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On a sparse pressure-flow rate condensation of rigid circulation models

机译:刚性循环模型的稀疏压力-流量凝结

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摘要

Cardiovascular simulation has shown potential value in clinical decision-making, providing a framework to assess changes in hemodynamics produced by physiological and surgical alterations. State-of-the-art predictions are provided by deterministic multiscale numerical approaches coupling 3D finite element Navier Stokes simulations to lumped parameter circulation models governed by ODEs. Development of next-generation stochastic multiscale models whose parameters can be learned from available clinical data under uncertainty constitutes a research challenge made more difficult by the high computational cost typically associated with the solution of these models. We present a methodology for constructing reduced representations that condense the behavior of 3D anatomical models using outlet pressure-flow polynomial surrogates, based on multiscale model solutions spanning several heart cycles. Relevance vector machine regression is compared with maximum likelihood estimation, showing that sparse pressure/flow rate approximations offer superior performance in producing working surrogate models to be included in lumped circulation networks. Sensitivities of outlets flow rates are also quantified through a Sobol’ decomposition of their total variance encoded in the orthogonal polynomial expansion. Finally, we show that augmented lumped parameter models including the proposed surrogates accurately reproduce the response of multiscale models they were derived from. In particular, results are presented for models of the coronary circulation with closed loop boundary conditions and the abdominal aorta with open loop boundary conditions.
机译:心血管模拟已显示出在临床决策中的潜在价值,为评估由生理和手术改变产生的血液动力学变化提供了框架。通过将3D有限元Navier Stokes模拟与ODE控制的集总参数循环模型相结合的确定性多尺度数值方法,可以提供最新的预测。可以在不确定性下从可用的临床数据中学习参数的下一代随机多尺度模型的开发构成了研究挑战,因为与这些模型的解决方案通常相关的高计算成本使其变得更加困难。我们基于跨多个心动周期的多尺度模型解决方案,提出了一种构造简化表示法的方法,该简化表示法使用出口压力流多项式替代物来压缩3D解剖模型的行为。关联向量机回归与最大似然估计进行了比较,表明稀疏压力/流速近似值在生成要包含在集总循环网络中的工作替代模型时具有出色的性能。出口流量的敏感性也可以通过正交多项式展开中编码的总方差的Sobol分解来量化。最后,我们表明,包括建议的替代项在内的增强集总参数模型可以准确地重现它们源自的多尺度模型的响应。特别是,给出了具有闭环边界条件的冠状动脉循环模型和具有开环边界条件的腹主动脉模型的结果。

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