de Velasco Guillermo, Culhane Aedín C, Fay André P, Hakimi A Ari, Voss Martin H, Tannir Nizar M, Tamboli Pheroze, Appleman Leonard J, Bellmunt Joaquim, Kimryn Rathmell W, Albiges Laurence, Hsieh James J, Heng Daniel Y C, Signoretti Sabina, Choueiri Toni K
Department of Medical Oncology, Dana-Farber Cancer Institute, Boston, Massachusetts, USA.
Department of Medical Oncology, University Hospital 12 de Octubre, Madrid, Spain.
Oncologist. 2017 Mar;22(3):286-292. doi: 10.1634/theoncologist.2016-0078. Epub 2017 Feb 20.
Gene-expression signatures for prognosis have been reported in localized renal cell carcinoma (RCC). The aim of this study was to test the predictive power of two different signatures, ClearCode34, a 34-gene signature model [Eur Urol 2014;66:77-84], and an 8-gene signature model [Eur Urol 2015;67:17-20], in the setting of systemic therapy for metastatic disease.
Metastatic RCC (mRCC) patients from five institutions who were part of TCGA were identified and clinical data were retrieved. We trained and implemented each gene model as described by the original study. The latter was demonstrated by faithful regeneration of a figure and results from the original study. mRCC patients were dichotomized to good or poor prognostic risk groups using each gene model. Cox proportional hazard regression and concordance index (C-Index) analysis were used to investigate an association between each prognostic risk model and overall survival (OS) from first-line therapy.
Overall, 54 patients were included in the final analysis. The primary endpoint was OS. Applying the ClearCode34 model, median survival for the low-risk-ccA ( = 17)-and the high-risk-ccB ( = 37)-subtypes were 27.6 and 22.3 months (hazard ratio (HR): 2.33; = .039), respectively. ClearCode34 ccA/ccB and International Metastatic Renal Cell Carcinoma Database Consortium (IMDC) classifications appear to represent distinct risk criteria in mRCC, and we observed no significant overlap in classification ( > .05, chi-square test). On multivariable analyses and adjusting for IMDC groups, ccB remained independently associated with a worse OS ( = .044); the joint model of ccA/ccB and IMDC was significantly more accurate in predicting OS than a model with IMDC alone ( = .045, F-test). This was also observed in C-Index analysis; a model with both ccA and ccB subtypes had higher accuracy (C-Index 0.63, 95% confidence interval [CI] = 0.51-0.75) and 95% CIs of the C-Index that did not include the null value of 0.5 in contrast to a model with IMDC alone (0.60, CI = 0.47-0.72). The 8-gene signature molecular subtype model was a weak but insignificant predictor of survival in this cohort ( = .13). A model that included both the 8-gene signature and IMDC (C-Index 0.62, CI = 0.49-0.76) was more prognostic than IMDC alone but did not reach significance, as the 95% CI included the null value of 0.5. These two genomic signatures share no genes in common and are enriched in different biological pathways. The ClearCode34 included genes and (also known as HIF2a), which are involved in regulation of gene expression by hypoxia-inducible factor.
The ClearCode34 but not the 8-gene molecular model improved the prognostic predictive power of the IMDC model in this cohort of 54 patients with metastatic clear cell RCC. 2017;22:286-292 IMPLICATIONS FOR PRACTICE: The clinical and laboratory factors included in the International Metastatic Renal Cell Carcinoma Database Consortium model provide prognostic information in metastatic renal cell carcinoma (mRCC). The present study shows that genomic signatures, originally validated in localized RCC, may add further complementary prognostic information in the metastatic setting. This study may provide new insights into the molecular basis of certain mRCC subgroups. The integration of clinical and molecular data has the potential to redefine mRCC classification, enhance the understanding of mRCC biology, and potentially predict response to treatment in the future.
已有研究报道了局限性肾细胞癌(RCC)的预后基因表达特征。本研究的目的是在转移性疾病的全身治疗背景下,测试两种不同特征(ClearCode34,一种34基因特征模型[《欧洲泌尿外科杂志》2014年;66:77 - 84],以及一种8基因特征模型[《欧洲泌尿外科杂志》2015年;67:17 - 20])的预测能力。
确定了来自参与TCGA的五个机构的转移性RCC(mRCC)患者,并检索了临床数据。我们按照原始研究的描述对每个基因模型进行训练和实施。通过忠实重现原始研究中的一幅图和结果来证明后者。使用每个基因模型将mRCC患者分为预后良好或不良风险组。采用Cox比例风险回归和一致性指数(C-Index)分析来研究每个预后风险模型与一线治疗的总生存期(OS)之间的关联。
总体而言,54例患者纳入最终分析。主要终点为OS。应用ClearCode34模型,低风险ccA(n = 17)和高风险ccB(n = 37)亚型的中位生存期分别为27.6个月和22.3个月(风险比(HR):2.33;P = 0.039)。ClearCode34 ccA/ccB和国际转移性肾细胞癌数据库联盟(IMDC)分类似乎代表了mRCC中不同的风险标准,并且我们观察到分类中无显著重叠(P>0.05,卡方检验)。在多变量分析并校正IMDC组后,ccB仍与较差的OS独立相关(P = 0.044);ccA/ccB和IMDC的联合模型在预测OS方面比仅使用IMDC的模型显著更准确(P = 0.045,F检验)。在C-Index分析中也观察到了这一点;同时包含ccA和ccB亚型的模型具有更高的准确性(C-Index 0.63,95%置信区间[CI] = 0.51 - 0.75),并且与仅使用IMDC的模型(0.60,CI = 0.47 - 0.72)相比,C-Index的95% CI不包括无效值0.5。8基因特征分子亚型模型在该队列中是生存的一个较弱但不显著的预测指标(P = 0.13)。一个同时包含8基因特征和IMDC的模型(C-Index 0.62,CI = 0.49 - 0.76)比仅使用IMDC更具预后价值,但未达到显著性,因为95% CI包括无效值0.5。这两个基因组特征没有共同的基因,并且在不同的生物学途径中富集。ClearCode34包括基因 和 (也称为HIF2a),它们参与缺氧诱导因子对基因表达的调控。
在这54例转移性透明细胞RCC患者队列中,ClearCode34而非8基因分子模型提高了IMDC模型的预后预测能力。《肿瘤学实践》2017年;22:286 - 292对实践的启示:国际转移性肾细胞癌数据库联盟模型中包含的临床和实验室因素为转移性肾细胞癌(mRCC)提供了预后信息。本研究表明,最初在局限性RCC中验证的基因组特征可能在转移性情况下增加进一步的补充预后信息。本研究可能为某些mRCC亚组的分子基础提供新的见解。临床和分子数据的整合有可能重新定义mRCC分类,增强对mRCC生物学的理解,并有可能预测未来的治疗反应。