Kafantaris Evangelos, Piper Ian, Lo Tsz-Yan Milly, Escudero Javier
School of Engineering, Institute for Digital Communications, University of Edinburgh, Edinburgh EH9 3FB, UK.
MRC Centre for Reproductive Health, Department of Child Life and Health, University of Edinburgh, Edinburgh EH9 1UW, UK.
Entropy (Basel). 2020 Mar 11;22(3):319. doi: 10.3390/e22030319.
Entropy quantification algorithms are becoming a prominent tool for the physiological monitoring of individuals through the effective measurement of irregularity in biological signals. However, to ensure their effective adaptation in monitoring applications, the performance of these algorithms needs to be robust when analysing time-series containing missing and outlier samples, which are common occurrence in physiological monitoring setups such as wearable devices and intensive care units. This paper focuses on augmenting Dispersion Entropy (DisEn) by introducing novel variations of the algorithm for improved performance in such applications. The original algorithm and its variations are tested under different experimental setups that are replicated across heart rate interval, electroencephalogram, and respiratory impedance time-series. Our results indicate that the algorithmic variations of DisEn achieve considerable improvements in performance while our analysis signifies that, in consensus with previous research, outlier samples can have a major impact in the performance of entropy quantification algorithms. Consequently, the presented variations can aid the implementation of DisEn to physiological monitoring applications through the mitigation of the disruptive effect of missing and outlier samples.
熵量化算法正成为通过有效测量生物信号的不规则性来对个体进行生理监测的重要工具。然而,为确保其在监测应用中的有效适应性,在分析包含缺失样本和异常值样本的时间序列时,这些算法的性能需要稳健,而在诸如可穿戴设备和重症监护病房等生理监测设置中,缺失样本和异常值样本很常见。本文着重通过引入该算法的新颖变体来增强离散熵(DisEn),以在这类应用中提高性能。原始算法及其变体在不同的实验设置下进行测试,这些设置在心率间期、脑电图和呼吸阻抗时间序列中重复进行。我们的结果表明,DisEn的算法变体在性能上有显著提升,同时我们的分析表明,与先前的研究一致,异常值样本会对熵量化算法的性能产生重大影响。因此,所提出的变体可以通过减轻缺失样本和异常值样本的干扰效应,帮助将DisEn应用于生理监测。