Dovrolis Nikolas, Katifelis Hector, Grammatikaki Stamatiki, Zakopoulou Roubini, Bamias Aristotelis, Karamouzis Michalis V, Souliotis Kyriakos, Gazouli Maria
Department of Basic Medical Sciences, Laboratory of Biology, Medical School, National and Kapodistrian University of Athens, Michalakopoulou 176, 11527 Athens, Greece.
2nd Propaedeutic Department of Internal Medicine, ATTIKON University Hospital, School of Medicine, National and Kapodistrian University of Athens, 11527 Athens, Greece.
Cancers (Basel). 2023 Nov 29;15(23):5637. doi: 10.3390/cancers15235637.
Clear cell renal cell carcinoma (ccRCC) is the most common renal cancer. Despite the rapid evolution of targeted therapies, immunotherapy with checkpoint inhibition (ICI) as well as combination therapies, the cure of metastatic ccRCC (mccRCC) is infrequent, while the optimal use of the various novel agents has not been fully clarified. With the different treatment options, there is an essential need to identify biomarkers to predict therapeutic efficacy and thus optimize therapeutic approaches. This study seeks to explore the diversity in mRNA expression profiles of inflammation and immunity-related circulating genes for the development of biomarkers that could predict the effectiveness of immunotherapy-based treatments using ICIs for individuals with mccRCC. Gene mRNA expression was tested by the RT2 profiler PCR Array on a human cancer inflammation and immunity crosstalk kit and analyzed for differential gene expression along with a machine learning approach for sample classification. A number of mRNAs were found to be differentially expressed in mccRCC with a clinical benefit from treatment compared to those who progressed. Our results indicate that gene expression can classify these samples with high accuracy and specificity.
透明细胞肾细胞癌(ccRCC)是最常见的肾癌。尽管靶向治疗、免疫检查点抑制剂(ICI)免疫治疗以及联合治疗迅速发展,但转移性ccRCC(mccRCC)的治愈情况并不常见,而各种新型药物的最佳使用方法尚未完全阐明。鉴于有不同的治疗选择,迫切需要识别生物标志物以预测治疗效果,从而优化治疗方法。本研究旨在探索炎症和免疫相关循环基因的mRNA表达谱的多样性,以开发可预测基于免疫治疗的ICI治疗对mccRCC个体有效性的生物标志物。通过RT2 Profiler PCR Array在人癌症炎症与免疫相互作用试剂盒上检测基因mRNA表达,并采用机器学习方法进行样本分类,分析差异基因表达。与疾病进展的患者相比,发现许多mRNA在接受治疗有临床获益的mccRCC中差异表达。我们的结果表明,基因表达能够以高精度和特异性对这些样本进行分类。