Cargando…

Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults

Background and Objectives: Autonomic nervous system (ANS) dysfunction is present in early stages of alcohol abuse and increases the likelihood of cardiovascular events. Given the nonlinear pattern of dynamic interaction between sympathetic nervous system (SNS) and para sympathetic nervous system (PN...

Descripción completa

Detalles Bibliográficos
Autores principales: Pop, Gheorghe Nicusor, Christodorescu, Ruxandra, Velimirovici, Dana Emilia, Sosdean, Raluca, Corbu, Miruna, Bodea, Olivia, Valcovici, Mihaela, Dragan, Simona
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8466135/
https://www.ncbi.nlm.nih.gov/pubmed/34577879
http://dx.doi.org/10.3390/medicina57090956
_version_ 1784573055657312256
author Pop, Gheorghe Nicusor
Christodorescu, Ruxandra
Velimirovici, Dana Emilia
Sosdean, Raluca
Corbu, Miruna
Bodea, Olivia
Valcovici, Mihaela
Dragan, Simona
author_facet Pop, Gheorghe Nicusor
Christodorescu, Ruxandra
Velimirovici, Dana Emilia
Sosdean, Raluca
Corbu, Miruna
Bodea, Olivia
Valcovici, Mihaela
Dragan, Simona
author_sort Pop, Gheorghe Nicusor
collection PubMed
description Background and Objectives: Autonomic nervous system (ANS) dysfunction is present in early stages of alcohol abuse and increases the likelihood of cardiovascular events. Given the nonlinear pattern of dynamic interaction between sympathetic nervous system (SNS) and para sympathetic nervous system (PNS) and the complex relationship with lifestyle factors, machine learning (ML) algorithms are best suited for analyzing alcohol impact over heart rate variability (HRV), because they allow the analysis of complex interactions between multiple variables. This study aimed to characterize autonomic nervous system dysfunction by analysis of HRV correlated with cardiovascular risk factors in young individuals by using machine learning. Materials and Methods: Total of 142 young adults (28.4 ± 4.34 years) agreed to participate in the study. Alcohol intake and drinking patterns were assessed by the AUDIT (Alcohol Use Disorders Identification Test) questionnaire and the YAI (Yearly Alcohol Intake) index. A short 5-min HRV evaluation was performed. Post-hoc analysis and machine learning algorithms were used to assess the impact of alcohol intake on HRV. Results: Binge drinkers presented slight modification in the frequency domain. Heavy drinkers had significantly lower time-domain values: standard deviation of RR intervals (SDNN) and root mean square of the successive differences (RMSSD), compared to casual and binge drinkers. High frequency (HF) values were significantly lower in heavy drinkers (p = 0.002). The higher low-to-high frequency ratio (LF/HF) that we found in heavy drinkers was interpreted as parasympathetic inhibition. Gradient boosting machine learner regression showed that age and alcohol consumption had the biggest scaled impact on the analyzed HRV parameters, followed by smoking, anxiety, depression, and body mass index. Gender and physical activity had the lowest impact on HRV. Conclusions: In healthy young adults, high alcohol intake has a negative impact on HRV in both time and frequency-domains. In parameters like HRV, where a multitude of risk factors can influence measurements, artificial intelligence algorithms seem to be a viable alternative for correct assessment.
format Online
Article
Text
id pubmed-8466135
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-84661352021-09-27 Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults Pop, Gheorghe Nicusor Christodorescu, Ruxandra Velimirovici, Dana Emilia Sosdean, Raluca Corbu, Miruna Bodea, Olivia Valcovici, Mihaela Dragan, Simona Medicina (Kaunas) Article Background and Objectives: Autonomic nervous system (ANS) dysfunction is present in early stages of alcohol abuse and increases the likelihood of cardiovascular events. Given the nonlinear pattern of dynamic interaction between sympathetic nervous system (SNS) and para sympathetic nervous system (PNS) and the complex relationship with lifestyle factors, machine learning (ML) algorithms are best suited for analyzing alcohol impact over heart rate variability (HRV), because they allow the analysis of complex interactions between multiple variables. This study aimed to characterize autonomic nervous system dysfunction by analysis of HRV correlated with cardiovascular risk factors in young individuals by using machine learning. Materials and Methods: Total of 142 young adults (28.4 ± 4.34 years) agreed to participate in the study. Alcohol intake and drinking patterns were assessed by the AUDIT (Alcohol Use Disorders Identification Test) questionnaire and the YAI (Yearly Alcohol Intake) index. A short 5-min HRV evaluation was performed. Post-hoc analysis and machine learning algorithms were used to assess the impact of alcohol intake on HRV. Results: Binge drinkers presented slight modification in the frequency domain. Heavy drinkers had significantly lower time-domain values: standard deviation of RR intervals (SDNN) and root mean square of the successive differences (RMSSD), compared to casual and binge drinkers. High frequency (HF) values were significantly lower in heavy drinkers (p = 0.002). The higher low-to-high frequency ratio (LF/HF) that we found in heavy drinkers was interpreted as parasympathetic inhibition. Gradient boosting machine learner regression showed that age and alcohol consumption had the biggest scaled impact on the analyzed HRV parameters, followed by smoking, anxiety, depression, and body mass index. Gender and physical activity had the lowest impact on HRV. Conclusions: In healthy young adults, high alcohol intake has a negative impact on HRV in both time and frequency-domains. In parameters like HRV, where a multitude of risk factors can influence measurements, artificial intelligence algorithms seem to be a viable alternative for correct assessment. MDPI 2021-09-11 /pmc/articles/PMC8466135/ /pubmed/34577879 http://dx.doi.org/10.3390/medicina57090956 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/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 (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Pop, Gheorghe Nicusor
Christodorescu, Ruxandra
Velimirovici, Dana Emilia
Sosdean, Raluca
Corbu, Miruna
Bodea, Olivia
Valcovici, Mihaela
Dragan, Simona
Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title_full Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title_fullStr Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title_full_unstemmed Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title_short Assessment of the Impact of Alcohol Consumption Patterns on Heart Rate Variability by Machine Learning in Healthy Young Adults
title_sort assessment of the impact of alcohol consumption patterns on heart rate variability by machine learning in healthy young adults
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8466135/
https://www.ncbi.nlm.nih.gov/pubmed/34577879
http://dx.doi.org/10.3390/medicina57090956
work_keys_str_mv AT popgheorghenicusor assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT christodorescuruxandra assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT velimirovicidanaemilia assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT sosdeanraluca assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT corbumiruna assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT bodeaolivia assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT valcovicimihaela assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults
AT dragansimona assessmentoftheimpactofalcoholconsumptionpatternsonheartratevariabilitybymachinelearninginhealthyyoungadults