Hub Genes in Non-Small Cell Lung Cancer Regulatory Networks.
Qing YeNancy Lan GuoPublished in: Biomolecules (2022)
There are currently no accurate biomarkers for optimal treatment selection in early-stage non-small cell lung cancer (NSCLC). Novel therapeutic targets are needed to improve NSCLC survival outcomes. This study systematically evaluated the association between genome-scale regulatory network centralities and NSCLC tumorigenesis, proliferation, and survival in early-stage NSCLC patients. Boolean implication networks were used to construct multimodal networks using patient DNA copy number variation, mRNA, and protein expression profiles. T statistics of differential gene/protein expression in tumors versus non-cancerous adjacent tissues, dependency scores in in vitro CRISPR-Cas9/RNA interference (RNAi) screening of human NSCLC cell lines, and hazard ratios in univariate Cox modeling of the Cancer Genome Atlas (TCGA) NSCLC patients were correlated with graph theory centrality metrics. Hub genes in multi-omics networks involving gene/protein expression were associated with oncogenic, proliferative potentials and poor patient survival outcomes ( p < 0.05, Pearson's correlation). Immunotherapy targets PD1, PDL1, CTLA4 , and CD27 were ranked as top hub genes within the 10th percentile in most constructed multi-omics networks. BUB3 , DNM1L, EIF2S1, KPNB1, NMT1, PGAM1, and STRAP were discovered as important hub genes in NSCLC proliferation with oncogenic potential. These results support the importance of hub genes in NSCLC tumorigenesis, proliferation, and prognosis, with implications in prioritizing therapeutic targets to improve patient survival outcomes.
Keyphrases
- small cell lung cancer
- genome wide
- bioinformatics analysis
- copy number
- advanced non small cell lung cancer
- early stage
- genome wide identification
- end stage renal disease
- transcription factor
- dna methylation
- brain metastases
- chronic kidney disease
- network analysis
- mitochondrial dna
- ejection fraction
- case report
- signaling pathway
- newly diagnosed
- single cell
- peritoneal dialysis
- prognostic factors
- endothelial cells
- genome wide analysis
- papillary thyroid
- epidermal growth factor receptor
- radiation therapy
- machine learning
- combination therapy
- young adults
- single molecule
- convolutional neural network
- patient reported outcomes
- induced pluripotent stem cells
- patient reported
- genome editing
- risk assessment
- protein protein
- smoking cessation
- human health
- rectal cancer
- neoadjuvant chemotherapy