Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension

Interests about the fine underpinnings of cardiovascular beat-by-beat variability have historical roots. Over the last decades, various aspects of the relationships between arterial pressure and heart period were taken as a proxy of the baroreflex in physiology and medicine, stimulating the interest...

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Main Authors: Nadia Solaro, Mara Malacarne, Massimo Pagani, Daniela Lucini
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-04-01
Series:Frontiers in Physiology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fphys.2019.00478/full
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spelling doaj-b04e93d151024fb8ba83a7ed397846a82020-11-25T02:16:01ZengFrontiers Media S.A.Frontiers in Physiology1664-042X2019-04-011010.3389/fphys.2019.00478444572Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in HypertensionNadia Solaro0Mara Malacarne1Massimo Pagani2Daniela Lucini3Department of Statistics and Quantitative Methods, University of Milano-Bicocca, Milan, ItalyBIOMETRA Department, University of Milan, Milan, ItalyBIOMETRA Department, University of Milan, Milan, ItalyBIOMETRA Department, University of Milan, Milan, ItalyInterests about the fine underpinnings of cardiovascular beat-by-beat variability have historical roots. Over the last decades, various aspects of the relationships between arterial pressure and heart period were taken as a proxy of the baroreflex in physiology and medicine, stimulating the interest of investigators in several interconnected scientific fields, in particular, bioengineering, neurophysiology, and clinical medicine. Studies of the overall system facilitated the emergence of a simplified negative (vagal) feedback model of the baroreflex and overshadowed the simultaneous interaction with excitatory, sympathetic positive-feedback mechanisms that would, however, better suit the model of a “paired antagonistic (parasympathetic/sympathetic) innervation of the internal organs.” From the bioengineering side, the simplicity of obtaining the series of subsequent RR intervals stimulated the analysis of beat-by-beat variations, providing a multitude of heart rate variability (HRV) indices considered as proxies of the underlying sympatho-vagal balance, and participating to the management of several important clinical conditions, such as hypertension. In this context, advanced statistical methods, used in an integrated manner and controlling for age and gender biases, might help shed new light on the relationship between cardiac baroreflex, assessed by the frequency domain index α, and the HRV indices with the varying of systolic arterial pressure (SAP) levels. The focus is also on a novel unitary Autonomic Nervous System Index (ANSI) built as a synthesis of HRV considering its three most informative proxies [RR, RR variance, and the rest-stand difference in the normalized power of low-frequency (LF) variability component]. Data from a relatively large set of healthy subjects (n = 1154) with a broad range of SAP [from normal (nNt = 778) to elevated (nHt = 232)] show that, e.g., α and ANSI significantly correlate overall (r = 0.523, p < 0.001), and that this correlation is lower in hypertensives (r = 0.444, p < 0.001) and higher in pre-hypertensives (r = 0.618, p < 0.001) than in normotensives (r = 0.5, p < 0.001). That suggests the existence of curvilinear “umbrella” patterns that might better describe the effects of the SAP states on the relationships between baroreflex and HRV. By a mix of robust, non-parametric and resampling statistical techniques, we give empirical support to this study hypothesis and show that the pre-hypertensive group results at the apex/bottom in most of the studied trends.https://www.frontiersin.org/article/10.3389/fphys.2019.00478/fullneural controlnon-parametric bootstrapnon-parametric inferencepatterned alternativesphysiopathologysympathetic activity
collection DOAJ
language English
format Article
sources DOAJ
author Nadia Solaro
Mara Malacarne
Massimo Pagani
Daniela Lucini
spellingShingle Nadia Solaro
Mara Malacarne
Massimo Pagani
Daniela Lucini
Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
Frontiers in Physiology
neural control
non-parametric bootstrap
non-parametric inference
patterned alternatives
physiopathology
sympathetic activity
author_facet Nadia Solaro
Mara Malacarne
Massimo Pagani
Daniela Lucini
author_sort Nadia Solaro
title Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
title_short Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
title_full Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
title_fullStr Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
title_full_unstemmed Cardiac Baroreflex, HRV, and Statistics: An Interdisciplinary Approach in Hypertension
title_sort cardiac baroreflex, hrv, and statistics: an interdisciplinary approach in hypertension
publisher Frontiers Media S.A.
series Frontiers in Physiology
issn 1664-042X
publishDate 2019-04-01
description Interests about the fine underpinnings of cardiovascular beat-by-beat variability have historical roots. Over the last decades, various aspects of the relationships between arterial pressure and heart period were taken as a proxy of the baroreflex in physiology and medicine, stimulating the interest of investigators in several interconnected scientific fields, in particular, bioengineering, neurophysiology, and clinical medicine. Studies of the overall system facilitated the emergence of a simplified negative (vagal) feedback model of the baroreflex and overshadowed the simultaneous interaction with excitatory, sympathetic positive-feedback mechanisms that would, however, better suit the model of a “paired antagonistic (parasympathetic/sympathetic) innervation of the internal organs.” From the bioengineering side, the simplicity of obtaining the series of subsequent RR intervals stimulated the analysis of beat-by-beat variations, providing a multitude of heart rate variability (HRV) indices considered as proxies of the underlying sympatho-vagal balance, and participating to the management of several important clinical conditions, such as hypertension. In this context, advanced statistical methods, used in an integrated manner and controlling for age and gender biases, might help shed new light on the relationship between cardiac baroreflex, assessed by the frequency domain index α, and the HRV indices with the varying of systolic arterial pressure (SAP) levels. The focus is also on a novel unitary Autonomic Nervous System Index (ANSI) built as a synthesis of HRV considering its three most informative proxies [RR, RR variance, and the rest-stand difference in the normalized power of low-frequency (LF) variability component]. Data from a relatively large set of healthy subjects (n = 1154) with a broad range of SAP [from normal (nNt = 778) to elevated (nHt = 232)] show that, e.g., α and ANSI significantly correlate overall (r = 0.523, p < 0.001), and that this correlation is lower in hypertensives (r = 0.444, p < 0.001) and higher in pre-hypertensives (r = 0.618, p < 0.001) than in normotensives (r = 0.5, p < 0.001). That suggests the existence of curvilinear “umbrella” patterns that might better describe the effects of the SAP states on the relationships between baroreflex and HRV. By a mix of robust, non-parametric and resampling statistical techniques, we give empirical support to this study hypothesis and show that the pre-hypertensive group results at the apex/bottom in most of the studied trends.
topic neural control
non-parametric bootstrap
non-parametric inference
patterned alternatives
physiopathology
sympathetic activity
url https://www.frontiersin.org/article/10.3389/fphys.2019.00478/full
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AT maramalacarne cardiacbaroreflexhrvandstatisticsaninterdisciplinaryapproachinhypertension
AT massimopagani cardiacbaroreflexhrvandstatisticsaninterdisciplinaryapproachinhypertension
AT danielalucini cardiacbaroreflexhrvandstatisticsaninterdisciplinaryapproachinhypertension
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