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肠化生胃癌进展过程中细胞外基质相关基因的鉴定与验证

Identification and validation of extracellular matrix-related genes in the progression of gastric cancer with intestinal metaplasia.

作者信息

Wang Lu, Wang Meng-Han, Yuan Yao-Hong, Xu Rui-Ze, Bai Lu, Wang Mi-Zhu

机构信息

Department of Gastroenterology, The Second Affiliated Hospital of Baotou Medical College, Baotou Medical College, Baotou 300000, Inner Mongolia Autonomous Region, China.

Baotou Medical College, Baotou 300000, Inner Mongolia Autonomous Region, China.

出版信息

World J Gastrointest Oncol. 2025 Jun 15;17(6):105160. doi: 10.4251/wjgo.v17.i6.105160.

Abstract

BACKGROUND

Gastric cancer (GC) is a highly lethal malignancy with a high incidence and mortality rate globally. Its development follows the Correa model, with intestinal metaplasia (IM) being a critical precursor to GC. However, the mechanisms underlying IM progression to GC remain unclear. This study explored extracellular matrix (ECM)-related gene changes during IM progression to GC, aiming to identify biomarkers that could improve early diagnosis and treatment strategies for GC, ultimately enhancing patient outcomes.

AIM

To analyze transcriptome sequencing data, molecular biomarkers that can predict GC risk and monitor IM progression can be identified, providing new insights and strategies for preventing IM-GC transformation.

METHODS

Weighted gene co-expression network analysis served for confirming gene modules. Upregulated ECM-related genes were further tested using univariate Cox regression and least absolute shrinkage and selection operator analysis to select hub genes and construct a survival analysis model. The intestinal cell model was established by stimulating GES-1 cells with chenodeoxycholic acid.

RESULTS

Weighted gene co-expression network analysis identified 1709 differentially expressed genes from the GSE191275 dataset, while The Cancer Genome Atlas stomach adenocarcinoma revealed 4633 differentially expressed genes. The intersection of these datasets identified 71 upregulated and 171 downregulated genes, which were enriched in ECM-related pathways. Univariate Cox regression analysis identified six genes with prognostic significance, and least absolute shrinkage and selection operator regression pinpointed secreted protein acidic and rich in cysteine and as non-zero coefficient genes. A prognostic model integrating clinical tumor node metastasis staging, age, , and was constructed. Immunohistochemistry analysis confirmed an increasing expression of SPARC protein from normal gastric mucosa (-), to IM (+- to +), and to GC (+ to ++), with significant differences ( < 0.05). Western blot analysis demonstrated significantly higher SPARC expression in induced intestinal cells compared to GES-1. Furthermore, after knockdown in the human GC cell line HGC27, cell counting kit-8 and colony formation assays showed a reduction in cell proliferative ability, while the wound healing assay revealed impaired cell migration capacity.

CONCLUSION

Comprehensive analysis suggested that a model incorporating clinical tumor node metastasis staging, age, and / expression served as a prognostic predictor for GC. Moreover, elevated SPARC expression in IM and GC suggests its potential as a proper biomarker to detect GC in early stage and as a novel therapeutic target, guiding clinical applications.

摘要

背景

胃癌(GC)是一种高度致命的恶性肿瘤,在全球范围内发病率和死亡率都很高。其发展遵循科雷亚模型,肠化生(IM)是胃癌的关键前体。然而,IM进展为GC的潜在机制仍不清楚。本研究探讨了IM进展为GC过程中细胞外基质(ECM)相关基因的变化,旨在识别可改善GC早期诊断和治疗策略的生物标志物,最终提高患者预后。

目的

通过分析转录组测序数据,识别可预测GC风险并监测IM进展的分子生物标志物,为预防IM-GC转化提供新的见解和策略。

方法

采用加权基因共表达网络分析来确认基因模块。使用单变量Cox回归和最小绝对收缩和选择算子分析对上调的ECM相关基因进行进一步测试,以选择枢纽基因并构建生存分析模型。通过用鹅去氧胆酸刺激GES-1细胞建立肠细胞模型。

结果

加权基因共表达网络分析从GSE191275数据集中识别出1709个差异表达基因,而癌症基因组图谱胃腺癌数据集显示有4633个差异表达基因。这些数据集的交集识别出71个上调基因和171个下调基因,它们富集于ECM相关途径。单变量Cox回归分析确定了六个具有预后意义的基因,最小绝对收缩和选择算子回归确定分泌蛋白酸性富含半胱氨酸(SPARC)和(此处原文缺失一个基因名称)为非零系数基因。构建了一个整合临床肿瘤淋巴结转移分期、年龄和(此处原文缺失一个基因名称)表达的预后模型。免疫组织化学分析证实,SPARC蛋白从正常胃黏膜(-)到IM(+-至+)再到GC(+至++)的表达逐渐增加,差异有统计学意义(P<0.05)。蛋白质印迹分析表明,与GES-1相比,诱导肠细胞中SPARC表达显著更高。此外,在人GC细胞系HGC27中敲低(此处原文缺失一个基因名称)后,细胞计数试剂盒-8和集落形成试验显示细胞增殖能力降低,而伤口愈合试验显示细胞迁移能力受损。

结论

综合分析表明,一个纳入临床肿瘤淋巴结转移分期、年龄和(此处原文缺失一个基因名称)/(此处原文缺失一个基因名称)表达的模型可作为GC的预后预测指标。此外,IM和GC中SPARC表达升高表明其有潜力作为早期检测GC的合适生物标志物和新型治疗靶点,指导临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/111c/12179931/32170a3a3957/wjgo-17-6-105160-g004.jpg

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