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生化反应网络的基于集合的动力学参数估计与模型验证

Set-base dynamical parameter estimation and model invalidation for biochemical reaction networks.

作者信息

Rumschinski Philipp, Borchers Steffen, Bosio Sandro, Weismantel Robert, Findeisen Rolf

机构信息

Institute for Automation Engineering, Otto-von-Guericke-Universitisät Magdeburg, Magdeburg, Germany.

出版信息

BMC Syst Biol. 2010 May 25;4:69. doi: 10.1186/1752-0509-4-69.

Abstract

BACKGROUND

Mathematical modeling and analysis have become, for the study of biological and cellular processes, an important complement to experimental research. However, the structural and quantitative knowledge available for such processes is frequently limited, and measurements are often subject to inherent and possibly large uncertainties. This results in competing model hypotheses, whose kinetic parameters may not be experimentally determinable. Discriminating among these alternatives and estimating their kinetic parameters is crucial to improve the understanding of the considered process, and to benefit from the analytical tools at hand.

RESULTS

In this work we present a set-based framework that allows to discriminate between competing model hypotheses and to provide guaranteed outer estimates on the model parameters that are consistent with the (possibly sparse and uncertain) experimental measurements. This is obtained by means of exact proofs of model invalidity that exploit the polynomial/rational structure of biochemical reaction networks, and by making use of an efficient strategy to balance solution accuracy and computational effort.

CONCLUSIONS

The practicability of our approach is illustrated with two case studies. The first study shows that our approach allows to conclusively rule out wrong model hypotheses. The second study focuses on parameter estimation, and shows that the proposed method allows to evaluate the global influence of measurement sparsity, uncertainty, and prior knowledge on the parameter estimates. This can help in designing further experiments leading to improved parameter estimates.

摘要

背景

对于生物和细胞过程的研究而言,数学建模与分析已成为实验研究的重要补充。然而,关于此类过程的结构和定量知识往往有限,并且测量常常存在内在的、可能很大的不确定性。这导致了相互竞争的模型假设,其动力学参数可能无法通过实验确定。区分这些备选方案并估计其动力学参数对于增进对所考虑过程的理解以及从现有的分析工具中获益至关重要。

结果

在这项工作中,我们提出了一个基于集合的框架,该框架能够区分相互竞争的模型假设,并为与(可能稀疏且不确定的)实验测量结果一致的模型参数提供有保证的外部估计。这是通过利用生化反应网络的多项式/有理结构进行模型无效性的精确证明,并借助一种有效策略来平衡求解精度和计算量而实现的。

结论

通过两个案例研究说明了我们方法的实用性。第一个研究表明我们的方法能够确凿地排除错误的模型假设。第二个研究聚焦于参数估计,结果表明所提出的方法能够评估测量稀疏性、不确定性和先验知识对参数估计的全局影响。这有助于设计进一步的实验以获得改进的参数估计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fd80/2898671/1a006f4fb6b0/1752-0509-4-69-1.jpg

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