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Biological Models' Parameter Estimation Based on Discrete Measurements and Adjoint Sensitivity Analysis

机译:基于离散测量和伴随敏感性分析的生物模型的参数估计

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Mathematical models of biological processes are usually continuous time (CT) and take the form of non-linear ordinary differential equations. On the other hand the estimation of model parameters is done based on discrete time (DT), relatively rare, measurements. Hence, overall problem of parameter estimation has hybrid, continuous-discrete form: it uses CT model and minimise DT performance index depending on DT prediction errors. In our previous works we have published Generalized Back Propagation Through Time (GBPPT) method-a method allowing us to use the adjoint sensitivity analysis for obtained hybrid system, and giving as a result a computationally effective recipe for calculating gradient of the performance index in parameter space. GBPTT specifies rules for construction of the adjoint system, in particular it specifies how to manage elements interfacing between CT and DT parts of the system: ideal sampler (IS) and ideal pulser (IP). Such rules for isolated IS and IP elements has been proposed without strict formal rationale. In this article we deliver a proof of correctness of such rules. Addition-ally, as an illustration, we present an example of application of GBPTT to parameter estimation of chemical enzymatic reaction which is one of basic biochemical reaction.
机译:生物过程的数学模型通常是连续的时间(CT),并采用非线性常微分方程的形式。另一方面,模型参数的估计是基于离散时间(DT),相对罕见的测量来完成的。因此,参数估计的总体问题具有混合动力,连续离散形式:它使用CT模型并根据DT预测误差最小化DT性能指数。在我们以前的作品中,我们通过时间(GBPPT)方法发布了广义的回波传播(GBPPT)方法 - 一种方法,允许我们使用获得的混合系统的伴随灵敏度分析,并给出了计算参数中性能指数梯度的计算有效配方空间。 Gbptt指定兼容系统的构造规则,特别是它规定了如何管理系统的CT和DT部分之间的元素接口:理想采样器(IS)和理想的脉冲脉(IP)。已经提出了孤立的孤立规则而没有严格的正式理由。在本文中,我们提供了这种规则的正确性证明。附加 - 作为图示,我们介绍了将Gbptt应用于化学酶反应的参数估计的一个例子,这是基本的生化反应之一。

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