Title of article :
Discovery of Prognostic Signature Genes for Overall Survival Prediction in Gastric Cancer
Author/Authors :
Meng, Changyuan Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China , Xia, Shusen Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China , He, Yi Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China , Tang, Xiaolong Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China , Zhang, Guangjun Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China , Zhou, Tong Department of Gastrointestinal Surgery - The Affiliated Hospital of North Sichuan Medical College - Nanchong - Sichuan, China
Abstract :
Gastric cancer (GC) is one of the most common malignant tumors in the digestive system with high mortality globally.
However, the biomarkers that accurately predict the prognosis are still lacking. Therefore, it is important to screen for novel
prognostic markers and therapeutic targets. Methods. We conducted differential expression analysis and survival analysis to
screen out the prognostic genes. A stepwise method was employed to select a subset of genes in the multivariable Cox model.
Overrepresentation enrichment analysis (ORA) was used to search for the pathways associated with poor prognosis. Results. In
this study, we designed a seven-gene-signature-based Cox model to stratify the GC samples into high-risk and low-risk groups.
The survival analysis revealed that the high-risk and low-risk groups exhibited significantly different prognostic outcomes in
both the training and validation datasets. Specifically, CGB5, IGFBP1, OLFML2B, RAI14, SERPINE1, IQSEC2, and MPND were
selected by the multivariable Cox model. Functionally, PI3K-Akt signaling pathway and platelet-derived growth factor receptor
(PDGFR) were found to be hyperactive in the high-risk group. The multivariable Cox regression analysis revealed that the
risk stratification based on the seven-gene-signature-based Cox model was independent of other prognostic factors such as
TNM stages, age, and gender. Conclusion. In conclusion, we aimed at developing a model to predict the prognosis of gastric
cancer. The predictive model could not only effectively predict the risk of GC but also be beneficial to the development of
therapeutic strategies.
Keywords :
GC , PDGFR , Gastric , Genes
Journal title :
Computational and Mathematical Methods in Medicine