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Bayesian sensitivity analysis of a 1D vascular model with Gaussian process emulators

机译:高斯过程仿真器对一维血管模型的贝叶斯敏感性分析

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One-dimensional models of the cardiovascular system can capture the physics of pulse waves but involve many parameters. Since these may vary among individuals, patient-specific models are difficult to construct. Sensitivity analysis can be used to rank model parameters by their effect on outputs and to quantify how uncertainty in parameters influences output uncertainty. This type of analysis is often conducted with a Monte Carlo method, where large numbers of model runs are used to assess input-output relations. The aim of this study was to demonstrate the computational efficiency of variance-based sensitivity analysis of 1D vascular models using Gaussian process emulators, compared to a standard Monte Carlo approach. The methodology was tested on four vascular networks of increasing complexity to analyse its scalability. The computational time needed to perform the sensitivity analysis with an emulator was reduced by the 99.96% compared to a Monte Carlo approach. Despite the reduced computational time, sensitivity indices obtained using the two approaches were comparable. The scalability study showed that the number of mechanistic simulations needed to train a Gaussian process for sensitivity analysis was of the order O(d), rather than O(dx103) needed for Monte Carlo analysis (where d is the number of parameters in the model). The efficiency of this approach, combined with capacity to estimate the impact of uncertain parameters on model outputs, will enable development of patient-specific models of the vascular system, and has the potential to produce results with clinical relevance.
机译:心血管系统的一维模型可以捕获脉搏波的物理性质,但涉及许多参数。由于这些可能因人而异,因此难以构建针对患者的模型。灵敏度分析可用于根据模型参数对输出的影响对其进行排名,并量化参数的不确定性如何影响输出不确定性。此类分析通常使用蒙特卡洛方法进行,其中大量模型运行用于评估输入输出关系。这项研究的目的是证明与标准的蒙特卡洛方法相比,使用高斯过程模拟器对一维血管模型进行基于方差的敏感性分析的计算效率。该方法论在越来越复杂的四个血管网络上进行了测试,以分析其可扩展性。与蒙特卡洛方法相比,使用仿真器执行灵敏度分析所需的计算时间减少了99.96%。尽管减少了计算时间,但是使用两种方法获得的灵敏度指标是可比的。可伸缩性研究表明,训练高斯过程进行灵敏度分析所需的机械模拟数量约为O(d),而不是蒙特卡洛分析所需的O(dx103)(其中d是模型中的参数数量) )。这种方法的效率,加上估计不确定参数对模型输出的影响的能力,将能够开发特定于患者的血管系统模型,并有可能产生与临床相关的结果。

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