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Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms

OBJECTIVE: To analyze the epidemiological history, clinical symptoms, laboratory testing parameters of patients with mild and severe COVID-19 infection, and provide a reference for timely judgment of changes in the patients’ conditions and the formulation of epidemic prevention and control strategie...

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Autores principales: Chen, Xiaoping, Zheng, Lihui, Ye, Shupei, Xu, Mengxin, Li, YanLing, Lv, KeXin, Zhu, Haipeng, Jie, Yusheng, Chen, Yao-Qing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8418155/
https://www.ncbi.nlm.nih.gov/pubmed/34490135
http://dx.doi.org/10.3389/fcimb.2021.670823
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author Chen, Xiaoping
Zheng, Lihui
Ye, Shupei
Xu, Mengxin
Li, YanLing
Lv, KeXin
Zhu, Haipeng
Jie, Yusheng
Chen, Yao-Qing
author_facet Chen, Xiaoping
Zheng, Lihui
Ye, Shupei
Xu, Mengxin
Li, YanLing
Lv, KeXin
Zhu, Haipeng
Jie, Yusheng
Chen, Yao-Qing
author_sort Chen, Xiaoping
collection PubMed
description OBJECTIVE: To analyze the epidemiological history, clinical symptoms, laboratory testing parameters of patients with mild and severe COVID-19 infection, and provide a reference for timely judgment of changes in the patients’ conditions and the formulation of epidemic prevention and control strategies. METHODS: A retrospective study was conducted in this research, a total of 90 patients with COVID-19 infection who received treatment from January 21 to March 31, 2020 in the Ninth People’s Hospital of Dongguan City were selected as study subject. We analyzed the clinical characteristics of laboratory-confirmed patients with COVID-19, used the oversampling method (SMOTE) to solve the imbalance of categories, and established Lasso-logistic regression and random forest models. RESULTS: Among the 90 confirmed COVID-19 cases, 79 were mild and 11 were severe. The average age of the patients was 36.1 years old, including 49 males and 41 females. The average age of severe patients is significantly older than that of mild patients (53.2 years old vs 33.7 years old). The average time from illness onset to hospital admission was 4.1 days and the average actual hospital stay was 18.7 days, both of these time actors were longer for severe patients than for mild patients. Forty-eight of the 90 patients (53.3%) had family cluster infections, which was similar among mild and severe patients. Comorbidities of underlying diseases were more common in severe patients, including hypertension, diabetes and other diseases. The most common symptom was cough [45 (50%)], followed by fever [43 (47.8%)], headache [7 (7.8%)], vomiting [3 (3.3%)], diarrhea [3 (3.3%)], and dyspnea [1 (1.1%)]. The laboratory findings of patients also included leukopenia [13(14.4%)] and lymphopenia (17.8%). Severe patients had a low level of creatine kinase (median 40.9) and a high level of D-dimer. The median NLR of severe patients was 2.82, which was higher than that of mild patients. Logistic regression showed that age, phosphocreatine kinase, procalcitonin, the lymphocyte count of the patient on admission, cough, fatigue, and pharynx dryness were independent predictors of COVID-19 severity. The classification of random forest was predicted and the importance of each variable was displayed. The variable importance of random forest indicates that age, D-dimer, NLR (neutrophil to lymphocyte ratio) and other top-ranked variables are risk factors. CONCLUSION: The clinical symptoms of COVID-19 patients are non-specific and complicated. Age and the time from onset to admission are important factors that determine the severity of the patient’s condition. Patients with mild illness should be closely monitored to identify those who may become severe. Variables such as age and creatine phosphate kinase selected by logistic regression can be used as important indicators to assess the disease severity of COVID-19 patients. The importance of variables in the random forest further complements the variable feature information.
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spelling pubmed-84181552021-09-05 Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms Chen, Xiaoping Zheng, Lihui Ye, Shupei Xu, Mengxin Li, YanLing Lv, KeXin Zhu, Haipeng Jie, Yusheng Chen, Yao-Qing Front Cell Infect Microbiol Cellular and Infection Microbiology OBJECTIVE: To analyze the epidemiological history, clinical symptoms, laboratory testing parameters of patients with mild and severe COVID-19 infection, and provide a reference for timely judgment of changes in the patients’ conditions and the formulation of epidemic prevention and control strategies. METHODS: A retrospective study was conducted in this research, a total of 90 patients with COVID-19 infection who received treatment from January 21 to March 31, 2020 in the Ninth People’s Hospital of Dongguan City were selected as study subject. We analyzed the clinical characteristics of laboratory-confirmed patients with COVID-19, used the oversampling method (SMOTE) to solve the imbalance of categories, and established Lasso-logistic regression and random forest models. RESULTS: Among the 90 confirmed COVID-19 cases, 79 were mild and 11 were severe. The average age of the patients was 36.1 years old, including 49 males and 41 females. The average age of severe patients is significantly older than that of mild patients (53.2 years old vs 33.7 years old). The average time from illness onset to hospital admission was 4.1 days and the average actual hospital stay was 18.7 days, both of these time actors were longer for severe patients than for mild patients. Forty-eight of the 90 patients (53.3%) had family cluster infections, which was similar among mild and severe patients. Comorbidities of underlying diseases were more common in severe patients, including hypertension, diabetes and other diseases. The most common symptom was cough [45 (50%)], followed by fever [43 (47.8%)], headache [7 (7.8%)], vomiting [3 (3.3%)], diarrhea [3 (3.3%)], and dyspnea [1 (1.1%)]. The laboratory findings of patients also included leukopenia [13(14.4%)] and lymphopenia (17.8%). Severe patients had a low level of creatine kinase (median 40.9) and a high level of D-dimer. The median NLR of severe patients was 2.82, which was higher than that of mild patients. Logistic regression showed that age, phosphocreatine kinase, procalcitonin, the lymphocyte count of the patient on admission, cough, fatigue, and pharynx dryness were independent predictors of COVID-19 severity. The classification of random forest was predicted and the importance of each variable was displayed. The variable importance of random forest indicates that age, D-dimer, NLR (neutrophil to lymphocyte ratio) and other top-ranked variables are risk factors. CONCLUSION: The clinical symptoms of COVID-19 patients are non-specific and complicated. Age and the time from onset to admission are important factors that determine the severity of the patient’s condition. Patients with mild illness should be closely monitored to identify those who may become severe. Variables such as age and creatine phosphate kinase selected by logistic regression can be used as important indicators to assess the disease severity of COVID-19 patients. The importance of variables in the random forest further complements the variable feature information. Frontiers Media S.A. 2021-08-18 /pmc/articles/PMC8418155/ /pubmed/34490135 http://dx.doi.org/10.3389/fcimb.2021.670823 Text en Copyright © 2021 Chen, Zheng, Ye, Xu, Li, Lv, Zhu, Jie and Chen https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cellular and Infection Microbiology
Chen, Xiaoping
Zheng, Lihui
Ye, Shupei
Xu, Mengxin
Li, YanLing
Lv, KeXin
Zhu, Haipeng
Jie, Yusheng
Chen, Yao-Qing
Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title_full Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title_fullStr Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title_full_unstemmed Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title_short Research on Influencing Factors and Classification of Patients With Mild and Severe COVID-19 Symptoms
title_sort research on influencing factors and classification of patients with mild and severe covid-19 symptoms
topic Cellular and Infection Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8418155/
https://www.ncbi.nlm.nih.gov/pubmed/34490135
http://dx.doi.org/10.3389/fcimb.2021.670823
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