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Evaluation performance of local adaptive binarization algorithms for trabecular bone on simulated #x00B5;CT

机译:局部自适应二值化算法对模拟μct的局部自适应二值化算法的评价性能

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In this work, five local adaptive thresholding methods (named Bernsen, Niblack, Sauvola, Wellner and White) were evaluated to segment three-dimensional X-ray microtomographies (µCT). The basic objective was to use a computer algorithm to automatically quantify bone morphology. The performance of these methods was quantitatively evaluated by using 128 images (pixel size of 0.015 mm) obtained from a three-dimensional numerical phantom, which mimics the porosity of trabecular bone. Thereafter, standard histomorphometric parameters (bone-volume to total-volume ratio [BV/TV (%)], bone-surface to bone-volume ratio [BS/BV (mm−1)], trabecular thickness [Tb.Th (µm)], trabecular number [Tb.N (mm−1)], and trabecular separation [Tb.Sp (µm)]) were estimated and usad as a means of comparison between the true segmentation values (obtained from the numerical phantom) and the outcome of each binarization algorithm. The results pointed out that Wellner method presented in general smaller errors than the other ones. The next step is to apply this method on real µCT for quantifying bone morphology.
机译:在这项工作中,评估了五种本地自适应阈值处理方法(命名为贝尔森,Niblack,Sauvola,井白和白色),以分段三维X射线微调谱(μCT)。基本目标是使用计算机算法自动量化骨骼形态。通过使用从三维数值模型获得的128个图像(像素尺寸为0.015mm)来定量评估这些方法的性能,其模仿小梁骨的孔隙率。此后,标准组织形态学参数(骨体积与总体积之比[BV / TV(%)],骨表面到骨体积比[BS / BV(毫米 -1 )],骨小梁估计和小梁分离[tb.n(mm -1 / sup>)]厚度[tb.th(μm)],培养和小梁分离[tb.sp(μm)]和uSAD作为一种方法真正分割值(从数值幻像获得)的比较和每个二值化算法的结果。结果指出,普遍呈现的良好方法比其他误差较小。下一步是在真实μct上应用该方法,用于量化骨骼形态。

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