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Optimally controlling the human connectome: the role of network topology

机译:最佳地控制人类连接体:网络拓扑的作用

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To meet ongoing cognitive demands, the human brain must seamlessly transition from one brain state to another, in the process drawing on different cognitive systems. How does the brain's network of anatomical connections help facilitate such transitions? Which features of this network contribute to making one transition easy and another transition difficult? Here, we address these questions using network control theory. We calculate the optimal input signals to drive the brain to and from states dominated by different cognitive systems. The input signals allow us to assess the contributions made by different brain regions. We show that such contributions, which we measure as energy, are correlated with regions' weighted degrees. We also show that the network communicability, a measure of direct and indirect connectedness between brain regions, predicts the extent to which brain regions compensate when input to another region is suppressed. Finally, we identify optimal states in which the brain should start (and finish) in order to minimize transition energy. We show that the optimal target states display high activity in hub regions, implicating the brain's rich club. Furthermore, when rich club organization is destroyed, the energy cost associated with state transitions increases significantly, demonstrating that it is the richness of brain regions that makes them ideal targets.
机译:为了满足不断发展的认知需求,在使用不同认知系统的过程中,人脑必须​​从一种大脑状态无缝过渡到另一种大脑状态。大脑的解剖学连接网络如何帮助促进这种过渡?该网络的哪些功能有助于使一个过渡变得容易而另一个过渡变得困难?在这里,我们使用网络控制理论来解决这些问题。我们计算最佳输入信号,以驱动大脑往返于由不同认知系统主导的状态。输入信号使我们能够评估不同大脑区域的贡献。我们表明,这些以能量衡量的贡献与区域的加权程度相关。我们还表明,网络的可交流性是对大脑区域之间直接和间接连接的一种度量,它可以预测当向另一个区域的输入被抑制时大脑区域进行补偿的程度。最后,我们确定了大脑应该开始(和结束)以最小化过渡能量的最佳状态。我们表明,最佳目标状态在中心区域显示高活动,这暗示着大脑的丰富俱乐部。此外,当富裕的俱乐部组织遭到破坏时,与状态转换相关的能源成本将显着增加,这表明正是大脑区域的丰富性使其成为理想的目标。

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