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A predictive model for assessing prognostic risks in gastric cancer patients using gene expression and methylation data

Authors :
Qingling Yang
Mao Tan
YanLei Zou
Dan Luo
Jian Liu
Haibo Wang
Source :
BMC Medical Genomics, BMC Medical Genomics, Vol 14, Iss 1, Pp 1-14 (2021)
Publication Year :
2021
Publisher :
BioMed Central, 2021.

Abstract

Background The role(s) of epigenetic reprogramming in gastric cancer (GC) remain obscure. This study was designed to identify methylated gene markers with prognostic potential for GC. Methods Five datasets containing gene expression and methylation profiles from GC samples were collected from the GEO database, and subjected to meta-analysis. All five datasets were subjected to quality control and then differentially expressed genes (DEGs) and differentially expressed methylation genes (DEMGs) were selected using MetaDE. Correlations between gene expression and methylation status were analysed using Pearson coefficient correlation. Then, enrichment analyses were conducted to identify signature genes that were significantly different at both the gene expression and methylation levels. Cox regression analyses were performed to identify clinical factors and these were combined with the signature genes to create a prognosis-related predictive model. This model was then evaluated for predictive accuracy and then validated using a validation dataset. Results This study identified 1565 DEGs and 3754 DEMGs in total. Of these, 369 were differentially expressed at both the gene and methylation levels. We identified 12 signature genes including VEGFC, FBP1, NR3C1, NFE2L2, and DFNA5 which were combined with the clinical data to produce a novel prognostic model for GC. This model could effectively split GC patients into two groups, high- and low-risk with these observations being confirmed in the validation dataset. Conclusion The differential methylation of the 12 signature genes, including VEGFC, FBP1, NR3C1, NFE2L2, and DFNA5, identified in this study may help to produce a functional predictive model for evaluating GC prognosis in clinical samples.

Details

Language :
English
ISSN :
17558794
Volume :
14
Database :
OpenAIRE
Journal :
BMC Medical Genomics
Accession number :
edsair.doi.dedup.....b1003392808dfa7bea4427b96aa699a2