转录组
生物
福克斯M1
肺癌
癌症
生存分析
免疫系统
癌症研究
计算生物学
医学
肿瘤科
基因
免疫学
基因表达
内科学
细胞周期
遗传学
作者
Andrew J. Gentles,Aaron M. Newman,Chih Long Liu,Scott V. Bratman,Weiguo Feng,Dongkyoon Kim,Viswam S. Nair,Yue Xu,Amanda Khuong,Chuong D. Hoang,Maximilian Diehn,Robert B. West,Sylvia K. Plevritis,Ash A. Alizadeh
出处
期刊:Nature Medicine
[Springer Nature]
日期:2015-07-20
卷期号:21 (8): 938-945
被引量:2609
摘要
A searchable pan-cancer resource generated using data from nearly 18,000 human tumors reveals links between tumor infiltration by particular leukocyte subsets, tumor expression of particular gene signatures, and patient prognosis. Molecular profiles of tumors and tumor-associated cells hold great promise as biomarkers of clinical outcomes. However, existing data sets are fragmented and difficult to analyze systematically. Here we present a pan-cancer resource and meta-analysis of expression signatures from ∼18,000 human tumors with overall survival outcomes across 39 malignancies. By using this resource, we identified a forkhead box MI (FOXM1) regulatory network as a major predictor of adverse outcomes, and we found that expression of favorably prognostic genes, including KLRB1 (encoding CD161), largely reflect tumor-associated leukocytes. By applying CIBERSORT, a computational approach for inferring leukocyte representation in bulk tumor transcriptomes, we identified complex associations between 22 distinct leukocyte subsets and cancer survival. For example, tumor-associated neutrophil and plasma cell signatures emerged as significant but opposite predictors of survival for diverse solid tumors, including breast and lung adenocarcinomas. This resource and associated analytical tools ( http://precog.stanford.edu ) may help delineate prognostic genes and leukocyte subsets within and across cancers, shed light on the impact of tumor heterogeneity on cancer outcomes, and facilitate the discovery of biomarkers and therapeutic targets.
科研通智能强力驱动
Strongly Powered by AbleSci AI