Abstract
Background: Non-small cell lung cancer (NSCLC) is one of the most leading cause of tumor related mortality worldwide. However, the prognosis of NSCLC remained to be poor and the mechanisms remained to be further investigated.
Objective: This study aimed to evaluate whether GPRIN1 could be a potential biomarker for NSCLC.
Methods: The Cancer Genome Atlas (TCGA, https://cancergenome.nih.gov/) and GEO database(http://www.ncbi.nlm.nih.gov/geo) were used to analyze the GPRIN1 expression between normal and human cancers. The protein-protein interaction among centromere proteins was determined using STRING database (http://www.bork.emblheidelberg.de/STRING/). GraphPad Prism 5.0 software was utilized for the independent and paired samples’ t-test or ANOVA to analyze the difference of GPRIN1 expression between two groups.
Results: This study showed GPRIN1 was overexpressed and correlated to shorter OS time in human cancers. In NSCLC, we found that GPRIN1 was up-regulated in NSCLC samples compared to normal lung tissues by analyzing TCGA and GEO datasets. Bioinformatics analysis indicated that this gene was involved in regulating cancer proliferation and metabolism. Finally, we identified key targets of GPRIN1 in NSCLC by constructing PPl networks, including MCM3, KIF20A, UHRF1, BRCA1, KIF4A, HMMR, KIF18B, KIFC1, ASPM, and NCAPG2.
Conclusion: These analyses showed GPRIN1 could act as a prognosis biomarker in patients with NSCLC.
Keywords: Non-small cell lung cancer, GPRIN1, prognosis, biomarker, protein, bioinformatics analysis.
Graphical Abstract
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