Meta-analysis of Transcriptomic Data from Lung Autopsy and Cellular Models of SARS-CoV-2 Infection.
Nathan Araujo CadoreVinícius Oliveira LordMariana Recamonde-MendozaThayne Woycinck KowalskiFernanda Sales Luiz ViannaPublished in: Biochemical genetics (2023)
Severe COVID-19 is a systemic disorder involving excessive inflammatory response, metabolic dysfunction, multi-organ damage, and several clinical features. Here, we performed a transcriptome meta-analysis investigating genes and molecular mechanisms related to COVID-19 severity and outcomes. First, transcriptomic data of cellular models of SARS-CoV-2 infection were compiled to understand the first response to the infection. Then, transcriptomic data from lung autopsies of patients deceased due to COVID-19 were compiled to analyze altered genes of damaged lung tissue. These analyses were followed by functional enrichment analyses and gene-phenotype association. A biological network was constructed using the disturbed genes in the lung autopsy meta-analysis. Central genes were defined considering closeness and betweenness centrality degrees. A sub-network phenotype-gene interaction analysis was performed. The meta-analysis of cellular models found genes mainly associated with cytokine signaling and other pathogen response pathways. The meta-analysis of lung autopsy tissue found genes associated with coagulopathy, lung fibrosis, multi-organ damage, and long COVID-19. Only genes DNAH9 and FAM216B were found perturbed in both meta-analyses. BLNK, FABP4, GRIA1, ATF3, TREM2, TPPP, TPPP3, FOS, ALB, JUNB, LMNA, ADRB2, PPARG, TNNC1, and EGR1 were identified as central elements among perturbed genes in lung autopsy and were found associated with several clinical features of severe COVID-19. Central elements were suggested as interesting targets to investigate the relation with features of COVID-19 severity, such as coagulopathy, lung fibrosis, and organ damage.
Keyphrases
- coronavirus disease
- genome wide
- systematic review
- sars cov
- genome wide identification
- meta analyses
- inflammatory response
- respiratory syndrome coronavirus
- bioinformatics analysis
- oxidative stress
- genome wide analysis
- single cell
- dna methylation
- rna seq
- end stage renal disease
- chronic kidney disease
- randomized controlled trial
- physical activity
- gene expression
- newly diagnosed
- transcription factor
- skeletal muscle
- adipose tissue
- wastewater treatment
- machine learning
- endoplasmic reticulum stress
- peritoneal dialysis
- data analysis