Department of Mechanical and Manufacturing Engineering, University of Cyprus, Nicosia, Cyprus.
Institute for Biomedical Engineering, University and ETH Zurich, Zurich, Switzerland.
Biomech Model Mechanobiol. 2021 Aug;20(4):1579-1597. doi: 10.1007/s10237-021-01464-2. Epub 2021 May 28.
A major concern in personalised models of heart mechanics is the unknown zero-pressure domain, a prerequisite for accurately predicting cardiac biomechanics. As the reference configuration cannot be captured by clinical data, studies often employ in-vivo frames which are unlikely to correspond to unloaded geometries. Alternatively, zero-pressure domain is approximated through inverse methodologies, which, however, entail assumptions pertaining to boundary conditions and material parameters. Both approaches are likely to introduce biases in estimated biomechanical properties; nevertheless, quantification of these effects is unattainable without ground-truth data. In this work, we assess the unloaded state influence on model-derived biomechanics, by employing an in-silico modelling framework relying on experimental data on porcine hearts. In-vivo images are used for model personalisation, while in-situ experiments provide a reliable approximation of the reference domain, creating a unique opportunity for a validation study. Personalised whole-cycle cardiac models are developed which employ different reference domains (image-derived, inversely estimated) and are compared against ground-truth model outcomes. Simulations are conducted with varying boundary conditions, to investigate the effect of data-derived constraints on model accuracy. Attention is given to modelling the influence of the ribcage on the epicardium, due to its close proximity to the heart in the porcine anatomy. Our results find merit in both approaches for dealing with the unknown reference domain, but also demonstrate differences in estimated biomechanical quantities such as material parameters, strains and stresses. Notably, they highlight the importance of a boundary condition accounting for the constraining influence of the ribcage, in forward and inverse biomechanical models.
在心脏力学的个性化模型中,一个主要关注点是未知的零压域,这是准确预测心脏生物力学的前提。由于参考配置无法通过临床数据捕获,因此研究通常采用体内帧,这些帧不太可能对应于卸载几何形状。或者,通过反演方法来近似零压域,然而,这需要涉及边界条件和材料参数的假设。这两种方法都可能导致估计生物力学特性存在偏差;然而,如果没有真实数据,就无法量化这些影响。在这项工作中,我们通过使用基于猪心实验数据的仿真建模框架来评估未加载状态对模型衍生生物力学的影响。体内图像用于模型个性化,而原位实验提供了参考域的可靠逼近,为验证研究创造了独特的机会。我们开发了使用不同参考域(图像衍生、反演估计)的个性化全周期心脏模型,并将其与真实模型结果进行比较。通过改变边界条件进行模拟,以研究数据驱动约束对模型准确性的影响。由于猪解剖结构中肋骨与心脏非常接近,因此我们特别关注建模对心外膜的肋骨影响。我们的结果在处理未知参考域方面两种方法都有价值,但也展示了估计生物力学量(如材料参数、应变和应力)的差异。值得注意的是,它们强调了在正向和反向生物力学模型中考虑肋骨约束影响的边界条件的重要性。