Crozier A, Augustin C M, Neic A, Prassl A J, Holler M, Fastl T E, Hennemuth A, Bredies K, Kuehne T, Bishop M J, Niederer S A, Plank G
Institute of Biophysics, Medical University of Graz, Harrachgasse 21/IV, 8010, Graz, Austria.
Institute for Mathematics and Scientific Computing, University of Graz, Graz, Austria.
Ann Biomed Eng. 2016 Jan;44(1):58-70. doi: 10.1007/s10439-015-1474-5. Epub 2015 Sep 30.
Computational models of cardiac electromechanics (EM) are increasingly being applied to clinical problems, with patient-specific models being generated from high fidelity imaging and used to simulate patient physiology, pathophysiology and response to treatment. Current structured meshes are limited in their ability to fully represent the detailed anatomical data available from clinical images and capture complex and varied anatomy with limited geometric accuracy. In this paper, we review the state of the art in image-based personalization of cardiac anatomy for biophysically detailed, strongly coupled EM modeling, and present our own tools for the automatic building of anatomically and structurally accurate patient-specific models. Our method relies on using high resolution unstructured meshes for discretizing both physics, electrophysiology and mechanics, in combination with efficient, strongly scalable solvers necessary to deal with the computational load imposed by the large number of degrees of freedom of these meshes. These tools permit automated anatomical model generation and strongly coupled EM simulations at an unprecedented level of anatomical and biophysical detail.
心脏电机械学(EM)的计算模型越来越多地应用于临床问题,通过高保真成像生成特定患者模型,并用于模拟患者的生理、病理生理以及对治疗的反应。当前的结构化网格在充分表示临床图像中可用的详细解剖数据以及以有限的几何精度捕捉复杂多样的解剖结构方面能力有限。在本文中,我们回顾了基于图像的心脏解剖个性化技术在生物物理细节丰富、强耦合EM建模方面的现状,并展示了我们自己用于自动构建解剖和结构准确的特定患者模型的工具。我们的方法依赖于使用高分辨率非结构化网格来离散物理、电生理和力学,同时结合高效、强可扩展的求解器,以应对这些网格大量自由度所带来的计算负荷。这些工具能够以前所未有的解剖和生物物理细节水平实现自动解剖模型生成和强耦合EM模拟。