AGH University of Science and Technology, Department of Measurement and Electronics, al. A.Mickiewicza 30, PL30059, Krakow, Poland. Author to whom any correspondence should be addressed.
Phys Med Biol. 2018 Jan 31;63(3):035024. doi: 10.1088/1361-6560/aaa4b1.
Knowledge about tumor bed localization and its shape analysis is a crucial factor for preventing irradiation of healthy tissues during supportive radiotherapy and as a result, cancer recurrence. The localization process is especially hard for tumors placed nearby soft tissues, which undergo complex, nonrigid deformations. Among them, breast cancer can be considered as the most representative example. A natural approach to improving tumor bed localization is the use of image registration algorithms. However, this involves two unusual aspects which are not common in typical medical image registration: the real deformation field is discontinuous, and there is no direct correspondence between the cancer and its bed in the source and the target 3D images respectively. The tumor no longer exists during radiotherapy planning. Therefore, a traditional evaluation approach based on known, smooth deformations and target registration error are not directly applicable. In this work, we propose alternative artificial deformations which model the tumor bed creation process. We perform a comprehensive evaluation of the most commonly used deformable registration algorithms: B-Splines free form deformations (B-Splines FFD), different variants of the Demons and TV-L optical flow. The evaluation procedure includes quantitative assessment of the dedicated artificial deformations, target registration error calculation, 3D contour propagation and medical experts visual judgment. The results demonstrate that the currently, practically applied image registration (rigid registration and B-Splines FFD) are not able to correctly reconstruct discontinuous deformation fields. We show that the symmetric Demons provide the most accurate soft tissues alignment in terms of the ability to reconstruct the deformation field, target registration error and relative tumor volume change, while B-Splines FFD and TV-L optical flow are not an appropriate choice for the breast tumor bed localization problem, even though the visual alignment seems to be better than for the Demons algorithm. However, no algorithm could recover the deformation field with sufficient accuracy in terms of vector length and rotation angle differences.
关于肿瘤床定位及其形状分析的知识是预防放疗过程中照射健康组织和癌症复发的关键因素。对于放置在附近软组织中的肿瘤,定位过程尤其困难,因为这些肿瘤会发生复杂的、非刚性的变形。其中,乳腺癌可以被认为是最具代表性的例子。提高肿瘤床定位的自然方法是使用图像配准算法。然而,这涉及两个不常见的方面,这在典型的医学图像配准中并不常见:真实的变形场是不连续的,并且源图像和目标图像中癌症及其床之间没有直接对应关系。在放疗计划期间,肿瘤不再存在。因此,基于已知的平滑变形和目标配准误差的传统评估方法并不直接适用。在这项工作中,我们提出了替代的人工变形,这些变形可以模拟肿瘤床的形成过程。我们对最常用的可变形配准算法进行了全面评估:B-样条自由变形(B-Splines FFD)、不同变体的 Demons 和 TV-L 光流。评估过程包括对专用人工变形的定量评估、目标配准误差计算、3D 轮廓传播和医学专家的视觉判断。结果表明,目前实际应用的图像配准(刚体配准和 B-Splines FFD)无法正确重建不连续的变形场。我们表明,对称的 Demons 在重建变形场、目标配准误差和相对肿瘤体积变化方面能够提供最准确的软组织对齐,而 B-Splines FFD 和 TV-L 光流不是用于乳房肿瘤床定位问题的合适选择,尽管在视觉对齐方面似乎比 Demons 算法更好。然而,没有任何算法能够在向量长度和旋转角度差异方面以足够的精度恢复变形场。