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帕金森状态下基于强度变化的闭环噪声刺激抑制脑电振荡

Intensity-Varied Closed-Loop Noise Stimulation for Oscillation Suppression in the Parkinsonian State.

出版信息

IEEE Trans Cybern. 2022 Sep;52(9):9861-9870. doi: 10.1109/TCYB.2021.3079100. Epub 2022 Aug 18.

Abstract

This work explores the effectiveness of the intensity-varied closed-loop noise stimulation on the oscillation suppression in the Parkinsonian state. Deep brain stimulation (DBS) is the standard therapy for Parkinson's disease (PD), but its effects need to be improved. The noise stimulation has compelling results in alleviating the PD state. However, in the open-loop control scheme, the noise stimulation parameters cannot be self-adjusted to adapt to the amplitude of the synchronized neuronal activities in real time. Thus, based on the delayed-feedback control algorithm, an intensity-varied closed-loop noise stimulation strategy is proposed. Based on a computational model of the basal ganglia (BG) that can present the intrinsic properties of the BG neurons and their interactions with the thalamic neurons, the proposed stimulation strategy is tested. Simulation results show that the noise stimulation suppresses the pathological beta (12-35 Hz) oscillations without any new rhythms in other bands compared with traditional high-frequency DBS. The intensity-varied closed-loop noise stimulation has a more profound role in removing the pathological beta oscillations and improving the thalamic reliability than open-loop noise stimulation, especially for different PD states. And the closed-loop noise stimulation enlarges the parameter space of the delayed-feedback control algorithm due to the randomness of noise signals. We also provide a theoretical analysis of the effective parameter domain of the delayed-feedback control algorithm by simplifying the BG model to an oscillator model. This exploration may guide a new approach to treating PD by optimizing the noise-induced improvement of the BG dysfunction.

摘要

这项工作探讨了强度变化的闭环噪声刺激对帕金森状态下的振荡抑制的有效性。深部脑刺激(DBS)是帕金森病(PD)的标准治疗方法,但需要提高其效果。噪声刺激在缓解 PD 状态方面具有令人信服的效果。然而,在开环控制方案中,噪声刺激参数不能自适应地调整以实时适应同步神经元活动的幅度。因此,基于时滞反馈控制算法,提出了一种强度变化的闭环噪声刺激策略。基于可以呈现基底神经节(BG)神经元固有特性及其与丘脑神经元相互作用的计算模型,测试了所提出的刺激策略。模拟结果表明,与传统的高频 DBS 相比,噪声刺激在不产生其他频段新节律的情况下抑制了病理性β(12-35 Hz)振荡。与开环噪声刺激相比,强度变化的闭环噪声刺激在去除病理性β振荡和提高丘脑可靠性方面具有更深远的作用,尤其是对于不同的 PD 状态。并且由于噪声信号的随机性,闭环噪声刺激扩大了时滞反馈控制算法的参数空间。我们还通过将 BG 模型简化为振荡器模型,对时滞反馈控制算法的有效参数域进行了理论分析。这项探索可能为通过优化 BG 功能障碍引起的噪声改善来治疗 PD 提供一种新方法。

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