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A Reweighted ℓ1-Minimization Based Compressed Sensing for the Spectral Estimation of Heart Rate Variability Using the Unevenly Sampled Data

机译:基于不均匀采样数据的基于Re1最小化的加权加权压缩感知用于心率变异性的频谱估计

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摘要

In this paper, a reweighted ℓ1-minimization based Compressed Sensing (CS) algorithm incorporating the Integral Pulse Frequency Modulation (IPFM) model for spectral estimation of HRV is introduced. Knowing as a novel sensing/sampling paradigm, the theory of CS asserts certain signals that are considered sparse or compressible can be possibly reconstructed from substantially fewer measurements than those required by traditional methods. Our study aims to employ a novel reweighted ℓ1-minimization CS method for deriving the spectrum of the modulating signal of IPFM model from incomplete RR measurements for HRV assessments. To evaluate the performance of HRV spectral estimation, a quantitative measure, referred to as the Percent Error Power (PEP) that measures the percentage of difference between the true spectrum and the spectrum derived from the incomplete RR dataset, was used. We studied the performance of spectral reconstruction from incomplete simulated and real HRV signals by experimentally truncating a number of RR data accordingly in the top portion, in the bottom portion, and in a random order from the original RR column vector. As a result, for up to 20% data truncation/loss the proposed reweighted ℓ1-minimization CS method produced, on average, 2.34%, 2.27%, and 4.55% PEP in the top, bottom, and random data-truncation cases, respectively, on Autoregressive (AR) model derived simulated HRV signals. Similarly, for up to 20% data loss the proposed method produced 5.15%, 4.33%, and 0.39% PEP in the top, bottom, and random data-truncation cases, respectively, on a real HRV database drawn from PhysioNet. Moreover, results generated by a number of intensive numerical experiments all indicated that the reweighted ℓ1-minimization CS method always achieved the most accurate and high-fidelity HRV spectral estimates in every aspect, compared with the ℓ1-minimization based method and Lomb's method used for estimating the spectrum of HRV from unevenly sampled RR data.
机译:本文介绍了一种基于重加权Frequency1最小化的压缩感知(CS)算法,该算法结合了积分脉冲频率调制(IPFM)模型用于HRV的频谱估计。 CS理论被称为一种新颖的传感/采样范例,它断言某些被认为稀疏或可压缩的信号可以用比传统方法所需的测量少得多的测量值来重构。我们的研究旨在采用一种新颖的加权re1最小化CS方法,从不完整的RR测量值中推导IPFM模型的调制信号频谱,以进行HRV评估。为了评估HRV频谱估计的性能,使用了一种定量方法,称为百分比误差功率(PEP),该度量用于测量真实频谱与从不完整RR数据集得出的频谱之间的差异百分比。我们通过在顶部,底部和原始RR列向量中以随机顺序相应地截断了许多RR数据,研究了从不完整的模拟HRV信号和真实HRV信号重构频谱的性能。结果,对于高达20%的数据截断/丢失,建议的重新加权ℓ1-最小化CS方法在顶部,底部和随机数据截断的情况下分别平均产生2.34%,2.27%和4.55%的PEP。 ,在自回归(AR)模型上得出模拟的HRV信号。同样,对于高达20%的数据丢失,在从PhysioNet提取的真实HRV数据库中,在顶部,底部和随机数据截断情况下,建议的方法分别产生5.15%,4.33%和0.39%的PEP。此外,大量密集数值实验得出的结果都表明,与基于ℓ1最小化的方法和Lomb's方法相比,重新加权的ℓ1最小化CS方法始终在各个方面都实现了最准确,最保真的HRV频谱估计。根据不均匀采样的RR数据估算HRV的频谱。

著录项

  • 期刊名称 other
  • 作者

    Szi-Wen Chen; Shih-Chieh Chao;

  • 作者单位
  • 年(卷),期 -1(9),6
  • 年度 -1
  • 页码 e99098
  • 总页数 12
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

  • 入库时间 2022-08-21 11:18:32

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