Division of Molecular Carcinogenesis, The Oncode Institute, The Netherlands Cancer Institute, Amsterdam, The Netherlands.
Institute of Pathology, Charité Universitätsmedizin, Berlin, Germany.
Bioinformatics. 2018 Sep 1;34(17):i997-i1004. doi: 10.1093/bioinformatics/bty616.
Signal-transduction networks are often aberrated in cancer cells, and new anti-cancer drugs that specifically target oncogenes involved in signaling show great clinical promise. However, the effectiveness of such targeted treatments is often hampered by innate or acquired resistance due to feedbacks, crosstalks or network adaptations in response to drug treatment. A quantitative understanding of these signaling networks and how they differ between cells with different oncogenic mutations or between sensitive and resistant cells can help in addressing this problem.
Here, we present Comparative Network Reconstruction (CNR), a computational method to reconstruct signaling networks based on possibly incomplete perturbation data, and to identify which edges differ quantitatively between two or more signaling networks. Prior knowledge about network topology is not required but can straightforwardly be incorporated. We extensively tested our approach using simulated data and applied it to perturbation data from a BRAF mutant, PTPN11 KO cell line that developed resistance to BRAF inhibition. Comparing the reconstructed networks of sensitive and resistant cells suggests that the resistance mechanism involves re-establishing wild-type MAPK signaling, possibly through an alternative RAF-isoform.
CNR is available as a python module at https://github.com/NKI-CCB/cnr. Additionally, code to reproduce all figures is available at https://github.com/NKI-CCB/CNR-analyses.
Supplementary data are available at Bioinformatics online.
信号转导网络在癌细胞中经常发生异常,新的抗癌药物专门针对参与信号转导的致癌基因显示出巨大的临床前景。然而,由于药物治疗的反馈、串扰或网络适应,这种靶向治疗的有效性常常受到固有或获得性耐药性的阻碍。对这些信号网络的定量理解,以及它们在具有不同致癌突变的细胞之间或在敏感和耐药细胞之间的差异,可以帮助解决这个问题。
在这里,我们提出了比较网络重建(CNR),这是一种基于可能不完整的扰动数据来重建信号网络的计算方法,并确定哪些边在两个或更多信号网络之间在数量上存在差异。不需要关于网络拓扑结构的先验知识,但可以直接纳入。我们使用模拟数据对我们的方法进行了广泛的测试,并将其应用于 BRAF 突变体、PTPN11 KO 细胞系对 BRAF 抑制产生耐药性的扰动数据。比较敏感和耐药细胞的重建网络表明,耐药机制涉及重新建立野生型 MAPK 信号,可能通过替代 RAF 同工型。
CNR 作为一个 Python 模块可在 https://github.com/NKI-CCB/cnr 上获得。此外,在 https://github.com/NKI-CCB/CNR-analyses 上可以获得重现所有图的代码。
补充数据可在生物信息学在线获得。