Fudan University, Shanghai Medical College, Shanghai, Taiwan.
Med Phys. 2011 Nov;38(11):5980-91. doi: 10.1118/1.3641645.
In adaptive radiation therapy of prostate cancer, fast and accurate registration between the planning image and treatment images of the patient is of essential importance. With the authors' recently developed deformable surface model, prostate boundaries in each treatment image can be rapidly segmented and their correspondences (or relative deformations) to the prostate boundaries in the planning image are also established automatically. However, the dense correspondences on the nonboundary regions, which are important especially for transforming the treatment plan designed in the planning image space to each treatment image space, are remained unresolved. This paper presents a novel approach to learn the statistical correlation between deformations of prostate boundary and nonboundary regions, for rapidly estimating deformations of the nonboundary regions when given the deformations of the prostate boundary at a new treatment image.
The main contributions of the proposed method lie in the following aspects. First, the statistical deformation correlation will be learned from both current patient and other training patients, and further updated adaptively during the radiotherapy. Specifically, in the initial treatment stage when the number of treatment images collected from the current patient is small, the statistical deformation correlation is mainly learned from other training patients. As more treatment images are collected from the current patient, the patient-specific information will play a more important role in learning patient-specific statistical deformation correlation to effectively reflect prostate deformation of the current patient during the treatment. Eventually, only the patient-specific statistical deformation correlation is used to estimate dense correspondences when a sufficient number of treatment images have been acquired from the current patient. Second, the statistical deformation correlation will be learned by using a multiple linear regression (MLR) model, i.e., ridge regression (RR) model, which has the best prediction accuracy than other MLR models such as canonical correlation analysis (CCA) and principal component regression (PCR).
To demonstrate the performance of the proposed method, we first evaluate its registration accuracy by comparing the deformation field predicted by our method with the deformation field estimated by the thin plate spline (TPS) based correspondence interpolation method on 306 serial prostate CT images of 24 patients. The average predictive error on the voxels around 5 mm of prostate boundary is 0.38 mm for our method of RR-based correlation model. Also, the corresponding maximum error is 2.89 mm. We then compare the speed for deformation interpolation by different methods. When considering the larger region of interest (ROI) with the size of 512 × 512 × 61, our method takes 24.41 seconds to interpolate the dense deformation field while TPS method needs 6.7 minutes; when considering a small ROI (surrounding prostate) with size of 112 × 110 × 93, our method takes 1.80 seconds, while TPS method needs 25 seconds.
Experimental results show that the proposed method can achieve much faster registration speed yet with comparable registration accuracy, compared to the TPS-based correspondence (or deformation) interpolation approach.
在前列腺癌自适应放疗中,快速准确地对计划图像和患者的治疗图像进行配准至关重要。利用作者最近开发的可变形曲面模型,可以快速分割每个治疗图像中的前列腺边界,并自动建立它们与计划图像中前列腺边界的对应关系(或相对变形)。然而,非边界区域的密集对应关系仍然没有得到解决,这些对应关系对于将在计划图像空间中设计的治疗计划转换到每个治疗图像空间非常重要。本文提出了一种新的方法来学习前列腺边界和非边界区域变形之间的统计相关性,以便在新的治疗图像中给定前列腺边界的变形时,快速估计非边界区域的变形。
所提出方法的主要贡献在于以下几个方面。首先,将从当前患者和其他训练患者中学习统计变形相关性,并在放射治疗过程中自适应地更新。具体来说,在从当前患者收集的治疗图像数量较少的初始治疗阶段,主要从其他训练患者中学习统计变形相关性。随着从当前患者收集的治疗图像数量的增加,患者特异性信息将在学习患者特异性统计变形相关性中发挥更重要的作用,以有效反映当前患者在治疗过程中的前列腺变形。最终,当从当前患者获得足够数量的治疗图像时,仅使用患者特异性统计变形相关性来估计密集对应关系。其次,通过使用多元线性回归(MLR)模型(即岭回归(RR)模型)学习统计变形相关性,RR 模型比其他 MLR 模型(如典型相关分析(CCA)和主成分回归(PCR))具有更好的预测准确性。
为了验证所提出方法的性能,我们首先通过比较基于薄板样条(TPS)的对应插值方法和基于 RR 相关模型的我们的方法预测的变形场,在 24 名患者的 306 个连续前列腺 CT 图像上评估了其配准精度。在前列腺边界周围 5mm 的体素上,我们的 RR 相关模型的预测误差平均为 0.38mm。最大误差也是 2.89mm。然后,我们比较了不同方法的变形插值速度。当考虑大小为 512×512×61 的更大感兴趣区域(ROI)时,我们的方法需要 24.41 秒来插值密集变形场,而 TPS 方法需要 6.7 分钟;当考虑大小为 112×110×93 的较小 ROI(周围前列腺)时,我们的方法需要 1.80 秒,而 TPS 方法需要 25 秒。
实验结果表明,与基于 TPS 的对应(或变形)插值方法相比,所提出的方法可以实现更快的配准速度,同时具有可比的配准精度。