Barone Alessandro, Fenton Flavio, Veneziani Alessandro
Department of Mathematics and Computer Science, Emory University, Atlanta, Georgia 30322, USA.
Department of Physics, Georgia Institute of Technology, Atlanta, Georgia 30332, USA.
Chaos. 2017 Sep;27(9):093930. doi: 10.1063/1.5001454.
An accurate estimation of cardiac conductivities is critical in computational electro-cardiology, yet experimental results in the literature significantly disagree on the values and ratios between longitudinal and tangential coefficients. These are known to have a strong impact on the propagation of potential particularly during defibrillation shocks. Data assimilation is a procedure for merging experimental data and numerical simulations in a rigorous way. In particular, variational data assimilation relies on the least-square minimization of the misfit between simulations and experiments, constrained by the underlying mathematical model, which in this study is represented by the classical Bidomain system, or its common simplification given by the Monodomain problem. Operating on the conductivity tensors as control variables of the minimization, we obtain a parameter estimation procedure. As the theory of this approach currently provides only an existence proof and it is not informative for practical experiments, we present here an extensive numerical simulation campaign to assess practical critical issues such as the size and the location of the measurement sites needed for in silico test cases of potential experimental and realistic settings. This will be finalized with a real validation of the variational data assimilation procedure. Results indicate the presence of lower and upper bounds for the number of sites which guarantee an accurate and minimally redundant parameter estimation, the location of sites being generally non critical for properly designed experiments. An effective combination of parameter estimation based on the Monodomain and Bidomain models is tested for the sake of computational efficiency. Parameter estimation based on the Monodomain equation potentially leads to the accurate computation of the transmembrane potential in real settings.
在计算心电图学中,准确估计心脏电导率至关重要,但文献中的实验结果在纵向和切向系数的值及比率上存在显著分歧。众所周知,这些系数对电位传播有很大影响,尤其是在除颤电击期间。数据同化是一种将实验数据与数值模拟以严格方式合并的过程。特别是,变分数据同化依赖于在基础数学模型约束下,使模拟与实验之间的失配最小化的最小二乘法,在本研究中,该数学模型由经典双域系统或其由单域问题给出的常见简化形式表示。将电导率张量作为最小化的控制变量进行操作,我们得到了一种参数估计方法。由于该方法的理论目前仅提供了存在性证明,且对实际实验并无指导意义,我们在此展示了一项广泛的数值模拟活动,以评估实际关键问题,如潜在实验和现实设置的计算机模拟测试案例所需测量部位的大小和位置。这将通过对变分数据同化过程的实际验证来完成。结果表明,存在保证准确且最少冗余参数估计的部位数量的下限和上限,对于设计合理的实验,部位位置通常并非关键因素。为了计算效率,测试了基于单域和双域模型的参数估计的有效组合。基于单域方程的参数估计有可能在实际情况下准确计算跨膜电位。