Adamson M W, Morozov A Y, Kuzenkov O A
Department of Mathematics , University of Leicester , Leicester LE1 7RH , UK.
Department of Mathematics, University of Leicester, Leicester LE1 7RH, UK; Shirshov Institute of Oceanology, Moscow, 117997, Russia.
Proc Math Phys Eng Sci. 2016 Sep;472(2193):20150627. doi: 10.1098/rspa.2015.0627.
Mathematical models in biology are highly simplified representations of a complex underlying reality and there is always a high degree of uncertainty with regards to model function specification. This uncertainty becomes critical for models in which the use of different functions fitting the same dataset can yield substantially different predictions-a property known as structural sensitivity. Thus, even if the model is purely deterministic, then the uncertainty in the model functions carries through into uncertainty in model predictions, and new frameworks are required to tackle this fundamental problem. Here, we consider a framework that uses partially specified models in which some functions are not represented by a specific form. The main idea is to project infinite dimensional function space into a low-dimensional space taking into account biological constraints. The key question of how to carry out this projection has so far remained a serious mathematical challenge and hindered the use of partially specified models. Here, we propose and demonstrate a potentially powerful technique to perform such a projection by using optimal control theory to construct functions with the specified global properties. This approach opens up the prospect of a flexible and easy to use method to fulfil uncertainty analysis of biological models.
生物学中的数学模型是对复杂潜在现实的高度简化表示,并且在模型函数规范方面始终存在高度不确定性。对于那些使用不同函数拟合相同数据集会产生实质上不同预测的模型(一种称为结构敏感性的特性),这种不确定性变得至关重要。因此,即使模型是纯确定性的,模型函数中的不确定性也会传递到模型预测的不确定性中,并且需要新的框架来解决这个基本问题。在这里,我们考虑一个使用部分指定模型的框架,其中一些函数不以特定形式表示。主要思想是考虑生物学约束将无限维函数空间投影到低维空间。到目前为止,如何进行这种投影的关键问题仍然是一个严峻的数学挑战,并阻碍了部分指定模型的使用。在这里,我们提出并展示了一种潜在强大的技术,通过使用最优控制理论来构建具有指定全局属性的函数来执行这种投影。这种方法开辟了一种灵活且易于使用的方法来完成生物模型不确定性分析的前景。