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Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach

The electrocardiogram (ECG) is the most common tool used to predict left ventricular hypertrophy (LVH). However, it is limited by its low accuracy (<60%) and sensitivity (30%). We set forth the hypothesis that the Machine Learning (ML) C5.0 algorithm could optimize the ECG in the prediction of LV...

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Autores principales: De la Garza-Salazar, Fernando, Romero-Ibarguengoitia, Maria Elena, Rodriguez-Diaz, Elias Abraham, Azpiri-Lopez, Jose Ramón, González-Cantu, Arnulfo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7219774/
https://www.ncbi.nlm.nih.gov/pubmed/32401764
http://dx.doi.org/10.1371/journal.pone.0232657
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author De la Garza-Salazar, Fernando
Romero-Ibarguengoitia, Maria Elena
Rodriguez-Diaz, Elias Abraham
Azpiri-Lopez, Jose Ramón
González-Cantu, Arnulfo
author_facet De la Garza-Salazar, Fernando
Romero-Ibarguengoitia, Maria Elena
Rodriguez-Diaz, Elias Abraham
Azpiri-Lopez, Jose Ramón
González-Cantu, Arnulfo
author_sort De la Garza-Salazar, Fernando
collection PubMed
description The electrocardiogram (ECG) is the most common tool used to predict left ventricular hypertrophy (LVH). However, it is limited by its low accuracy (<60%) and sensitivity (30%). We set forth the hypothesis that the Machine Learning (ML) C5.0 algorithm could optimize the ECG in the prediction of LVH by echocardiography (Echo) while also establishing ECG-LVH phenotypes. We used Echo as the standard diagnostic tool to detect LVH and measured the ECG abnormalities found in Echo-LVH. We included 432 patients (power = 99%). Of these, 202 patients (46.7%) had Echo-LVH and 240 (55.6%) were males. We included a wide range of ventricular masses and Echo-LVH severities which were classified as mild (n = 77, 38.1%), moderate (n = 50, 24.7%) and severe (n = 75, 37.1%). Data was divided into a training/testing set (80%/20%) and we applied logistic regression analysis on the ECG measurements. The logistic regression model with the best ability to identify Echo-LVH was introduced into the C5.0 ML algorithm. We created multiple decision trees and selected the tree with the highest performance. The resultant five-level binary decision tree used only six predictive variables and had an accuracy of 71.4% (95%CI, 65.5–80.2), a sensitivity of 79.6%, specificity of 53%, positive predictive value of 66.6% and a negative predictive value of 69.3%. Internal validation reached a mean accuracy of 71.4% (64.4–78.5). Our results were reproduced in a second validation group and a similar diagnostic accuracy was obtained, 73.3% (95%CI, 65.5–80.2), sensitivity (81.6%), specificity (69.3%), positive predictive value (56.3%) and negative predictive value (88.6%). We calculated the Romhilt-Estes multilevel score and compared it to our model. The accuracy of the Romhilt-Estes system had an accuracy of 61.3% (CI95%, 56.5–65.9), a sensitivity of 23.2% and a specificity of 94.8% with similar results in the external validation group. In conclusion, the C5.0 ML algorithm surpassed the accuracy of current ECG criteria in the detection of Echo-LVH. Our new criteria hinge on ECG abnormalities that identify high-risk patients and provide some insight on electrogenesis in Echo-LVH.
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spelling pubmed-72197742020-06-01 Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach De la Garza-Salazar, Fernando Romero-Ibarguengoitia, Maria Elena Rodriguez-Diaz, Elias Abraham Azpiri-Lopez, Jose Ramón González-Cantu, Arnulfo PLoS One Research Article The electrocardiogram (ECG) is the most common tool used to predict left ventricular hypertrophy (LVH). However, it is limited by its low accuracy (<60%) and sensitivity (30%). We set forth the hypothesis that the Machine Learning (ML) C5.0 algorithm could optimize the ECG in the prediction of LVH by echocardiography (Echo) while also establishing ECG-LVH phenotypes. We used Echo as the standard diagnostic tool to detect LVH and measured the ECG abnormalities found in Echo-LVH. We included 432 patients (power = 99%). Of these, 202 patients (46.7%) had Echo-LVH and 240 (55.6%) were males. We included a wide range of ventricular masses and Echo-LVH severities which were classified as mild (n = 77, 38.1%), moderate (n = 50, 24.7%) and severe (n = 75, 37.1%). Data was divided into a training/testing set (80%/20%) and we applied logistic regression analysis on the ECG measurements. The logistic regression model with the best ability to identify Echo-LVH was introduced into the C5.0 ML algorithm. We created multiple decision trees and selected the tree with the highest performance. The resultant five-level binary decision tree used only six predictive variables and had an accuracy of 71.4% (95%CI, 65.5–80.2), a sensitivity of 79.6%, specificity of 53%, positive predictive value of 66.6% and a negative predictive value of 69.3%. Internal validation reached a mean accuracy of 71.4% (64.4–78.5). Our results were reproduced in a second validation group and a similar diagnostic accuracy was obtained, 73.3% (95%CI, 65.5–80.2), sensitivity (81.6%), specificity (69.3%), positive predictive value (56.3%) and negative predictive value (88.6%). We calculated the Romhilt-Estes multilevel score and compared it to our model. The accuracy of the Romhilt-Estes system had an accuracy of 61.3% (CI95%, 56.5–65.9), a sensitivity of 23.2% and a specificity of 94.8% with similar results in the external validation group. In conclusion, the C5.0 ML algorithm surpassed the accuracy of current ECG criteria in the detection of Echo-LVH. Our new criteria hinge on ECG abnormalities that identify high-risk patients and provide some insight on electrogenesis in Echo-LVH. Public Library of Science 2020-05-13 /pmc/articles/PMC7219774/ /pubmed/32401764 http://dx.doi.org/10.1371/journal.pone.0232657 Text en © 2020 De la Garza-Salazar et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
De la Garza-Salazar, Fernando
Romero-Ibarguengoitia, Maria Elena
Rodriguez-Diaz, Elias Abraham
Azpiri-Lopez, Jose Ramón
González-Cantu, Arnulfo
Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title_full Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title_fullStr Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title_full_unstemmed Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title_short Improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a Machine Learning approach
title_sort improvement of electrocardiographic diagnostic accuracy of left ventricular hypertrophy using a machine learning approach
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7219774/
https://www.ncbi.nlm.nih.gov/pubmed/32401764
http://dx.doi.org/10.1371/journal.pone.0232657
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