Title of article :
Measuring Coupling of Rhythmical Time Series Using Cross Sample Entropy and Cross Recurrence Quantification Analysis
Author/Authors :
McCamley, John MORE Foundation - Phoenix, USA , Denton, William University of Nebraska Omaha - University Drive - Omaha, USA , Lyden, Elizabeth University of Nebraska Medical Center - Omaha, USA , Yentes, Jennifer M University of Nebraska Omaha - University Drive - Omaha, USA
Abstract :
The aim of this investigation was to compare and contrast the use of cross sample entropy (xSE) and cross recurrence quantification
analysis (cRQA) measures for the assessment of coupling of rhythmical patterns. Measures were assessed using simulated signals
with regular, chaotic, and random fluctuations in frequency, amplitude, and a combination of both. Biological data were studied
as models of normal and abnormal locomotor-respiratory coupling. Nine signal types were generated for seven frequency ratios.
Fifteen patients with COPD (abnormal coupling) and twenty-one healthy controls (normal coupling) walked on a treadmill at three
speeds while breathing and walking were recorded. xSE and the cRQA measures of percent determinism, maximum line, mean line,
and entropy were quantified for both the simulated and experimental data. In the simulated data, xSE, percent determinism, and
entropy were influenced by the frequency manipulation.The 1 : 1 frequency ratio was different than other frequency ratios for almost
all measures and/or manipulations. The patients with COPD used a 2 : 3 ratio more often and xSE, percent determinism, maximum
line, mean line, and cRQA entropy were able to discriminate between the groups. Analysis of the effects of walking speed indicated
that all measures were able to discriminate between speeds.
Keywords :
Cross , Quantification , COPD
Journal title :
Computational and Mathematical Methods in Medicine