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Monte Carlo Simulations for the Analysis of Non-linear Parameter Confidence Intervals in Optimal Experimental Design

机译:最优实验设计中非线性参数置信区间分析的蒙特卡洛模拟

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Especially in biomanufacturing, methods to design optimal experiments are a valuable technique to fully exploit the potential of the emerging technical possibilities that are driving experimental miniaturization and parallelization. The general objective is to reduce the experimental effort while maximizing the information content of an experiment, speeding up knowledge gain in R&D. The approach of model-based design of experiments (known as MBDoE) utilizes the information of an underlying mathematical model describing the system of interest. A common method to predict the accuracy of the parameter estimates uses the Fisher information matrix to approximate the 90% confidence intervals of the estimates. However, for highly nonlinear models, this method might lead to wrong conclusions. In such cases, Monte Carlo sampling gives a more accurate insight into the parameter’s estimate probability distribution and should be exploited to assess the reliability of the approximations made through the Fisher information matrix. We first introduce the model-based optimal experimental design for parameter estimation including parameter identification and validation by means of a simple non-linear Michaelis-Menten kinetic and show why Monte Carlo simulations give a more accurate depiction of the parameter uncertainty. Secondly, we propose a very robust and simple method to find optimal experimental designs using Monte Carlo simulations. Although computational expensive, the method is easy to implement and parallelize. This article focuses on practical examples of bioprocess engineering but is generally applicable in other fields.
机译:特别是在生物制造中,设计最佳实验的方法是一种有价值的技术,可以充分利用新兴技术的潜力来推动实验的小型化和并行化。总的目的是在最大程度地减少实验信息的同时减少实验工作量,加快研发中的知识获取。基于模型的实验设计方法(称为MBDoE)利用描述感兴趣系统的基础数学模型的信息。预测参数估计值准确性的常用方法是使用Fisher信息矩阵来近似估计值的90%置信区间。但是,对于高度非线性的模型,此方法可能会得出错误的结论。在这种情况下,蒙特卡洛采样可以更准确地了解参数的估计概率分布,因此应利用它来评估通过Fisher信息矩阵得出的近似值的可靠性。我们首先介绍用于参数估计的基于模型的最佳实验设计,包括通过简单的非线性Michaelis-Menten动力学进行参数识别和验证,并说明为什么Monte Carlo仿真能够更准确地描述参数不确定性。其次,我们提出了一种非常健壮且简单的方法,可以使用蒙特卡洛模拟来找到最佳实验设计。尽管计算量很大,但是该方法易于实现和并行化。本文重点介绍生物过程工程的实际示例,但通常可应用于其他领域。

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