首页> 外文期刊>PLoS Computational Biology >Detecting and Removing Inconsistencies between Experimental Data and Signaling Network Topologies Using Integer Linear Programming on Interaction Graphs
【24h】

Detecting and Removing Inconsistencies between Experimental Data and Signaling Network Topologies Using Integer Linear Programming on Interaction Graphs

机译:使用交互图上的整数线性规划来检测和消除实验数据与信令网络拓扑之间的矛盾

获取原文
           

摘要

Cross-referencing experimental data with our current knowledge of signaling network topologies is one central goal of mathematical modeling of cellular signal transduction networks. We present a new methodology for data-driven interrogation and training of signaling networks. While most published methods for signaling network inference operate on Bayesian, Boolean, or ODE models, our approach uses integer linear programming (ILP) on interaction graphs to encode constraints on the qualitative behavior of the nodes. These constraints are posed by the network topology and their formulation as ILP allows us to predict the possible qualitative changes (up, down, no effect) of the activation levels of the nodes for a given stimulus. We provide four basic operations to detect and remove inconsistencies between measurements and predicted behavior: (i) find a topology-consistent explanation for responses of signaling nodes measured in a stimulus-response experiment (if none exists, find the closest explanation); (ii) determine a minimal set of nodes that need to be corrected to make an inconsistent scenario consistent; (iii) determine the optimal subgraph of the given network topology which can best reflect measurements from a set of experimental scenarios; (iv) find possibly missing edges that would improve the consistency of the graph with respect to a set of experimental scenarios the most. We demonstrate the applicability of the proposed approach by interrogating a manually curated interaction graph model of EGFR/ErbB signaling against a library of high-throughput phosphoproteomic data measured in primary hepatocytes. Our methods detect interactions that are likely to be inactive in hepatocytes and provide suggestions for new interactions that, if included, would significantly improve the goodness of fit. Our framework is highly flexible and the underlying model requires only easily accessible biological knowledge. All related algorithms were implemented in a freely available toolbox SigNetTrainer making it an appealing approach for various applications.
机译:用我们目前对信令网络拓扑的了解来交叉引用实验数据是蜂窝信号转导网络数学建模的一个主要目标。我们提出了一种新的方法,用于数据驱动的询问和信号网络的培训。尽管大多数发布的网络推理信号方法都在贝叶斯,布尔或ODE模型上运行,但我们的方法在交互图上使用整数线性规划(ILP)来编码对节点定性行为的约束。这些约束由网络拓扑构成,它们的表述方式是ILP允许我们针对给定的刺激预测节点的激活级别可能发生的质量变化(向上,向下,无影响)。我们提供了四个基本操作来检测和消除测量值与预测行为之间的不一致性:(i)为在刺激响应实验中测量的信号节点的响应找到拓扑一致的解释(如果不存在,则找到最接近的解释); (ii)确定需要纠正的最小节点集,以使不一致的场景保持一致; (iii)确定给定网络拓扑的最佳子图,该子图可以最好地反映一组实验场景中的测量结果; (iv)找出可能会丢失的边缘,这些边缘会相对于一组实验方案最大程度地提高图形的一致性。我们通过询问针对在原代肝细胞中测得的高通量磷酸蛋白质组学数据库的EGFR / ErbB信号的手动策划的交互图模型来证明所提出方法的适用性。我们的方法可检测到可能在肝细胞中无活性的相互作用,并为新的相互作用提供建议,如果包括在内,则可以显着提高健康度。我们的框架具有高度的灵活性,其基础模型仅需要易于获取的生物学知识。所有相关算法均在免费提供的工具箱SigNetTrainer中实现,使其成为各种应用程序的理想选择。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号