Matchen Timothy D, Moehlis Jeff
Department of Mechanical Engineering, University of California, Santa Barbara, CA, USA.
J Comput Neurosci. 2018 Jun;44(3):363-378. doi: 10.1007/s10827-018-0683-y. Epub 2018 Apr 3.
Deep brain stimulation (DBS) is a common method of combating pathological conditions associated with Parkinson's disease, Tourette syndrome, essential tremor, and other disorders, but whose mechanisms are not fully understood. One hypothesis, supported experimentally, is that some symptoms of these disorders are associated with pathological synchronization of neurons in the basal ganglia and thalamus. For this reason, there has been interest in recent years in finding efficient ways to desynchronize neurons that are both fast-acting and low-power. Recent results on coordinated reset and periodically forced oscillators suggest that forming distinct clusters of neurons may prove to be more effective than achieving complete desynchronization, in particular by promoting plasticity effects that might persist after stimulation is turned off. Current proposed methods for achieving clustering frequently require either multiple input sources or precomputing the control signal. We propose here a control strategy for clustering, based on an analysis of the reduced phase model for a set of identical neurons, that allows for real-time, single-input control of a population of neurons with low-amplitude, low total energy signals. After demonstrating its effectiveness on phase models, we apply it to full state models to demonstrate its validity. We also discuss the effects of coupling on the efficacy of the strategy proposed and demonstrate that the clustering can still be accomplished in the presence of weak to moderate electrotonic coupling.
深部脑刺激(DBS)是治疗与帕金森病、图雷特综合征、特发性震颤及其他疾病相关的病理状况的常用方法,但其机制尚未完全明确。一种得到实验支持的假说是,这些疾病的某些症状与基底神经节和丘脑神经元的病理性同步有关。因此,近年来人们一直致力于寻找快速起效且低功耗的使神经元去同步的有效方法。关于协同复位和周期性强迫振荡器的最新研究结果表明,形成不同的神经元簇可能比实现完全去同步更有效,特别是通过促进在刺激停止后可能持续存在的可塑性效应。目前提出的实现聚类的方法通常需要多个输入源或预先计算控制信号。我们在此基于对一组相同神经元的简化相位模型的分析,提出一种聚类控制策略,该策略允许使用低幅度、低总能量信号对神经元群体进行实时单输入控制。在证明其在相位模型上的有效性后,我们将其应用于全状态模型以证明其有效性。我们还讨论了耦合对所提出策略有效性的影响,并证明在存在弱至中度电紧张耦合的情况下仍可实现聚类。