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Model-based inference from microvascular measurements: Combining experimental measurements and model predictions using a Bayesian probabilistic approach

机译:基于微血管测量的基于模型的推断:使用贝叶斯概率方法将实验测量和模型预测相结合

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摘要

Objective: In vivo imaging of the microcirculation and network-oriented modeling have emerged as powerful means of studying microvascular function and understanding its physiological significance. Network-oriented modeling may provide the means of summarizing vast amounts of data produced by high-throughput imaging techniques in terms of key, physiological indices. To estimate such indices with sufficient certainty, however, network-oriented analysis must be robust to the inevitable presence of uncertainty due to measurement errors as well as model errors. Methods: We propose the Bayesian probabilistic data analysis framework as a means of integrating experimental measurements and network model simulations into a combined and statistically coherent analysis. The framework naturally handles noisy measurements and provides posterior distributions of model parameters as well as physiological indices associated with uncertainty. Results: We applied the analysis framework to experimental data from three rat mesentery networks and one mouse brain cortex network. We inferred distributions for more than 500 unknown pressure and hematocrit boundary conditions. Model predictions were consistent with previous analyses, and remained robust when measurements were omitted from model calibration. Conclusion: Our Bayesian probabilistic approach may be suitable for optimizing data acquisition and for analyzing and reporting large data sets acquired as part of microvascular imaging studies.
机译:目的:体内微循环成像和面向网络的建模已成为研究微血管功能和了解其生理意义的有力手段。面向网络的建模可以提供根据关键的生理指标汇总由高通量成像技术产生的大量数据的方法。然而,为了足够确定地估计这些指标,面向网络的分析必须对由于测量误差和模型误差而不可避免地存在不确定性具有鲁棒性。方法:我们提出贝叶斯概率数据分析框架,作为将实验测量和网络模型模拟集成到组合的和统计一致的分析中的一种方法。该框架自然地处理噪声测量,并提供模型参数的后验分布以及与不确定性相关的生理指标。结果:我们将分析框架应用于来自三个大鼠肠系膜网络和一个小鼠脑皮质网络的实验数据。我们推断出500多个未知压力和血细胞比容边界条件的分布。模型预测与先前的分析一致,并且在模型校准中省略测量时仍保持稳健。结论:我们的贝叶斯概率方法可能适合于优化数据采集以及分析和报告作为微血管成像研究的一部分而采集的大数据集。

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