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Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design

Postoperative pulmonary complications (PPCs) are significant causes of postoperative morbidity and mortality. This study presents the utilization of machine learning for predicting PPCs and aims to identify the important features of the prediction models. This study used a retrospective cohort desig...

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Autores principales: Kim, Jong-Ho, Cheon, Bo-Reum, Kim, Min-Guan, Hwang, Sung-Mi, Lim, So-Young, Lee, Jae-Jun, Kwon, Young-Suk
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10488713/
https://www.ncbi.nlm.nih.gov/pubmed/37685748
http://dx.doi.org/10.3390/jcm12175681
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author Kim, Jong-Ho
Cheon, Bo-Reum
Kim, Min-Guan
Hwang, Sung-Mi
Lim, So-Young
Lee, Jae-Jun
Kwon, Young-Suk
author_facet Kim, Jong-Ho
Cheon, Bo-Reum
Kim, Min-Guan
Hwang, Sung-Mi
Lim, So-Young
Lee, Jae-Jun
Kwon, Young-Suk
author_sort Kim, Jong-Ho
collection PubMed
description Postoperative pulmonary complications (PPCs) are significant causes of postoperative morbidity and mortality. This study presents the utilization of machine learning for predicting PPCs and aims to identify the important features of the prediction models. This study used a retrospective cohort design and collected data from two hospitals. The dataset included perioperative variables such as patient characteristics, preexisting diseases, and intraoperative factors. Various algorithms, including logistic regression, random forest, light-gradient boosting machines, extreme-gradient boosting machines, and multilayer perceptrons, have been employed for model development and evaluation. This study enrolled 111,212 adult patients, with an overall incidence rate of 8.6% for developing PPCs. The area under the receiver-operating characteristic curve (AUROC) of the models was 0.699–0.767, and the f1 score was 0.446–0.526. In the prediction models, except for multilayer perceptron, the 10 most important features were obtained. In feature-reduced models, including 10 important features, the AUROC was 0.627–0.749, and the f1 score was 0.365–0.485. The number of packed red cells, urine, and rocuronium doses were similar in the three models. In conclusion, machine learning provides valuable insights into PPC prediction, significant features for prediction, and the feasibility of models that reduce the number of features.
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spelling pubmed-104887132023-09-09 Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design Kim, Jong-Ho Cheon, Bo-Reum Kim, Min-Guan Hwang, Sung-Mi Lim, So-Young Lee, Jae-Jun Kwon, Young-Suk J Clin Med Article Postoperative pulmonary complications (PPCs) are significant causes of postoperative morbidity and mortality. This study presents the utilization of machine learning for predicting PPCs and aims to identify the important features of the prediction models. This study used a retrospective cohort design and collected data from two hospitals. The dataset included perioperative variables such as patient characteristics, preexisting diseases, and intraoperative factors. Various algorithms, including logistic regression, random forest, light-gradient boosting machines, extreme-gradient boosting machines, and multilayer perceptrons, have been employed for model development and evaluation. This study enrolled 111,212 adult patients, with an overall incidence rate of 8.6% for developing PPCs. The area under the receiver-operating characteristic curve (AUROC) of the models was 0.699–0.767, and the f1 score was 0.446–0.526. In the prediction models, except for multilayer perceptron, the 10 most important features were obtained. In feature-reduced models, including 10 important features, the AUROC was 0.627–0.749, and the f1 score was 0.365–0.485. The number of packed red cells, urine, and rocuronium doses were similar in the three models. In conclusion, machine learning provides valuable insights into PPC prediction, significant features for prediction, and the feasibility of models that reduce the number of features. MDPI 2023-08-31 /pmc/articles/PMC10488713/ /pubmed/37685748 http://dx.doi.org/10.3390/jcm12175681 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
Kim, Jong-Ho
Cheon, Bo-Reum
Kim, Min-Guan
Hwang, Sung-Mi
Lim, So-Young
Lee, Jae-Jun
Kwon, Young-Suk
Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title_full Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title_fullStr Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title_full_unstemmed Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title_short Harnessing Machine Learning for Prediction of Postoperative Pulmonary Complications: Retrospective Cohort Design
title_sort harnessing machine learning for prediction of postoperative pulmonary complications: retrospective cohort design
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10488713/
https://www.ncbi.nlm.nih.gov/pubmed/37685748
http://dx.doi.org/10.3390/jcm12175681
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