evolve towards topologies that exhibit optimal information processing features while preserving network cost. This approach allows us to investigate network topologies that emerge under specific selection pressures, thus providing some insight into the selectional forces that may have shaped the network architecture of existing human brains.
机译:图论为分析人脑网络的结构提供了关键的数学框架。这种体系结构体现了连接拓扑,网络元素的空间布置以及由此产生的网络成本和功能性能之间固有的复杂关系。对这些相互作用因素和驱动力的探索可能揭示出显着的网络特征,这些特征对于塑造和约束大脑的拓扑组织及其可演化性至关重要。多项研究指出,网络成本和网络效率之间存在经济平衡,而在“经济”的小世界中组织的网络则倾向于以较低的布线成本获得较高的通信效率。在这项研究中,我们定义和探索网络形态空间,以表征人脑网络中通信效率的不同方面。我们使用一种多目标进化方法来近似形态空间内的帕累托最优集,我们研究了解剖脑网络向具有最佳信息处理功能的拓扑发展的能力,同时又保留了网络成本。这种方法使我们能够研究在特定选择压力下出现的网络拓扑,从而提供对可能影响现有人脑网络架构的选择力的一些见识。

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