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Rigid model-based 3D segmentation of the bones of joints in MR and CT images for motion analysis

机译:基于刚性模型的MR和CT图像中关节骨骼的3D分割以进行运动分析

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摘要

There are several medical application areas that require the segmentation and separation of the component bones of joints in a sequence of images of the joint acquired under various loading conditions, our own target area being joint motion analysis. This is a challenging problem due to the proximity of bones at the joint, partial volume effects, and other imaging modality-specific factors that confound boundary contrast. In this article, a two-step model-based segmentation strategy is proposed that utilizes the unique context of the current application wherein the shape of each individual bone is preserved in all scans of a particular joint while the spatial arrangement of the bones alters significantly among bones and scans. In the first step, a rigid deterministic model of the bone is generated from a segmentation of the bone in the image corresponding to one position of the joint by using the live wire method. Subsequently, in other images of the same joint, this model is used to search for the same bone by minimizing an energy function that utilizes both boundary- and region-based information. An evaluation of the method by utilizing a total of 60 data sets on MR and CT images of the ankle complex and cervical spine indicates that the segmentations agree very closely with the live wire segmentations, yielding true positive and false positive volume fractions in the range 89%–97% and 0.2%–0.7%. The method requires 1–2 minutes of operator time and 6–7 min of computer time per data set, which makes it significantly more efficient than live wire—the method currently available for the task that can be used routinely.
机译:有几个医疗应用领域需要在各种载荷条件下获取的关节图像序列中对关节的组成部分进行分割和分离,我们自己的目标区域是关节运动分析。这是一个具有挑战性的问题,因为骨头在关节处接近,局部体积效应以及其他混淆边界对比度的成像方式特定因素。在本文中,提出了一种基于模型的两步分割策略,该策略利用了当前应用程序的独特上下文,其中在特定关节的所有扫描中保留了每个骨骼的形状,而骨骼之间的空间排列却发生了显着变化。骨头和扫描。在第一步中,使用带电导线方法根据图像中与关节一个位置相对应的骨骼分割生成骨骼的刚性确定性模型。随后,在同一关节的其他图像中,此模型用于通过最小化利用基于边界和基于区域的信息的能量函数来搜索相同的骨骼。通过在踝关节和颈椎的MR和CT图像上利用总共60个数据集对该方法进行评估,表明该分割与带电导线分割非常吻合,产生的真阳性和假阳性体积分数在89范围内%–97%和0.2%–0.7%。该方法每个数据集需要1-2分钟的操作员时间和6–7分钟的计算机时间,这使其比带电作业的效率高得多,后者是目前可常规用于该任务的方法。

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