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Scoring systems for predicting mortality for severe patients with COVID-19

BACKGROUND: Coronavirus disease 2019 (COVID-19) has been widely spread and caused tens of thousands of deaths, especially in patients with severe COVID-19. This analysis aimed to explore risk factors for mortality of severe COVID-19, and establish a scoring system to predict in-hospital deaths. METH...

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Autores principales: Shang, Yufeng, Liu, Tao, Wei, Yongchang, Li, Jingfeng, Shao, Liang, Liu, Minghui, Zhang, Yongxi, Zhao, Zhigang, Xu, Haibo, Peng, Zhiyong, Zhou, Fuling, Wang, Xinghuan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7332889/
https://www.ncbi.nlm.nih.gov/pubmed/32766541
http://dx.doi.org/10.1016/j.eclinm.2020.100426
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author Shang, Yufeng
Liu, Tao
Wei, Yongchang
Li, Jingfeng
Shao, Liang
Liu, Minghui
Zhang, Yongxi
Zhao, Zhigang
Xu, Haibo
Peng, Zhiyong
Zhou, Fuling
Wang, Xinghuan
author_facet Shang, Yufeng
Liu, Tao
Wei, Yongchang
Li, Jingfeng
Shao, Liang
Liu, Minghui
Zhang, Yongxi
Zhao, Zhigang
Xu, Haibo
Peng, Zhiyong
Zhou, Fuling
Wang, Xinghuan
author_sort Shang, Yufeng
collection PubMed
description BACKGROUND: Coronavirus disease 2019 (COVID-19) has been widely spread and caused tens of thousands of deaths, especially in patients with severe COVID-19. This analysis aimed to explore risk factors for mortality of severe COVID-19, and establish a scoring system to predict in-hospital deaths. METHODS: Patients with COVID-19 were retrospectively analyzed and clinical characteristics were compared. LASSO regression as well as multivariable analysis were used to screen variables and establish prediction model. FINDINGS: A total of 2529 patients with COVID-19 was retrospectively analyzed, and 452 eligible severe COVID-19 were used for finally analysis. In training cohort, the median age was 66•0 years while it was 73•0 years in non-survivors. Patients aged 60–75 years accounted for the largest proportion of infected populations and mortality toll. Anti-SARS-CoV-2 antibodies were monitored up to 54 days, and IgG levels reached the highest during 20–30 days. No differences were observed of antibody levels between severe and non-severe patients. About 60.2% of severe patients had complications. Among acute myocardial injury (AMI), acute kidney injury (AKI) and acute liver injury (ALI), the heart was the earliest injured organ, whereas the time from AKI to death was the shortest. Age, diabetes, coronary heart disease (CHD), percentage of lymphocytes (LYM%), procalcitonin (PCT), serum urea, C reactive protein and D-dimer (DD), were identified associated with mortality by LASSO binary logistic regression. Then multivariable analysis was performed to conclude that old age, CHD, LYM%, PCT and DD remained independent risk factors for mortality. Based on the above variables, a scoring system of COVID-19 (CSS) was established to divide patients into low-risk and high-risk groups. This model displayed good discrimination (AUC=0·919) and calibration (P=0·264). Complications in low-risk and high-risk groups were significantly different (P<0·05). Use of corticosteroids in low-risk groups increased hospital stays by 4·5 days (P=0·036) and durations of disease by 7·5 days (P=0·012) compared with no corticosteroids. INTERPRETATION: Old age, CHD, LYM%, PCT and DD were independently related to mortality. CSS was useful for predicting in-hospital mortality and complications, and it could help clinicians to identify high-risk patients with poor prognosis. FUNDING: This work was supported by the Key Project for Anti-2019 novel Coronavirus Pneumonia from the Ministry of Science and Technology, China (grant number 2020YFC0845500).
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spelling pubmed-73328892020-07-06 Scoring systems for predicting mortality for severe patients with COVID-19 Shang, Yufeng Liu, Tao Wei, Yongchang Li, Jingfeng Shao, Liang Liu, Minghui Zhang, Yongxi Zhao, Zhigang Xu, Haibo Peng, Zhiyong Zhou, Fuling Wang, Xinghuan EClinicalMedicine Research paper BACKGROUND: Coronavirus disease 2019 (COVID-19) has been widely spread and caused tens of thousands of deaths, especially in patients with severe COVID-19. This analysis aimed to explore risk factors for mortality of severe COVID-19, and establish a scoring system to predict in-hospital deaths. METHODS: Patients with COVID-19 were retrospectively analyzed and clinical characteristics were compared. LASSO regression as well as multivariable analysis were used to screen variables and establish prediction model. FINDINGS: A total of 2529 patients with COVID-19 was retrospectively analyzed, and 452 eligible severe COVID-19 were used for finally analysis. In training cohort, the median age was 66•0 years while it was 73•0 years in non-survivors. Patients aged 60–75 years accounted for the largest proportion of infected populations and mortality toll. Anti-SARS-CoV-2 antibodies were monitored up to 54 days, and IgG levels reached the highest during 20–30 days. No differences were observed of antibody levels between severe and non-severe patients. About 60.2% of severe patients had complications. Among acute myocardial injury (AMI), acute kidney injury (AKI) and acute liver injury (ALI), the heart was the earliest injured organ, whereas the time from AKI to death was the shortest. Age, diabetes, coronary heart disease (CHD), percentage of lymphocytes (LYM%), procalcitonin (PCT), serum urea, C reactive protein and D-dimer (DD), were identified associated with mortality by LASSO binary logistic regression. Then multivariable analysis was performed to conclude that old age, CHD, LYM%, PCT and DD remained independent risk factors for mortality. Based on the above variables, a scoring system of COVID-19 (CSS) was established to divide patients into low-risk and high-risk groups. This model displayed good discrimination (AUC=0·919) and calibration (P=0·264). Complications in low-risk and high-risk groups were significantly different (P<0·05). Use of corticosteroids in low-risk groups increased hospital stays by 4·5 days (P=0·036) and durations of disease by 7·5 days (P=0·012) compared with no corticosteroids. INTERPRETATION: Old age, CHD, LYM%, PCT and DD were independently related to mortality. CSS was useful for predicting in-hospital mortality and complications, and it could help clinicians to identify high-risk patients with poor prognosis. FUNDING: This work was supported by the Key Project for Anti-2019 novel Coronavirus Pneumonia from the Ministry of Science and Technology, China (grant number 2020YFC0845500). Elsevier 2020-07-03 /pmc/articles/PMC7332889/ /pubmed/32766541 http://dx.doi.org/10.1016/j.eclinm.2020.100426 Text en © 2020 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research paper
Shang, Yufeng
Liu, Tao
Wei, Yongchang
Li, Jingfeng
Shao, Liang
Liu, Minghui
Zhang, Yongxi
Zhao, Zhigang
Xu, Haibo
Peng, Zhiyong
Zhou, Fuling
Wang, Xinghuan
Scoring systems for predicting mortality for severe patients with COVID-19
title Scoring systems for predicting mortality for severe patients with COVID-19
title_full Scoring systems for predicting mortality for severe patients with COVID-19
title_fullStr Scoring systems for predicting mortality for severe patients with COVID-19
title_full_unstemmed Scoring systems for predicting mortality for severe patients with COVID-19
title_short Scoring systems for predicting mortality for severe patients with COVID-19
title_sort scoring systems for predicting mortality for severe patients with covid-19
topic Research paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7332889/
https://www.ncbi.nlm.nih.gov/pubmed/32766541
http://dx.doi.org/10.1016/j.eclinm.2020.100426
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