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Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass

Background: This study aims to get an effective machine learning (ML) prediction model of new-onset postoperative atrial fibrillation (POAF) following coronary artery bypass grafting (CABG) and to highlight the most relevant clinical factors. Methods: Four ML algorithms were employed to analyze 394...

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Autores principales: Parise, Orlando, Parise, Gianmarco, Vaidyanathan, Akshayaa, Occhipinti, Mariaelena, Gharaviri, Ali, Tetta, Cecilia, Bidar, Elham, Maesen, Bart, Maessen, Jos G., La Meir, Mark, Gelsomino, Sandro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962068/
https://www.ncbi.nlm.nih.gov/pubmed/36826578
http://dx.doi.org/10.3390/jcdd10020082
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author Parise, Orlando
Parise, Gianmarco
Vaidyanathan, Akshayaa
Occhipinti, Mariaelena
Gharaviri, Ali
Tetta, Cecilia
Bidar, Elham
Maesen, Bart
Maessen, Jos G.
La Meir, Mark
Gelsomino, Sandro
author_facet Parise, Orlando
Parise, Gianmarco
Vaidyanathan, Akshayaa
Occhipinti, Mariaelena
Gharaviri, Ali
Tetta, Cecilia
Bidar, Elham
Maesen, Bart
Maessen, Jos G.
La Meir, Mark
Gelsomino, Sandro
author_sort Parise, Orlando
collection PubMed
description Background: This study aims to get an effective machine learning (ML) prediction model of new-onset postoperative atrial fibrillation (POAF) following coronary artery bypass grafting (CABG) and to highlight the most relevant clinical factors. Methods: Four ML algorithms were employed to analyze 394 patients undergoing CABG, and their performances were compared: Multivariate Adaptive Regression Spline, Neural Network, Random Forest, and Support Vector Machine. Each algorithm was applied to the training data set to choose the most important features and to build a predictive model. The better performance for each model was obtained by a hyperparameters search, and the Receiver Operating Characteristic Area Under the Curve metric was selected to choose the best model. The best instances of each model were fed with the test data set, and some metrics were generated to assess the performance of the models on the unseen data set. A traditional logistic regression was also performed to be compared with the machine learning models. Results: Random Forest model showed the best performance, and the top five predictive features included age, preoperative creatinine values, time of aortic cross-clamping, body surface area, and Logistic Euro-Score. Conclusions: The use of ML for clinical predictions requires an accurate evaluation of the models and their hyperparameters. Random Forest outperformed all other models in the clinical prediction of POAF following CABG.
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spelling pubmed-99620682023-02-26 Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass Parise, Orlando Parise, Gianmarco Vaidyanathan, Akshayaa Occhipinti, Mariaelena Gharaviri, Ali Tetta, Cecilia Bidar, Elham Maesen, Bart Maessen, Jos G. La Meir, Mark Gelsomino, Sandro J Cardiovasc Dev Dis Article Background: This study aims to get an effective machine learning (ML) prediction model of new-onset postoperative atrial fibrillation (POAF) following coronary artery bypass grafting (CABG) and to highlight the most relevant clinical factors. Methods: Four ML algorithms were employed to analyze 394 patients undergoing CABG, and their performances were compared: Multivariate Adaptive Regression Spline, Neural Network, Random Forest, and Support Vector Machine. Each algorithm was applied to the training data set to choose the most important features and to build a predictive model. The better performance for each model was obtained by a hyperparameters search, and the Receiver Operating Characteristic Area Under the Curve metric was selected to choose the best model. The best instances of each model were fed with the test data set, and some metrics were generated to assess the performance of the models on the unseen data set. A traditional logistic regression was also performed to be compared with the machine learning models. Results: Random Forest model showed the best performance, and the top five predictive features included age, preoperative creatinine values, time of aortic cross-clamping, body surface area, and Logistic Euro-Score. Conclusions: The use of ML for clinical predictions requires an accurate evaluation of the models and their hyperparameters. Random Forest outperformed all other models in the clinical prediction of POAF following CABG. MDPI 2023-02-15 /pmc/articles/PMC9962068/ /pubmed/36826578 http://dx.doi.org/10.3390/jcdd10020082 Text en © 2023 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
Parise, Orlando
Parise, Gianmarco
Vaidyanathan, Akshayaa
Occhipinti, Mariaelena
Gharaviri, Ali
Tetta, Cecilia
Bidar, Elham
Maesen, Bart
Maessen, Jos G.
La Meir, Mark
Gelsomino, Sandro
Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title_full Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title_fullStr Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title_full_unstemmed Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title_short Machine Learning to Identify Patients at Risk of Developing New-Onset Atrial Fibrillation after Coronary Artery Bypass
title_sort machine learning to identify patients at risk of developing new-onset atrial fibrillation after coronary artery bypass
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962068/
https://www.ncbi.nlm.nih.gov/pubmed/36826578
http://dx.doi.org/10.3390/jcdd10020082
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