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Stochastic Finite Element Framework for Cardiac Kinematics Function and Material Property Analysis

机译:心脏运动函数和材料性质分析的随机有限元框架

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A stochastic finite element method (SFEM) based framework is proposed for the simultaneous estimation of cardiac kinematics functions and material model parameters. While existing biomechanics studies of myocardial material constitutive laws have assumed known kinematics, and image analyses of cardiac kinematics have relied on chosen constraining models (mathematical or mechanical), we believe that a probabilistic strategy is needed to achieve robust and optimal estimates of kinematics functions and material parameters at the same time. For a particular a priori patient-dependent constraining material model with uncertain parameters and a posteriori noisy observations, stochastic differential equations are combined with the finite element method. The material parameters and the imaging/image-derived data are treated as random variables with known prior statistics in the dynamic system equations of the heart. In our current implementation, extended Kalman filter (EKF) procedures are adopted to linearize the equations and to provide the joint estimates. Because of the periodic nature of the cardiac dynamics, we conclude experimentally that it is possible to adopt this physical-model based optimal estimation approach to achieve converged estimates. Results from canine MR phase contrast images with linear elastic model are presented.
机译:提出了一种基于随机有限元方法(SFEM)的框架,用于同时估计心脏运动学功能和材料模型参数。虽然现有的心肌材料本质法的生物力学研究已经假定了已知的运动学,并且心脏运动学的图像分析依赖于所选择的约束模型(数学或机械),我们认为需要概率策略来实现运动学功能的稳健和最佳估计材料参数同时。对于具有不确定参数的优先患者依赖性约束材料模型和后验噪声观察,随机微分方程与有限元方法组合。材料参数和成像/图像导出数据被视为具有已知的心脏动态系统方程中已知的先前统计的随机变量。在我们目前的实施中,采用扩展卡尔曼滤波器(EKF)程序来线性化方程式并提供联合估计。由于心动力学的周期性,我们通过实验得出结论,可以采用基于物理模型的最优估计方法来实现融合估计。提出了犬MR相对比图像与线性弹性模型的结果。

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