XML Encoding of Features Describing Rule-Based Modeling of Reaction Networks with Multi-Component Molecular Complexes.

Michael L Blinov, Ion I Moraru
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引用次数: 2

Abstract

Multi-state molecules and multi-component complexes are commonly involved in cellular signaling. Accounting for molecules that have multiple potential states, such as a protein that may be phosphorylated on multiple residues, and molecules that combine to form heterogeneous complexes located among multiple compartments, generates an effect of combinatorial complexity. Models involving relatively few signaling molecules can include thousands of distinct chemical species. Several software tools (StochSim, BioNetGen) are already available to deal with combinatorial complexity. Such tools need information standards if models are to be shared, jointly evaluated and developed. Here we discuss XML conventions that can be adopted for modeling biochemical reaction networks described by user-specified reaction rules. These could form a basis for possible future extensions of the Systems Biology Markup Language (SBML).

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描述多组分分子复合物反应网络基于规则建模特征的XML编码。
多态分子和多组分复合物通常参与细胞信号传递。考虑到具有多种潜在状态的分子,例如可能在多个残基上磷酸化的蛋白质,以及结合形成位于多个隔室之间的异质复合物的分子,会产生组合复杂性的影响。涉及相对较少的信号分子的模型可以包括数千种不同的化学物质。一些软件工具(StochSim, BioNetGen)已经可以用于处理组合复杂性。如果要共享、共同评估和开发模型,这些工具需要信息标准。这里我们讨论可用于建模由用户指定的反应规则描述的生化反应网络的XML约定。这些可以形成系统生物学标记语言(SBML)未来可能扩展的基础。
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