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Automated smoother for the numerical decoupling of dynamics models

机译:自动平滑器用于动力学模型的数值解耦

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摘要

BackgroundStructure identification of dynamic models for complex biological systems is the cornerstone of their reverse engineering. Biochemical Systems Theory (BST) offers a particularly convenient solution because its parameters are kinetic-order coefficients which directly identify the topology of the underlying network of processes. We have previously proposed a numerical decoupling procedure that allows the identification of multivariate dynamic models of complex biological processes. While described here within the context of BST, this procedure has a general applicability to signal extraction. Our original implementation relied on artificial neural networks (ANN), which caused slight, undesirable bias during the smoothing of the time courses. As an alternative, we propose here an adaptation of the Whittaker's smoother and demonstrate its role within a robust, fully automated structure identification procedure.
机译:背景技术复杂生物系统动力学模型的结构识别是其逆向工程的基础。生化系统理论(BST)提供了一种特别方便的解决方案,因为它的参数是动力学顺序系数,可以直接识别工艺基础网络的拓扑。我们之前已经提出了一种数值解耦程序,该程序可以识别复杂生物过程的多元动态模型。虽然此处在BST上下文中进行了描述,但此过程通常适用于信号提取。我们最初的实现依赖于人工神经网络(ANN),该人工神经网络会在时间过程的平滑过程中产生轻微的不良偏差。作为替代方案,我们在这里提出对Whittaker平滑器的改进,并证明其在强大的,全自动的结构识别过程中的作用。

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