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10.3389/fmed.2020.570614

http://scihub22266oqcxt.onion/10.3389/fmed.2020.570614
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33282887!7690648!33282887
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suck abstract from ncbi

pmid33282887      Front+Med+(Lausanne) 2020 ; 7 (?): 570614
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  • Identification of COVID-19 Clinical Phenotypes by Principal Component Analysis-Based Cluster Analysis #MMPMID33282887
  • Ye W; Lu W; Tang Y; Chen G; Li X; Ji C; Hou M; Zeng G; Lan X; Wang Y; Deng X; Cai Y; Huang H; Yang L
  • Front Med (Lausanne) 2020[]; 7 (?): 570614 PMID33282887show ga
  • Background: COVID-19 has been quickly spreading, making it a serious public health threat. It is important to identify phenotypes to predict the severity of disease and design an individualized treatment. Methods: We collected data from 213 COVID-19 patients in Wuhan Pulmonary Hospital from January 1 to March 30, 2020. Principal component analysis (PCA) and cluster analysis were used to classify patients. Results: We identified three distinct subgroups of COVID-19. Cluster 1 was the largest group (52.6%) and characterized by oldest age, lowest cellular immune function, and albumin levels. 38.5% of subjects were grouped into Cluster 2. Most of the lab results in Cluster 2 fell between those of Clusters 1 and 3. Cluster 3 was the smallest cluster (8.9%), characterized by youngest age and highest cellular immune function. The incidence of respiratory failure, acute respiratory distress syndrome (ARDS), heart failure, and usage of non-invasive mechanical ventilation in Cluster 1 was significantly higher than others (P < 0.05). Cluster 1 had the highest death rate of 30.4% (P = 0.005). Although there were significant differences in age between Clusters 2 and 3 (P < 0.001), we found that there was no difference in demand for medical resources. Conclusions: We identified three distinct clusters of the COVID-19 patients. The results show that age alone could not be used to assess a patient's condition. Specifically, management of albumin, and immune function are important in reducing the severity of disease.
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