Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring

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...

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Main Authors: Evangelos Kafantaris, Ian Piper, Tsz-Yan Milly Lo, Javier Escudero
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/3/319
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spelling doaj-2e1843b220e34091af91e8028789efa12020-11-25T02:01:59ZengMDPI AGEntropy1099-43002020-03-0122331910.3390/e22030319e22030319Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal MonitoringEvangelos Kafantaris0Ian Piper1Tsz-Yan Milly Lo2Javier Escudero3School of Engineering, Institute for Digital Communications, University of Edinburgh, Edinburgh EH9 3FB, UKMRC Centre for Reproductive Health, Department of Child Life and Health, University of Edinburgh, Edinburgh EH9 1UW, UKRoyal Hospital for Sick Children, NHS Lothian, Edinburgh EH9 1LF, UKSchool of Engineering, Institute for Digital Communications, University of Edinburgh, Edinburgh EH9 3FB, UKEntropy 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.https://www.mdpi.com/1099-4300/22/3/319symbolic data analysisnonlinear analysisdispersion entropymissing samplesoutlier samples
collection DOAJ
language English
format Article
sources DOAJ
author Evangelos Kafantaris
Ian Piper
Tsz-Yan Milly Lo
Javier Escudero
spellingShingle Evangelos Kafantaris
Ian Piper
Tsz-Yan Milly Lo
Javier Escudero
Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
Entropy
symbolic data analysis
nonlinear analysis
dispersion entropy
missing samples
outlier samples
author_facet Evangelos Kafantaris
Ian Piper
Tsz-Yan Milly Lo
Javier Escudero
author_sort Evangelos Kafantaris
title Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
title_short Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
title_full Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
title_fullStr Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
title_full_unstemmed Augmentation of Dispersion Entropy for Handling Missing and Outlier Samples in Physiological Signal Monitoring
title_sort augmentation of dispersion entropy for handling missing and outlier samples in physiological signal monitoring
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-03-01
description 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.
topic symbolic data analysis
nonlinear analysis
dispersion entropy
missing samples
outlier samples
url https://www.mdpi.com/1099-4300/22/3/319
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