JOURNAL ARTICLE

Identification of novel cell glycolysis related gene signature predicting survival in patients with endometrial cancer

Zi-Hao WangYun-Zheng ZhangYu‐Shan WangXiaoxin Ma

Year: 2019 Journal:   Cancer Cell International Vol: 19 (1)Pages: 296-296   Publisher: BioMed Central

Abstract

Abstract Background Endometrial cancer (EC) is one of the three major gynecological malignancies. Numerous biomarkers that may be associated with survival and prognosis have been identified through database mining in previous studies. However, the predictive ability of single-gene biomarkers is not sufficiently specific. Genetic signatures may be an improved option for prediction. This study aimed to explore data from The Cancer Genome Atlas (TCGA) to identify a new genetic signature for predicting the prognosis of EC. Methods mRNA expression profiling was performed in a group of patients with EC (n = 548) from TCGA. Gene set enrichment analysis was performed to identify gene sets that were significantly different between EC tissues and normal tissues. Cox proportional hazards regression models were used to identify genes significantly associated with overall survival. Quantitative real-time-PCR was used to verify the reliability of the expression of selected mRNAs. Subsequent multivariate Cox regression analysis was used to establish a prognostic risk parameter formula. Kaplan–Meier survival estimates and the log‐rank test were used to validate the significance of risk parameters for prognosis prediction. Result Nine genes associated with glycolysis ( CLDN9 , B4GALT1 , GMPPB , B4GALT4 , AK4 , CHST6 , PC , GPC1 , and SRD5A3 ) were found to be significantly related to overall survival. The results of mRNA expression analysis by PCR were consistent with those of bioinformatics analysis. Based on the nine-gene signature, the 548 patients with EC were divided into high/low-risk subgroups. The prognostic ability of the nine-gene signature was not affected by other factors. Conclusion A nine-gene signature associated with cellular glycolysis for predicting the survival of patients with EC was developed. The findings provide insight into the mechanisms of cellular glycolysis and identification of patients with poor prognosis in EC.

Keywords:
Proportional hazards model Survival analysis Gene signature Endometrial cancer Gene Gene expression profiling Oncology Gene expression Medicine Computational biology Bioinformatics Biology Internal medicine Cancer Genetics

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Citation History

Topics

Cancer-related molecular mechanisms research
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Cancer Research
Cancer, Lipids, and Metabolism
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Cancer Research
Endometrial and Cervical Cancer Treatments
Health Sciences →  Medicine →  Obstetrics and Gynecology
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