Pil Nikita, Kuchumov Alex G
Biofluids Laboratory, Perm National Research Polytechnic University, 614990 Perm, Russia.
Department of Computational Mathematics, Mechanics and Biomechanics, Perm National Research Polytechnic University, 614990 Perm, Russia.
Sensors (Basel). 2024 Dec 24;25(1):11. doi: 10.3390/s25010011.
Simulating the cardiac valves is one of the most complex tasks in cardiovascular modeling. As fluid-structure interaction simulations are highly computationally demanding, machine-learning techniques can be considered a good alternative. Nevertheless, it is necessary to design many aortic valve geometries to generate a training set. A method for the design of a synthetic database of geometric models is presented in this study. We suggest using synthetic geometries that enable the development of several aortic valve and left ventricular models in a range of sizes and shapes. In particular, we developed 22 variations of left ventricular geometries, including one original model, seven models with varying wall thicknesses, seven models with varying heights, and seven models with varying shapes. To guarantee anatomical accuracy and physiologically acceptable fluid volumes, these models were verified using actual patient data. Numerical simulations of left ventricle contraction and aortic valve leaflet opening/closing were performed to evaluate the electro-physiological potential distribution in the left ventricle and wall shear stress distribution in aortic valve leaflets. The proposed synthetic database aims to increase the predictive power of machine-learning models in cardiovascular research and, eventually, improve patient outcomes after aortic valve surgery.
模拟心脏瓣膜是心血管建模中最复杂的任务之一。由于流固耦合模拟对计算要求很高,机器学习技术可被视为一种很好的替代方法。然而,有必要设计许多主动脉瓣几何形状以生成训练集。本研究提出了一种设计几何模型合成数据库的方法。我们建议使用合成几何形状,以便能够开发一系列尺寸和形状的多个主动脉瓣和左心室模型。特别是,我们开发了22种左心室几何形状变体,包括一个原始模型、七个壁厚不同的模型、七个高度不同的模型和七个形状不同的模型。为了保证解剖学准确性和生理上可接受的流体体积,使用实际患者数据对这些模型进行了验证。进行了左心室收缩和主动脉瓣小叶开合的数值模拟,以评估左心室内的电生理电位分布和主动脉瓣小叶中的壁面剪应力分布。所提出的合成数据库旨在提高机器学习模型在心血管研究中的预测能力,并最终改善主动脉瓣置换术后的患者预后。