The promising novel biomarkers and candidate small molecule drugs in lower-grade glioma: Evidence from bioinformatics analysis of high-throughput data.
Bo ZhangQiong WuRan XuXinyi HuYidan SunQiuhong WangFei JuShiqi RenChenlin ZhangFuwei QiQianqian MaZiheng WangYou Lang ZhouPublished in: Journal of cellular biochemistry (2019)
Overall survival of patients with low-grade glioma (LGG) has shown no significant improvement over the past 30 years, with survival averaging approximately 7 years. This study aimed to identify novel promising biomarkers of LGG and reveal its potential molecular mechanisms by integrated bioinformatics analysis. The microarray datasets of GSE68848 and GSE4290 were selected from GEO database for integrated analysis. In total, 293 overlapping differentially expressed genes (DEGs) were detected using the limma package. One hundred and eighty-eight nodes with 603 interactions were obtained from the establishment of protein-protein interaction (PPI) network. Functional and signaling pathway enriched were significantly correlated with the synapse and calcium signaling pathway, respectively. Module analysis revealed eight hub genes with high connectivity, which included CHRM1, DLG2, GABRD, GRIN1, HTR2A, KCNJ3, KCNJ9, and NUSAP1, and they were markedly correlated with patients' prognosis. The mining of the Gene Expression Profiling Interactive Analysis database and qPCR further confirmed the abnormal expression of these key genes with their prognostic value in LGG. We eventually predicted the 20 most vital small molecule drugs, which potentially reverse the carcinogenic state of LGG, as per the CMap (connectivity map) database and these DEGs, and MS-275 (enrichment score = -0.939) was considered as the most promising small molecule to treat LGG. In conclusion, our study provided eight reliable novel molecular biomarkers for diagnosis, prognosis prediction, and treatment targets for LGG. These conclusions will contribute to a better comprehension of molecular mechanisms fundamental to LGG occurrence and progression, and providing new insights for future development of genomic individualized treatment in LGG.
Keyphrases
- bioinformatics analysis
- small molecule
- protein protein
- genome wide
- signaling pathway
- low grade
- high throughput
- genome wide identification
- end stage renal disease
- chronic kidney disease
- pi k akt
- single cell
- poor prognosis
- risk assessment
- high grade
- early stage
- epithelial mesenchymal transition
- emergency department
- copy number
- network analysis
- white matter
- dna methylation
- mass spectrometry
- resting state
- multiple sclerosis
- lymph node
- cell proliferation
- adverse drug
- gene expression
- machine learning
- transcription factor
- long non coding rna
- electronic health record
- free survival