Two novel nomograms for predicting the risk of hospitalization or mortality due to COVID‐19 by the naïve Bayesian classifier method

Coronavirus disease 2019 (COVID‐19) has become a global pandemic that has affected millions of people worldwide. The presence of multiple risk factors for COVID‐19 makes it difficult to plan treatment and optimize the use of medical resources. The aim of this study is to determine potential risk fac...

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Veröffentlicht in:Journal of medical virology 2021-05, Vol.93 (5), p.3194-3201
Hauptverfasser: Karaismailoglu, Eda, Karaismailoglu, Serkan
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description Coronavirus disease 2019 (COVID‐19) has become a global pandemic that has affected millions of people worldwide. The presence of multiple risk factors for COVID‐19 makes it difficult to plan treatment and optimize the use of medical resources. The aim of this study is to determine potential risk factors for hospitalization or mortality in patients with COVID‐19 via two novel naive Bayesian nomograms. The publicly available COVID‐19 National data published by the Mexican Ministry of Health through the “Dirección General de Epidemiología” website was analyzed. Univariable logistic regression was utilized to identify potential risk factors that may affect hospitalization or mortality in patients with COVID‐19. The naïve Bayesian classifier method was implemented to predict nomograms. The nomograms were verified by the area under the receiver operating characteristic curve (AUC), classification accuracy (CA), F1 score, precision, recall, and calibration plot. A total of 979,430 patients (45.3 ± 15.9 years old, and 51.1% male) tested positive for COVID‐19 from January 1 to November 22, 2020. Among them, 22.3% of the patients required hospitalization and 99,964 patients (9.8%) died. The most important risk factors to predict the probability of hospitalization and mortality were pneumonia, age, chronic kidney failure, chronic obstructive respiratory disease, and diabetes. The performance measures demonstrated good discrimination and calibration (hospitalization: AUC = 0.896, CA = 0.880; mortality: AUC = 0.903, CA = 0.899). Two novel nomograms to estimate the risk of hospitalization and mortality were proposed, which could be used to facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. Highlights To estimate the risk of hospitalization and mortality, we proposed two novel naive Bayesian nomograms that facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. To evaluate potential risk factors, we analyzed 979,430 patients tested positive for COVID‐19 from 1st January to 22nd November 2020. The most important risk factors to predict the probability of hospitalization and mortality were pneumonia, age, chronic kidney failure, chronic obstructive respiratory disease, and diabetes.
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The presence of multiple risk factors for COVID‐19 makes it difficult to plan treatment and optimize the use of medical resources. The aim of this study is to determine potential risk factors for hospitalization or mortality in patients with COVID‐19 via two novel naive Bayesian nomograms. The publicly available COVID‐19 National data published by the Mexican Ministry of Health through the “Dirección General de Epidemiología” website was analyzed. Univariable logistic regression was utilized to identify potential risk factors that may affect hospitalization or mortality in patients with COVID‐19. The naïve Bayesian classifier method was implemented to predict nomograms. The nomograms were verified by the area under the receiver operating characteristic curve (AUC), classification accuracy (CA), F1 score, precision, recall, and calibration plot. A total of 979,430 patients (45.3 ± 15.9 years old, and 51.1% male) tested positive for COVID‐19 from January 1 to November 22, 2020. Among them, 22.3% of the patients required hospitalization and 99,964 patients (9.8%) died. The most important risk factors to predict the probability of hospitalization and mortality were pneumonia, age, chronic kidney failure, chronic obstructive respiratory disease, and diabetes. The performance measures demonstrated good discrimination and calibration (hospitalization: AUC = 0.896, CA = 0.880; mortality: AUC = 0.903, CA = 0.899). Two novel nomograms to estimate the risk of hospitalization and mortality were proposed, which could be used to facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. Highlights To estimate the risk of hospitalization and mortality, we proposed two novel naive Bayesian nomograms that facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. To evaluate potential risk factors, we analyzed 979,430 patients tested positive for COVID‐19 from 1st January to 22nd November 2020. 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The presence of multiple risk factors for COVID‐19 makes it difficult to plan treatment and optimize the use of medical resources. The aim of this study is to determine potential risk factors for hospitalization or mortality in patients with COVID‐19 via two novel naive Bayesian nomograms. The publicly available COVID‐19 National data published by the Mexican Ministry of Health through the “Dirección General de Epidemiología” website was analyzed. Univariable logistic regression was utilized to identify potential risk factors that may affect hospitalization or mortality in patients with COVID‐19. The naïve Bayesian classifier method was implemented to predict nomograms. The nomograms were verified by the area under the receiver operating characteristic curve (AUC), classification accuracy (CA), F1 score, precision, recall, and calibration plot. A total of 979,430 patients (45.3 ± 15.9 years old, and 51.1% male) tested positive for COVID‐19 from January 1 to November 22, 2020. Among them, 22.3% of the patients required hospitalization and 99,964 patients (9.8%) died. The most important risk factors to predict the probability of hospitalization and mortality were pneumonia, age, chronic kidney failure, chronic obstructive respiratory disease, and diabetes. The performance measures demonstrated good discrimination and calibration (hospitalization: AUC = 0.896, CA = 0.880; mortality: AUC = 0.903, CA = 0.899). Two novel nomograms to estimate the risk of hospitalization and mortality were proposed, which could be used to facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. Highlights To estimate the risk of hospitalization and mortality, we proposed two novel naive Bayesian nomograms that facilitate individualized decision‐making for patients newly diagnosed with COVID‐19. To evaluate potential risk factors, we analyzed 979,430 patients tested positive for COVID‐19 from 1st January to 22nd November 2020. The most important risk factors to predict the probability of hospitalization and mortality were pneumonia, age, chronic kidney failure, chronic obstructive respiratory disease, and diabetes.</abstract><cop>United States</cop><pub>Wiley Subscription Services, Inc</pub><pmid>33599308</pmid><doi>10.1002/jmv.26890</doi><tpages>8</tpages><orcidid>https://orcid.org/0000-0003-3085-7809</orcidid><orcidid>https://orcid.org/0000-0002-6907-6500</orcidid><oa>free_for_read</oa></addata></record>
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source MEDLINE; Wiley Journals
subjects Adult
Aged
Bayes Theorem
Bayesian analysis
Calibration
Classifiers
Coronaviruses
COVID-19
COVID-19 - mortality
Decision making
Diabetes
Diabetes mellitus
Female
Hospitalization
Hospitalization - statistics & numerical data
Humans
Kidneys
Male
Middle Aged
Mortality
nomogram
Nomograms
Pandemics
Patients
Pneumonia
prediction
Regression analysis
Renal failure
Respiratory diseases
Risk analysis
risk factor
Risk Factors
SARS-CoV-2
Statistical analysis
Viral diseases
Virology
Websites
title Two novel nomograms for predicting the risk of hospitalization or mortality due to COVID‐19 by the naïve Bayesian classifier method
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