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Automated detection and segmentation of cylindrical fragments from calibrated C-arm images for long bone fracture reduction.

机译:从校准的C臂图像中自动检测和分割圆柱形碎片,以长期减少骨折。

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摘要

Long bone fracture belongs to one of the most common injuries encountered in clinical routine trauma surgery. Automated identification, pose and size estimation, and contour extraction of diaphyseal bone fragments can greatly improve the usability of a computer-assisted, fluoroscopy-based navigation system for long bone fracture reduction. In this paper, a two-step solution is proposed. In the first step, the pose and size of a diaphyseal fragment are estimated through a three-dimensional (3D) morphable object-based fitting process using a parametric cylinder model. This fitting process is optimally solved by a hybrid optimization technique coupling a random sample consensus (RANSAC) paradigm and an iterative closest point (ICP) matching procedure. Monte Carlo simulation was used to determine the parameters for the RANSAC paradigm. The results of the fragment detection step are then fed to the second step, where a region information based active contour model is used to extract the fragment contours. We designed and conducted experiments to quantify the accuracy and robustness of the proposed approach. Our experimental results conducted on images of a plastic bone as well as on those of patients demonstrate a promising accuracy and robustness of the proposed approach.
机译:长骨骨折是临床常规创伤手术中最常见的损伤之一。骨干骨碎片的自动识别,姿势和大小估计以及轮廓提取可以极大地提高基于荧光检查的计算机辅助导航系统的可用性,以长期减少骨折。本文提出了一种两步式的解决方案。在第一步中,使用参数圆柱模型通过三维(3D)可变形基于对象的拟合过程来估计骨碎片的姿势和大小。该拟合过程是通过将随机样本共识(RANSAC)范例与迭代最近点(ICP)匹配过程耦合在一起的混合优化技术来最佳解决的。蒙特卡罗模拟用于确定RANSAC范式的参数。然后将片段检测步骤的结果输入到第二步骤,在第二步骤中,使用基于区域信息的活动轮廓模型来提取片段轮廓。我们设计并进行了实验,以量化该方法的准确性和鲁棒性。我们在塑料骨以及患者的图像上进行的实验结果表明,该方法具有良好的准确性和鲁棒性。

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