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稳健自适应深部脑刺激控制模拟非平稳帕金森神经振荡动力学。

Robust adaptive deep brain stimulation control of in-silico non-stationary Parkinsonian neural oscillatory dynamics.

机构信息

MOE Frontier Science Center for Brain Science and Brain-machine Integration, Zhejiang University, Hangzhou 310058, People's Republic of China.

Nanhu Brain-computer Interface Institute, Hangzhou 311100, People's Republic of China.

出版信息

J Neural Eng. 2024 Jun 17;21(3). doi: 10.1088/1741-2552/ad5406.

Abstract

. Closed-loop deep brain stimulation (DBS) is a promising therapy for Parkinson's disease (PD) that works by adjusting DBS patterns in real time from the guidance of feedback neural activity. Current closed-loop DBS mainly uses threshold-crossing on-off controllers or linear time-invariant (LTI) controllers to regulate the basal ganglia (BG) Parkinsonian beta band oscillation power. However, the critical cortex-BG-thalamus network dynamics underlying PD are nonlinear, non-stationary, and noisy, hindering accurate and robust control of Parkinsonian neural oscillatory dynamics.. Here, we develop a new robust adaptive closed-loop DBS method for regulating the Parkinsonian beta oscillatory dynamics of the cortex-BG-thalamus network. We first build an adaptive state-space model to quantify the dynamic, nonlinear, and non-stationary neural activity. We then construct an adaptive estimator to track the nonlinearity and non-stationarity in real time. We next design a robust controller to automatically determine the DBS frequency based on the estimated Parkinsonian neural state while reducing the system's sensitivity to high-frequency noise. We adopt and tune a biophysical cortex-BG-thalamus network model as an in-silico simulation testbed to generate nonlinear and non-stationary Parkinsonian neural dynamics for evaluating DBS methods.. We find that under different nonlinear and non-stationary neural dynamics, our robust adaptive DBS method achieved accurate regulation of the BG Parkinsonian beta band oscillation power with small control error, bias, and deviation. Moreover, the accurate regulation generalizes across different therapeutic targets and consistently outperforms current on-off and LTI DBS methods.. These results have implications for future designs of closed-loop DBS systems to treat PD.

摘要

闭环深部脑刺激(DBS)是一种有前途的治疗帕金森病(PD)的方法,它通过实时调整从反馈神经活动指导的 DBS 模式来工作。目前的闭环 DBS 主要使用阈值交叉开-关控制器或线性时不变(LTI)控制器来调节基底神经节(BG)帕金森氏β带振荡功率。然而,PD 下的关键皮质-BG-丘脑网络动力学是非线性的、非平稳的和嘈杂的,这阻碍了帕金森氏神经振荡动力学的准确和稳健控制。在这里,我们开发了一种新的稳健自适应闭环 DBS 方法,用于调节皮质-BG-丘脑网络的帕金森氏β振荡动力学。我们首先构建了一个自适应状态空间模型来量化动态、非线性和非平稳的神经活动。然后,我们构建了一个自适应估计器来实时跟踪非线性和非平稳性。接下来,我们设计了一个稳健的控制器,根据估计的帕金森氏神经状态自动确定 DBS 频率,同时降低系统对高频噪声的敏感性。我们采用并调整了一个生物物理皮质-BG-丘脑网络模型作为一个模拟测试平台,以产生非线性和非平稳的帕金森氏神经动力学,用于评估 DBS 方法。我们发现,在不同的非线性和非平稳神经动力学下,我们的稳健自适应 DBS 方法实现了 BG 帕金森氏β带振荡功率的准确调节,具有较小的控制误差、偏差和偏差。此外,准确的调节具有跨不同治疗靶点的泛化能力,并始终优于当前的开-关和 LTI DBS 方法。这些结果对未来治疗 PD 的闭环 DBS 系统设计具有重要意义。

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