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About:
The characteristics and predictive role of lymphocyte subsets in COVID-19 patients
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covidontheweb.inria.fr
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Academic Article
research paper
schema:ScholarlyArticle
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type
Academic Article
research paper
schema:ScholarlyArticle
isDefinedBy
Covid-on-the-Web dataset
has title
The characteristics and predictive role of lymphocyte subsets in COVID-19 patients
Creator
Chen, Li
Yang, Ming
Li, Lei
Li, Xiang
Jiang, Lin
Li, Zhang
Zhang, Wenjing
Hospital, Jinyintan
Jin, Ting
Liu, Jihai
Wang, Hongxiang
Wuhan, China|
Zhou, Fangfang
Source
Elsevier; Medline; PMC
abstract
Abstract Objective To investigate the characteristics and predictive roles of lymphocyte subsets in COVID-19 patients. Method We evaluated lymphocyte subsets and other clinical features of COVID-19 patients and analysed their potential impacts on COVID-19 outcomes. Results 1. Lymphocyte subset counts in the peripheral blood of patients with COVID-19 were significantly reduced, especially in patients with severe disease. 2. In patients with non-severe diseases, the time from symptom onset to hospital admission was positively correlated with total T cell counts. 3. Among COVID-19 patients who did not reach the composite endpoint, lymphocyte subset counts were higher than in patients who had reached the composite endpoint. 4. The Kaplan-Meier survival curves showed significant differences in COVID-19 patients, classified by the levels of total, CD8+ and CD4+ T cells at admission. Conclusion Our study shows that the total, CD8+ and CD4+ T cell counts in patients with COVID-19 were significantly reduced, especially in patients with severe disease. T lymphocyte subsets were significantly associated with a higher occurrence of composite endpoint events. These subsets may help identify patients with a high risk of composite endpoint events.
has issue date
2020-08-03
(
xsd:dateTime
)
bibo:doi
10.1016/j.ijid.2020.06.079
bibo:pmid
32758688
has license
els-covid
sha1sum (hex)
27354d67b83f0afc481f819699fe7282deb404fe
schema:url
https://doi.org/10.1016/j.ijid.2020.06.079
resource representing a document's title
The characteristics and predictive role of lymphocyte subsets in COVID-19 patients
has PubMed Central identifier
PMC7398035
has PubMed identifier
32758688
schema:publication
Int J Infect Dis
resource representing a document's body
covid:27354d67b83f0afc481f819699fe7282deb404fe#body_text
is
schema:about
of
named entity 'COVID-19'
named entity 'lymphocyte subsets'
named entity 'COVID-19'
covid:arg/27354d67b83f0afc481f819699fe7282deb404fe
named entity 'COVID-19'
named entity 'lymphocyte subsets'
named entity 'lymphocyte subsets'
named entity 'COVID-19'
named entity 'septic shock'
named entity 'CD4'
named entity 'ICU'
named entity 'pneumonia'
named entity 'CD4'
named entity 'spleen'
named entity 'CD8 +'
named entity 'chi-square test'
named entity 'composite endpoint'
named entity 'COVID'
named entity 'pneumonia'
named entity 'PD-1'
named entity 'CD4'
named entity 'Invasive mechanical ventilation'
named entity 'mmHg'
named entity 'probability'
named entity 'tocilizumab'
named entity 'composite endpoint'
named entity 'epidemic'
named entity 'COVID'
named entity 'critically ill patients'
named entity 'COVID'
named entity 'cough'
named entity 'infection'
named entity 'CD8 +'
named entity 'C-reactive protein'
named entity 'ritonavir'
named entity 'NK cells'
named entity 'D-dimer'
named entity '95% CI'
named entity 'statistical analysis'
named entity 'immunoglobulin'
named entity 'infection'
named entity 'fever'
named entity 'immune factors'
named entity 'ROC curves'
named entity 'acute respiratory distress syndrome'
named entity 'ROC curve'
named entity 'monocytes'
named entity '1.000'
named entity 'white blood cell'
named entity 'platelet counts'
named entity 'expectoration'
named entity 'ICU'
named entity 'ROC curve'
named entity 'lactate dehydrogenase'
named entity 'CD8 +'
named entity 'C-reactive protein'
named entity 'cough'
named entity 'cytokines'
named entity 'risk factors'
named entity 'immune cells'
named entity 'CD4'
named entity 'composite endpoint'
named entity 'CRP'
named entity 'Huanan seafood market'
named entity 'lymphocyte'
named entity 'dry cough'
named entity 'monoclonal antibody'
named entity 'CD8 +'
named entity 'COVID'
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