Identification of miRNA-mRNA-TFs regulatory network and crucial pathways involved in asthma through advanced systems biology approaches.
Noor Ahmad ShaikKhalidah NasserArif MohammedAbdulrahman MujalliAhmad A ObaidAshraf A El-HarouniRamu ElangoBabajan BanaganapalliPublished in: PloS one (2022)
Asthma is a life-threatening and chronic inflammatory lung disease that is posing a true global health challenge. The genetic basis of the disease is fairly well examined. However, the molecular crosstalk between microRNAs (miRNAs), target genes, and transcription factors (TFs) networks and their contribution to disease pathogenesis and progression is not well explored. Therefore, this study was aimed at dissecting the molecular network between mRNAs, miRNAs, and TFs using robust computational biology approaches. The transcriptomic data of bronchial epithelial cells of severe asthma patients and healthy controls was studied by different systems biology approaches like differentially expressed gene detection, functional enrichment, miRNA-target gene pairing, and mRNA-miRNA-TF molecular networking. We detected the differential expression of 1703 (673 up-and 1030 down-regulated) genes and 71 (41 up-and 30 down-regulated) miRNAs in the bronchial epithelial cells of asthma patients. The DEGs were found to be enriched in key pathways like IL-17 signaling (KEGG: 04657), Th1 and Th2 cell differentiation (KEGG: 04658), and the Th17 cell differentiation (KEGG: 04659) (p-values = 0.001). The results from miRNAs-target gene pairs-transcription factors (TFs) have detected the key roles of 3 miRs (miR-181a-2-3p; miR-203a-3p; miR-335-5p), 6 TFs (TFAM, FOXO1, GFI1, IRF2, SOX9, and HLF) and 32 miRNA target genes in eliciting autoimmune reactions in bronchial epithelial cells of the respiratory tract. Through systemic implementation of comprehensive system biology tools, this study has identified key miRNAs, TFs, and miRNA target gene pairs as potential tissue-based asthma biomarkers.
Keyphrases
- transcription factor
- genome wide identification
- genome wide
- chronic obstructive pulmonary disease
- copy number
- end stage renal disease
- ejection fraction
- lung function
- newly diagnosed
- genome wide analysis
- global health
- chronic kidney disease
- public health
- prognostic factors
- respiratory tract
- dna methylation
- dna binding
- primary care
- bioinformatics analysis
- single cell
- electronic health record
- machine learning
- immune response
- gene expression
- big data
- drug induced
- rna seq
- cell proliferation
- air pollution