Weighted Gene Coexpression Network Analysis Identifies TBC1D10C as a New Prognostic Biomarker for Breast Cancer

Huiying Qiao, R. Lv, Yongkui Pang, Zhibing Yao, Xi Zhou, Wei Zhu, Wenqing Zhou
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引用次数: 2

Abstract

Background Immune checkpoint inhibitors are a promising therapeutic strategy for breast cancer (BRCA) patients. The tumor microenvironment (TME) can downregulate the immune response to cancer therapy. Our study is aimed at finding a TME-related biomarker to identify patients who might respond to immunotherapy. Method We downloaded raw data from several databases including TCGA and MDACC to identify TME hub genes associated with overall survival (OS) and the progression-free interval (PFI) by WGCNA. Correlations between hub genes and either tumor-infiltrating immune cells or immune checkpoints were conducted by ssGSEA. Result TME-related green and black modules were selected by WGCNA to further screen hub genes. Random forest and univariate and multivariate Cox regressions were applied to screen hub genes (MYO1G, TBC1D10C, SELPLG, and LRRC15) and construct a nomogram to predict the survival of BRCA patients. The C-index for the nomogram was 0.713. A DCA of the predictive model revealed that the net benefit of the nomogram was significantly higher than others and the calibration curve demonstrated a good performance by the nomogram. Only TBC1D10C was correlated with both OS and the PFI (both p values < 0.05). TBC1D10C also had a high positive association with tumor-infiltrating immune cells and common immune checkpoints (PD-1, CTLA-4, and TIGIT). Conclusion We constructed a TME-related gene signature model to predict the survival probability of BRCA patients. We also identified a hub gene, TBC1D10C, which was correlated with both OS and the PFI and had a high positive association with tumor-infiltrating immune cells and common immune checkpoints. TBC1D10C may be a new biomarker to select patients who may benefit from immunotherapy.
加权基因共表达网络分析确定TBC1D10C为乳腺癌新的预后生物标志物
免疫检查点抑制剂是一种很有前途的治疗乳腺癌(BRCA)患者的策略。肿瘤微环境(tumor microenvironment, TME)可下调肿瘤治疗的免疫应答。我们的研究旨在寻找一种与tme相关的生物标志物,以识别可能对免疫治疗有反应的患者。方法从TCGA和MDACC等多个数据库下载原始数据,通过WGCNA鉴定与总生存期(OS)和无进展间期(PFI)相关的TME枢纽基因。中心基因与肿瘤浸润性免疫细胞或免疫检查点的相关性通过ssGSEA进行了研究。结果WGCNA筛选tme相关的绿色和黑色模块,进一步筛选枢纽基因。采用随机森林、单因素和多因素Cox回归筛选中心基因(MYO1G、TBC1D10C、SELPLG和LRRC15),构建nomogram预测BRCA患者的生存期。模态图的c指数为0.713。对预测模型的DCA分析表明,该模型的净效益显著高于其他模型,且该模型的校准曲线具有良好的性能。只有TBC1D10C与OS和PFI相关(p值均< 0.05)。TBC1D10C还与肿瘤浸润性免疫细胞和常见免疫检查点(PD-1、CTLA-4和TIGIT)高度正相关。结论构建了预测BRCA患者生存概率的tme相关基因标记模型。我们还发现了一个中心基因TBC1D10C,它与OS和PFI都相关,并且与肿瘤浸润性免疫细胞和常见免疫检查点高度正相关。TBC1D10C可能是一种新的生物标志物,用于选择可能受益于免疫治疗的患者。
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