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Using Anisotropic 3D Minkowski Functionals for Trabecular Bone Characterization and Biomechanical Strength Prediction in Proximal Femur Specimens

机译:使用各向异性3D Minkowski功能进行骨小梁标本的骨小梁骨表征和生物力学强度预测

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The ability of Anisotropic Minkowski Functionals (AMFs) to capture local anisotropy while evaluating topological properties of the underlying gray-level structures has been previously demonstrated. We evaluate the ability of this approach to characterize local structure properties of trabecular bone micro-architecture in ex vivo proximal femur specimens, as visualized on multi-detector CT, for purposes of biomechanical bone strength prediction. To this end, volumetric AMFs were computed locally for each voxel of volumes of interest (VOI) extracted from the femoral head of 146 specimens. The local anisotropy captured by such AMFs was quantified using a fractional anisotropy measure; the magnitude and direction of anisotropy at every pixel was stored in histograms that served as a feature vectors that characterized the VOIs. A linear multi-regression analysis algorithm was 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 performance was obtained from the fractional anisotropy histogram of AMF Euler Characteristic (RMSE = 1.01 ± 0.13), which was significantly better than MDCT-derived mean BMD (RMSE = 1.12 ± 0.16,p<0.05). We conclude that such anisotropic Minkowski Functionals can capture valuable information regarding regional trabecular bone quality and contribute to improved bone strength prediction, which is important for improving the clinical assessment of osteoporotic fracture risk.
机译:以前已经证明了各向异性Minkowski泛函(AMF)在评估基础灰度结构的拓扑特性时捕获局部各向异性的能力。我们评估了这种方法表征离体股骨近端标本中小梁骨微结构的局部结构特性的能力,如在多探测器CT上可视化的目的,目的是预测生物力学骨强度。为此,针对从146个标本的股骨头中提取的每个感兴趣体积(VOI)体素,对本地体积AMF进行​​了计算。使用分数各向异性测度对由此类AMF捕获的局部各向异性进行了量化。每个像素的各向异性的大小和方向都存储在直方图中,直方图用作表征VOI的特征向量。线性多元回归分析算法被用来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AMF欧拉特征的分数各向异性直方图(RMSE = 1.01±0.13)获得最佳的预测性能,这明显好于MDCT得出的平均BMD(RMSE = 1.12±0.16,p <0.05)。我们得出的结论是,这样的各向异性Minkowski功能模块可以捕获有关区域小梁骨质量的有价值的信息,并有助于改善骨强度预测,这对于改善骨质疏松性骨折风险的临床评估非常重要。

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