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A practical approach to parameter estimation applied to model predicting heart rate regulation

机译:应用于模型预测心率调节的参数估计的实用方法

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摘要

Mathematical models have long been used for prediction of dynamics in biological systems. Recently, several efforts have been made to render these models patient specific. One way to do so is to employ techniques to estimate parameters that enable model based prediction of observed quantities. Knowledge of variation in parameters within and between groups of subjects have potential to provide insight into biological function. Often it is not possible to estimate all parameters in a given model, in particular if the model is complex and the data is sparse. However, it may be possible to estimate a subset of model parameters reducing the complexity of the problem. In this study, we compare three methods that allow identification of parameter subsets that can be estimated given a model and a set of data. These methods will be used to estimate patient specific parameters in a model predicting baroreceptor feedback regulation of heart rate during head-up tilt. The three methods include: structured analysis of the correlation matrix, analysis via singular value decomposition followed by QR factorization, and identification of the subspace closest to the one spanned by eigenvectors of the model Hessian. Results showed that all three methods facilitate identification of a parameter subset. The ”best” subset was obtained using the structured correlation method, though this method was also the most computationally intensive. Subsets obtained using the other two methods were easier to compute, but analysis revealed that the final subsets contained correlated parameters. In conclusion, to avoid lengthy computations, these three methods may be combined for efficient identification of parameter subsets.
机译:数学模型长期以来用于预测生物系统中的动态。最近,已经努力使这些模型患者特定于患者。这样做的一种方法是使用技术来估计基于模型的观察量预测的参数。对受试者组内和之间的参数变化的知识有可能在生物学功能中提供洞察力。通常不可能估计给定模型中的所有参数,特别是如果模型是复杂的并且数据稀疏。然而,可以估计降低问题的复杂性的模型参数的子集。在本研究中,我们比较了三种方法,该方法允许识别可以估计的参数子集,其可以估计一个模型和一组数据。这些方法将用于估计预测心率倾斜期间心率的鼓风机反馈调节的模型中的患者特定参数。这三种方法包括:相关矩阵的结构化分析,通过奇异值分解分析,然后进行QR分解,并识别最接近模型Hessian的特征向量跨越的子空间。结果表明,所有三种方法都有助于识别参数子集。使用结构化相关方法获得“最佳”子集,但这种方法也是最具计算密集的。使用其他两种方法获得的子集更容易计算,但分析显示最终的子集包含相关参数。总之,为了避免冗长的计算,可以组合这三种方法以便有效地识别参数子集。

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