Porta Pardo Eduard, Godzik Adam
Program on Bioinformatics and Systems Biology, Sanford-Burnham Medical Research Institute, La Jolla, California, United States of America.
PLoS Comput Biol. 2015 Jan 8;11(1):e1004024. doi: 10.1371/journal.pcbi.1004024. eCollection 2015 Jan.
The promise of personalized cancer medicine cannot be fulfilled until we gain better understanding of the connections between the genomic makeup of a patient's tumor and its response to anticancer drugs. Several datasets that include both pharmacologic profiles of cancer cell lines as well as their genomic alterations have been recently developed and extensively analyzed. However, most analyses of these datasets assume that mutations in a gene will have the same consequences regardless of their location. While this assumption might be correct in some cases, such analyses may miss subtler, yet still relevant, effects mediated by mutations in specific protein regions. Here we study such perturbations by separating effects of mutations in different protein functional regions (PFRs), including protein domains and intrinsically disordered regions. Using this approach, we have been able to identify 171 novel associations between mutations in specific PFRs and changes in the activity of 24 drugs that couldn't be recovered by traditional gene-centric analyses. Our results demonstrate how focusing on individual protein regions can provide novel insights into the mechanisms underlying the drug sensitivity of cancer cell lines. Moreover, while these new correlations are identified using only data from cancer cell lines, we have been able to validate some of our predictions using data from actual cancer patients. Our findings highlight how gene-centric experiments (such as systematic knock-out or silencing of individual genes) are missing relevant effects mediated by perturbations of specific protein regions. All the associations described here are available from http://www.cancer3d.org.
在我们更好地理解患者肿瘤的基因组构成与其对抗癌药物的反应之间的联系之前,个性化癌症医学的前景无法实现。最近已经开发并广泛分析了几个数据集,这些数据集既包括癌细胞系的药理学特征,也包括它们的基因组改变。然而,对这些数据集的大多数分析都假定,基因中的突变无论其位置如何都会产生相同的后果。虽然这种假设在某些情况下可能是正确的,但此类分析可能会忽略由特定蛋白质区域中的突变介导的更微妙但仍然相关的效应。在这里,我们通过分离不同蛋白质功能区域(PFRs)中的突变效应来研究此类扰动,这些区域包括蛋白质结构域和内在无序区域。使用这种方法,我们能够识别出特定PFRs中的突变与24种药物活性变化之间的171种新关联,而这些关联是传统的以基因为中心的分析无法发现的。我们的结果表明,关注单个蛋白质区域如何能够为癌细胞系药物敏感性的潜在机制提供新的见解。此外,虽然这些新的相关性仅使用癌细胞系的数据来识别,但我们已经能够使用实际癌症患者的数据来验证我们的一些预测。我们的发现突出了以基因为中心的实验(例如对单个基因进行系统性敲除或沉默)是如何忽略由特定蛋白质区域的扰动介导的相关效应的。这里描述的所有关联都可以从http://www.cancer3d.org获得。