脊髓背柱刺激的生理参数估计

Andrew Haddock, Tianhe Zhang, R. Esteller
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引用次数: 0

摘要

脊髓刺激(SCS)是慢性神经性疼痛患者的治疗选择。尽管最近开发的植入式脉冲发生器(IPG)系统利用诱发复合动作电位(ECAP)振幅的实时电生理测量作为调节SCS治疗的反馈信号,但尚不清楚这是否是维持一致神经激活的最佳反馈信号。在本文中,我们考虑了ECAP振幅以及其他提取的特征,如AUC、N1时间和传导速度,并在背柱SCS产生的ECAP计算模型中研究了这些特征如何响应生理参数的变化。我们使用模拟测试平台来比较线性估计器和由不同ECAP特征构建的卡尔曼滤波器对治疗相关参数的估计,并证明使用N1时间或传导速度的卡尔曼滤波器在刺激和传感电极的模拟条件范围内具有鲁棒性。而当刺激电极和感应电极的条件不理想时,使用ECAP振幅和AUC特征的估计器容易产生更高的误差。这些结果可能会推动未来适应性SCS治疗的发展,并重新考虑如何利用提取的ECAP特征来检测治疗相关的信号变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physiological Parameter Estimation for Dorsal Column Spinal Cord Stimulation
Spinal Cord Stimulation (SCS) is an established treatment option for patients living with chronic neuropathic pain. Although recently developed implanted pulse generator (IPG) systems are utilizing real-time electrophysiological measurements of evoked compound action potential (ECAP) amplitude as a feedback signal for modulating SCS therapy, it is not clear whether this is the optimal feedback signal for maintaining consistent neural activation. In this paper, we consider ECAP amplitude alongside other extracted features, such as AUC, N1 time, and conduction velocity, and investigate how these features respond to changes in physiological parameters in a computational model of ECAPs produced by dorsal column SCS. We use a simulated test bed to compare therapy-relevant parameter estimation by linear estimators and a Kalman Filter constructed from different ECAP features, and we demonstrate that a Kalman Filter using N1 time or conduction velocity has robust performance across the range of simulated conditions at the stimulating and sensing electrodes, while estimators using ECAP amplitude and AUC features are shown to be prone to higher error when conditions at the stimulating and sensing electrodes are not ideal. These results may drive future adaptive SCS therapy developments and a reconsideration of how to leverage extracted ECAP features for detecting therapy-relevant signal changes.
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