结合内质网应激反应基因构建结肠癌预后模型。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Zhibin Yuan , Yi Wang , Song Xu , Meng Zhang, Jianjun Tang
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引用次数: 0

摘要

内质网应激可能会影响癌症的发生和发展。然而,它对结肠癌(CC)患者预后的影响尚不明确。在此,我们基于TCGA数据库,通过Cox回归筛选出了15个与结肠癌患者预后相关的内质网应激反应基因(ERSRGs)。通过LASSO和多变量Cox回归分析,建立了涉及12个基因(DNAJB2、EIF4A1、YPEL4、COQ10A、IRX3、ASPHD1、NTRK2、TRIM39、XBP1、GRIN2B、LRRC59和RORC)的预后风险评估模型。生存曲线显示,低风险组患者预后良好。ROC 曲线显示该 12 基因预后模型具有良好的性能,Riskscore 可被视为一个独立的预后因素。低风险组患者从免疫检查点抑制剂和免疫检查点阻断(ICB)治疗中获益更多。此外,富集分析表明,两组患者的 Ca2+ 信号转导存在显著差异。最后,基于cMAP数据库,我们发现了几种针对高危人群的潜在药物,如达沙替尼、GNF-2、沙拉卡替尼和WZ-1-84。总之,我们的研究构建了一个具有 ERSRGs 特征的预后模型。该模型是预测CC患者临床预后和免疫治疗反应的一种有前途的生物标志物。意义:本研究基于TCGA数据库中的结肠癌转录组数据,筛选出12个内质网应激相关基因(ERSRGs),包括DNAJB2、EIF4A1、YPEL4、COQ10A、IRX3、ASPHD1、NTRK2、TRIM39、XBP1、asphD1、NTRK2.GRIN2B、LRRC59 和 RORC,并构建了一个预后模型。该模型可用于预测结肠癌患者的预后和免疫治疗反应。同时,基于模型的药物预测也是未来结肠癌治疗的一种潜在选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Construction of a prognostic model for colon cancer by combining endoplasmic reticulum stress responsive genes

Construction of a prognostic model for colon cancer by combining endoplasmic reticulum stress responsive genes

Endoplasmic reticulum stress may affect the occurrence and development of cancer. However, its effect on the prognosis of colon cancer (CC) patients is not clear yet. Herein, based on TCGA database, we screened 15 endoplasmic reticulum stress responsive genes (ERSRGs) associated with the prognosis of CC patients by Cox regression. By LASSO and multivariate Cox regression analyses, a prognostic risk assessment model involving 12 genes (DNAJB2, EIF4A1, YPEL4, COQ10A, IRX3, ASPHD1, NTRK2, TRIM39, XBP1, GRIN2B, LRRC59, and RORC) was built. The survival curves indicated that patients in the low-risk group had good prognosis. ROC curves demonstrated a good performance of this 12-gene prognostic model, and the Riskscore could be considered as an independent prognostic factor. Patients in low-risk group benefit more from immune checkpoint inhibitor and immune checkpoint blockade (ICB) treatment. Besides, the enrichment analysis suggested a remarkable difference in Ca2+ signaling in both groups. Finally, based on the cMAP database, we identified several potential drugs that could target high-risk groups, such as Dasatinib, GNF-2, Saracatinib, and WZ-1-84. To sum up, our research constructed an ERSRGs-characteristic prognostic model. The model is a promising biomarker for prediction of clinical outcomes and immune therapy response of CC patients.

Significance

Based on the transcriptomic data of colon cancer in the TCGA database, this study screens 12 endoplasmic reticulum stress-related genes (ERSRGs), including DNAJB2, EIF4A1, YPEL4, COQ10A, IRX3, ASPHD1, NTRK2, TRIM39, XBP1, asphD1, NTRK2. GRIN2B, LRRC59, and RORC, and a prognostic model was constructed. This model can be used as a predictor of prognosis and immunotherapy response in colon cancer patients. At the same time, model-based prediction of drugs can also be a potential option for colon cancer treatment in the future.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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