MOX-Dipartimento di Matematica, Politecnico di Milano, Milan, Italy.
Mathematics Institute, École Polytechnique Fédérale de Lausanne, Lausanne, Switzerland.
Int J Numer Method Biomed Eng. 2024 Jan;40(1):e3783. doi: 10.1002/cnm.3783. Epub 2023 Nov 3.
Reducing the computational time required by high-fidelity, full-order models (FOMs) for the solution of problems in cardiac mechanics is crucial to allow the translation of patient-specific simulations into clinical practice. Indeed, while FOMs, such as those based on the finite element method, provide valuable information on the cardiac mechanical function, accurate numerical results can be obtained at the price of very fine spatio-temporal discretizations. As a matter of fact, simulating even just a few heartbeats can require up to hours of wall time on high-performance computing architectures. In addition, cardiac models usually depend on a set of input parameters that are calibrated in order to explore multiple virtual scenarios. To compute reliable solutions at a greatly reduced computational cost, we rely on a reduced basis method empowered with a new deep learning-based operator approximation, which we refer to as Deep-HyROMnet technique. Our strategy combines a projection-based POD-Galerkin method with deep neural networks for the approximation of (reduced) nonlinear operators, overcoming the typical computational bottleneck associated with standard hyper-reduction techniques employed in reduced-order models (ROMs) for nonlinear parametrized systems. This method can provide extremely accurate approximations to parametrized cardiac mechanics problems, such as in the case of the complete cardiac cycle in a patient-specific left ventricle geometry. In this respect, a 3D model for tissue mechanics is coupled with a 0D model for external blood circulation; active force generation is provided through an adjustable parameter-dependent surrogate model as input to the tissue 3D model. The proposed strategy is shown to outperform classical projection-based ROMs, in terms of orders of magnitude of computational speed-up, and to return accurate pressure-volume loops in both physiological and pathological cases. Finally, an application to a forward uncertainty quantification analysis, unaffordable if relying on a FOM, is considered, involving output quantities of interest such as, for example, the ejection fraction or the maximal rate of change in pressure in the left ventricle.
降低用于解决心脏力学问题的高保真、全阶模型 (FOM) 所需的计算时间对于将患者特定模拟转化为临床实践至关重要。事实上,虽然基于有限元方法等 FOM 可以提供有关心脏机械功能的有价值信息,但要获得准确的数值结果,就必须进行非常精细的时空离散化。实际上,即使只是模拟几次心跳,在高性能计算架构上可能需要长达数小时的计算时间。此外,心脏模型通常依赖于一组输入参数,这些参数需要经过校准,以便探索多个虚拟场景。为了以大大降低的计算成本计算可靠的解决方案,我们依赖于一种具有新的基于深度学习的算子逼近的简化基础方法,我们称之为 Deep-HyROMnet 技术。我们的策略结合了基于投影的 POD-Galerkin 方法和深度神经网络,用于逼近(简化)非线性算子,克服了与用于非线性参数化系统的简化模型 (ROM) 中标准超简化技术相关的典型计算瓶颈。这种方法可以为参数化心脏力学问题提供极其准确的逼近,例如在特定于患者的左心室几何形状的完整心脏周期的情况下。在这方面,组织力学的 3D 模型与外部血液循环的 0D 模型相结合;主动力生成是通过可调参数相关的替代模型作为组织 3D 模型的输入来提供的。所提出的策略在计算速度提高的数量级上优于经典基于投影的 ROM,并在生理和病理情况下返回准确的压力-容积环。最后,考虑了一种向前不确定性量化分析的应用,如果依赖于 FOM,则无法进行该应用,该应用涉及诸如射血分数或左心室压力最大变化率等感兴趣的输出量。