Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification

Abstract Early classification and risk assessment for COVID-19 patients are critical for improving their terminal prognosis, and preventing the patients deteriorate into severe or critical situation. We performed a retrospective study on 222 COVID-19 patients in Wuhan treated between January 23rd an...

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Autores principales: Zhi Li, Ling Wang, Lv-shuai Huang, Meng Zhang, Xianhua Cai, Feng Xu, Fei Wu, Honghua Li, Wencai Huang, Qunfang Zhou, Jing Yao, Yong Liang, Guoliang Liu
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Publicado: Nature Portfolio 2021
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Acceso en línea:https://doaj.org/article/2030d5ac5a2245ca90c8fc2f43d9e2c5
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spelling oai:doaj.org-article:2030d5ac5a2245ca90c8fc2f43d9e2c52021-12-02T14:29:04ZEfficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification10.1038/s41598-021-89187-32045-2322https://doaj.org/article/2030d5ac5a2245ca90c8fc2f43d9e2c52021-05-01T00:00:00Zhttps://doi.org/10.1038/s41598-021-89187-3https://doaj.org/toc/2045-2322Abstract Early classification and risk assessment for COVID-19 patients are critical for improving their terminal prognosis, and preventing the patients deteriorate into severe or critical situation. We performed a retrospective study on 222 COVID-19 patients in Wuhan treated between January 23rd and February 28th, 2020. A decision tree algorithm has been established including multiple factor logistic for cluster analyses that were performed to assess the predictive value of presumptive clinical diagnosis and features including characteristic signs and symptoms of COVID-19 patients. Therapeutic efficacy was evaluated by adopting Kaplan–Meier survival curve analysis and cox risk regression. The 222 patients were then clustered into two groups: cluster I (common type) and cluster II (high-risk type). High-risk cases can be judged from their clinical characteristics, including: age > 50 years, chest CT images with multiple ground glass or wetting shadows, etc. Based on the classification analysis and risk factor analysis, a decision tree algorithm and management flow chart were established, which can help well recognize individuals who needs hospitalization and improve the clinical prognosis of the COVID-19 patients. Our risk factor analysis and management process suggestions are useful for improving the overall clinical prognosis and optimize the utilization of public health resources during treatment of COVID-19 patients.Zhi LiLing WangLv-shuai HuangMeng ZhangXianhua CaiFeng XuFei WuHonghua LiWencai HuangQunfang ZhouJing YaoYong LiangGuoliang LiuNature PortfolioarticleMedicineRScienceQENScientific Reports, Vol 11, Iss 1, Pp 1-13 (2021)
institution DOAJ
collection DOAJ
language EN
topic Medicine
R
Science
Q
spellingShingle Medicine
R
Science
Q
Zhi Li
Ling Wang
Lv-shuai Huang
Meng Zhang
Xianhua Cai
Feng Xu
Fei Wu
Honghua Li
Wencai Huang
Qunfang Zhou
Jing Yao
Yong Liang
Guoliang Liu
Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
description Abstract Early classification and risk assessment for COVID-19 patients are critical for improving their terminal prognosis, and preventing the patients deteriorate into severe or critical situation. We performed a retrospective study on 222 COVID-19 patients in Wuhan treated between January 23rd and February 28th, 2020. A decision tree algorithm has been established including multiple factor logistic for cluster analyses that were performed to assess the predictive value of presumptive clinical diagnosis and features including characteristic signs and symptoms of COVID-19 patients. Therapeutic efficacy was evaluated by adopting Kaplan–Meier survival curve analysis and cox risk regression. The 222 patients were then clustered into two groups: cluster I (common type) and cluster II (high-risk type). High-risk cases can be judged from their clinical characteristics, including: age > 50 years, chest CT images with multiple ground glass or wetting shadows, etc. Based on the classification analysis and risk factor analysis, a decision tree algorithm and management flow chart were established, which can help well recognize individuals who needs hospitalization and improve the clinical prognosis of the COVID-19 patients. Our risk factor analysis and management process suggestions are useful for improving the overall clinical prognosis and optimize the utilization of public health resources during treatment of COVID-19 patients.
format article
author Zhi Li
Ling Wang
Lv-shuai Huang
Meng Zhang
Xianhua Cai
Feng Xu
Fei Wu
Honghua Li
Wencai Huang
Qunfang Zhou
Jing Yao
Yong Liang
Guoliang Liu
author_facet Zhi Li
Ling Wang
Lv-shuai Huang
Meng Zhang
Xianhua Cai
Feng Xu
Fei Wu
Honghua Li
Wencai Huang
Qunfang Zhou
Jing Yao
Yong Liang
Guoliang Liu
author_sort Zhi Li
title Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
title_short Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
title_full Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
title_fullStr Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
title_full_unstemmed Efficient management strategy of COVID-19 patients based on cluster analysis and clinical decision tree classification
title_sort efficient management strategy of covid-19 patients based on cluster analysis and clinical decision tree classification
publisher Nature Portfolio
publishDate 2021
url https://doaj.org/article/2030d5ac5a2245ca90c8fc2f43d9e2c5
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