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A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method

BACKGROUND/AIM: The present study aimed to create a decision tree for the identification of clinical, laboratory and radiological data of individuals with COVID-19 diagnosis or suspicion of Covid-19 in the Intensive Care Units of a Training and Research Hospital of the Ministry of Health on the Euro...

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Autores principales: Dağıstanlı, Sevinç, Sönmez, Süleyman, Ünsel, Murat, Bozdağ, Emre, Kocataş, Ali, Boşat, Merve, Yurtseven, Eray, Çalışkan, Zeynep, Günver, Mehmet Güven
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Makerere Medical School 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8843255/
https://www.ncbi.nlm.nih.gov/pubmed/35222570
http://dx.doi.org/10.4314/ahs.v21i3.16
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author Dağıstanlı, Sevinç
Sönmez, Süleyman
Ünsel, Murat
Bozdağ, Emre
Kocataş, Ali
Boşat, Merve
Yurtseven, Eray
Çalışkan, Zeynep
Günver, Mehmet Güven
author_facet Dağıstanlı, Sevinç
Sönmez, Süleyman
Ünsel, Murat
Bozdağ, Emre
Kocataş, Ali
Boşat, Merve
Yurtseven, Eray
Çalışkan, Zeynep
Günver, Mehmet Güven
author_sort Dağıstanlı, Sevinç
collection PubMed
description BACKGROUND/AIM: The present study aimed to create a decision tree for the identification of clinical, laboratory and radiological data of individuals with COVID-19 diagnosis or suspicion of Covid-19 in the Intensive Care Units of a Training and Research Hospital of the Ministry of Health on the European side of the city of Istanbul. MATERIALS AND METHODS: The present study, which had a retrospective and sectional design, covered all the 97 patients treated with Covid-19 diagnosis or suspicion of COVID-19 in the intensive care unit between 12 March and 30 April 2020. In all cases who had symptoms admitted to the COVID-19 clinic, nasal swab samples were taken and thoracic CT was performed when considered necessary by the physician, radiological findings were interpreted, clinical and laboratory data were included to create the decision tree. RESULTS: A total of 61 (21 women, 40 men) of the cases included in the study died, and 36 were discharged with a cure from the intensive care process. By using the decision tree algorithm created in this study, dead cases will be predicted at a rate of 95%, and those who survive will be predicted at a rate of 81%. The overall accuracy rate of the model was found at 90%. CONCLUSIONS: There were no differences in terms of gender between dead and live patients. Those who died were older, had lower MON, MPV, and had higher D-Dimer values than those who survived.
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spelling pubmed-88432552022-02-24 A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method Dağıstanlı, Sevinç Sönmez, Süleyman Ünsel, Murat Bozdağ, Emre Kocataş, Ali Boşat, Merve Yurtseven, Eray Çalışkan, Zeynep Günver, Mehmet Güven Afr Health Sci Articles BACKGROUND/AIM: The present study aimed to create a decision tree for the identification of clinical, laboratory and radiological data of individuals with COVID-19 diagnosis or suspicion of Covid-19 in the Intensive Care Units of a Training and Research Hospital of the Ministry of Health on the European side of the city of Istanbul. MATERIALS AND METHODS: The present study, which had a retrospective and sectional design, covered all the 97 patients treated with Covid-19 diagnosis or suspicion of COVID-19 in the intensive care unit between 12 March and 30 April 2020. In all cases who had symptoms admitted to the COVID-19 clinic, nasal swab samples were taken and thoracic CT was performed when considered necessary by the physician, radiological findings were interpreted, clinical and laboratory data were included to create the decision tree. RESULTS: A total of 61 (21 women, 40 men) of the cases included in the study died, and 36 were discharged with a cure from the intensive care process. By using the decision tree algorithm created in this study, dead cases will be predicted at a rate of 95%, and those who survive will be predicted at a rate of 81%. The overall accuracy rate of the model was found at 90%. CONCLUSIONS: There were no differences in terms of gender between dead and live patients. Those who died were older, had lower MON, MPV, and had higher D-Dimer values than those who survived. Makerere Medical School 2021-09 /pmc/articles/PMC8843255/ /pubmed/35222570 http://dx.doi.org/10.4314/ahs.v21i3.16 Text en © 2021 Dağıstanlı S et al. https://creativecommons.org/licenses/by/4.0/Licensee African Health Sciences. 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, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Articles
Dağıstanlı, Sevinç
Sönmez, Süleyman
Ünsel, Murat
Bozdağ, Emre
Kocataş, Ali
Boşat, Merve
Yurtseven, Eray
Çalışkan, Zeynep
Günver, Mehmet Güven
A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title_full A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title_fullStr A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title_full_unstemmed A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title_short A novel survival algorithm in COVID-19 intensive care patients: the classification and regression tree (CRT) method
title_sort novel survival algorithm in covid-19 intensive care patients: the classification and regression tree (crt) method
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8843255/
https://www.ncbi.nlm.nih.gov/pubmed/35222570
http://dx.doi.org/10.4314/ahs.v21i3.16
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