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Interplay of LncRNAs NEAT1 and TUG1 in Incidence of Cytokine Storm in Appraisal of COVID-19 Infection

Safaa I. Tayel, Eman A. El-Masry, Gehan A. Abdelaal, Somaia Shehab-Eldeen, Abdallah Essa, Nashwa M. Muharram

2022International Journal of Biological Sciences29 citationsDOIOpen Access PDF

Abstract

In 2019, the coronavirus pandemic emerged, resulting in the highest mortality and morbidity rate globally. It has a prevailing transmission rate and continues to be a global burden. There is a paucity of data regarding the role of long non-coding RNAs (lncRNAs) in COVID-19. Therefore, the current study aimed to investigate lncRNAs, particularly NEAT1 and TUG1, and their association with IL-6, CCL2, and TNF- in COVID-19 patients with moderate and severe disease. Methods: The study was conducted on 80 COVID-19 patients (35 with severe and 45 with moderate infection) and 40 control subjects. Complete blood count (CBC), D-dimer assay, serum ferritin, and CRP were assayed. qRT-PCR was used to measure RNAs and lncRNAs. Results: NEAT1 and TUG1 expression levels were higher in COVID-19 patients compared with controls (P<0.001). Furthermore, CCL2, IL-6, and TNF- expressions were higher in COVID-19 patients compared to controls (P<0.001). CCL2 and IL-6 expression levels were significantly higher in patients with severe compared to those with moderate COVID-19 infection (P<0.001). IL-6 had the highest accuracy in distinguishing COVID-19 patients (AUC=1, P<0.001 at a cutoff of 0.359), followed by TUG1 (AUC=0.999, P<0.001 at a cutoff of 2.28). NEAT1 and TUG1 had significant correlations with the measured cytokines, and based on the multivariate regression analysis, NEAT1 is the independent predictor for survival in COVID-19 patients (P=0.02).

Topics & Concepts

Coronavirus disease 2019 (COVID-19)MedicineInternal medicineCytokine stormIncidence (geometry)PandemicGastroenterologySevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)CoronavirusCutoffImmunologyDiseaseInfectious disease (medical specialty)Quantum mechanicsOpticsPhysicsCancer-related molecular mechanisms researchRNA regulation and diseaseMicroRNA in disease regulation