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Modeling of topology-dependent neural network plasticity induced by activity-dependent electrical stimulation

机译:活动依赖电刺激引起的拓扑依赖神经网络可塑性建模

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Activity-dependent electrical stimulation can induce cerebrocortical reorganization in vivo by activating brain areas using stimulation derived from the statistics of neural or muscular activity. Due to the nature of synaptic plasticity, network topology is likely to influence the effectiveness of this type of neuromodulation, yet its effect under different network topologies is unclear. To address this issue, we simulated small-scale three-neuron networks to explore topology-dependent network plasticity. The induced neuroplastic changes were evaluated by network coherence and unit-pair mutual information measures. We demonstrated that involvement of monosynaptic feedforward and reciprocal connections is more likely to lead to persistent decreased network coherence and increased network mutual information independent of the global network topology. On the contrary, disynaptic feedforward connections exhibit heterogeneous coherence and unit-pair mutual information sensitivity that depends strongly upon the network context.
机译:依赖活动的电刺激可以通过使用源自神经或肌肉活动统计数据的刺激来激活大脑区域,从而在体内诱导脑皮质重组。由于突触可塑性的性质,网络拓扑可能会影响这种类型的神经调节的有效性,但其在不同网络拓扑下的作用尚不清楚。为了解决这个问题,我们模拟了小型三神经网络,以探索与拓扑相关的网络可塑性。通过网络连贯性和单元对互信息措施评估诱导的神经增生性变化。我们证明,单突触前馈和相互连接的参与更可能导致持久的网络一致性下降和网络相互信息的增加,而与全局网络拓扑无关。相反,突触前馈连接表现出异构的连贯性和单元对相互信息的敏感性,这在很大程度上取决于网络环境。

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