37991Yonsei University College of Medicine, Seoul, Republic of Korea.
Douzone, Seoul, Republic of Korea.
Technol Cancer Res Treat. 2022 Jan-Dec;21:15330338221078464. doi: 10.1177/15330338221078464.
Various deformable image registration (DIR) methods have been used to evaluate organ deformations in 4-dimensional computed tomography (4D CT) images scanned during the respiratory motions of a patient. This study assesses the performance of 10 DIR algorithms using 4D CT images of 5 patients with fiducial markers (FMs) implanted during the postoperative radiosurgery of multiple lung metastases. To evaluate DIR algorithms, 4D CT images of 5 patients were used, and ground-truths of FMs and tumors were generated by physicians based on their medical expertise. The positions of FMs and tumors in each 4D CT phase image were determined using 10 DIR algorithms, and the deformed results were compared with ground-truth data. The target registration errors (TREs) between the FM positions estimated by optical flow algorithms and the ground-truth ranged from 1.82 ± 1.05 to 1.98 ± 1.17 mm, which is within the uncertainty of the ground-truth position. Two algorithm groups, namely, optical flow and demons, were used to estimate tumor positions with TREs ranging from 1.29 ± 1.21 to 1.78 ± 1.75 mm. With respect to the deformed position for tumors, for the 2 DIR algorithm groups, the maximum differences of the deformed positions for gross tumor volume tracking were approximately 4.55 to 7.55 times higher than the mean differences. Errors caused by the aforementioned difference in the Hounsfield unit values were also observed. We quantitatively evaluated 10 DIR algorithms using 4D CT images of 5 patients and compared the results with ground-truth data. The optical flow algorithms showed reasonable FM-tracking results in patient 4D CT images. The iterative optical flow method delivered the best performance in this study. With respect to the tumor volume, the optical flow and demons algorithms delivered the best performance.
各种可变形图像配准(DIR)方法已被用于评估患者呼吸运动期间扫描的 4D CT 图像中的器官变形。本研究使用 5 名接受多发肺转移术后放射外科治疗时植入基准标记(FM)的患者的 4D CT 图像评估了 10 种 DIR 算法的性能。为了评估 DIR 算法,使用了 5 名患者的 4D CT 图像,并且 FM 和肿瘤的地面真实数据是由医生根据他们的医学专业知识生成的。使用 10 种 DIR 算法确定了每个 4D CT 时相图像中 FM 和肿瘤的位置,并将变形结果与地面真实数据进行了比较。光学流算法估计的 FM 位置与地面真实值之间的靶标注册误差(TRE)范围为 1.82±1.05 至 1.98±1.17mm,这在地面真实值位置的不确定性范围内。使用光学流和 demons 这两种算法组来估计 TRE 范围为 1.29±1.21 至 1.78±1.75mm 的肿瘤位置。对于肿瘤的变形位置,对于这 2 种 DIR 算法组,对于大体肿瘤体积跟踪的变形位置的最大差异大约是平均差异的 4.55 到 7.55 倍。还观察到由于亨氏单位值差异引起的误差。我们使用 5 名患者的 4D CT 图像对 10 种 DIR 算法进行了定量评估,并将结果与地面真实数据进行了比较。光学流算法在患者的 4D CT 图像中显示出了合理的 FM 跟踪结果。在这项研究中,迭代光学流方法表现最佳。对于肿瘤体积,光学流和 demons 算法表现最佳。