简介概要

An EMD based method for detrending RR interval series without resampling

来源期刊:中南大学学报(英文版)2015年第2期

论文作者:ZENG Chao(曾超) JIANG Qi-yun(蒋奇云) CHEN Chao-yang(陈朝阳) XU Min(徐敏)

文章页码:567 - 574

Key words:heart rate variability; empirical mode decomposition; detrending; RR interval model

Abstract: Slow trends in the RR interval (RRI) series should be removed in the preprocessing step to get a reliable result of heart rate variability (HRV) analysis. Re-sampling is required to convert the unevenly sampled RRI series into evenly sampled time series when using the widely accepted smoothness priors approach (SPA). Noise is introduced in this process and the information quality is thus compromised. Empirical mode decomposition (EMD) and its variants, were introduced to directly process the unevenly sampled RRI series. Besides, a RR interval model was proposed to fascinate the introduction of standard metrics for the evaluation of the detrending performance. Based on standard metrics including signal-to-noise-ratio in dB (ISNR), mean square error (EMS), and percent root square difference (DPRS), the effectiveness of detrending methods in RR interval analysis were determined. Results demonstrate that complementary ensemble EMD (CEEMD, a variant of EMD) based method has a higher ISNR, a lower EMS and a lower DPRS as well as a better RRI series detrending performance compared with the SPA method, which would in turn lead to a more accurate HRV analysis.

详情信息展示

An EMD based method for detrending RR interval series without resampling

ZENG Chao(曾超)1, 2, JIANG Qi-yun(蒋奇云)1, CHEN Chao-yang(陈朝阳)3, XU Min(徐敏)1

(1. School of Geosciences and Info-physics, Central South University, Changsha 410083, China;
2. College of Information Science and Technology, Shihezi University, Shihezi 832000, China;
3. Department of Biomedical Engineering, Wayne State University, Detroit, MI 48201, USA)

Abstract:Slow trends in the RR interval (RRI) series should be removed in the preprocessing step to get a reliable result of heart rate variability (HRV) analysis. Re-sampling is required to convert the unevenly sampled RRI series into evenly sampled time series when using the widely accepted smoothness priors approach (SPA). Noise is introduced in this process and the information quality is thus compromised. Empirical mode decomposition (EMD) and its variants, were introduced to directly process the unevenly sampled RRI series. Besides, a RR interval model was proposed to fascinate the introduction of standard metrics for the evaluation of the detrending performance. Based on standard metrics including signal-to-noise-ratio in dB (ISNR), mean square error (EMS), and percent root square difference (DPRS), the effectiveness of detrending methods in RR interval analysis were determined. Results demonstrate that complementary ensemble EMD (CEEMD, a variant of EMD) based method has a higher ISNR, a lower EMS and a lower DPRS as well as a better RRI series detrending performance compared with the SPA method, which would in turn lead to a more accurate HRV analysis.

Key words:heart rate variability; empirical mode decomposition; detrending; RR interval model

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