Hysteresis in anesthesia and recovery: Experimental observation and dynamical mechanism

Chun-Wang Su, Liang Zheng, Youjun Li, Haijun Zhou, Jue Wang, Zi-Gang Huang, Y. Lai
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引用次数: 2

Abstract

The dynamical mechanism underlying the processes of anesthesia-induced loss of consciousness and recovery is key to gaining insights into the working of the nervous system. Previous experiments revealed an asymmetry between neural signals during the anesthesia and recovery processes. Here we obtain experimental evidence for the hysteresis loop and articulate the dynamical mechanism based on percolation on multilayer complex networks with self-similarity. Model analysis reveals that, during anesthesia, the network is able to maintain its neural pathways despite the loss of a substantial fraction of the edges. A predictive and potentially testable result is that, in the forward process of anesthesia, the average shortest path and the clustering coefficient of the neural network are markedly smaller than those associated with the recovery process. This suggests that the network strives to maintain certain neurological functions by adapting to a relatively more compact structure in response to anesthesia.
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麻醉与恢复中的迟滞:实验观察及动力学机制
麻醉引起的意识丧失和恢复过程的动力学机制是深入了解神经系统工作的关键。先前的实验揭示了麻醉和恢复过程中神经信号之间的不对称性。本文获得了滞回线存在的实验证据,阐明了多层自相似复杂网络中基于渗流的动力学机制。模型分析表明,在麻醉过程中,神经网络能够维持其神经通路,尽管失去了相当一部分边缘。一个可预测且可测试的结果是,在麻醉前向过程中,神经网络的平均最短路径和聚类系数明显小于与恢复过程相关的平均最短路径和聚类系数。这表明神经网络在麻醉反应中通过适应相对更紧凑的结构来努力维持某些神经功能。
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