Yang Xiuxiu, Chatterjee Debolina, Couetil Justin L, Liu Ziyu, Ardon Valerie D, Chen Chao, Zhang Jie, Huang Kun, Johnson Travis S
Department of Biostatistics and Health Data Science, Indiana University School of Medicine, Indianapolis, IN, United States.
Department of Medical and Molecular Genetics, Indiana University School of Medicine, Indianapolis, IN, United States.
Front Genet. 2024 Nov 29;15:1410353. doi: 10.3389/fgene.2024.1410353. eCollection 2024.
Colon cancer (CC) is the second most common cause of cancer deaths and the fourth most prevalent cancer in the United States. Recently cholesterol metabolism has been identified as a potential therapeutic avenue due to its consistent association with tumor treatment effects and overall prognosis. We conducted differential gene analysis and KEGG pathway analysis on paired tumor and adjacent-normal samples from the TCGA Colon Adenocarcinoma project, identifying that bile secretion was the only significantly downregulated pathway. To evaluate the relationship between cholesterol metabolism and CC prognosis, we used the genes from this pathway in several statistical models like Cox proportional Hazard (CPH), Random Forest (RF), Lasso Regression (LR), and the eXtreme Gradient Boosting (XGBoost) to identify the genes which contributed highly to the predictive ability of all models, ADCY5, and SLC2A1. We demonstrate that using cholesterol metabolism genes with XGBoost models improves stratification of CC patients into low and high-risk groups compared with traditional CPH, RF and LR models. Spatial transcriptomics (ST) revealed that SLC2A1 (glucose transporter 1, GLUT1) colocalized with small blood vessels. ADCY5 localized to stromal regions in both the ST and protein immunohistochemistry. Interestingly, both these significant genes are expressed in tissues other than the tumor itself, highlighting the complex interplay between the tumor and microenvironment, and that druggable targets may be found in the ability to modify how "normal" tissue interacts with tumors.
结肠癌(CC)是美国癌症死亡的第二大常见原因,也是第四大常见癌症。最近,胆固醇代谢因其与肿瘤治疗效果和总体预后的持续关联而被确定为一条潜在的治疗途径。我们对来自TCGA结肠腺癌项目的配对肿瘤和癌旁正常样本进行了差异基因分析和KEGG通路分析,发现胆汁分泌是唯一显著下调的通路。为了评估胆固醇代谢与CC预后之间的关系,我们在几种统计模型中使用了该通路的基因,如Cox比例风险(CPH)、随机森林(RF)、套索回归(LR)和极端梯度提升(XGBoost),以确定对所有模型预测能力有高度贡献的基因,即腺苷酸环化酶5(ADCY5)和溶质载体家族2成员1(SLC2A1)。我们证明,与传统的CPH、RF和LR模型相比,在XGBoost模型中使用胆固醇代谢基因可改善CC患者分为低风险和高风险组的分层。空间转录组学(ST)显示,SLC2A1(葡萄糖转运蛋白1,GLUT1)与小血管共定位。ADCY5在ST和蛋白质免疫组化中均定位于基质区域。有趣的是,这两个重要基因均在肿瘤本身以外的组织中表达,突出了肿瘤与微环境之间复杂的相互作用,以及在改变“正常”组织与肿瘤相互作用方式的能力中可能找到可成药靶点。