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A Divide and Conquer Approach for Construction of Large-Scale Signaling Networks from PPI and RNAi Data Using Linear Programming

机译:使用线性规划从PPI和RNAi数据构建大规模信号网络的分而治之方法

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摘要

Inference of topology of signaling networks from perturbation experiments is a challenging problem. Recently, the inference problem has been formulated as a reference network editing problem and it has been shown that finding the minimum number of edit operations on a reference network to comply with perturbation experiments is an NP-complete problem. In this paper, we propose an integer linear optimization (ILP) model for reconstruction of signaling networks from RNAi data and a reference network. The ILP model guarantees the optimal solution; however, is practical only for small signaling networks of size 10-15 genes due to computational complexity. To scale for large signaling networks, we propose a divide and conquer-based heuristic, in which a given reference network is divided into smaller subnetworks that are solved separately and the solutions are merged together to form the solution for the large network. We validate our proposed approach on real and synthetic data sets, and comparison with the state of the art shows that our proposed approach is able to scale better for large networks while attaining similar or better biological accuracy.
机译:从微扰实验推断信号网络的拓扑结构是一个具有挑战性的问题。近来,推理问题已经被公式化为参考网络编辑问题,并且已经表明,找到在参考网络上的最小数量的编辑操作以符合扰动实验是NP完全问题。在本文中,我们提出了一个整数线性优化(ILP)模型,用于从RNAi数据和参考网络重建信号网络。 ILP模型可确保最佳解决方案;但是,由于计算复杂性,它仅对大小为10-15的基因的小型信号网络实用。为了扩展到大型信令网络,我们提出了一种基于分治法的启发式方法,其中将给定的参考网络划分为较小的子网络,分别解决这些子网络,然后将解决方案合并在一起,以形成大型网络的解决方案。我们在真实和合成数据集上验证了我们提出的方法,并且与现有技术进行比较表明,我们提出的方法能够更好地扩展到大型网络,同时获得相似或更好的生物学准确性。

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