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Improving bone strength prediction in human proximal femur specimens through geometrical characterization of trabecular bone microarchitecture and support vector regression

机译:通过小梁骨微结构的几何表征和支持向量回归来改善人类股骨近端标本的骨强度预测

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摘要

We investigate the use of different trabecular bone descriptors and advanced machine learning tech niques to complement standard bone mineral density (BMD) measures derived from dual-energy x-ray absorptiometry (DXA) for improving clinical assessment of osteoporotic fracture risk. For this purpose, volumes of interest were extracted from the head, neck, and trochanter of 146 ex vivo proximal femur specimens on multidetector computer tomography. The trabecular bone captured was characterized with (1) statistical moments of the BMD distribution, (2) geometrical features derived from the scaling index method (SIM), and (3) morphometric parameters, such as bone fraction, trabecular thickness, etc. Feature sets comprising DXA BMD and such supplemental features were used to predict the failure load (FL) of the specimens, previously determined through biomechanical testing, with multiregression and support vector regression. Prediction performance was measured by the root mean square error (RMSE); correlation with measured FL was evaluated using the coefficient of determination R2. The best prediction performance was achieved by a combination of DXA BMD and SIM-derived geometric features derived from the femoral head (RMSE: 0.869 ± 0.121, R2: 0.68 ± 0.079), which was significantly better than DXA BMD alone (RMSE: 0.948 ± 0.119, R2: 0.61 ± 0.101) (p < 10−4). For multivariate feature sets, SVR outperformed multiregression (p < 0.05). These results suggest that supplementing standard DXA BMD measurements with sophisticated femoral trabecular bone characterization and supervised learning techniques can significantly improve biomechanical strength prediction in proximal femur specimens.
机译:我们调查使用不同的小梁骨描述符和先进的机器学习技术来补充源自双能X线骨密度仪(DXA)的标准骨矿物质密度(BMD)措施,以改善骨质疏松性骨折风险的临床评估。为此,在多探测器计算机断层扫描中从146个离体近端股骨标本的头部,颈部和转子中提取了感兴趣的体积。捕获的小梁骨具有以下特征:(1)BMD分布的统计矩,(2)从比例指数法(SIM)得出的几何特征,以及(3)形态参数,例如骨比例,小梁厚度等。包含DXA BMD和此类补充特征的样本集用于预测样本的破坏载荷(FL),该样本先前已通过生物力学测试确定,并具有多元回归和支持向量回归。预测性能是通过均方根误差(RMSE)来衡量的;使用测定系数R 2 评估与FL的相关性。结合股骨头部的DXA BMD和SIM衍生的几何特征(RMSE:0.869±0.121,R 2 :0.68±0.079),可以获得最佳的预测性能,明显优于单独使用DXA BMD(RMSE:0.948±0.119,R 2 :0.61±0.101)(p <10 −4 )。对于多元特征集,SVR优于多元回归(p <0.05)。这些结果表明,用复杂的股骨小梁骨表征和有监督的学习技术补充标准的DXA BMD测量可以显着改善股骨近端标本的生物力学强度预测。

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