Department of Radiation Oncology, Erasmus Medical Center-Daniel den Hoed Cancer Center, Groene Hilledijk 301, 3075 EA Rotterdam, The Netherlands.
Med Phys. 2012 May;39(5):2463-77. doi: 10.1118/1.3701779.
Computer tomography (CT) scans are used for designing radiotherapy treatment plans. However, the tumor is often better visible in magnetic resonance (MR) images. For liver stereotactic body radiation therapy (SBRT), the planning CT scan is acquired while abdominal compression is applied to reduce tumor motion induced by breathing. However, diagnostic MR scans are acquired under voluntary breath-hold without the compression device. The resulting large differences in liver shape hinder the alignment of CT and MR image sets, which severely limits the integration of the information provided by these images. The purpose of the current study is to develop and validate a nonrigid registration method to align breath-hold MR images with abdominal-compressed CT images, using vessels that are automatically segmented within the liver.
Contrast-enhanced MR and CT images of seven patients with liver cancer were used for this study. The registration method combines automatic vessel segmentation with an adapted version of thin-plate spline robust point matching. The vessel segmentation uses a multiscale vesselness measure, which allows vessels of various thicknesses to be segmented. The nonrigid registration is point-based, and progressively improves the correspondence and transformation between two point sets. Moreover, the nonrigid registration is capable of identifying and handling outliers (points with no counterpart in the other set). We took advantage of the strengths of both methods and created a multiscale registration algorithm. First, thick vessels are registered, then with each new iteration thinner vessels are included in the registration (strategy A). We compared strategy A to a straightforward approach where vessels of various diameters are segmented and subsequently registered (strategy B). To assess the transformation accuracy, residual distances were calculated for vessel bifurcations. For anatomical validation, residual distances were calculated for additional anatomical landmarks within the liver. To estimate the extent of deformation, the residual distances for the aforementioned anatomical points were calculated after rigid registration.
Liver deformations in the range of 2.8-10.7 mm were found after rigid registration of the CT and MR scans. Low residual distances for vessel bifurcations (average 1.6, range 1.3-1.9 mm) and additional anatomical landmarks (1.5, 1.1-2.4 mm) were found after nonrigid registration. A large amount of outliers were identified (25%-55%) caused by vessels present in only one of the image sets and false positives in the vesselness measure. The nonrigid registration was capable of handling these outliers as was demonstrated by the low residual distances. Both strategies yielded very similar results in registration accuracy, but strategy A was faster than strategy B (≥2.0 times).
An accurate CT∕MR vessel-guided nonrigid registration for largely deformed livers was developed, tested, and validated. The method, combining vessel segmentation and point matching, was robust against differences in the segmented vessels. The authors conclude that nonrigid registration is required for accurate alignment of abdominal-compressed and uncompressed liver anatomy. Alignment of breath-hold MR and abdominal-compressed CT images can be used to improve tumor localization for liver SBRT.
计算机断层扫描(CT)用于设计放射治疗计划。然而,肿瘤在磁共振(MR)图像中通常更为明显。对于肝脏立体定向体部放射治疗(SBRT),计划 CT 扫描是在腹部压缩时采集的,以减少呼吸引起的肿瘤运动。然而,诊断性 MR 扫描是在自愿屏气而没有压缩设备的情况下采集的。由此导致的肝形状的巨大差异阻碍了 CT 和 MR 图像集的对齐,这严重限制了这些图像所提供的信息的整合。本研究的目的是开发和验证一种非刚性配准方法,以使用自动分割的肝内血管将屏气 MR 图像与腹部压缩 CT 图像对齐。
本研究使用了七例肝癌患者的增强对比度 MR 和 CT 图像。该配准方法结合了自动血管分割和经过改进的薄板样条稳健点匹配。血管分割使用多尺度血管度量,允许分割各种厚度的血管。非刚性配准基于点,逐步改善两个点集之间的对应关系和变换。此外,非刚性配准能够识别和处理异常值(在另一个集中没有对应点的点)。我们利用了两种方法的优势,并创建了一种多尺度配准算法。首先,注册厚血管,然后在每个新的迭代中包括更薄的血管进行注册(策略 A)。我们将策略 A 与一种直接的方法进行了比较,该方法是分割不同直径的血管,然后对其进行注册(策略 B)。为了评估变换精度,计算了血管分叉处的残余距离。为了进行解剖学验证,计算了肝内其他解剖学标志的残余距离。为了估计变形程度,在刚性配准后,计算了上述解剖学点的残余距离。
在刚性配准 CT 和 MR 扫描后,发现肝脏变形范围为 2.8-10.7mm。非刚性配准后,血管分叉处的残余距离较低(平均 1.6mm,范围 1.3-1.9mm),其他解剖学标志的残余距离也较低(1.5mm,1.1-2.4mm)。识别出大量异常值(25%-55%),这些异常值是由仅存在于一个图像集中的血管和血管度量中的假阳性引起的。非刚性配准能够处理这些异常值,这一点可以从低残余距离中看出。两种策略在配准精度上都得到了非常相似的结果,但策略 A 比策略 B 快(≥2.0 倍)。
为严重变形的肝脏开发、测试和验证了一种基于 CT/MR 血管引导的准确的非刚性配准方法。该方法结合了血管分割和点匹配,对分割血管的差异具有鲁棒性。作者得出结论,对于准确对齐腹部压缩和未压缩的肝脏解剖结构,需要进行非刚性配准。屏气 MR 和腹部压缩 CT 图像的配准可用于提高肝脏 SBRT 的肿瘤定位精度。