Modified multiscale Renyi distribution entropy for short-term heart rate variability analysis.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-11-19 DOI:10.1186/s12911-024-02763-1
Manhong Shi, Yinuo Shi, Yuxin Lin, Xue Qi
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Abstract

Background: Multiscale sample entropy (MSE) is a prevalent complexity metric to characterize a time series and has been extensively applied to the physiological signal analysis. However, for a short-term time series, the likelihood of identifying comparable subsequences decreases, leading to higher variability in the Sample Entropy (SampEn) calculation. Additionally, as the scale factor increases in the MSE calculation, the coarse-graining process further shortens the time series. Consequently, each newly generated time series at a larger scale consists of fewer data points, potentially resulting in unreliable or undefined entropy values, particularly at higher scales. To overcome the shortcoming, a modified multiscale Renyi distribution entropy (MMRDis) was proposed in our present work.

Methods: The MMRDis method uses a moving-averaging procedure to acquire a family of time series, each of which quantify the dynamic behaviors of the short-term time series over the multiple temporal scales. Then, MMRDis is constructed for the original and the coarse-grained time series.

Results: The MMRDis method demonstrated superior computational stability on simulated Gaussian white and 1/f noise time series, effectively avoiding undefined measurements in short-term time series. Analysis of short-term heart rate variability (HRV) signals from healthy elderly individuals, healthy young people, and subjects with congestive heart failure and atrial fibrillation revealed that MMRDis complexity measurement values decreased with aging and disease. Additionally, MMRDis exhibited better distinction capability for short-term HRV physiological/pathological signals compared to several recently proposed complexity metrics.

Conclusions: MMRDis was a promising measurement for screening cardiovascular condition within a short time.

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用于短期心率变异性分析的修正多尺度仁义分布熵。
背景:多尺度样本熵(MSE)是表征时间序列复杂性的常用指标,已被广泛应用于生理信号分析。然而,对于短期时间序列来说,识别可比子序列的可能性会降低,从而导致样本熵(SampEn)计算的变异性增大。此外,随着 MSE 计算中比例因子的增加,粗粒化过程会进一步缩短时间序列。因此,在更大尺度下新生成的每个时间序列包含的数据点更少,可能导致熵值不可靠或不确定,尤其是在更高的尺度下。为了克服这一缺陷,我们在本研究中提出了一种改进的多尺度仁义分布熵(MMRDis)方法:方法:MMRDis 方法使用移动平均程序获取时间序列系列,每个系列量化短期时间序列在多个时间尺度上的动态行为。然后,为原始时间序列和粗粒度时间序列构建 MMRDis:结果:MMRDis 方法在模拟高斯白噪声和 1/f 噪声时间序列上表现出卓越的计算稳定性,有效避免了短期时间序列中的未定义测量。对健康老年人、健康年轻人以及充血性心力衰竭和心房颤动受试者的短期心率变异性(HRV)信号进行分析后发现,MMRDis 的复杂度测量值随着年龄的增长和疾病的发生而降低。此外,与最近提出的几种复杂度指标相比,MMRDis 对短期心率变异生理/病理信号的区分能力更强:结论:MMRDis 是一种在短时间内筛查心血管状况的有前途的测量方法。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
期刊最新文献
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