微卫星不稳定性
癌症
免疫组织化学
原位杂交
生物
病理
腺癌
肿瘤科
计算生物学
内科学
医学
基因表达
基因
微卫星
遗传学
等位基因
作者
Namrata Setia,Agoston T. Agoston,Hye Seung Han,John T. Mullen,Dan G. Duda,Jeffrey W. Clark,Vikram Deshpande,Mari Mino‐Kenudson,Amitabh Srivastava,Jochen K. Lennerz,Theodore S. Hong,Eunice L. Kwak,Gregory Y. Lauwers
标识
DOI:10.1038/modpathol.2016.55
摘要
The overall survival of gastric carcinoma patients remains poor despite improved control over known risk factors and surveillance. This highlights the need for new classifications, driven towards identification of potential therapeutic targets. Using sophisticated molecular technologies and analysis, three groups recently provided genetic and epigenetic molecular classifications of gastric cancer (The Cancer Genome Atlas, 'Singapore-Duke' study, and Asian Cancer Research Group). Suggested by these classifications, here, we examined the expression of 14 biomarkers in a cohort of 146 gastric adenocarcinomas and performed unsupervised hierarchical clustering analysis using less expensive and widely available immunohistochemistry and in situ hybridization. Ultimately, we identified five groups of gastric cancers based on Epstein-Barr virus (EBV) positivity, microsatellite instability, aberrant E-cadherin, and p53 expression; the remaining cases constituted a group characterized by normal p53 expression. In addition, the five categories correspond to the reported molecular subgroups by virtue of clinicopathologic features. Furthermore, evaluation between these clusters and survival using the Cox proportional hazards model showed a trend for superior survival in the EBV and microsatellite-instable related adenocarcinomas. In conclusion, we offer as a proposal a simplified algorithm that is able to reproduce the recently proposed molecular subgroups of gastric adenocarcinoma, using immunohistochemical and in situ hybridization techniques.
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