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Biomechanical Role of Bone Anisotropy Estimated on Clinical CT Scans by Image Registration

机译:通过图像配准估计临床扫描中骨各向异性的生物力学作用

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摘要

Image-based modeling is a popular approach to perform patient-specific biomechanical simulations. Accurate modeling is critical for orthopedic application to evaluate implant design and surgical planning. It has been shown that bone strength can be estimated from the bone mineral density (BMD) and trabecular bone architecture. However, these findings cannot be directly and fully transferred to patient-specific modeling since only BMD can be derived from clinical CT. Therefore, the objective of this study was to propose a method to predict the trabecular bone structure using a µCT atlas and an image registration technique. The approach has been evaluated on femurs and patellae under physiological loading. The displacement and ultimate force for femurs loaded in stance position were predicted with an error of 2.5% and 3.7%, respectively, while predictions obtained with an isotropic material resulted in errors of 7.3% and 6.9%. Similar results were obtained for the patella, where the strain predicted using the registration approach resulted in an improved mean squared error compared to the isotropic model. We conclude that the registration of anisotropic information from of a single template bone enables more accurate patient-specific simulations from clinical image datasets than isotropic model.
机译:基于图像的建模是执行针对患者的生物力学模拟的流行方法。准确的建模对于骨科应用评估植入物设计和手术计划至关重要。已经表明,可以通过骨矿物质密度(BMD)和小梁骨结构来估计骨强度。但是,由于只有BMD可以从临床CT中获得,所以这些发现不能直接和完全转移到针对患者的模型中。因此,本研究的目的是提出一种使用µCT图谱和图像配准技术预测小梁骨结构的方法。该方法已在生理负荷下对股骨和骨进行了评估。预测站立姿势的股骨的位移和极限力的误差分别为2.5%和3.7%,而各向同性材料的预测误差为7.3%和6.9%。 the骨获得了相似的结果,其中与各向同性模型相比,使用配准方法预测的应变导致均方误差得到改善。我们得出结论,与各向同性模型相比,从单个模板骨骼中记录各向异性信息可以从临床图像数据集中实现更准确的针对患者的模拟。

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