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Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam

BACKGROUND: Accurate prognosis is important either after acute infection or during long-term follow-up of patients infected by severe acute respiratory syndrome coronavirus 2. This study aims to predict coronavirus disease 2019 (COVID-19) severity based on clinical and biological indicators, and to...

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Autores principales: Nguyen, Hien Thi Thu, Le-Quy, Vang, Ho, Son Van, Thomsen, Jakob Holm Dalsgaard, Pontoppidan Stoico, Malene, Tong, Hoang Van, Nguyen, Nhat-Linh, Krarup, Henrik Bygum, Nguyen, Son Hong, Tran, Viet Quoc, Toan Nguyen, Linh, Dinh-Xuan, Anh Tuan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: European Respiratory Society 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9885243/
https://www.ncbi.nlm.nih.gov/pubmed/37041987
http://dx.doi.org/10.1183/23120541.00481-2022
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author Nguyen, Hien Thi Thu
Le-Quy, Vang
Ho, Son Van
Thomsen, Jakob Holm Dalsgaard
Pontoppidan Stoico, Malene
Tong, Hoang Van
Nguyen, Nhat-Linh
Krarup, Henrik Bygum
Nguyen, Son Hong
Tran, Viet Quoc
Toan Nguyen, Linh
Dinh-Xuan, Anh Tuan
author_facet Nguyen, Hien Thi Thu
Le-Quy, Vang
Ho, Son Van
Thomsen, Jakob Holm Dalsgaard
Pontoppidan Stoico, Malene
Tong, Hoang Van
Nguyen, Nhat-Linh
Krarup, Henrik Bygum
Nguyen, Son Hong
Tran, Viet Quoc
Toan Nguyen, Linh
Dinh-Xuan, Anh Tuan
author_sort Nguyen, Hien Thi Thu
collection PubMed
description BACKGROUND: Accurate prognosis is important either after acute infection or during long-term follow-up of patients infected by severe acute respiratory syndrome coronavirus 2. This study aims to predict coronavirus disease 2019 (COVID-19) severity based on clinical and biological indicators, and to identify biomarkers for prognostic assessment. METHODS: We included 261 Vietnamese COVID-19 patients, who were classified into moderate and severe groups. Disease severity prediction based on biomarkers and clinical parameters was performed by applying machine learning and statistical methods using the combination of clinical and biological data. RESULTS: The random forest model could predict with 97% accuracy the likelihood of COVID-19 patients who subsequently worsened to the severe condition. The most important indicators were interleukin (IL)-6, ferritin and D-dimer. The model could still predict with 92% accuracy after removing IL-6 from the analysis to generalise the applicability of the model to hospitals with limited capacity for IL-6 testing. The five most effective indicators were C-reactive protein (CRP), D-dimer, IL-6, ferritin and dyspnoea. Two different sets of biomarkers (D-dimer, IL-6 and ferritin, and CRP, D-dimer and IL-6) are applicable for the assessment of disease severity and prognosis. The two biomarker sets were further tested through machine learning algorithms and relatively validated on two Danish COVID-19 patient groups (n=32 and n=100). The results indicated that various biomarker sets combined with clinical data can be used for detection of the potential to develop the severe condition. CONCLUSION: This study provided a simple and reliable model using two different sets of biomarkers to assess disease severity and predict clinical outcomes in COVID-19 patients in Vietnam.
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spelling pubmed-98852432023-01-31 Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam Nguyen, Hien Thi Thu Le-Quy, Vang Ho, Son Van Thomsen, Jakob Holm Dalsgaard Pontoppidan Stoico, Malene Tong, Hoang Van Nguyen, Nhat-Linh Krarup, Henrik Bygum Nguyen, Son Hong Tran, Viet Quoc Toan Nguyen, Linh Dinh-Xuan, Anh Tuan ERJ Open Res Original Research Articles BACKGROUND: Accurate prognosis is important either after acute infection or during long-term follow-up of patients infected by severe acute respiratory syndrome coronavirus 2. This study aims to predict coronavirus disease 2019 (COVID-19) severity based on clinical and biological indicators, and to identify biomarkers for prognostic assessment. METHODS: We included 261 Vietnamese COVID-19 patients, who were classified into moderate and severe groups. Disease severity prediction based on biomarkers and clinical parameters was performed by applying machine learning and statistical methods using the combination of clinical and biological data. RESULTS: The random forest model could predict with 97% accuracy the likelihood of COVID-19 patients who subsequently worsened to the severe condition. The most important indicators were interleukin (IL)-6, ferritin and D-dimer. The model could still predict with 92% accuracy after removing IL-6 from the analysis to generalise the applicability of the model to hospitals with limited capacity for IL-6 testing. The five most effective indicators were C-reactive protein (CRP), D-dimer, IL-6, ferritin and dyspnoea. Two different sets of biomarkers (D-dimer, IL-6 and ferritin, and CRP, D-dimer and IL-6) are applicable for the assessment of disease severity and prognosis. The two biomarker sets were further tested through machine learning algorithms and relatively validated on two Danish COVID-19 patient groups (n=32 and n=100). The results indicated that various biomarker sets combined with clinical data can be used for detection of the potential to develop the severe condition. CONCLUSION: This study provided a simple and reliable model using two different sets of biomarkers to assess disease severity and predict clinical outcomes in COVID-19 patients in Vietnam. European Respiratory Society 2023-04-11 /pmc/articles/PMC9885243/ /pubmed/37041987 http://dx.doi.org/10.1183/23120541.00481-2022 Text en Copyright ©The authors 2023 https://creativecommons.org/licenses/by-nc/4.0/This version is distributed under the terms of the Creative Commons Attribution Non-Commercial Licence 4.0. For commercial reproduction rights and permissions contact permissions@ersnet.org (mailto:permissions@ersnet.org)
spellingShingle Original Research Articles
Nguyen, Hien Thi Thu
Le-Quy, Vang
Ho, Son Van
Thomsen, Jakob Holm Dalsgaard
Pontoppidan Stoico, Malene
Tong, Hoang Van
Nguyen, Nhat-Linh
Krarup, Henrik Bygum
Nguyen, Son Hong
Tran, Viet Quoc
Toan Nguyen, Linh
Dinh-Xuan, Anh Tuan
Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title_full Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title_fullStr Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title_full_unstemmed Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title_short Outcome prediction model and prognostic biomarkers for COVID-19 patients in Vietnam
title_sort outcome prediction model and prognostic biomarkers for covid-19 patients in vietnam
topic Original Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9885243/
https://www.ncbi.nlm.nih.gov/pubmed/37041987
http://dx.doi.org/10.1183/23120541.00481-2022
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