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Predicting the Biomechanical Strength of Proximal Femur Specimens with Minkowski Functionals and Support Vector Regression

机译:用Minkowski泛函和支持向量回归预测股骨近端的生物力学强度

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Regional trabecular bone quality estimation for purposes of femoral bone strength prediction is important for improving the clinical assessment of osteoporotic fracture risk. In this study, we explore the ability of 3D Minkowski Functionals derived from multi-detector computed tomography (MDCT) images of proximal femur specimens in predicting their corresponding biomechanical strength. MDCT scans were acquired for 50 proximal femur specimens harvested from human cadavers. An automated volume of interest (VOI)-fitting algorithm was used to define a consistent volume in the femoral head of each specimen. In these VOIs, the trabecular bone micro-architecture was characterized by statistical moments of its BMD distribution and by topological features derived from Minkowski Functionals. A linear multi-regression analysis and a support vector regression (SVR) algorithm with a linear kernel were used to predict the failure load (FL) from the feature sets; the predicted FL was compared to the true FL determined through biomechanical testing. The prediction performance was measured by the root mean square error (RMSE) for each feature set. The best prediction result was obtained from the Minkowski Functional surface used in combination with SVR, which had the lowest prediction error (RMSE = 0.939 ± 0.345) and which was significantly lower than mean BMD (RMSE = 1.075 ± 0.279, p<0.005). Our results indicate that the biomechanical strength prediction can be significantly improved in proximal femur specimens with Minkowski Functionals extracted from on MDCT images used in conjunction with support vector regression.
机译:为了预测股骨强度而进行区域小梁骨质量评估对于改善骨质疏松性骨折风险的临床评估非常重要。在这项研究中,我们探讨了从股骨近端标本的多探测器计算机断层扫描(MDCT)图像得出的3D Minkowski功能预测其相应的生物力学强度的能力。获得了从人尸体内采集的50个股骨近端标本的MDCT扫描图。使用感兴趣的自动体积(VOI)拟合算法来定义每个标本的股骨头中的体积一致。在这些VOI中,小梁骨微体系结构的特征在于其BMD分布的统计矩以及源自Minkowski Functionals的拓扑特征。线性多元回归分析和带有线性核的支持向量回归(SVR)算法用于从特征集中预测失效载荷(FL)。将预测的FL与通过生物力学测试确定的真实FL进行比较。预测性能是通过每个功能集的均方根误差(RMSE)来衡量的。从Minkowski功能面与SVR结合使用可获得最佳预测结果,其预测误差最低(RMSE = 0.939±0.345),并且显着低于平均BMD(RMSE = 1.075±0.279,p <0.005)。我们的结果表明,可以使用从支持向量回归中结合使用的MDCT图像上提取的Minkowski功能,在股骨近端标本中显着改善生物力学强度预测。

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