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Model-based iterative learning control of Parkinsonian state in thalamic relay neuron

机译:丘脑中继神经元中基于模型的帕金森状态迭代学习控制

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摘要

Although the beneficial effects of chronic deep brain stimulation on Parkinson's disease motor symptoms are now largely confirmed, the underlying mechanisms behind deep brain stimulation remain unclear and under debate. Hence, the selection of stimulation parameters is full of challenges. Additionally, due to the complexity of neural system, together with omnipresent noises, the accurate model of thalamic relay neuron is unknown. Thus, the iterative learning control of the thalamic relay neuron's Parkinsonian state based on various variables is presented. Combining the iterative learning control with typical proportional-integral control algorithm, a novel and efficient control strategy is proposed, which does not require any particular knowledge on the detailed physiological characteristics of cortico-basal ganglia-thalamocortical loop and can automatically adjust the stimulation parameters. Simulation results demonstrate the feasibility of the proposed control strategy to restore the fidelity of thalamic relay in the Parkinsonian condition. Furthermore, through changing the important parameter-the maximum ionic conductance densities of low-threshold calcium current, the dominant characteristic of the proposed method which is independent of the accurate model can be further verified.
机译:尽管现在已经充分证实了慢性深部脑刺激对帕金森氏病运动症状的有益作用,但深部脑刺激背后的潜在机制仍不清楚,并且仍在争论中。因此,刺激参数的选择充满了挑战。此外,由于神经系统的复杂性以及无处不在的噪声,丘脑中继神经元的精确模型尚不清楚。因此,提出了基于各种变量的丘脑中继神经元帕金森状态的迭代学习控制。将迭代学习控制与典型的比例积分控制算法相结合,提出了一种新颖而有效的控制策略,该策略不需要对皮质-基底神经节-丘脑皮层环的详细生理特征有任何特定的了解,并且可以自动调节刺激参数。仿真结果证明了提出的控制策略在帕金森状态下恢复丘脑继电器保真度的可行性。此外,通过更改重要参数-低阈值钙电流的最大离子电导率密度,可以进一步验证所提出方法的独立于精确模型的主要特征。

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