2021
DOI: 10.1098/rsta.2020.0249
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Assessment of long-range cross-correlations in cardiorespiratory and cardiovascular interactions

Abstract: We propose higher-order detrending moving-average cross-correlation analysis (DMCA) to assess the long-range cross-correlations in cardiorespiratory and cardiovascular interactions. Although the original (zeroth-order) DMCA employs a simple moving-average detrending filter to remove non-stationary trends embedded in the observed time series, our approach incorporates a Savitzky–Golay filter as a higher-order detrending method. Because the non-stationary trends can adversely affect the long-range correlation as… Show more

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Cited by 4 publications
(1 citation statement)
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“…They show that low-frequency oscillations of unrelated QT variability are altered in the case of coronary artery disease as compared to healthy controls when measured during the first phases of exercise and last phases of recovery. In the frame of nonlinear analysis, Nakata et al [12] propose a novel methodology for the assessment of long-range cross-correlations in cardiovascular and cardio-respiratory series. The higher order detrending moving-average cross-correlation analysis shows that, besides autocorrelations, respiratory and HRV series do not share long-range cross-correlations, whereas beat-to-beat systolic blood pressure and HRV series do share common long-range cross-correlated factors.…”
Section: Editorialmentioning
confidence: 99%
“…They show that low-frequency oscillations of unrelated QT variability are altered in the case of coronary artery disease as compared to healthy controls when measured during the first phases of exercise and last phases of recovery. In the frame of nonlinear analysis, Nakata et al [12] propose a novel methodology for the assessment of long-range cross-correlations in cardiovascular and cardio-respiratory series. The higher order detrending moving-average cross-correlation analysis shows that, besides autocorrelations, respiratory and HRV series do not share long-range cross-correlations, whereas beat-to-beat systolic blood pressure and HRV series do share common long-range cross-correlated factors.…”
Section: Editorialmentioning
confidence: 99%