Construction of a prognostic model for gastric cancer based on immune infiltration and microenvironment, and exploration of MEF2C gene function.

IF 2.1 4区 医学 Q3 GENETICS & HEREDITY BMC Medical Genomics Pub Date : 2025-01-14 DOI:10.1186/s12920-024-02082-4
Si-Yu Wang, Yu-Xin Wang, Lu-Shun Guan, Ao Shen, Run-Jie Huang, Shu-Qiang Yuan, Yu-Long Xiao, Li-Shuai Wang, Dan Lei, Yin Zhao, Chuan Lin, Chang-Ping Wang, Zhi-Ping Yuan
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Through Genomics of Drug Sensitivity in Cancer (GDSC) dataset, the estimated IC<sub>50</sub> values of several chemotherapeutic drugs were calculated. Tumor-related transcription factors (TFs) were retrieved from the Cistrome Cancer database and utilized our model to screen these TFs, and weighted correlation network analysis (WGCNA) was performed to identify transcription factors strongly associated with immunotherapy in GC. Finally, 10 patients with advanced GC were enrolled from Sun Yat-sen University Cancer Center, including paired tumor tissues, paracancerous tissues and peritoneal metastases, for preparing sequencing library, in order to perform external validation.</p><p><strong>Results: </strong>Lower ICI Score was correlated with improved prognosis in both the training and validation cohorts. First, lower mutant-allele tumor heterogeneity (MATH) was associated with lower ICI Score, and those GC patients with lower MATH and lower ICI Score had the best prognosis. Second, regardless of the T or N staging, the low ICI Score group had significantly higher overall survival (OS) compared to the high ICI Score group. For its mechanisms, consistently, for Camptothecin, Doxorubicin, Mitomycin, Docetaxel, Cisplatin, Vinblastine, Sorafenib and Paclitaxel, all of the IC<sub>50</sub> values were significantly lower in the low ICI Score group compared to the high ICI Score group. As a result, based on univariate and multivariate Cox regression, ICI Score was considered to be an independent prognostic factor for GC. And our Nomogram showed good agreement between predicted and actual probabilities. Based on CIBERSORT deconvolution analysis, there was difference of immune cell composition found between high and low ICI Score groups, probably affecting the efficacy of immunotherapy. Then, MEF2C, a tumor-related transcription factor, was screened out by WGCNA analysis. Higher MEF2C expression is significantly correlated with a worse OS. 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Abstract

Background: Advanced gastric cancer (GC) exhibits a high recurrence rate and a dismal prognosis. Myocyte enhancer factor 2c (MEF2C) was found to contribute to the development of various types of cancer. Therefore, our aim is to develop a prognostic model that predicts the prognosis of GC patients and initially explore the role of MEF2C in immunotherapy for GC.

Methods: Transcriptome sequence data of GC was obtained from The Cancer Genome Atlas (TCGA), the Gene Expression Omnibus (GEO) and PRJEB25780 cohort for subsequent immune infiltration analysis, immune microenvironment analysis, consensus clustering analysis and feature selection for definition and classification of gene M and N. Principal component analysis (PCA) modeling was performed based on gene M and N for the calculation of immune checkpoint inhibitor (ICI) Score. Then, a Nomogram was constructed and evaluated for predicting the prognosis of GC patients, based on univariate and multivariate Cox regression. Functional enrichment analysis was performed to initially investigate the potential biological mechanisms. Through Genomics of Drug Sensitivity in Cancer (GDSC) dataset, the estimated IC50 values of several chemotherapeutic drugs were calculated. Tumor-related transcription factors (TFs) were retrieved from the Cistrome Cancer database and utilized our model to screen these TFs, and weighted correlation network analysis (WGCNA) was performed to identify transcription factors strongly associated with immunotherapy in GC. Finally, 10 patients with advanced GC were enrolled from Sun Yat-sen University Cancer Center, including paired tumor tissues, paracancerous tissues and peritoneal metastases, for preparing sequencing library, in order to perform external validation.

Results: Lower ICI Score was correlated with improved prognosis in both the training and validation cohorts. First, lower mutant-allele tumor heterogeneity (MATH) was associated with lower ICI Score, and those GC patients with lower MATH and lower ICI Score had the best prognosis. Second, regardless of the T or N staging, the low ICI Score group had significantly higher overall survival (OS) compared to the high ICI Score group. For its mechanisms, consistently, for Camptothecin, Doxorubicin, Mitomycin, Docetaxel, Cisplatin, Vinblastine, Sorafenib and Paclitaxel, all of the IC50 values were significantly lower in the low ICI Score group compared to the high ICI Score group. As a result, based on univariate and multivariate Cox regression, ICI Score was considered to be an independent prognostic factor for GC. And our Nomogram showed good agreement between predicted and actual probabilities. Based on CIBERSORT deconvolution analysis, there was difference of immune cell composition found between high and low ICI Score groups, probably affecting the efficacy of immunotherapy. Then, MEF2C, a tumor-related transcription factor, was screened out by WGCNA analysis. Higher MEF2C expression is significantly correlated with a worse OS. Moreover, its higher expression is also negatively correlated with tumor mutation burden (TMB) and microsatellite instability (MSI), but positively correlated with several immunosuppressive molecules, indicating MEF2C may exert its influence on tumor development by upregulating immunosuppressive molecules. Finally, based on transcriptome sequencing data on 10 paired tumor tissues from Sun Yat-sen University Cancer Center, MEF2C expression was significantly lower in paracancerous tissues compared to tumor tissues and peritoneal metastases, and it was also lower in tumor tissues compared to peritoneal metastases, indicating a potential positive association between MEF2C expression and tumor invasiveness.

Conclusions: Our prognostic model can effectively predict outcomes and facilitate stratification GC patients, offering valuable insights for clinical decision-making. The identified transcription factor MEF2C can serve as a biomarker for assessing the efficacy of immunotherapy for GC.

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基于免疫浸润和微环境的胃癌预后模型构建及MEF2C基因功能探讨
背景:晚期胃癌复发率高,预后差。肌细胞增强因子2c (MEF2C)被发现与各种类型癌症的发展有关。因此,我们的目的是建立预测胃癌患者预后的预后模型,并初步探讨MEF2C在胃癌免疫治疗中的作用。方法:从Cancer Genome Atlas (TCGA)、Gene Expression Omnibus (GEO)和PRJEB25780队列中获取GC的转录组序列数据,进行后续免疫浸润分析、免疫微环境分析、共识聚类分析和特征选择,对基因M和N进行定义和分类。基于基因M和N进行主成分分析(PCA)建模,计算免疫checkpoint inhibitor (ICI) Score。然后,基于单因素和多因素Cox回归,构建并评估预测GC患者预后的Nomogram。功能富集分析初步探讨了潜在的生物学机制。通过肿瘤药物敏感性基因组学(GDSC)数据集,计算几种化疗药物的IC50估计值。从Cistrome Cancer数据库中检索肿瘤相关转录因子(tumor related transcription factors, TFs),利用我们的模型筛选这些转录因子,并进行加权相关网络分析(weighted correlation network analysis, WGCNA)来识别与GC免疫治疗密切相关的转录因子。最后,从中山大学肿瘤中心入选10例晚期胃癌患者,包括配对肿瘤组织、癌旁组织和腹膜转移,制备测序文库,进行外部验证。结果:在训练组和验证组中,较低的ICI评分与预后改善相关。首先,较低的突变-等位基因肿瘤异质性(MATH)与较低的ICI评分相关,具有较低MATH和较低ICI评分的胃癌患者预后最好。其次,无论T或N分期,低ICI评分组的总生存期(OS)明显高于高ICI评分组。就其机制而言,喜树碱、阿霉素、丝裂霉素、多西他赛、顺铂、长春碱、索拉非尼和紫杉醇的IC50值在ICI评分低组明显低于ICI评分高组。因此,基于单因素和多因素Cox回归,ICI评分被认为是GC的独立预后因素。我们的Nomogram显示了预测概率和实际概率之间的良好一致性。根据CIBERSORT反卷积分析,ICI评分高组和低组免疫细胞组成存在差异,可能影响免疫治疗的效果。然后通过WGCNA分析筛选出肿瘤相关转录因子MEF2C。较高的MEF2C表达与较差的OS显著相关。此外,MEF2C的高表达与肿瘤突变负荷(tumor mutation burden, TMB)和微卫星不稳定性(microsatellite instability, MSI)呈负相关,但与几种免疫抑制分子呈正相关,表明MEF2C可能通过上调免疫抑制分子来影响肿瘤的发生。最后,基于中山大学肿瘤中心10对肿瘤组织的转录组测序数据,MEF2C在癌旁组织中的表达明显低于肿瘤组织和腹膜转移灶,在肿瘤组织中的表达也低于腹膜转移灶,提示MEF2C表达与肿瘤侵袭性之间可能存在正相关关系。结论:该预后模型能有效预测预后,促进胃癌患者分层,为临床决策提供有价值的见解。鉴定的转录因子MEF2C可作为评估GC免疫治疗效果的生物标志物。
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来源期刊
BMC Medical Genomics
BMC Medical Genomics 医学-遗传学
CiteScore
3.90
自引率
0.00%
发文量
243
审稿时长
3.5 months
期刊介绍: BMC Medical Genomics is an open access journal publishing original peer-reviewed research articles in all aspects of functional genomics, genome structure, genome-scale population genetics, epigenomics, proteomics, systems analysis, and pharmacogenomics in relation to human health and disease.
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