Truskey George A
Department of Biomedical Engineering, Duke University, Durham, NC 27701, USA.
Bioengineering (Basel). 2023 Sep 9;10(9):1066. doi: 10.3390/bioengineering10091066.
When combined with patient information provided by advanced imaging techniques, computational biomechanics can provide detailed patient-specific information about stresses and strains acting on tissues that can be useful in diagnosing and assessing treatments for diseases and injuries. This approach is most advanced in cardiovascular applications but can be applied to other tissues. The challenges for advancing computational biomechanics for real-time patient diagnostics and treatment include errors and missing information in the patient data, the large computational requirements for the numerical solutions to multiscale biomechanical equations, and the uncertainty over boundary conditions and constitutive relations. This review summarizes current efforts to use deep learning to address these challenges and integrate large data sets and computational methods to enable real-time clinical information. Examples are drawn from cardiovascular fluid mechanics, soft-tissue mechanics, and bone biomechanics. The application of deep-learning convolutional neural networks can reduce the time taken to complete image segmentation, and meshing and solution of finite element models, as well as improving the accuracy of inlet and outlet conditions. Such advances are likely to facilitate the adoption of these models to aid in the assessment of the severity of cardiovascular disease and the development of new surgical treatments.
当与先进成像技术提供的患者信息相结合时,计算生物力学可以提供关于作用于组织的应力和应变的详细的患者特异性信息,这对于疾病和损伤的诊断及治疗评估可能是有用的。这种方法在心血管应用中最为先进,但也可应用于其他组织。推进计算生物力学用于实时患者诊断和治疗面临的挑战包括患者数据中的误差和信息缺失、多尺度生物力学方程数值解的巨大计算需求,以及边界条件和本构关系的不确定性。这篇综述总结了目前利用深度学习来应对这些挑战并整合大数据集和计算方法以实现实时临床信息的努力。实例取自心血管流体力学、软组织力学和骨生物力学。深度学习卷积神经网络的应用可以减少完成图像分割、有限元模型的网格划分和求解所需的时间,同时提高进出口条件的准确性。这些进展可能会促进采用这些模型来辅助评估心血管疾病的严重程度以及开发新的外科治疗方法。