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Structural Properties of Dynamic Systems Biology Models: Identifiability, Reachability, and Initial Conditions

机译:动态系统生物学模型的结构特性:可识别性,可达性和初始条件

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摘要

Abstract: Dynamic modelling is a powerful tool for studying biological networks. Reachability (controllability), observability, and structural identifiability are classical system-theoretic properties of dynamical models. A model is structurally identifiable if the values of its parameters can in principle be determined from observations of its outputs. If model parameters are considered as constant state variables, structural identifiability can be studied as a generalization of observability. Thus, it is possible to assess the identifiability of a nonlinear model by checking the rank of its augmented observability matrix. When such rank test is performed symbolically, the result is of general validity for almost all numerical values of the variables. However, for special cases, such as specific values of the initial conditions, the result of such test can be misleading—that is, a structurally unidentifiable model may be classified as identifiable. An augmented observability rank test that specializes the symbolic states to particular numerical values can give hints of the existence of this problem. Sometimes it is possible to find such problematic values analytically, or via optimization. This manuscript proposes procedures for performing these tasks and discusses the relation between loss of identifiability and loss of reachability, using several case studies of biochemical networks.
机译:摘要:动态建模是研究生物网络的强大工具。可达性(可控制性),可观察性和结构可识别性是动力学模型的经典系统理论性质。如果原则上可以从对输出的观察中确定其参数值,则该模型在结构上是可识别的。如果将模型参数视为恒定状态变量,则可以将结构可识别性作为可观察性的概括来研究。因此,可以通过检查非线性模型的增强可观察性矩阵的等级来评估其模型的可识别性。当象征性地进行这种等级检验时,结果对于变量的几乎所有数值都是普遍有效的。但是,对于特殊情况,例如初始条件的特定值,这种测试的结果可能会产生误导,也就是说,结构上无法识别的模型可能被归类为可识别的。将符号状态专门化为特定数值的增强的可观察性等级测试可以提示存在此问题。有时有可能通过分析或优化找到这些有问题的值。该手稿提出了执行这些任务的程序,并使用一些生化网络案例研究,讨论了可识别性损失和可及性损失之间的关系。

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