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Identifying protein interaction subnetworks by a bagging Markov random field-based method

机译:通过基于袋装马尔可夫随机场的方法识别蛋白质相互作用子网络

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摘要

Identification of differentially expressed subnetworks from protein–protein interaction (PPI) networks has become increasingly important to our global understanding of the molecular mechanisms that drive cancer. Several methods have been proposed for PPI subnetwork identification, but the dependency among network member genes is not explicitly considered, leaving many important hub genes largely unidentified. We present a new method, based on a bagging Markov random field (BMRF) framework, to improve subnetwork identification for mechanistic studies of breast cancer. The method follows a maximum a posteriori principle to form a novel network score that explicitly considers pairwise gene interactions in PPI networks, and it searches for subnetworks with maximal network scores. To improve their robustness across data sets, a bagging scheme based on bootstrapping samples is implemented to statistically select high confidence subnetworks. We first compared the BMRF-based method with existing methods on simulation data to demonstrate its improved performance. We then applied our method to breast cancer data to identify PPI subnetworks associated with breast cancer progression and/or tamoxifen resistance. The experimental results show that not only an improved prediction performance can be achieved by the BMRF approach when tested on independent data sets, but biologically meaningful subnetworks can also be revealed that are relevant to breast cancer and tamoxifen resistance.
机译:从蛋白质-蛋白质相互作用(PPI)网络中识别差异表达的子网络对于我们对驱动癌症的分子机制的全球理解变得越来越重要。已经提出了几种用于PPI子网识别的方法,但是并未明确考虑网络成员基因之间的依赖性,从而使许多重要的集线器基因在很大程度上未被识别。我们提出了一种基于袋装马尔可夫随机场(BMRF)框架的新方法,以改善乳腺癌机制研究的子网识别。该方法遵循最大后验原理,形成一个新颖的网络评分,该评分明确考虑了PPI网络中的成对基因相互作用,并搜索具有最大网络评分的子网。为了提高它们在数据集之间的鲁棒性,实施了基于自举样本的装袋方案,以统计地选择高置信度子网络。我们首先在仿真数据上比较了基于BMRF的方法和现有方法,以证明其改进的性能。然后,我们将我们的方法应用于乳腺癌数据,以识别与乳腺癌进展和/或他莫昔芬耐药性相关的PPI子网。实验结果表明,当在独立的数据集上进行测试时,不仅可以通过BMRF方法实现更好的预测性能,而且还可以揭示与乳腺癌和他莫昔芬耐药性相关的生物学意义子网络。

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