Fast intensity-based 2D-3D image registration of clinical data using light

Daniel B. Russakoff, T. Rohlfing, C. Maurer
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引用次数: 44

Abstract

Registration of a preoperative CT (3D) image to one or more X-ray projection (2D) images, a special case of the pose estimation problem, has been attempted in a variety of ways with varying degrees of success. Recently, there has been a great deal of interest in intensity-based methods. One of the drawbacks to such methods is the need to create digitally reconstructed radiographs (DRRs) at each step of the optimization process. DRRs are typically generated by ray casting, an operation that requires O(n/sup 3/) time, where we assume that n is approximately the size (in voxels) of one side of the DRR as well as one side of the CT volume. We address this issue by extending light field rendering techniques from the computer graphics community to generate DRRs instead of conventional rendered images. Using light fields allows most of the computation to be performed in a preprocessing step; after this precomputation, very accurate DRRs can be generated in O(n/sup 2/) time. Another important issue for 2D-3D registration algorithms is validation. Previously reported 2D-3D registration algorithms were validated using synthetic data or phantoms but not clinical data. We present an intensity-based 2D-3D registration system that generates DRRs using light fields; we validate its performance using clinical data with a known gold standard transformation.
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基于光的临床数据快速2D-3D图像配准
将术前CT (3D)图像配准到一个或多个x射线投影(2D)图像,这是姿态估计问题的一个特殊情况,已经尝试了各种方法,并取得了不同程度的成功。最近,人们对基于强度的方法产生了极大的兴趣。这种方法的缺点之一是在优化过程的每一步都需要创建数字重建射线照片(DRRs)。DRR通常由光线投射生成,该操作需要O(n/sup 3/)时间,其中我们假设n大约是DRR一侧的大小(以体素为单位)以及CT体积的一侧。我们通过扩展计算机图形界的光场渲染技术来生成drr而不是传统的渲染图像来解决这个问题。使用光场允许在预处理步骤中执行大部分计算;经过这种预计算,可以在0 (n/sup 2/)时间内生成非常精确的drr。2D-3D配准算法的另一个重要问题是验证。先前报道的2D-3D配准算法使用合成数据或模型进行验证,而不是临床数据。我们提出了一种基于强度的2D-3D配准系统,该系统使用光场生成drr;我们使用已知的金标准转换的临床数据验证其性能。
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