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A machine learning approach as a surrogate of finite element analysis–based inverse method to estimate the zero‐pressure geometry of human thoracic aorta

机译:机器学习方法替代基于有限元分析的逆方法来估计人胸主动脉的零压力几何

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摘要

Advances in structural finite element analysis (FEA) and medical imaging have made it possible to investigate the in vivo biomechanics of human organs such as blood vessels, for which organ geometries at the zero-pressure level need to be recovered. Although FEA-based inverse methods are available for zero-pressure geometry estimation, these methods typically require iterative computation, which are time-consuming and may be not suitable for time-sensitive clinical applications. In this study, by using machine learning (ML) techniques, we developed an ML model to estimate the zero-pressure geometry of human thoracic aorta given 2 pressurized geometries of the same patient at 2 different blood pressure levels. For the ML model development, a FEA-based method was used to generate a dataset of aorta geometries of 3125 virtual patients. The ML model, which was trained and tested on the dataset, is capable of recovering zero-pressure geometries consistent with those generated by the FEA-based method. Thus, this study demonstrates the feasibility and great potential of using ML techniques as a fast surrogate of FEA-based inverse methods to recover zero-pressure geometries of human organs.
机译:结构有限元分析(FEA)和医学成像技术的进步使得研究人体器官(如血管)的体内生物力学成为可能,为此需要恢复零压力水平的器官几何形状。尽管基于FEA的逆方法可用于零压力几何估计,但这些方法通常需要进行迭代计算,这很耗时,可能不适用于对时间敏感的临床应用。在这项研究中,通过使用机器学习(ML)技术,我们开发了一个ML模型来估算给定相同患者在2种不同血压水平下的2种加压几何形状时人胸主动脉的零压力几何形状。对于ML模型的开发,基于FEA的方法用于生成3125个虚拟患者的主动脉几何形状的数据集。在数据集上经过训练和测试的ML模型能够恢复与基于FEA的方法生成的零压力几何形状一致的零压力几何形状。因此,本研究证明了使用ML技术作为基于FEA的反方法快速替代人体器官零压力几何形状的快速替代方法的可行性和巨大潜力。

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