Abstract

BackgroundStomach adenocarcinoma (STAD) is the most common histological type of stomach cancer, which causes a considerable number of deaths worldwide. This study aimed to identify its potential biomarkers with the notion of revealing the underlying molecular mechanisms.MethodsGene expression profile microarray data were downloaded from the Gene Expression Omnibus (GEO) database. The “limma” R package was used to screen the differentially expressed genes (DEGs) between STAD and matched normal tissues. The Database for Annotation, Visualization, and Integrated Discovery (DAVID) was used for function enrichment analyses of DEGs. The STAD dataset from The Cancer Genome Atlas (TCGA) database was used to identify a prognostic gene signature, which was verified in another STAD dataset from the GEO database. CIBERSORT algorithm was used to characterize the 22 human immune cell compositions. The expression of LRFN4 and CTHRC1 in tissues was determined by quantitative real-time PCR from the patients recruited to the present study.ResultsThree public datasets including 90 STAD patients and 43 healthy controls were analyzed, from which 44 genes were differentially expressed in all three datasets. These genes were implicated in biological processes including cell adhesion, wound healing, and extracellular matrix organization. Five out of 44 genes showed significant survival differences. Among them, CTHRC1 and LRFN4 were selected for construction of prognostic signature by univariate Cox regression and stepwise multivariate Cox regression in the TCGA-STAD dataset. The fidelity of the signature was evaluated in another independent dataset and showed a good classification effect. The infiltration levels of multiple immune cells between high-risk and low-risk groups had significant differences, as well as two immune checkpoints. TIM-3 and PD-L2 were highly correlated with the risk score. Multiple signaling pathways differed between the two groups of patients. At the same time, the expression level of LRFN4 and CTHRC1 in tissues analyzed by quantitative real-time PCR were consistent with the in silico findings.ConclusionThe present study constructed the prognostic signature by expression of CTHRC1 and LRFN4 for the first time via comprehensive bioinformatics analysis, which provided the potential therapeutic targets of STAD for clinical treatment.

Highlights

  • Stomach adenocarcinoma (STAD), the most common histological type (∼95%) of malignancy originating in the stomach, imposed a considerable global health burden (Ajani et al, 2017)

  • The gene ontology (GO) analysis results showed that the differentially expressed genes (DEGs) were mainly enriched in terms related to extracellular matrix binding and cytokine activity

  • These DEGs were involved in cell adhesion, wound healing, and extracellular matrix organization biological processes

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Summary

Introduction

Stomach adenocarcinoma (STAD), the most common histological type (∼95%) of malignancy originating in the stomach, imposed a considerable global health burden (Ajani et al, 2017). There is no sensitive and specific diagnostic marker for early diagnosis of STAD (Duffy et al, 2014) Several drugs, such as trastuzumab, ramucirumab, and immune checkpoint inhibitors, had been used for the treatment of STAD in clinics, the survival rates of patients in advanced stages remained low (Bang et al, 2010; Fuchs et al, 2014, 2018). The high-throughput sequencing generated large-scale biological data, and it has been an effective tool for discovering promising biomarkers for cancer (Jiang and Liu, 2015). Many biomarkers such as AFP, EGFR, and HER2 were discovered through bioinformatic analysis (Tateishi et al, 2008; Vizoso et al, 2015; Alix-Panabières and Pantel, 2016). This study aimed to identify its potential biomarkers with the notion of revealing the underlying molecular mechanisms

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