结直肠癌
间质细胞
癌症
生物
基因表达谱
肿瘤科
癌症研究
淋巴结
基因
内科学
医学
基因表达
病理
遗传学
作者
Philip D. Dunne,Darragh G. McArt,Conor A. Bradley,Paul G. O’Reilly,Helen L. Barrett,Robert Cummins,Tony O’Grady,Ken Arthur,Maurice B. Loughrey,Wendy L. Allen,Simon S. McDade,David Waugh,Peter W. Hamilton,Daniel B. Longley,Elaine W. Kay,Patrick G. Johnston,Mark Lawler,Manuel Salto‐Tellez,Sandra Van Schaeybroeck
标识
DOI:10.1158/1078-0432.ccr-16-0032
摘要
Abstract Purpose: A number of independent gene expression profiling studies have identified transcriptional subtypes in colorectal cancer with potential diagnostic utility, culminating in publication of a colorectal cancer Consensus Molecular Subtype classification. The worst prognostic subtype has been defined by genes associated with stem-like biology. Recently, it has been shown that the majority of genes associated with this poor prognostic group are stromal derived. We investigated the potential for tumor misclassification into multiple diagnostic subgroups based on tumoral region sampled. Experimental Design: We performed multiregion tissue RNA extraction/transcriptomic analysis using colorectal-specific arrays on invasive front, central tumor, and lymph node regions selected from tissue samples from 25 colorectal cancer patients. Results: We identified a consensus 30-gene list, which represents the intratumoral heterogeneity within a cohort of primary colorectal cancer tumors. Using a series of online datasets, we showed that this gene list displays prognostic potential HR = 2.914 (confidence interval 0.9286–9.162) in stage II/III colorectal cancer patients, but in addition, we demonstrated that these genes are stromal derived, challenging the assumption that poor prognosis tumors with stem-like biology have undergone a widespread epithelial–mesenchymal transition. Most importantly, we showed that patients can be simultaneously classified into multiple diagnostically relevant subgroups based purely on the tumoral region analyzed. Conclusions: Gene expression profiles derived from the nonmalignant stromal region can influence assignment of colorectal cancer transcriptional subtypes, questioning the current molecular classification dogma and highlighting the need to consider pathology sampling region and degree of stromal infiltration when employing transcription-based classifiers to underpin clinical decision making in colorectal cancer. Clin Cancer Res; 22(16); 4095–104. ©2016 AACR. See related commentary by Morris and Kopetz, p. 3989
科研通智能强力驱动
Strongly Powered by AbleSci AI