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Deterministic Effects Propagation Networks for reconstructing protein signaling networks from multiple interventions

机译:确定性效应传播网络,可通过多种干预手段重建蛋白质信号网络

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Background Modern gene perturbation techniques, like RNA interference (RNAi), enable us to study effects of targeted interventions in cells efficiently. In combination with mRNA or protein expression data this allows to gain insights into the behavior of complex biological systems. Results In this paper, we propose Deterministic Effects Propagation Networks (DEPNs) as a special Bayesian Network approach to reverse engineer signaling networks from a combination of protein expression and perturbation data. DEPNs allow to reconstruct protein networks based on combinatorial intervention effects, which are monitored via changes of the protein expression or activation over one or a few time points. Our implementation of DEPNs allows for latent network nodes (i.e. proteins without measurements) and has a built in mechanism to impute missing data. The robustness of our approach was tested on simulated data. We applied DEPNs to reconstruct the ERBB signaling network in de novo trastuzumab resistant human breast cancer cells, where protein expression was monitored on Reverse Phase Protein Arrays (RPPAs) after knockdown of network proteins using RNAi. Conclusion DEPNs offer a robust, efficient and simple approach to infer protein signaling networks from multiple interventions. The method as well as the data have been made part of the latest version of the R package "nem" available as a supplement to this paper and via the Bioconductor repository.
机译:背景技术现代的基因扰动技术,例如RNA干扰(RNAi),使我们能够有效地研究细胞中靶向干预的效果。与mRNA或蛋白质表达数据结合使用,可以深入了解复杂生物系统的行为。结果在本文中,我们提出确定性效应传播网络(DEPNs)作为一种特殊的贝叶斯网络方法,以结合蛋白质表达和扰动数据来反向工程化信号网络。 DEPN允许基于组合干预效应重建蛋白质网络,该组合干预效应是通过一个或几个时间点上蛋白质表达的变化或激活来监控的。我们对DEPN的实现允许潜在的网络节点(即没有测量的蛋白质),并且具有内置机制来估算丢失的数据。我们的方法的鲁棒性已在模拟数据上进行了测试。我们应用DEPNs在耐曲妥珠单抗的新人类乳腺癌细胞中重建ERBB信号网络,其中使用RNAi敲除网络蛋白后,在反相蛋白阵列(RPPA)上监测蛋白表达。结论DEPNs提供了一种强大,高效且简单的方法来从多种干预中推断蛋白质信号网络。该方法和数据已成为R软件包“ nem”的最新版本的一部分,可作为本文的补充内容并通过Bioconductor存储库获得。

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