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Domain-oriented reduction of rule-based network models

机译:面向域的基于规则的网络模型简化

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The coupling of membrane-bound receptors to transcriptional regulators and other effector functions is mediated by multi-domain proteins that form complex assemblies. The modularity of protein interactions lends itself to a rule-based description, in which species and reactions are generated by rules that encode the necessary context for an interaction to occur, but also can produce a combinatorial explosion in the number of chemical species that make up the signalling network. The authors have shown previously that exact network reduction can be achieved using hierarchical control relationships between sites/domains on proteins to dissect multi-domain proteins into sets of non-interacting sites, allowing the replacement of each 'full' (progenitor) protein with a set of derived auxiliary (offspring) proteins. The description of a network in terms of auxiliary proteins that have fewer sites than progenitor proteins often greatly reduces network size. The authors describe here a method for automating domain-oriented model reduction and its implementation as a module in the BioNetGen modelling package. It takes as input a standard BioNetGen model and automatically performs the following steps: 1) detecting the hierarchical control relationships between sites; 2) building up the auxiliary proteins; 3) generating a raw reduced model and 4) cleaning up the raw model to provide the correct mass balance for each chemical species in the reduced network. The authors tested the performance of this module on models representing portions of growth factor receptor and immunoreceptor-mediated signalling networks and confirmed its ability to reduce the model size and simulation cost by at least one or two orders of magnitude. Limitations of the current algorithm include the inability to reduce models based on implicit site dependencies or heterodimerisation and loss of accuracy when dynamics are computed stochastically.
机译:膜结合受体与转录调节子和其他效应子功能的偶联由形成复杂装配的多域蛋白介导。蛋白质相互作用的模块性使其适用于基于规则的描述,其中物种和反应是由规则生成的,这些规则对相互作用发生的必要背景进行编码,但也可能导致构成化学物种的数量激增信令网络。作者先前已经表明,使用蛋白质上位点/结构域之间的分级控制关系将多域蛋白分解为非相互作用位点集,从而可以将每个“完整”(祖细胞)蛋白替换为蛋白质,从而实现精确的网络还原。一组衍生的辅助(后代)蛋白。用比祖先蛋白质少的位点的辅助蛋白质来描述网络通常会大大减小网络的大小。作者在此处描述了一种自动化面向领域的模型简化的方法,并将其作为BioNetGen建模软件包中的模块来实现。它以标准的BioNetGen模型为输入,并自动执行以下步骤:1)检测站点之间的分层控制关系; 2)建立辅助蛋白质; 3)生成原始的简化模型,以及4)清理原始模型以为简化的网络中的每种化学物质提供正确的质量平衡。作者在代表部分生长因子受体和免疫受体介导的信号网络的模型上测试了该模块的性能,并确认了其将模型尺寸和仿真成本降低至少一个或两个数量级的能力。当前算法的局限性包括无法基于隐式位点依赖性或异二聚化来简化模型,以及在随机计算动力学时丧失准确性。

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