Vlachos Ioannis, Deniz Taşkin, Aertsen Ad, Kumar Arvind
Bernstein Center Freiburg and Faculty of Biology, University of Freiburg, Freiburg, Germany.
Department of Computational Science and Technology, School of Computer Science and Communication, KTH Royal Institute of Technology, Stockholm, Sweden.
PLoS Comput Biol. 2016 Feb 1;12(2):e1004720. doi: 10.1371/journal.pcbi.1004720. eCollection 2016 Feb.
There is a growing interest in developing novel brain stimulation methods to control disease-related aberrant neural activity and to address basic neuroscience questions. Conventional methods for manipulating brain activity rely on open-loop approaches that usually lead to excessive stimulation and, crucially, do not restore the original computations performed by the network. Thus, they are often accompanied by undesired side-effects. Here, we introduce delayed feedback control (DFC), a conceptually simple but effective method, to control pathological oscillations in spiking neural networks (SNNs). Using mathematical analysis and numerical simulations we show that DFC can restore a wide range of aberrant network dynamics either by suppressing or enhancing synchronous irregular activity. Importantly, DFC, besides steering the system back to a healthy state, also recovers the computations performed by the underlying network. Finally, using our theory we identify the role of single neuron and synapse properties in determining the stability of the closed-loop system.
开发新型脑刺激方法以控制与疾病相关的异常神经活动并解决基础神经科学问题的兴趣日益浓厚。传统的操纵脑活动的方法依赖于开环方法,这种方法通常会导致过度刺激,而且至关重要的是,无法恢复网络执行的原始计算。因此,它们常常伴随着不良副作用。在此,我们引入延迟反馈控制(DFC),这是一种概念简单但有效的方法,用于控制脉冲神经网络(SNN)中的病理性振荡。通过数学分析和数值模拟,我们表明DFC可通过抑制或增强同步不规则活动来恢复广泛的异常网络动态。重要的是,DFC除了将系统引导回健康状态外,还能恢复基础网络执行的计算。最后,利用我们的理论,我们确定了单个神经元和突触特性在确定闭环系统稳定性中的作用。