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Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data

Diagnosis of cardiovascular diseases is an urgent task because they are the main cause of death for 32% of the world’s population. Particularly relevant are automated diagnostics using machine learning methods in the digitalization of healthcare and introduction of personalized medicine in healthcar...

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Autores principales: Chumachenko, Dmytro, Butkevych, Mykola, Lode, Daniel, Frohme, Marcus, Schmailzl, Kurt J. G., Nechyporenko, Alina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9502529/
https://www.ncbi.nlm.nih.gov/pubmed/36146381
http://dx.doi.org/10.3390/s22187033
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author Chumachenko, Dmytro
Butkevych, Mykola
Lode, Daniel
Frohme, Marcus
Schmailzl, Kurt J. G.
Nechyporenko, Alina
author_facet Chumachenko, Dmytro
Butkevych, Mykola
Lode, Daniel
Frohme, Marcus
Schmailzl, Kurt J. G.
Nechyporenko, Alina
author_sort Chumachenko, Dmytro
collection PubMed
description Diagnosis of cardiovascular diseases is an urgent task because they are the main cause of death for 32% of the world’s population. Particularly relevant are automated diagnostics using machine learning methods in the digitalization of healthcare and introduction of personalized medicine in healthcare institutions, including at the individual level when designing smart houses. Therefore, this study aims to analyze short 10-s electrocardiogram measurements taken from 12 leads. In addition, the task is to classify patients with suspected myocardial infarction using machine learning methods. We have developed four models based on the k-nearest neighbor classifier, radial basis function, decision tree, and random forest to do this. An analysis of time parameters showed that the most significant parameters for diagnosing myocardial infraction are SDNN, BPM, and IBI. An experimental investigation was conducted on the data of the open PTB-XL dataset for patients with suspected myocardial infarction. The results showed that, according to the parameters of the short ECG, it is possible to classify patients with a suspected myocardial infraction as sick and healthy with high accuracy. The optimized Random Forest model showed the best performance with an accuracy of 99.63%, and a root mean absolute error is less than 0.004. The proposed novel approach can be used for patients who do not have other indicators of heart attacks.
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spelling pubmed-95025292022-09-24 Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data Chumachenko, Dmytro Butkevych, Mykola Lode, Daniel Frohme, Marcus Schmailzl, Kurt J. G. Nechyporenko, Alina Sensors (Basel) Article Diagnosis of cardiovascular diseases is an urgent task because they are the main cause of death for 32% of the world’s population. Particularly relevant are automated diagnostics using machine learning methods in the digitalization of healthcare and introduction of personalized medicine in healthcare institutions, including at the individual level when designing smart houses. Therefore, this study aims to analyze short 10-s electrocardiogram measurements taken from 12 leads. In addition, the task is to classify patients with suspected myocardial infarction using machine learning methods. We have developed four models based on the k-nearest neighbor classifier, radial basis function, decision tree, and random forest to do this. An analysis of time parameters showed that the most significant parameters for diagnosing myocardial infraction are SDNN, BPM, and IBI. An experimental investigation was conducted on the data of the open PTB-XL dataset for patients with suspected myocardial infarction. The results showed that, according to the parameters of the short ECG, it is possible to classify patients with a suspected myocardial infraction as sick and healthy with high accuracy. The optimized Random Forest model showed the best performance with an accuracy of 99.63%, and a root mean absolute error is less than 0.004. The proposed novel approach can be used for patients who do not have other indicators of heart attacks. MDPI 2022-09-17 /pmc/articles/PMC9502529/ /pubmed/36146381 http://dx.doi.org/10.3390/s22187033 Text en © 2022 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
Chumachenko, Dmytro
Butkevych, Mykola
Lode, Daniel
Frohme, Marcus
Schmailzl, Kurt J. G.
Nechyporenko, Alina
Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title_full Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title_fullStr Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title_full_unstemmed Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title_short Machine Learning Methods in Predicting Patients with Suspected Myocardial Infarction Based on Short-Time HRV Data
title_sort machine learning methods in predicting patients with suspected myocardial infarction based on short-time hrv data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9502529/
https://www.ncbi.nlm.nih.gov/pubmed/36146381
http://dx.doi.org/10.3390/s22187033
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