4.4 Article

Identification of a novel immune prognostic model in gastric cancer

Journal

CLINICAL & TRANSLATIONAL ONCOLOGY
Volume 23, Issue 4, Pages 846-855

Publisher

SPRINGER INT PUBL AG
DOI: 10.1007/s12094-020-02478-5

Keywords

Gastric cancer; Immune-related gene; Model; Prognosis; Tumor immune microenvironment

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Funding

  1. National Natural Science Foundation of China [31971166]

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This study developed an immune-related risk model for predicting prognosis and assessing the immune status of gastric cancer patients. The model, based on seven immune-related genes, showed potential in stratifying patients into different risk groups with different prognostic outcomes. Furthermore, the high-risk group exhibited higher levels of immunosuppressive cells and inhibitory immune checkpoints, suggesting a suppressive immune microenvironment in these patients.
Purpose The tumor immune microenvironment (TIME) is now considered as an important factor during gastric cancer (GC) development. This study identified a novel immune-related risk model for predicting prognosis and assessing the immune status of GC patients. Methods Transcriptomic data were obtained from the TCGA database. The differential expressed immune-related genes (IRGs) were identified through the ImmPort portal. Enrichment analysis was performed to explore the potential molecular mechanism of these IRGs. By the Cox regression analysis, we constructed the immune prognostic model. Then, the association between the model and the immune microenvironment was estimated. The model was validated in the GSE84433 dataset. Results Totally, we identified 222 differentially expressed IRGs. These IRGs were closely correlated with immune response and immune signaling pathways. Through the Cox regression analysis, we developed the immune prognostic model based on the expression of seven IRGs (CXCL3, NOX4, PROC, FAM19A4, RNASE2, IGHD2-15, CGB5). Patients were stratified into two groups according to immune-related risk scores. Survival analysis indicated that the prognosis of high-risk patients was poorer than low-risk patients. Moreover, the immune-related risk score was an independent prognostic biomarker. More importantly, we found that the infiltration level of immunosuppressive cells and the expression of inhibitory immune checkpoints were higher in high-risk patients. The immune microenvironment tended to be a suppressive status in patients with high-risk scores. Conclusion This study demonstrated that our model had predictive value for prognosis and the TIME in GC. It might be a robust tool to improve personalized patient management.

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