Tang Bing, Liu Binggang, Zeng Zhiyao
Department of Gastrointestinal Surgery Central Hospital of Yongzhou Yongzhou Hunan China.
Ann Gastroenterol Surg. 2024 May 21;8(5):927-941. doi: 10.1002/ags3.12802. eCollection 2024 Sep.
Aberrant TGF-β signaling pathway can lead to invasive phenotype of colorectal cancer (CRC), resulting in poor prognosis. It is pivotal to develop an effective prognostic factor on the basis of TGF-β-related genes to accurately identify risk of CRC patients.
We performed differential analysis of TGF-β-related genes in CRC patients from databases and previous literature to obtain TGF-β-related differentially expressed genes (TRDEGs). LASSO-Cox regression was utilized to build a CRC prognostic feature model based on TRDEGs. The model was validated using two GEO validation sets. Wilcoxon rank-sum test was utilized to test correlation of model with clinical factors. ESTIMATE algorithm and ssGSEA and tumor mutation burden (TMB) analysis were used to analyze immune landscape and mutation burden of high-risk (HR) and low-risk (LR) groups. CellMiner database was utilized to identify therapeutic drugs with high sensitivity to the feature genes.
We established a six-gene risk prognostic model with good predictive accuracy, which independently predicted CRC patients' prognoses. The HR group was more likely to experience immunotherapy benefits due to higher immune infiltration and TMB. The feature gene TGFB2 could inhibit the efficacy of drugs such as XAV-939, Staurosporine, and Dasatinib, but promote the efficacy of drugs such as CUDC-305 and by-product of CUDC-305. Similarly, RBL1 could inhibit the drug action of Fluphenazine and Imiquimod but promote that of Irofulven.
A CRC risk prognostic signature was developed on basis of TGF-β-related genes, which provides a reference for risk and further therapeutic selection of CRC patients.
异常的转化生长因子-β(TGF-β)信号通路可导致结直肠癌(CRC)的侵袭性表型,预后较差。基于TGF-β相关基因开发有效的预后因素对于准确识别CRC患者的风险至关重要。
我们对来自数据库和先前文献的CRC患者的TGF-β相关基因进行差异分析,以获得TGF-β相关差异表达基因(TRDEGs)。利用LASSO-Cox回归基于TRDEGs建立CRC预后特征模型。使用两个GEO验证集对该模型进行验证。采用Wilcoxon秩和检验来检验模型与临床因素的相关性。利用ESTIMATE算法、单样本基因集富集分析(ssGSEA)和肿瘤突变负荷(TMB)分析来分析高风险(HR)和低风险(LR)组的免疫格局和突变负荷。利用CellMiner数据库来识别对特征基因具有高敏感性的治疗药物。
我们建立了一个具有良好预测准确性的六基因风险预后模型,该模型可独立预测CRC患者的预后。HR组由于更高的免疫浸润和TMB更有可能从免疫治疗中获益。特征基因TGFB2可抑制XAV-939、星形孢菌素和达沙替尼等药物的疗效,但可促进CUDC-305及CUDC-305副产物等药物的疗效。同样,RBL1可抑制氟奋乃静和咪喹莫特的药物作用,但可促进艾罗弗芬的药物作用。
基于TGF-β相关基因开发了一种CRC风险预后特征,为CRC患者的风险评估和进一步的治疗选择提供了参考。