IEEE Trans Med Imaging. 2014 Feb;33(2):372-83. doi: 10.1109/TMI.2013.2285503. Epub 2013 Oct 11.
Statistical analysis of motion patterns of body joints is potentially useful for detecting and quantifying pathologies. However, building a statistical motion model across different subjects remains a challenging task, especially for a complex joint like the wrist. We present a novel framework for simultaneous registration and segmentation of multiple 3-D (CT or MR) volumes of different subjects at various articulated positions. The framework starts with a pose model generated from 3-D volumes captured at different articulated positions of a single subject (template). This initial pose model is used to register the template volume to image volumes from new subjects. During this process, the Grow-Cut algorithm is used in an iterative refinement of the segmentation of the bone along with the pose parameters. As each new subject is registered and segmented, the pose model is updated, improving the accuracy of successive registrations. We applied the algorithm to CT images of the wrist from 25 subjects, each at five different wrist positions and demonstrated that it performed robustly and accurately. More importantly, the resulting segmentations allowed a statistical pose model of the carpal bones to be generated automatically without interaction. The evaluation results show that our proposed framework achieved accurate registration with an average mean target registration error of 0.34 ±0.27 mm. The automatic segmentation results also show high consistency with the ground truth obtained semi-automatically. Furthermore, we demonstrated the capability of the resulting statistical pose and shape models by using them to generate a measurement tool for scaphoid-lunate dissociation diagnosis, which achieved 90% sensitivity and specificity.
关节运动模式的统计分析对于检测和量化病理变化具有潜在的应用价值。然而,构建跨不同个体的统计运动模型仍然是一项具有挑战性的任务,特别是对于腕关节这样复杂的关节。我们提出了一种新的框架,用于在不同的关节位置对不同个体的多个 3-D(CT 或 MR)体积进行同时配准和分割。该框架从单个个体的不同关节位置采集的 3-D 体积生成的姿势模型开始(模板)。该初始姿势模型用于将模板体积配准到新个体的图像体积。在此过程中,使用 Grow-Cut 算法对骨骼的分割和姿势参数进行迭代细化。随着每个新个体的注册和分割,姿势模型得到更新,从而提高了连续注册的准确性。我们将该算法应用于 25 个个体的 CT 图像,每个个体有五个不同的腕部位置,并证明该算法具有强大而准确的性能。更重要的是,生成的分割允许自动生成腕骨的统计姿势模型,而无需交互。评估结果表明,我们提出的框架实现了准确的注册,平均目标注册误差为 0.34±0.27mm。自动分割结果也与半自动获得的真实值高度一致。此外,我们还通过使用这些模型生成用于诊断舟月骨分离的测量工具,展示了生成的统计姿势和形状模型的能力,该工具的灵敏度和特异性均达到 90%。