Department of Clinical Sciences, Oncology, Lund University, Lund, Sweden.
Cancer Res. 2010 May 1;70(9):3463-72. doi: 10.1158/0008-5472.CAN-09-4213. Epub 2010 Apr 20.
In the present investigation, we sought to refine the classification of urothelial carcinoma by combining information on gene expression, genomic, and gene mutation levels. For these purposes, we performed gene expression analysis of 144 carcinomas, and whole genome array-CGH analysis and mutation analyses of FGFR3, PIK3CA, KRAS, HRAS, NRAS, TP53, CDKN2A, and TSC1 in 103 of these cases. Hierarchical cluster analysis identified two intrinsic molecular subtypes, MS1 and MS2, which were validated and defined by the same set of genes in three independent bladder cancer data sets. The two subtypes differed with respect to gene expression and mutation profiles, as well as with the level of genomic instability. The data show that genomic instability was the most distinguishing genomic feature of MS2 tumors, and that this trait was not dependent on TP53/MDM2 alterations. By combining molecular and pathologic data, it was possible to distinguish two molecular subtypes of T(a) and T(1) tumors, respectively. In addition, we define gene signatures validated in two independent data sets that classify urothelial carcinoma into low-grade (G(1)/G(2)) and high-grade (G(3)) tumors as well as non-muscle and muscle-invasive tumors with high precisions and sensitivities, suggesting molecular grading as a relevant complement to standard pathologic grading. We also present a gene expression signature with independent prognostic effect on metastasis and disease-specific survival. We conclude that the combination of molecular and histopathologic classification systems might provide a strong improvement for bladder cancer classification and produce new insights into the development of this tumor type.
在本研究中,我们试图通过整合基因表达、基因组和基因突变水平的信息来改进尿路上皮癌的分类。为此,我们对 144 例癌进行了基因表达分析,并对其中 103 例进行了全基因组阵列-CGH 分析和 FGFR3、PIK3CA、KRAS、HRAS、NRAS、TP53、CDKN2A 和 TSC1 的基因突变分析。层次聚类分析确定了两个内在的分子亚型,MS1 和 MS2,这两个亚型在三个独立的膀胱癌数据集通过相同的基因集进行了验证和定义。这两种亚型在基因表达和突变谱以及基因组不稳定性水平上存在差异。数据表明,基因组不稳定性是 MS2 肿瘤最显著的基因组特征,并且这种特征不依赖于 TP53/MDM2 改变。通过结合分子和病理数据,可以分别区分 T(a)和 T(1)肿瘤的两种分子亚型。此外,我们定义了在两个独立数据集验证的基因特征,可将尿路上皮癌分为低级别(G(1)/G(2))和高级别(G(3))肿瘤以及非肌肉和肌肉浸润性肿瘤,具有较高的精度和灵敏度,提示分子分级是对标准病理分级的一个相关补充。我们还提出了一个具有独立预后效果的基因表达特征,可用于预测转移和疾病特异性生存。我们得出结论,分子和组织病理学分类系统的结合可能为膀胱癌分类提供强有力的改进,并为这种肿瘤类型的发展提供新的见解。