Breast Cancer Now Toby Robins Research Centre and Cancer Research UK Gene Function Laboratory, Institute of Cancer Research, London, United Kingdom.
School of Computer Science and Systems Biology Ireland, University College Dublin, Dublin, Ireland.
Elife. 2020 May 28;9:e58925. doi: 10.7554/eLife.58925.
Genetic interactions, including synthetic lethal effects, can now be systematically identified in cancer cell lines using high-throughput genetic perturbation screens. Despite this advance, few genetic interactions have been reproduced across multiple studies and many appear highly context-specific. Here, by developing a new computational approach, we identified 220 robust driver-gene associated genetic interactions that can be reproduced across independent experiments and across non-overlapping cell line panels. Analysis of these interactions demonstrated that: (i) oncogene addiction effects are more robust than oncogene-related synthetic lethal effects; and (ii) robust genetic interactions are enriched among gene pairs whose protein products physically interact. Exploiting the latter observation, we used a protein-protein interaction network to identify robust synthetic lethal effects associated with passenger gene alterations and validated two new synthetic lethal effects. Our results suggest that protein-protein interaction networks can be used to prioritise therapeutic targets that will be more robust to tumour heterogeneity.
现在可以使用高通量遗传干扰筛选系统地在癌细胞系中鉴定遗传相互作用,包括合成致死效应。尽管取得了这一进展,但很少有遗传相互作用在多个研究中得到重现,而且许多相互作用似乎高度特定于背景。在这里,通过开发一种新的计算方法,我们鉴定了 220 个稳健的与驱动基因相关的遗传相互作用,这些相互作用可以在独立实验和不重叠的细胞系面板中重现。对这些相互作用的分析表明:(i)致癌基因成瘾效应比致癌基因相关的合成致死效应更稳健;(ii)稳健的遗传相互作用在蛋白质产物相互作用的基因对中富集。利用后一种观察结果,我们使用蛋白质-蛋白质相互作用网络来鉴定与乘客基因突变相关的稳健的合成致死效应,并验证了两种新的合成致死效应。我们的结果表明,蛋白质-蛋白质相互作用网络可用于优先选择更能抵抗肿瘤异质性的治疗靶点。