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The Limitations of Model-Based Experimental Design and Parameter Estimation in Sloppy Systems

机译:lop系统中基于模型的实验设计和参数估计的局限性

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摘要

We explore the relationship among experimental design, parameter estimation, and systematic error in sloppy models. We show that the approximate nature of mathematical models poses challenges for experimental design in sloppy models. In many models of complex biological processes it is unknown what are the relevant physical mechanisms that must be included to explain system behaviors. As a consequence, models are often overly complex, with many practically unidentifiable parameters. Furthermore, which mechanisms are relevant/irrelevant vary among experiments. By selecting complementary experiments, experimental design may inadvertently make details that were ommitted from the model become relevant. When this occurs, the model will have a large systematic error and fail to give a good fit to the data. We use a simple hyper-model of model error to quantify a model’s discrepancy and apply it to two models of complex biological processes (EGFR signaling and DNA repair) with optimally selected experiments. We find that although parameters may be accurately estimated, the discrepancy in the model renders it less predictive than it was in the sloppy regime where systematic error is small. We introduce the concept of a sloppy system–a sequence of models of increasing complexity that become sloppy in the limit of microscopic accuracy. We explore the limits of accurate parameter estimation in sloppy systems and argue that identifying underlying mechanisms controlling system behavior is better approached by considering a hierarchy of models of varying detail rather than focusing on parameter estimation in a single model.
机译:我们探索了草率模型中实验设计,参数估计和系统误差之间的关系。我们表明,数学模型的近似性质对草率模型中的实验设计提出了挑战。在许多复杂的生物过程模型中,未知什么是必须包含的有关解释系统行为的物理机制。结果,模型通常过于复杂,带有许多实际上无法识别的参数。此外,哪些机制相关/不相关在实验之间有所不同。通过选择补充实验,实验设计可能会无意间使从模型中忽略的细节变得有意义。发生这种情况时,模型将具有较大的系统误差,并且无法很好地拟合数据。我们使用简单的模型错误超模型来量化模型的差异,并将其应用于经过最佳选择的实验的两个复杂生物过程模型(EGFR信号传导和DNA修复)。我们发现尽管可以准确估计参数,但模型中的差异使其预测性不如系统误差较小的草率状态。我们引入了草率系统的概念-一系列复杂性不断提高的模型,这些模型在微观精度的限制下变得草率。我们探索了草率系统中精确参数估计的局限性,并指出,通过考虑具有不同细节的模型层次结构而不是只关注单个模型中的参数估计,可以更好地确定控制系统行为的基本机制。

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