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Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods

Costa et. al (Frontiers in Physiology (2017) 8255) proved that abnormal features of heart rate variability (HRV) can be discerned by the presence of particular patterns in a signal of time intervals between subsequent heart contractions, called RR intervals. In the following, the statistics of these...

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Autores principales: Makowiec, Danuta, Wdowczyk, Joanna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7514550/
http://dx.doi.org/10.3390/e21121206
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author Makowiec, Danuta
Wdowczyk, Joanna
author_facet Makowiec, Danuta
Wdowczyk, Joanna
author_sort Makowiec, Danuta
collection PubMed
description Costa et. al (Frontiers in Physiology (2017) 8255) proved that abnormal features of heart rate variability (HRV) can be discerned by the presence of particular patterns in a signal of time intervals between subsequent heart contractions, called RR intervals. In the following, the statistics of these patterns, quantified using entropic tools, are explored in order to uncover the specifics of the dynamics of heart contraction based on RR intervals. The 33 measures of HRV (standard and new ones) were estimated from four hour nocturnal recordings obtained from 181 healthy people of different ages and analyzed with the machine learning methods. The validation of the methods was based on the results obtained from shuffled data. The exploratory factor analysis provided five factors driving the HRV. We hypothesize that these factors could be related to the commonly assumed physiological sources of HRV: (i) activity of the vagal nervous system; (ii) dynamical balance in the autonomic nervous system; (iii) sympathetic activity; (iv) homeostatic stability; and (v) humoral effects. In particular, the indices describing patterns: their total volume, as well as their distribution, showed important aspects of the organization of the ANS control: the presence or absence of a strong correlation between the patterns’ indices, which distinguished the original rhythms of people from their shuffled representatives. Supposing that the dynamic organization of RR intervals is age dependent, classification with the support vector machines was performed. The classification results proved to be strongly dependent on the parameters of the methods used, therefore determining that the age group was not obvious.
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spelling pubmed-75145502020-11-09 Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods Makowiec, Danuta Wdowczyk, Joanna Entropy (Basel) Article Costa et. al (Frontiers in Physiology (2017) 8255) proved that abnormal features of heart rate variability (HRV) can be discerned by the presence of particular patterns in a signal of time intervals between subsequent heart contractions, called RR intervals. In the following, the statistics of these patterns, quantified using entropic tools, are explored in order to uncover the specifics of the dynamics of heart contraction based on RR intervals. The 33 measures of HRV (standard and new ones) were estimated from four hour nocturnal recordings obtained from 181 healthy people of different ages and analyzed with the machine learning methods. The validation of the methods was based on the results obtained from shuffled data. The exploratory factor analysis provided five factors driving the HRV. We hypothesize that these factors could be related to the commonly assumed physiological sources of HRV: (i) activity of the vagal nervous system; (ii) dynamical balance in the autonomic nervous system; (iii) sympathetic activity; (iv) homeostatic stability; and (v) humoral effects. In particular, the indices describing patterns: their total volume, as well as their distribution, showed important aspects of the organization of the ANS control: the presence or absence of a strong correlation between the patterns’ indices, which distinguished the original rhythms of people from their shuffled representatives. Supposing that the dynamic organization of RR intervals is age dependent, classification with the support vector machines was performed. The classification results proved to be strongly dependent on the parameters of the methods used, therefore determining that the age group was not obvious. MDPI 2019-12-09 /pmc/articles/PMC7514550/ http://dx.doi.org/10.3390/e21121206 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Makowiec, Danuta
Wdowczyk, Joanna
Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title_full Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title_fullStr Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title_full_unstemmed Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title_short Patterns of Heart Rate Dynamics in Healthy Aging Population: Insights from Machine Learning Methods
title_sort patterns of heart rate dynamics in healthy aging population: insights from machine learning methods
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7514550/
http://dx.doi.org/10.3390/e21121206
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