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使用简化的耦合振荡器模型预测深部脑刺激的效果。

Predicting the effects of deep brain stimulation using a reduced coupled oscillator model.

机构信息

MRC Brain Network Dynamics Unit, Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, United Kingdom.

Oxford Centre for Industrial and Applied Mathematics, Mathematical Institute, University of Oxford, Oxford, United Kingdom.

出版信息

PLoS Comput Biol. 2019 Aug 8;15(8):e1006575. doi: 10.1371/journal.pcbi.1006575. eCollection 2019 Aug.

Abstract

Deep brain stimulation (DBS) is known to be an effective treatment for a variety of neurological disorders, including Parkinson's disease and essential tremor (ET). At present, it involves administering a train of pulses with constant frequency via electrodes implanted into the brain. New 'closed-loop' approaches involve delivering stimulation according to the ongoing symptoms or brain activity and have the potential to provide improvements in terms of efficiency, efficacy and reduction of side effects. The success of closed-loop DBS depends on being able to devise a stimulation strategy that minimizes oscillations in neural activity associated with symptoms of motor disorders. A useful stepping stone towards this is to construct a mathematical model, which can describe how the brain oscillations should change when stimulation is applied at a particular state of the system. Our work focuses on the use of coupled oscillators to represent neurons in areas generating pathological oscillations. Using a reduced form of the Kuramoto model, we analyse how a patient should respond to stimulation when neural oscillations have a given phase and amplitude, provided a number of conditions are satisfied. For such patients, we predict that the best stimulation strategy should be phase specific but also that stimulation should have a greater effect if applied when the amplitude of brain oscillations is lower. We compare this surprising prediction with data obtained from ET patients. In light of our predictions, we also propose a new hybrid strategy which effectively combines two of the closed-loop strategies found in the literature, namely phase-locked and adaptive DBS.

摘要

脑深部电刺激(DBS)已被证明是治疗多种神经疾病的有效方法,包括帕金森病和原发性震颤(ET)。目前,它涉及通过植入大脑的电极传递具有恒定频率的脉冲序列。新的“闭环”方法涉及根据持续的症状或大脑活动进行刺激,有可能在效率、疗效和减少副作用方面提供改进。闭环 DBS 的成功取决于能够设计一种刺激策略,最大限度地减少与运动障碍症状相关的神经活动的振荡。朝着这个方向迈出的有用的一步是构建一个数学模型,该模型可以描述在系统的特定状态下施加刺激时大脑振荡应该如何变化。我们的工作重点是使用耦合振荡器来表示产生病理性振荡的区域中的神经元。使用简化的 Kuramoto 模型,我们分析了当神经振荡具有给定的相位和幅度时,患者应该如何对刺激做出反应,前提是满足一些条件。对于这些患者,我们预测最佳的刺激策略应该是特定相位的,但如果在大脑振荡幅度较低时施加刺激,刺激效果也应该更大。我们将这一令人惊讶的预测与从 ET 患者获得的数据进行了比较。根据我们的预测,我们还提出了一种新的混合策略,有效地结合了文献中发现的两种闭环策略,即锁相和自适应 DBS。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8adc/6701819/0939916c429e/pcbi.1006575.g001.jpg

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