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Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study

Here, we performed a multicenter, age- and sex-matched study to compare the efficiency of various machine learning algorithms in the prediction of COVID-19 fatal outcomes and to develop sensitive, specific, and robust artificial intelligence tools for the prompt triage of patients with severe COVID-...

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Autores principales: Ovcharenko, Evgeny, Kutikhin, Anton, Gruzdeva, Olga, Kuzmina, Anastasia, Slesareva, Tamara, Brusina, Elena, Kudasheva, Svetlana, Bondarenko, Tatiana, Kuzmenko, Svetlana, Osyaev, Nikolay, Ivannikova, Natalia, Vavin, Grigory, Moses, Vadim, Danilov, Viacheslav, Komossky, Egor, Klyshnikov, Kirill
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9967447/
https://www.ncbi.nlm.nih.gov/pubmed/36826535
http://dx.doi.org/10.3390/jcdd10020039
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author Ovcharenko, Evgeny
Kutikhin, Anton
Gruzdeva, Olga
Kuzmina, Anastasia
Slesareva, Tamara
Brusina, Elena
Kudasheva, Svetlana
Bondarenko, Tatiana
Kuzmenko, Svetlana
Osyaev, Nikolay
Ivannikova, Natalia
Vavin, Grigory
Moses, Vadim
Danilov, Viacheslav
Komossky, Egor
Klyshnikov, Kirill
author_facet Ovcharenko, Evgeny
Kutikhin, Anton
Gruzdeva, Olga
Kuzmina, Anastasia
Slesareva, Tamara
Brusina, Elena
Kudasheva, Svetlana
Bondarenko, Tatiana
Kuzmenko, Svetlana
Osyaev, Nikolay
Ivannikova, Natalia
Vavin, Grigory
Moses, Vadim
Danilov, Viacheslav
Komossky, Egor
Klyshnikov, Kirill
author_sort Ovcharenko, Evgeny
collection PubMed
description Here, we performed a multicenter, age- and sex-matched study to compare the efficiency of various machine learning algorithms in the prediction of COVID-19 fatal outcomes and to develop sensitive, specific, and robust artificial intelligence tools for the prompt triage of patients with severe COVID-19 in the intensive care unit setting. In a challenge against other established machine learning algorithms (decision trees, random forests, extra trees, neural networks, k-nearest neighbors, and gradient boosting: XGBoost, LightGBM, and CatBoost) and multivariate logistic regression as a reference, neural networks demonstrated the highest sensitivity, sufficient specificity, and excellent robustness. Further, neural networks based on coronary artery disease/chronic heart failure, stage 3–5 chronic kidney disease, blood urea nitrogen, and C-reactive protein as the predictors exceeded 90% sensitivity and 80% specificity, reaching AUROC of 0.866 at primary cross-validation and 0.849 at secondary cross-validation on virtual samples generated by the bootstrapping procedure. These results underscore the impact of cardiovascular and renal comorbidities in the context of thrombotic complications characteristic of severe COVID-19. As aforementioned predictors can be obtained from the case histories or are inexpensive to be measured at admission to the intensive care unit, we suggest this predictor composition is useful for the triage of critically ill COVID-19 patients.
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spelling pubmed-99674472023-02-27 Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study Ovcharenko, Evgeny Kutikhin, Anton Gruzdeva, Olga Kuzmina, Anastasia Slesareva, Tamara Brusina, Elena Kudasheva, Svetlana Bondarenko, Tatiana Kuzmenko, Svetlana Osyaev, Nikolay Ivannikova, Natalia Vavin, Grigory Moses, Vadim Danilov, Viacheslav Komossky, Egor Klyshnikov, Kirill J Cardiovasc Dev Dis Article Here, we performed a multicenter, age- and sex-matched study to compare the efficiency of various machine learning algorithms in the prediction of COVID-19 fatal outcomes and to develop sensitive, specific, and robust artificial intelligence tools for the prompt triage of patients with severe COVID-19 in the intensive care unit setting. In a challenge against other established machine learning algorithms (decision trees, random forests, extra trees, neural networks, k-nearest neighbors, and gradient boosting: XGBoost, LightGBM, and CatBoost) and multivariate logistic regression as a reference, neural networks demonstrated the highest sensitivity, sufficient specificity, and excellent robustness. Further, neural networks based on coronary artery disease/chronic heart failure, stage 3–5 chronic kidney disease, blood urea nitrogen, and C-reactive protein as the predictors exceeded 90% sensitivity and 80% specificity, reaching AUROC of 0.866 at primary cross-validation and 0.849 at secondary cross-validation on virtual samples generated by the bootstrapping procedure. These results underscore the impact of cardiovascular and renal comorbidities in the context of thrombotic complications characteristic of severe COVID-19. As aforementioned predictors can be obtained from the case histories or are inexpensive to be measured at admission to the intensive care unit, we suggest this predictor composition is useful for the triage of critically ill COVID-19 patients. MDPI 2023-01-23 /pmc/articles/PMC9967447/ /pubmed/36826535 http://dx.doi.org/10.3390/jcdd10020039 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
Ovcharenko, Evgeny
Kutikhin, Anton
Gruzdeva, Olga
Kuzmina, Anastasia
Slesareva, Tamara
Brusina, Elena
Kudasheva, Svetlana
Bondarenko, Tatiana
Kuzmenko, Svetlana
Osyaev, Nikolay
Ivannikova, Natalia
Vavin, Grigory
Moses, Vadim
Danilov, Viacheslav
Komossky, Egor
Klyshnikov, Kirill
Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title_full Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title_fullStr Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title_full_unstemmed Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title_short Cardiovascular and Renal Comorbidities Included into Neural Networks Predict the Outcome in COVID-19 Patients Admitted to an Intensive Care Unit: Three-Center, Cross-Validation, Age- and Sex-Matched Study
title_sort cardiovascular and renal comorbidities included into neural networks predict the outcome in covid-19 patients admitted to an intensive care unit: three-center, cross-validation, age- and sex-matched study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9967447/
https://www.ncbi.nlm.nih.gov/pubmed/36826535
http://dx.doi.org/10.3390/jcdd10020039
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