Hoshida Yujin, Nijman Sebastian M B, Kobayashi Masahiro, Chan Jennifer A, Brunet Jean-Philippe, Chiang Derek Y, Villanueva Augusto, Newell Philippa, Ikeda Kenji, Hashimoto Masaji, Watanabe Goro, Gabriel Stacey, Friedman Scott L, Kumada Hiromitsu, Llovet Josep M, Golub Todd R
Broad Institute of Massachusetts Institute of Technology and Harvard University, Cambridge, Massachusetts 02142, USA.
Cancer Res. 2009 Sep 15;69(18):7385-92. doi: 10.1158/0008-5472.CAN-09-1089. Epub 2009 Sep 1.
Hepatocellular carcinoma (HCC) is a highly heterogeneous disease, and prior attempts to develop genomic-based classification for HCC have yielded highly divergent results, indicating difficulty in identifying unified molecular anatomy. We performed a meta-analysis of gene expression profiles in data sets from eight independent patient cohorts across the world. In addition, aiming to establish the real world applicability of a classification system, we profiled 118 formalin-fixed, paraffin-embedded tissues from an additional patient cohort. A total of 603 patients were analyzed, representing the major etiologies of HCC (hepatitis B and C) collected from Western and Eastern countries. We observed three robust HCC subclasses (termed S1, S2, and S3), each correlated with clinical parameters such as tumor size, extent of cellular differentiation, and serum alpha-fetoprotein levels. An analysis of the components of the signatures indicated that S1 reflected aberrant activation of the WNT signaling pathway, S2 was characterized by proliferation as well as MYC and AKT activation, and S3 was associated with hepatocyte differentiation. Functional studies indicated that the WNT pathway activation signature characteristic of S1 tumors was not simply the result of beta-catenin mutation but rather was the result of transforming growth factor-beta activation, thus representing a new mechanism of WNT pathway activation in HCC. These experiments establish the first consensus classification framework for HCC based on gene expression profiles and highlight the power of integrating multiple data sets to define a robust molecular taxonomy of the disease.
肝细胞癌(HCC)是一种高度异质性疾病,此前尝试开发基于基因组的HCC分类方法产生了截然不同的结果,这表明确定统一的分子解剖结构存在困难。我们对来自全球八个独立患者队列的数据集中的基因表达谱进行了荟萃分析。此外,为了确定分类系统在现实世界中的适用性,我们对另一个患者队列的118份福尔马林固定、石蜡包埋组织进行了分析。总共分析了603例患者,这些患者代表了从西方国家和东方国家收集的HCC主要病因(乙型和丙型肝炎)。我们观察到三个稳定的HCC亚类(称为S1、S2和S3),每个亚类都与肿瘤大小、细胞分化程度和血清甲胎蛋白水平等临床参数相关。对特征成分的分析表明,S1反映了WNT信号通路的异常激活,S2的特征是增殖以及MYC和AKT激活,S3与肝细胞分化相关。功能研究表明,S1肿瘤特有的WNT通路激活特征不仅仅是β-连环蛋白突变的结果,而是转化生长因子-β激活的结果,因此代表了HCC中WNT通路激活的一种新机制。这些实验建立了第一个基于基因表达谱的HCC共识分类框架,并突出了整合多个数据集以定义该疾病稳健分子分类学的作用。