首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Fast Algorithm for Probabilistic Bone Edge Detection (FAPBED)
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Fast Algorithm for Probabilistic Bone Edge Detection (FAPBED)

机译:概率骨边缘检测的快速算法(FAPBED)

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The registration of preoperative CT to intra-operative reality systems is a crucial step in Computer Assisted Orthopedic Surgery (CAOS). The intra-operative sensors include 3D digitizers, fiducials, X-rays and Ultrasound (US). FAPBED is designed to process CT volumes for registration to tracked US data. Tracked US is advantageous because it is real time, noninvasive, and non-ionizing, but it is also known to have inherent inaccuracies which create the need to develop a framework that is robust to various uncertainties, and can be useful in US-CT registration. Furthermore, conventional registration methods depend on accurate and absolute segmentation. Our proposed probabilistic framework addresses the segmentation-registration duality, wherein exact segmentation is not a prerequisite to achieve accurate registration. In this paper, we develop a method for fast and automatic probabilistic bone surface (edge) detection in CT images. Various features that influence the likelihood of the surface at each spatial coordinate are combined using a simple probabilistic framework, which strikes a fair balance between a high-level understanding of features in an image and the low-level number crunching of standard image processing techniques. The algorithm evaluates different features for detecting the probability of a bone surface at each voxel, and compounds the results of these methods to yield a final, low-noise, probability map of bone surfaces in the volume. Such a probability map can then be used in conjunction with a similar map from tracked intra-operative US to achieve accurate registration. Eight sample pelvic CT scans were used to extract feature parameters and validate the final probability maps. An un-optimized fully automatic Matlab code runs in five minutes per CT volume on average, and was validated by comparison against hand-segmented gold standards. The mean probability assigned to nonzero surface points was 0.8, while nonzero non-surface points had a mean value of 0.38 indicating clear identification of surface points on average. The segmentation was also sufficiently crisp, with a full width at half maximum (FWHM) value of 1.51 voxels.
机译:术前CT向术中现实系统的配准是计算机辅助骨科手术(CAOS)的关键步骤。术中传感器包括3D数字化仪,基准,X射线和超声(US)。 FAPBED旨在处理CT卷以注册到跟踪的美国数据。跟踪美国是有利的,因为它是实时的,非侵入性的且非电离的,但是众所周知,它也具有固有的不准确性,这导致需要开发一种对各种不确定性都具有鲁棒性的框架,并且可以在US-CT注册中使用。此外,传统的配准方法取决于准确和绝对的分割。我们提出的概率框架解决了分段注册双重性,其中精确分段不是实现精确注册的前提。在本文中,我们开发了一种在CT图像中快速自动检测概率性骨表面(边缘)的方法。使用简单的概率框架将影响每个空间坐标处的表面可能性的各种特征组合在一起,这可以在对图像特征的高级理解与对标准图像处理技术的低级别数字处理之间取得合理的平衡。该算法评估用于检测每个体素处的骨表面概率的不同特征,并对这些方法的结果进行组合,以生成体积中最终的,低噪声的骨表面概率图。然后可以将这种概率图与来自跟踪的术中US的相似图结合使用,以实现准确的配准。八次骨盆CT扫描样本用于提取特征参数并验证最终概率图。未优化的全自动Matlab代码平均每CT体积运行五分钟,并通过与手工分段的金标准进行比较进行了验证。分配给非零表面点的平均概率为0.8,而非零非表面点的平均值为0.38,表明平均可以清楚地识别表面点。分割也足够清晰,半高全宽(FWHM)值为1.51体素。

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