AbstractPersonalised computational models of the heart are of increasing interest for clinical applica'/> Multifidelity-CMA: a multifidelity approach for efficient personalisation of 3D cardiac electromechanical models
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Multifidelity-CMA: a multifidelity approach for efficient personalisation of 3D cardiac electromechanical models

机译:多因素-CMA:3D心脏机电模型有效个性化的多尺寸方法

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AbstractPersonalised computational models of the heart are of increasing interest for clinical applications due to their discriminative and predictive abilities. However, the simulation of a single heartbeat with a 3D cardiac electromechanical model can be long and computationally expensive, which makes some practical applications, such as the estimation of model parameters from clinical data (the personalisation), very slow. Here we introduce an original multifidelity approach between a 3D cardiac model and a simplified “0D” version of this model, which enables to get reliable (and extremely fast) approximations of the global behaviour of the 3D model using 0D simulations. We then use this multifidelity approximation to speed-up an efficient parameter estimation algorithm, leading to a fast and computationally efficient personalisation method of the 3D model. In particular, we show results on a cohort of 121 different heart geometries and measurements. Finally, an exploitable code of the 0D model with scripts to perform parameter estimation will be released to the community.]]>
机译:<![cdata [ <标题>抽象 ara id =“par1”>心脏的个性化计算模型对于越来越令人感兴趣由于它们的鉴别和预测能力,临床应用。然而,使用3D心脏机电模型的单个心跳模拟可以长期且计算昂贵,这使得一些实际应用,例如从临床数据(个性化)的模型参数估计,非常慢。在这里,我们在3D心脏模型和简化的“0D”版本之间引入了该模型的简化的“0d”版本,这使得可以使用0d模拟获得3D模型的全局行为的可靠(非常快速)近似。然后,我们使用该多尺寸近似来加速高效的参数估计算法,导致3D模型的快速和计算上的效率化个性化方法。特别是,我们展示了121个不同心脏几何形状和测量的队列的结果。最后,将发布与脚本进行参数估计的0D模型的可利用代码将发布给社区。 ]]>

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