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RR 系列的伪迹校正方法对心率变异性参数的影响。

The impact of artifact correction methods of RR series on heart rate variability parameters.

机构信息

Department of Physics, FFCLRP, University of São Paulo , Brazil.

Department of Physiology, FMRP, University of São Paulo , Brazil.

出版信息

J Appl Physiol (1985). 2018 Mar 1;124(3):646-652. doi: 10.1152/japplphysiol.00927.2016. Epub 2017 Sep 21.

Abstract

Heart rate variability (HRV) analysis is widely used to investigate the autonomic regulation of the cardiovascular system. HRV is often analyzed using RR time series, which can be affected by different types of artifacts. Although there are several artifact correction methods, there is no study that compares their performances in actual experimental contexts. This work aimed to evaluate the impact of different artifact correction methods on several HRV parameters. Initially, 36 ECG recordings of control rats or rats with heart failure or hypertension were analyzed to characterize artifact occurrence rates and distributions, to be mimicked in simulations. After a rigorous analysis, only 16 recordings ( n = 16) with artifact-free segments of at least 10,000 beats were selected. RR interval losses were then simulated in the artifact-free (reference) time series according to real observations. Correction methods applied to simulated series were deletion, linear interpolation, cubic spline interpolation, modified moving average window, and nonlinear predictive interpolation. Linear (time- and frequency-domain) and nonlinear HRV parameters were calculated from corrupted-corrected time series, as well as for reference series to evaluate the accuracy of each correction method. Results show that NPI provides the overall best performance. However, several correction approaches, for example the simple deletion procedure, can provide good performance in some situations, depending on the HRV parameters under consideration. NEW & NOTEWORTHY This work analyzes the performance of some correction techniques commonly applied to the missing beats problem in RR time series. From artifact-free RR series, spurious values were inserted based on actual data of experimental settings. We intend our work to be a guide to show how artifacts should be corrected to preserve as much as possible the original heart rate variability properties.

摘要

心率变异性(HRV)分析广泛用于研究心血管系统的自主调节。HRV 通常使用 RR 时间序列进行分析,而 RR 时间序列可能会受到不同类型的伪影的影响。尽管有几种伪影校正方法,但没有研究比较它们在实际实验环境中的性能。本工作旨在评估不同的伪影校正方法对几种 HRV 参数的影响。首先,分析了 36 个对照大鼠或心力衰竭或高血压大鼠的 ECG 记录,以描述伪影的发生率和分布情况,以便在模拟中进行模拟。经过严格的分析,仅选择了 16 个具有至少 10000 个无伪影段的记录(n=16)。然后根据实际观察结果,在无伪影(参考)时间序列中模拟 RR 间隔丢失。应用于模拟序列的校正方法有删除、线性插值、三次样条插值、修正移动平均窗口和非线性预测插值。从受污染校正后的时间序列以及参考序列计算线性(时域和频域)和非线性 HRV 参数,以评估每种校正方法的准确性。结果表明,NPI 提供了整体最佳性能。然而,几种校正方法,例如简单的删除程序,在某些情况下,取决于所考虑的 HRV 参数,可以提供良好的性能。创新点:本工作分析了一些校正技术在 RR 时间序列中常见的缺失数据问题的性能。从无伪影的 RR 序列中,根据实验设置的实际数据插入了虚假值。我们希望我们的工作能为指导如何校正伪影,以尽可能保留原始心率变异性特征提供帮助。

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