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用于心血管系统的迷走神经刺激的数据驱动控制:一项计算研究。

Data Driven Control of Vagus Nerve Stimulation for the Cardiovascular System: An Computational Study.

作者信息

Branen Andrew, Yao Yuyu, Kothare Mayuresh V, Mahmoudi Babak, Kumar Gautam

机构信息

Department of Chemical and Materials Engineering, San José State University, San José, CA, United States.

Department of Chemical and Biomolecular Engineering, Lehigh University, Bethlehem, PA, United States.

出版信息

Front Physiol. 2022 Jun 3;13:798157. doi: 10.3389/fphys.2022.798157. eCollection 2022.

Abstract

Vagus nerve stimulation is an emerging therapy that seeks to offset pathological conditions by electrically stimulating the vagus nerve through cuff electrodes, where an electrical pulse is defined by several parameters such as pulse amplitude, pulse width, and pulse frequency. Currently, vagus nerve stimulation is under investigation for the treatment of heart failure, cardiac arrhythmia and hypertension. Through several clinical trials that sought to assess vagus nerve stimulation for the treatment of heart failure, stimulation parameters were determined heuristically and the results were inconclusive, which has led to the suggestion of using a closed-loop approach to optimize the stimulation parameters. A recent investigation has demonstrated highly specific control of cardiovascular physiology by selectively activating different fibers in the vagus nerve. When multiple locations and multiple stimulation parameters are considered for optimization, the design of closed-loop control becomes considerably more challenging. To address this challenge, we investigated a data-driven control scheme for both modeling and controlling the rat cardiovascular system. Using an existing physiological model of a rat heart to generate synthetic input-output data, we trained a long short-term memory network (LSTM) to map the effect of stimulation on the heart rate and blood pressure. The trained LSTM was utilized in a model predictive control framework to optimize the vagus nerve stimulation parameters for set point tracking of the heart rate and the blood pressure in closed-loop simulations. Additionally, we altered the underlying physiological model to consider intra-patient variability, and diseased dynamics from increased sympathetic tone in designing closed-loop VNS strategies. Throughout the different simulation scenarios, we leveraged the design of the controller to demonstrate alternative clinical objectives. Our results show that the controller can optimize stimulation parameters to achieve set-point tracking with nominal offset while remaining computationally efficient. Furthermore, we show a controller formulation that compensates for mismatch due to intra-patient variabilty, and diseased dynamics. This study demonstrates the first application and a proof-of-concept for using a purely data-driven approach for the optimization of vagus nerve stimulation parameters in closed-loop control of the cardiovascular system.

摘要

迷走神经刺激是一种新兴的治疗方法,旨在通过袖带电极对迷走神经进行电刺激来抵消病理状况,其中电脉冲由诸如脉冲幅度、脉冲宽度和脉冲频率等几个参数定义。目前,迷走神经刺激正在用于心力衰竭、心律失常和高血压治疗的研究中。通过几项旨在评估迷走神经刺激治疗心力衰竭的临床试验,刺激参数是通过启发式方法确定的,结果尚无定论,这导致有人建议采用闭环方法来优化刺激参数。最近的一项研究表明,通过选择性激活迷走神经中的不同纤维,可以对心血管生理进行高度特异性的控制。当考虑多个位置和多个刺激参数进行优化时,闭环控制的设计变得更具挑战性。为了应对这一挑战,我们研究了一种数据驱动的控制方案,用于对大鼠心血管系统进行建模和控制。利用大鼠心脏的现有生理模型生成合成输入-输出数据,我们训练了一个长短期记忆网络(LSTM)来映射刺激对心率和血压的影响。训练后的LSTM被用于模型预测控制框架中,以优化迷走神经刺激参数,在闭环模拟中实现心率和血压的设定点跟踪。此外,我们改变了基础生理模型,以考虑患者内变异性以及在设计闭环迷走神经刺激策略时交感神经张力增加导致的疾病动态变化。在整个不同的模拟场景中,我们利用控制器的设计来展示不同的临床目标。我们的结果表明,该控制器可以优化刺激参数,以实现具有标称偏移的设定点跟踪,同时保持计算效率。此外,我们展示了一种控制器公式,可补偿由于患者内变异性和疾病动态变化导致的不匹配。这项研究展示了在心血管系统闭环控制中使用纯数据驱动方法优化迷走神经刺激参数的首次应用和概念验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a31f/9204199/f7c3369728df/fphys-13-798157-g001.jpg

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