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Bayesian adaptive dual control of deep brain stimulation in a computational model of Parkinson’s disease

机译:帕金森氏病计算模型中的深部脑刺激的贝叶斯自适应双重控制

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摘要

In this paper, we present a novel Bayesian adaptive dual controller (ADC) for autonomously programming deep brain stimulation devices. We evaluated the Bayesian ADC’s performance in the context of reducing beta power in a computational model of Parkinson’s disease, in which it was tasked with finding the set of stimulation parameters which optimally reduced beta power as fast as possible. Here, the Bayesian ADC has dual goals: (a) to minimize beta power by exploiting the best parameters found so far, and (b) to explore the space to find better parameters, thus allowing for better control in the future. The Bayesian ADC is composed of two parts: an inner parameterized feedback stimulator and an outer parameter adjustment loop. The inner loop operates on a short time scale, delivering stimulus based upon the phase and power of the beta oscillation. The outer loop operates on a long time scale, observing the effects of the stimulation parameters and using Bayesian optimization to intelligently select new parameters to minimize the beta power. We show that the Bayesian ADC can efficiently optimize stimulation parameters, and is superior to other optimization algorithms. The Bayesian ADC provides a robust and general framework for tuning stimulation parameters, can be adapted to use any feedback signal, and is applicable across diseases and stimulator designs.
机译:在本文中,我们提出了一种新颖的贝叶斯自适应双控制器(ADC),用于自主编程深部脑刺激设备。在帕金森氏病的计算模型中,我们在降低β幂的情况下评估了贝叶斯ADC的性能,该模型的任务是找到一组刺激参数,以尽可能快地最佳降低β幂。在此,贝叶斯ADC具有双重目标:(a)通过利用迄今为止发现的最佳参数来最大程度地降低beta功率,以及(b)探索寻找更好参数的空间,从而在将来提供更好的控制。贝叶斯ADC由两部分组成:内部参数化反馈激励器和外部参数调整环。内部环路在较短的时间范围内运行,根据β振荡的相位和功率提供刺激。外环长时间运行,观察刺激参数的影响,并使用贝叶斯优化技术智能地选择新参数以最大程度地降低β功率。我们表明,贝叶斯ADC可以有效地优化刺激参数,并且优于其他优化算法。贝叶斯ADC为调节刺激参数提供了一个强大而通用的框架,可以适应于使用任何反馈信号,并且适用于疾病和刺激器的设计。

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