Jones Jon, Otu Hasan, Spentzos Dimitrios, Kolia Shakirahmed, Inan Mehmet, Beecken Wolf D, Fellbaum Christian, Gu Xuesong, Joseph Marie, Pantuck Allan J, Jonas Dietger, Libermann Towia A
Beth Israel Deaconess Medical Center Genomics Center and Dana-Farber/Harvard Cancer Center Proteomics Core, Boston, Massachusetts 02115, USA.
Clin Cancer Res. 2005 Aug 15;11(16):5730-9. doi: 10.1158/1078-0432.CCR-04-2225.
PURPOSE: To address the progression, metastasis, and clinical heterogeneity of renal cell cancer (RCC). EXPERIMENTAL DESIGN: Transcriptional profiling with oligonucleotide microarrays (22,283 genes) was done on 49 RCC tumors, 20 non-RCC renal tumors, and 23 normal kidney samples. Samples were clustered based on gene expression profiles and specific gene sets for each renal tumor type were identified. Gene expression was correlated to disease progression and a metastasis gene signature was derived. RESULTS: Gene signatures were identified for each tumor type with 100% accuracy. Differentially expressed genes during early tumor formation and tumor progression to metastatic RCC were found. Subsets of these genes code for secreted proteins and membrane receptors and are both potential therapeutic or diagnostic targets. A gene pattern ("metastatic signature") derived from primary tumor was very accurate in classifying tumors with and without metastases at the time of surgery. A previously described "global" metastatic signature derived by another group from various non-RCC tumors was validated in RCC. CONCLUSION: Unlike previous studies, we describe highly accurate and externally validated gene signatures for RCC subtypes and other renal tumors. Interestingly, the gene expression of primary tumors provides us information about the metastatic status in the respective patients and has the potential, if prospectively validated, to enrich the armamentarium of diagnostic tests in RCC. We validated in RCC, for the first time, a previously described metastatic signature and further showed the feasibility of applying a gene signature across different microarray platforms. Transcriptional profiling allows a better appreciation of the molecular and clinical heterogeneity in RCC.
目的:探讨肾细胞癌(RCC)的进展、转移及临床异质性。 实验设计:利用寡核苷酸微阵列(22,283个基因)对49例RCC肿瘤、20例非RCC肾肿瘤及23例正常肾组织样本进行转录谱分析。根据基因表达谱对样本进行聚类,并确定每种肾肿瘤类型的特定基因集。将基因表达与疾病进展相关联,得出转移基因特征。 结果:以100%的准确率确定了每种肿瘤类型的基因特征。发现了早期肿瘤形成及肿瘤进展至转移性RCC过程中差异表达的基因。这些基因的子集编码分泌蛋白和膜受体,均为潜在的治疗或诊断靶点。源自原发肿瘤的一种基因模式(“转移特征”)在区分手术时有无转移的肿瘤方面非常准确。另一组从各种非RCC肿瘤得出的先前描述的“全局”转移特征在RCC中得到验证。 结论:与以往研究不同,我们描述了RCC亚型及其他肾肿瘤高度准确且经外部验证的基因特征。有趣的是,原发肿瘤的基因表达为我们提供了有关相应患者转移状态的信息,并且如果能得到前瞻性验证,有可能丰富RCC诊断检测手段。我们首次在RCC中验证了先前描述的转移特征,并进一步证明了在不同微阵列平台应用基因特征的可行性。转录谱分析有助于更好地认识RCC中的分子和临床异质性。
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