基于观测器的多通道系统确定性输入反卷积及其在无创中心血压监测中的应用。

Zahra Ghasemi, Woongsun Jeon, Chang-Sei Kim, Anuj Gupta, Rajesh Rajamani, Jin-Oh Hahn
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引用次数: 1

摘要

中心主动脉血压(BP)对心血管(CV)健康和风险预测具有重要意义。心血管系统是一个多通道的动力系统,在不同的身体部位产生多个血压,以响应中央主动脉血压。本文研究了一种基于观测器的方法,对一类适用于无创中央主动脉血压估计的素数多通道系统中的未知输入进行反卷积。多通道系统对一个公共输入产生多个输出。因此,任意一对两个输出之间的关系构成了一个假设的输入-输出系统,其中未知输入作为一种状态嵌入。我们方法的核心思想是通过为假设的输入输出系统设计一个观察者来获得未知输入。在本文中,我们开发了一种未知输入观测器(UIO)用于素数多通道系统的输入反卷积。我们提供了一个通用的设计算法,以及有意义的物理见解和与算法相关的固有性能限制。我们的方法的有效性和潜力通过两个无创获取的外周动脉脉冲波形估计中央主动脉血压波形的案例研究来说明。与传统的反滤波(IF)和外周动脉脉冲缩放技术相比,UIO可以将与中央主动脉血压相关的均方根误差(RMSE)降低27.5%和28.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Observer-Based Deconvolution of Deterministic Input in Coprime Multichannel Systems With Its Application to Noninvasive Central Blood Pressure Monitoring.

Estimating central aortic blood pressure (BP) is important for cardiovascular (CV) health and risk prediction purposes. CV system is a multichannel dynamical system that yields multiple BPs at various body sites in response to central aortic BP. This paper concerns the development and analysis of an observer-based approach to deconvolution of unknown input in a class of coprime multichannel systems applicable to noninvasive estimation of central aortic BP. A multichannel system yields multiple outputs in response to a common input. Hence, the relationship between any pair of two outputs constitutes a hypothetical input-output system with unknown input embedded as a state. The central idea underlying our approach is to derive the unknown input by designing an observer for the hypothetical input-output system. In this paper, we developed an unknown input observer (UIO) for input deconvolution in coprime multichannel systems. We provided a universal design algorithm as well as meaningful physical insights and inherent performance limitations associated with the algorithm. The validity and potential of our approach were illustrated using a case study of estimating central aortic BP waveform from two noninvasively acquired peripheral arterial pulse waveforms. The UIO could reduce the root-mean-squared error (RMSE) associated with the central aortic BP by up to 27.5% and 28.8% against conventional inverse filtering (IF) and peripheral arterial pulse scaling techniques.

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