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A Global Parallel Model Based Design of Experiments Method to Minimize Model Output Uncertainty

机译:基于全局并行模型的实验设计方法,以最小化模型输出的不确定性

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Model-based experiment design specifies the data to be collected that will most effectively characterize the biological system under study. Existing model-based design of experiment algorithms have primarily relied on Fisher Information Matrix-based methods to choose the best experiment in a sequential manner. However, these are largely local methods that require an initial estimate of the parameter values, which are often highly uncertain, particularly when data is limited. In this paper, we provide an approach to specify an informative sequence of multiple design points (parallel design) that will constrain the dynamical uncertainty of the biological system responses to within experimentally detectable limits as specified by the estimated experimental noise. The method is based upon computationally efficient sparse grids and requires only a bounded uncertain parameter space; it does not rely upon initial parameter estimates. The design sequence emerges through the use of scenario trees with experimental design points chosen to minimize the uncertainty in the predicted dynamics of the measurable responses of the system. The algorithm was illustrated herein using a T cell activation model for three problems that ranged in dimension from 2D to 19D. The results demonstrate that it is possible to extract useful information from a mathematical model where traditional model-based design of experiments approaches most certainly fail. The experiments designed via this method fully constrain the model output dynamics to within experimentally resolvable limits. The method is effective for highly uncertain biological systems characterized by deterministic mathematical models with limited data sets. Also, it is highly modular and can be modified to include a variety of methodologies such as input design and model discrimination.
机译:基于模型的实验设计规定了要收集的数据,这些数据将最有效地表征正在研究的生物系统。现有的基于模型的实验算法设计主要依赖于基于Fisher信息矩阵的方法来按顺序选择最佳实验。但是,这些主要是局部方法,需要对参数值进行初始估计,这通常是高度不确定的,尤其是在数据有限的情况下。在本文中,我们提供了一种指定多个设计点(并行设计)的信息序列的方法,该序列将把生物系统响应的动态不确定性限制在估计的实验噪声所指定的实验可检测范围内。该方法基于计算效率高的稀疏网格,仅需要有限的不确定参数空间。它不依赖于初始参数估计。通过使用场景树和选择的实验设计点出现设计序列,以尽量减少系统可测量响应的预测动态中的不确定性。本文使用T细胞激活模型说明了该算法的三个问题,这些问题的范围从2D到19D。结果表明,有可能从数学模型中提取有用的信息,而传统的基于模型的实验方法肯定会失败。通过这种方法设计的实验将模型输出动力学完全限制在实验可解决的范围内。该方法对于以数据集有限的确定性数学模型为特征的高度不确定的生物系统有效。而且,它是高度模块化的,可以进行修改以包括各种方法,例如输入设计和模型判别。

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