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首页> 外文期刊>BMC Bioinformatics >Optimal experiment selection for parameter estimation in biological differential equation models
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Optimal experiment selection for parameter estimation in biological differential equation models

机译:生物微分方程模型中参数估计的最佳实验选择

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Background Parameter estimation in biological models is a common yet challenging problem. In this work we explore the problem for gene regulatory networks modeled by differential equations with unknown parameters, such as decay rates, reaction rates, Michaelis-Menten constants, and Hill coefficients. We explore the question to what extent parameters can be efficiently estimated by appropriate experimental selection. Results A minimization formulation is used to find the parameter values that best fit the experiment data. When the data is insufficient, the minimization problem often has many local minima that fit the data reasonably well. We show that selecting a new experiment based on the local Fisher Information of one local minimum generates additional data that allows one to successfully discriminate among the many local minima. The parameters can be estimated to high accuracy by iteratively performing minimization and experiment selection. We show that the experiment choices are roughly independent of which local minima is used to calculate the local Fisher Information. Conclusions We show that by an appropriate choice of experiments, one can, in principle, efficiently and accurately estimate all the parameters of gene regulatory network. In addition, we demonstrate that appropriate experiment selection can also allow one to restrict model predictions without constraining the parameters using many fewer experiments. We suggest that predicting model behaviors and inferring parameters represent two different approaches to model calibration with different requirements on data and experimental cost.
机译:生物学模型中的背景参数估计是一个常见但具有挑战性的问题。在这项工作中,我们探索了用未知参数(例如衰减率,反应率,Michaelis-Menten常数和Hill系数)等微分方程建模的基因调控网络的问题。我们探讨了通过适当的实验选择可以在多大程度上有效估计参数的问题。结果使用最小化公式可以找到最适合实验数据的参数值。当数据不足时,最小化问题通常会有许多局部最小值,这些局部最小值可以很好地适合数据。我们表明,基于一个局部最小值的局部Fisher信息选择一个新实验会生成其他数据,从而使人们可以成功地在多个局部最小值之间进行区分。通过反复执行最小化和实验选择,可以高精度估计参数。我们表明,实验选择大致与哪个局部最小值用于计算局部Fisher信息无关。结论:我们发现,通过实验,可以适当的选择,原则,高效,准确地估计基因调控网络的所有参数。此外,我们证明了适当的实验选择也可以允许人们使用更少的实验来限制模型的预测,而不会限制参数。我们建议预测模型行为和推断参数代表两种不同的模型校准方法,对数据和实验成本的要求不同。

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