随机非线性网络模型中扩展动力学的线性反馈控制:癫痫发作。

S A Moosavi, W Truccolo
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引用次数: 0

摘要

开发控制癫痫发作扩散动态的模型和方法是开发药物抵抗性癫痫患者新疗法的重要一步。切除性神经外科将致痫区(EZs)作为手术目标,除此之外,基于颅内电刺激的闭环控制(应用于癫痫发作演变的早期阶段)一直是主要的替代方案,例如来自NeuroPace (Mountain View, CA)的RNS系统。在这种方法中,电刺激在EZ检测到癫痫发作后传递到目标大脑区域。在这里,我们检查,在模型模拟,一些闭环控制方面的问题。在复杂的脑网络上,癫痫发作的动态和扩散通常是高度非线性的。尽管存在非线性和复杂性,但目前可用的最优反馈控制方法大多基于线性逼近。替代的机器学习控制方法可能需要超出预期应用程序通常可用的数据量。因此,我们研究了标准线性反馈控制方法在应用于癫痫发作产生和传播的神经动力学非线性模型时的表现。特别是,我们考虑了癫痫发作和扩散的患者特异性癫痫网络模型。这些模型结合了来自(扩散MRI)白质束图的网络连通性,已被证明可以捕获癫痫发作的定性动态,并且可以适合患者数据。对于控制,我们考虑了简单线性二次高斯(LQG)调节器。LQG控制基于离散时间状态空间模型,该模型由患者特异性癫痫网络模型的线性化导出,该模型在精确动力学状态下围绕一个稳定不动点。我们在模拟中表明,LQG调节器在初始发作期间作用于EZ节点往往是不稳定的。在这种情况下,控制律的LQG解导致对ez节点执行器的全局反馈。然而,如果LQG解被约束为仅依赖于源自EZ节点本身的局部反馈,则控制器是稳定的。在这种情况下,我们证明了局部LQG可以很容易地在早期终止癫痫发作并防止扩散。在基于线性近似的最优反馈控制的背景下,我们的结果指出需要更详细地研究反馈定位和癫痫区以外的其他相关控制目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear feedback control of spreading dynamics in stochastic nonlinear network models: epileptic seizures.

The development of models and approaches for controlling the spreading dynamics of epileptic seizures is an essential step towards new therapies for people with pharmacologically resistant epilepsy. Beyond resective neurosurgery, in which epileptogenic zones (EZs) are the target of surgery, closed-loop control based on intracranial electrical stimulation, applied at the very early stage of seizure evolution, has been the main alternative, e.g. the RNS system from NeuroPace (Mountain View, CA). In this approach the electrical stimulation is delivered to target brain areas after detection of seizure initiation in the EZ. Here, we examined, on model simulations, some of the closed-loop control aspects of the problem. Seizure dynamics and spread are typically modeled with highly nonlinear dynamics on complex brain networks. Despite the nonlinearity and complexity, currently available optimal feedback control approaches are mostly based on linear approximations. Alternative machine learning control approaches might require amounts of data beyond what is commonly available in the intended application. We thus examined how standard linear feedback control approaches perform when applied to nonlinear models of neural dynamics of seizure generation and spread. In particular, we considered patient-specific epileptor network models for seizure onset and spread. The models incorporate network connectivity derived from (diffusion MRI) white-matter tractography, have been shown to capture the qualitative dynamics of epileptic seizures and can be fit to patient data. For control, we considered simple linear quadratic Gaussian (LQG) regulators. The LQG control was based on a discrete-time state-space model derived from the linearization of the patient-specific epileptor network model around a stable fixed point in the regime of preictal dynamics. We show in simulations that LQG regulators acting on the EZ node during the initial seizure period tend to be unstable. The LQG solution for the control law in this case leads to global feedback to the EZ-node actuator. However, if the LQG solution is constrained to depend on only local feedback originating from the EZ node itself, the controller is stable. In this case, we demonstrate that localized LQG can easily terminate the seizure at the early stage and prevent spread. In the context of optimal feedback control based on linear approximations, our results point to the need for investigating in more detail feedback localization and additional relevant control targets beyond epileptogenic zones.

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