McCaig Institute for Bone and Joint Health, University of Calgary, Calgary, Canada; Department of Radiology, University of Calgary, Calgary, Canada.
Department of Radiology, University of Calgary, Calgary, Canada; Hotchkiss Brain Institute, University of Calgary, Calgary, Canada.
Med Image Anal. 2021 Jan;67:101887. doi: 10.1016/j.media.2020.101887. Epub 2020 Oct 31.
Methods for reliable femur segmentation enable the execution of quality retrospective studies and building of robust screening tools for bone and joint disease. An enhance-and-segment pipeline is proposed for proximal femur segmentation from computed tomography datasets. The filter is based on a scale-space model of cortical bone with properties including edge localization, invariance to density calibration, rotation invariance, and stability to noise. The filter is integrated with a graph cut segmentation technique guided through user provided sparse labels for rapid segmentation. Analysis is performed on 20 independent femurs. Rater proximal femur segmentation agreement was 0.21 mm (average surface distance), 0.98 (Dice similarity coefficient), and 2.34 mm (Hausdorff distance). Manual segmentation added considerable variability to measured failure load and volume (CV > 5%) but not density. The proposed algorithm considerably improved inter-rater reproducibility for all three outcomes (CV < 0.5%). The algorithm localized the periosteal surface accurately compared to manual segmentation but with a slight bias towards a smaller volume. Hessian-based filtering and graph cut segmentation localizes the periosteal surface of the proximal femur with comparable accuracy and improved precision compared to manual segmentation.
可靠的股骨分割方法能够实现高质量的回顾性研究,并为骨骼和关节疾病构建强大的筛查工具。本文提出了一种从 CT 数据集进行股骨近端分割的增强和分割管道。该滤波器基于皮质骨的尺度空间模型,具有边缘定位、对密度校准不变性、旋转不变性和对噪声稳定性等特性。该滤波器与基于用户提供的稀疏标签的图割分割技术相结合,实现快速分割。对 20 个独立的股骨进行了分析。评估者的股骨近端分割一致性为 0.21 毫米(平均表面距离)、0.98(Dice 相似系数)和 2.34 毫米(Hausdorff 距离)。手动分割对测量的失效载荷和体积(CV>5%)但不对密度增加了相当大的可变性。与手动分割相比,所提出的算法大大提高了所有三个结果的组内可重复性(CV<0.5%)。与手动分割相比,基于 Hessian 的滤波和图割分割算法能够更准确地定位股骨近端的骨膜表面,但体积略有偏差。与手动分割相比,基于 Hessian 的滤波和图割分割算法能够更准确地定位股骨近端的骨膜表面,且具有更高的精度。