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Automatic Segmentation of Bone Tissue from Computed Tomography Using a Volumetric Local Binary Patterns Based Method

机译:使用基于体积局部二值模式的方法从计算机断层扫描中自动分割骨组织

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Segmentation of scanned tissue volumes of three-dimensional (3D) images often involves - at least partially - some manual process, as there is no standardized automatic method. A well-performing automatic segmentation would be preferable, not only because it would improve segmentation speed, but also because it would be user-independent and provide more objectivity to the task. Here we extend a 3D local binary patterns (LBP) based trabecular bone segmentation method with adaptive local thresholding and additional segmentation parameters to make it more robust yet still perform adequately when compared to traditional user-assisted segmentation. We estimate parameters for the new segmentation method (AMLM) in our experimental setting, and have two micro-computed tomography (μCT) scanned bovine trabecular bone tissue volumes segmented by both the AMLM and two experienced users. Comparison of the results shows superior performance of the AMLM.
机译:由于没有标准化的自动方法,因此对三维(3D)图像的扫描组织体积进行分割通常(至少部分地)涉及一些手动过程。表现良好的自动分段将是更可取的,不仅因为它可以提高分段速度,而且还因为它可以独立于用户并为任务提供更多的客观性。在这里,我们扩展了一种基于3D局部二进制模式(LBP)的小梁骨分割方法,该方法具有自适应局部阈值和其他分割参数,与传统的用户辅助分割相比,它更加健壮,但仍具有足够的性能。我们在实验环境中估计新分割方法(AMLM)的参数,并通过AMLM和两个有经验的用户进行了两次显微计算机断层扫描(μCT)扫描的牛小梁骨组织体积。结果比较表明,AMLM具有出色的性能。

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