Performance evaluation of fixed sample entropy in myographic signals for inspiratory muscle activity estimation

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Document typeArticle
Defense date2019-02-01
Rights accessOpen Access
Abstract
Fixed sample entropy (fSampEn) has been successfully applied to myographic signals for inspiratory muscle activity estimation, attenuating interference from cardiac activity. However, several values have been suggested for fSampEn parameters depending on the application, and there is no consensus standard for optimum values. This study aimed to perform a thorough evaluation of the performance of the most relevant fSampEn parameters in myographic respiratory signals, and to propose, for the first time, a set of optimal general fSampEn parameters for a proper estimation of inspiratory muscle activity. Different combinations of fSampEn parameters were used to calculate fSampEn in both non-invasive and the gold standard invasive myographic respiratory signals. All signals were recorded in a heterogeneous population of healthy subjects and chronic obstructive pulmonary disease patients during loaded breathing, thus allowing the performance of fSampEn to be evaluated for a variety of inspiratory muscle activation levels. The performance of fSampEn was assessed by means of the cross-covariance of fSampEn time-series and both mouth and transdiaphragmatic pressures generated by inspiratory muscles. A set of optimal general fSampEn parameters was proposed, allowing fSampEn of different subjects to be compared and contributing to improving the assessment of inspiratory muscle activity in health and disease
CitationLozano, M.; Estrada, L.; Jane, R. Performance evaluation of fixed sample entropy in myographic signals for inspiratory muscle activity estimation. "Entropy: international and interdisciplinary journal of entropy and information studies", 1 Febrer 2019, vol. 21, núm. 2, p. 183:1-183:16.
ISSN1099-4300
Publisher versionhttps://www.mdpi.com/1099-4300/21/2/183
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