Center for Computational Biology and Bioinformatics and Department of Electrical Engineering, Columbia University, New York, New York, United States of America.
PLoS Comput Biol. 2013;9(2):e1002920. doi: 10.1371/journal.pcbi.1002920. Epub 2013 Feb 21.
Mining gene expression profiles has proven valuable for identifying signatures serving as surrogates of cancer phenotypes. However, the similarities of such signatures across different cancer types have not been strong enough to conclude that they represent a universal biological mechanism shared among multiple cancer types. Here we present a computational method for generating signatures using an iterative process that converges to one of several precise attractors defining signatures representing biomolecular events, such as cell transdifferentiation or the presence of an amplicon. By analyzing rich gene expression datasets from different cancer types, we identified several such biomolecular events, some of which are universally present in all tested cancer types in nearly identical form. Although the method is unsupervised, we show that it often leads to attractors with strong phenotypic associations. We present several such multi-cancer attractors, focusing on three that are prominent and sharply defined in all cases: a mesenchymal transition attractor strongly associated with tumor stage, a mitotic chromosomal instability attractor strongly associated with tumor grade, and a lymphocyte-specific attractor.
挖掘基因表达谱已被证明对于识别作为癌症表型替代物的特征是有价值的。然而,这些特征在不同癌症类型之间的相似性还不够强,无法得出它们代表多种癌症类型共有的普遍生物学机制的结论。在这里,我们提出了一种使用迭代过程生成特征的计算方法,该过程收敛到定义代表生物分子事件的特征的几个精确吸引子之一,例如细胞转分化或扩增子的存在。通过分析来自不同癌症类型的丰富基因表达数据集,我们确定了几个这样的生物分子事件,其中一些在几乎所有测试的癌症类型中以几乎相同的形式普遍存在。尽管该方法是无监督的,但我们表明它通常会导致与表型具有强烈关联的吸引子。我们提出了几个这样的多癌症吸引子,重点介绍了三个在所有情况下都突出且定义明确的吸引子:与肿瘤分期强烈相关的间充质转化吸引子、与肿瘤分级强烈相关的有丝分裂染色体不稳定性吸引子和淋巴细胞特异性吸引子。