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Robust 2D/3D registration for fast-flexion motion of the knee joint using hybrid optimization

机译:鲁棒的2D / 3D配准使用混合优化实现膝关节的快速屈曲运动

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Previously, we proposed a 2D/3D registration method that uses Powell's algorithm to obtain 3D motion of a knee joint by 3D computed-tomography and bi-plane fluoroscopic images. The 2D/3D registration is performed consecutively and automatically for each frame of the fluoroscopic images. This method starts from the optimum parameters of the previous frame for each frame except for the first one, and it searches for the next set of optimum parameters using Powell's algorithm. However, if the flexion motion of the knee joint is fast, it is likely that Powell's algorithm will provide a mismatch because the initial parameters are far from the correct ones. In this study, we applied a hybrid optimization algorithm (HPS) combining Powell's algorithm with the Nelder-Mead simplex (NM-simplex) algorithm to overcome this problem. The performance of the HPS was compared with the separate performances of Powell's algorithm and the NM-simplex algorithm, the Quasi-Newton algorithm and hybrid optimization algorithm with the Quasi-Newton and NM-simplex algorithms with five patient data sets in terms of the root-mean-square error (RMSE), target registration error (TRE), success rate, and processing time. The RMSE, TRE, and the success rate of the HPS were better than those of the other optimization algorithms, and the processing time was similar to that of Powell's algorithm alone.
机译:以前,我们提出了一种2D / 3D配准方法,该方法使用Powell算法通过3D计算机断层摄影术和双平面透视图像获得膝关节的3D运动。 2D / 3D配准是针对透视图像的每一帧连续且自动执行的。该方法从每个帧的前一帧的最佳参数(第一帧除外)开始,并使用Powell算法搜索下一组最佳参数。但是,如果膝关节的弯曲运动很快,则鲍威尔算法可能会提供不匹配的信息,因为初始参数与正确参数相距甚远。在这项研究中,我们应用了结合Powell算法和Nelder-Mead单纯形(NM-simplex)算法的混合优化算法(HPS)来解决此问题。将HPS的性能与Powell算法和NM-simplex算法,Quasi-Newton算法以及混合优化算法与Quasi-Newton和NM-simplex算法分别具有五个患者数据集的独立性能进行了根比较均方误差(RMSE),目标配准误差(TRE),成功率和处理时间。 HPS的RMSE,TRE和成功率均优于其他优化算法,并且处理时间与单独的Powell算法相似。

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