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A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization

BACKGROUND AND AIM: COVID-19 can be presented with various gastrointestinal symptoms. Shortly after the pandemic outbreak, several machine learning algorithms were implemented to assess new diagnostic and therapeutic methods for this disease. The aim of this study is to assess gastrointestinal and l...

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Autores principales: Lipták, Peter, Banovcin, Peter, Rosoľanka, Róbert, Prokopič, Michal, Kocan, Ivan, Žiačiková, Ivana, Uhrik, Peter, Grendar, Marian, Hyrdel, Rudolf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8944335/
https://www.ncbi.nlm.nih.gov/pubmed/35341062
http://dx.doi.org/10.7717/peerj.13124
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author Lipták, Peter
Banovcin, Peter
Rosoľanka, Róbert
Prokopič, Michal
Kocan, Ivan
Žiačiková, Ivana
Uhrik, Peter
Grendar, Marian
Hyrdel, Rudolf
author_facet Lipták, Peter
Banovcin, Peter
Rosoľanka, Róbert
Prokopič, Michal
Kocan, Ivan
Žiačiková, Ivana
Uhrik, Peter
Grendar, Marian
Hyrdel, Rudolf
author_sort Lipták, Peter
collection PubMed
description BACKGROUND AND AIM: COVID-19 can be presented with various gastrointestinal symptoms. Shortly after the pandemic outbreak, several machine learning algorithms were implemented to assess new diagnostic and therapeutic methods for this disease. The aim of this study is to assess gastrointestinal and liver-related predictive factors for SARS-CoV-2 associated risk of hospitalization. METHODS: Data collection was based on a questionnaire from the COVID-19 outpatient test center and from the emergency department at the University Hospital in combination with the data from internal hospital information system and from a mobile application used for telemedicine follow-up of patients. For statistical analysis SARS-CoV-2 negative patients were considered as controls in three different SARS-CoV-2 positive patient groups (divided based on severity of the disease). The data were visualized and analyzed in R version 4.0.5. The Chi-squared or Fisher test was applied to test the null hypothesis of independence between the factors followed, where appropriate, by the multiple comparisons with the Benjamini Hochberg adjustment. The null hypothesis of the equality of the population medians of a continuous variable was tested by the Kruskal Wallis test, followed by the Dunn multiple comparisons test. In order to assess predictive power of the gastrointestinal parameters and other measured variables for predicting an outcome of the patient group the Random Forest machine learning algorithm was trained on the data. The predictive ability was quantified by the ROC curve, constructed from the Out-of-Bag data. Matthews correlation coefficient was used as a one-number summary of the quality of binary classification. The importance of the predictors was measured using the Variable Importance. A 2D representation of the data was obtained by means of Principal Component Analysis for mixed type of data. Findings with the p-value below 0.05 were considered statistically significant. RESULTS: A total of 710 patients were enrolled in the study. The presence of diarrhea and nausea was significantly higher in the emergency department group than in the COVID-19 outpatient test center. Among liver enzymes only aspartate transaminase (AST) has been significantly elevated in the hospitalized group compared to patients discharged home. Based on the Random Forest algorithm, AST has been identified as the most important predictor followed by age or diabetes mellitus. Diarrhea and bloating have also predictive importance, although much lower than AST. CONCLUSION: SARS-CoV-2 positivity is connected with isolated AST elevation and the level is linked with the severity of the disease. Furthermore, using the machine learning Random Forest algorithm, we have identified the elevated AST as the most important predictor for COVID-19 related hospitalizations.
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spelling pubmed-89443352022-03-25 A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization Lipták, Peter Banovcin, Peter Rosoľanka, Róbert Prokopič, Michal Kocan, Ivan Žiačiková, Ivana Uhrik, Peter Grendar, Marian Hyrdel, Rudolf PeerJ Gastroenterology and Hepatology BACKGROUND AND AIM: COVID-19 can be presented with various gastrointestinal symptoms. Shortly after the pandemic outbreak, several machine learning algorithms were implemented to assess new diagnostic and therapeutic methods for this disease. The aim of this study is to assess gastrointestinal and liver-related predictive factors for SARS-CoV-2 associated risk of hospitalization. METHODS: Data collection was based on a questionnaire from the COVID-19 outpatient test center and from the emergency department at the University Hospital in combination with the data from internal hospital information system and from a mobile application used for telemedicine follow-up of patients. For statistical analysis SARS-CoV-2 negative patients were considered as controls in three different SARS-CoV-2 positive patient groups (divided based on severity of the disease). The data were visualized and analyzed in R version 4.0.5. The Chi-squared or Fisher test was applied to test the null hypothesis of independence between the factors followed, where appropriate, by the multiple comparisons with the Benjamini Hochberg adjustment. The null hypothesis of the equality of the population medians of a continuous variable was tested by the Kruskal Wallis test, followed by the Dunn multiple comparisons test. In order to assess predictive power of the gastrointestinal parameters and other measured variables for predicting an outcome of the patient group the Random Forest machine learning algorithm was trained on the data. The predictive ability was quantified by the ROC curve, constructed from the Out-of-Bag data. Matthews correlation coefficient was used as a one-number summary of the quality of binary classification. The importance of the predictors was measured using the Variable Importance. A 2D representation of the data was obtained by means of Principal Component Analysis for mixed type of data. Findings with the p-value below 0.05 were considered statistically significant. RESULTS: A total of 710 patients were enrolled in the study. The presence of diarrhea and nausea was significantly higher in the emergency department group than in the COVID-19 outpatient test center. Among liver enzymes only aspartate transaminase (AST) has been significantly elevated in the hospitalized group compared to patients discharged home. Based on the Random Forest algorithm, AST has been identified as the most important predictor followed by age or diabetes mellitus. Diarrhea and bloating have also predictive importance, although much lower than AST. CONCLUSION: SARS-CoV-2 positivity is connected with isolated AST elevation and the level is linked with the severity of the disease. Furthermore, using the machine learning Random Forest algorithm, we have identified the elevated AST as the most important predictor for COVID-19 related hospitalizations. PeerJ Inc. 2022-03-21 /pmc/articles/PMC8944335/ /pubmed/35341062 http://dx.doi.org/10.7717/peerj.13124 Text en © 2022 Lipták et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ) and either DOI or URL of the article must be cited.
spellingShingle Gastroenterology and Hepatology
Lipták, Peter
Banovcin, Peter
Rosoľanka, Róbert
Prokopič, Michal
Kocan, Ivan
Žiačiková, Ivana
Uhrik, Peter
Grendar, Marian
Hyrdel, Rudolf
A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title_full A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title_fullStr A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title_full_unstemmed A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title_short A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization
title_sort machine learning approach for identification of gastrointestinal predictors for the risk of covid-19 related hospitalization
topic Gastroenterology and Hepatology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8944335/
https://www.ncbi.nlm.nih.gov/pubmed/35341062
http://dx.doi.org/10.7717/peerj.13124
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