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Evidence-based modeling of network discharge dynamics during periodic pacing to control epileptiform activity

机译:基于证据的周期性起搏过程中网络放电动力学模型,以控制癫痫样活动

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Deep brain stimulation (DBS) is a promising therapeutic approach for epilepsy treatment. Recently, research has focused on the implementation of stimulation protocols that would adapt to the patients need (adaptive stimulation) and deliver electrical stimuli only when it is most useful. A formal mathematical description of the effects of electrical stimulation on neuronal networks is a prerequisite for the development of adaptive DBS algorithms. Using tools from non-linear dynamic analysis, we describe an evidence-based, mathematical modeling approach that (1) accurately simulates epileptiform activity at time-scales of single and multiple ictal discharges, (2) simulates modulation of neural dynamics during epileptiform activity in response to fixed, low-frequency electrical stimulation, (3) defines a mapping from real-world observations to model state, and (4) defines a mapping from model state to real-world observations. We validate the real-world utility of the model's properties by statistical comparison between the number, duration, and interval of ictal-like discharges observed in vitro and those simulated in silica under conditions of repeated stimuli at fixed-frequency. These validation results confirm that the evidence-based modeling approach captures robust, informative features of neural network dynamics of in vitro epileptiform activity under periodic pacing and support its use for further implementation of adaptive DBS protocols for epilepsy treatment.
机译:深部脑刺激(DBS)是一种有前途的癫痫治疗方法。最近,研究集中在刺激方案的实施上,该方案将适应患者的需求(自适应刺激),并且仅在最有用时才提供电刺激。电刺激对神经网络的影响的正式数学描述是开发自适应DBS算法的先决条件。我们使用非线性动力学分析中的工具,描述了一种基于证据的数学建模方法,该方法(1)在单次和多次发作放电的时间尺度上准确模拟癫痫样活动,(2)模拟在癫痫样活动期间神经动力学的调节对固定的低频电刺激的响应,(3)定义了从真实世界的观测值到模型状态的映射,(4)定义了从模型状态到真实世界的观测值的映射。通过在体外以固定频率反复刺激条件下观察到的和类似硅胶中模拟的放电样的放电次数,持续时间和间隔之间的统计比较,我们验证了模型特性的真实世界效用。这些验证结果证实,基于证据的建模方法在定期起搏下捕获了体外癫痫样活动的神经网络动力学的强大,有益的特征,并支持将其用于癫痫治疗的自适应DBS协议的进一步实施。

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