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Assessing the impact of choosing different deformable registration algorithms on cone-beam CT enhancement by histogram matching

机译:通过直方图匹配评估选择不同的可变形配准算法对锥束CT增强的影响

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摘要

The aim of this work is to assess the impact of using different deformable registration (DR) algorithms on the quality of cone-beam CT (CBCT) correction with histogram matching (HM). Data sets containing planning CT (pCT) and CBCT images for ten patients with prostate cancer were used. Each pCT image was registered to its corresponding CBCT image using one rigid registration algorithm with mutual information similarity metric (RR-MI) and three DR algorithms with normalized correlation coefficient, mutual information and normalized mutual information (DR-NCC, DR-MI and DR-NMI, respectively). Then, the HM was performed between deformed pCT and CBCT in order to correct the distribution of the Hounsfield Units (HU) in CBCT images. The visual assessment showed that the absolute difference between corrected CBCT and deformed pCT was reduced after correction with HM except for soft tissue-air and soft-tissue-bone interfaces due to the improper registration. Furthermore, volumes comparison in terms of average HU error showed that using DR-NCC algorithm with HM yielded the lowest error values of about 55.95?±?10.43 HU compared to DR-MI and DR-NMI for which the errors were 58.60?±?10.35 and 56.58?±?10.51 HU, respectively. Tissue class’s comparison by the mean absolute error (MAE) plots confirmed the performance of DR-NCC algorithm to produce corrected CBCT images with lowest values of MAE even in regions where the misalignment is more pronounced. It was also found that the used method had successfully improved the spatial uniformity in the CBCT images by reducing the root mean squared difference (RMSD) between the pCT and CBCT in fat and muscle from 57 and 25 HU to 8HU, respectively. The choice of an accurate DR algorithm before performing the HM leads to an accurate correction of CBCT images. The results suggest that applying DR process based on NCC similarity metric reduces significantly the uncertainties in CBCT images and generates images in good agreement with pCT.
机译:这项工作的目的是评估使用不同的可变形配准(DR)算法对带有直方图匹配(HM)的锥束CT(CBCT)校正质量的影响。使用十个前列腺癌患者的计划CT(pCT)和CBCT图像数据集。使用具有互信息相似性度量(RR-MI)的一种刚性配准算法和具有归一化相关系数,互信息和归一化互信息的三种DR算法(DR-NCC,DR-MI和DR)将每个pCT图像配准到其对应的CBCT图像-NMI)。然后,在变形的pCT和CBCT之间执行HM,以校正CBCT图像中的Hounsfield单位(HU)的分布。视觉评估表明,用HM矫正后,校正后的CBCT和变形的pCT之间的绝对差异减小,除了软组织-空气和软组织-骨界面外,这是由于配准不当所致。此外,就平均HU误差而言,体积比较显示,与误差为58.60?±?的DR-MI和DR-NMI相比,使用HM的DR-NCC算法产生的最低误差值约为55.95?±?10.43 HU。 HU分别为10.35和56.58±±10.51 HU。组织类别的平均绝对误差(MAE)图比较证实了DR-NCC算法产生的校正后的CBCT图像具有最低MAE值的性能,即使在未对准更为明显的区域也是如此。还发现所使用的方法通过将脂肪和肌肉中pCT和CBCT之间的均方根差(RMSD)分别从57 HU和25 HU减小到8 HU,成功地改善了CBCT图像的空间均匀性。在执行HM之前选择准确的DR算法可导致CBCT图像的准确校正。结果表明,基于NCC相似性度量的DR处理应用显着降低了CBCT图像的不确定性,并生成了与pCT高度吻合的图像。

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