School of Automation, Northwestern Polytechnical University, Xi'an, Shaanxi, China; Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
School of Automation, Northwestern Polytechnical University, Xi'an, Shaanxi, China.
Med Image Anal. 2017 Oct;41:18-31. doi: 10.1016/j.media.2017.05.004. Epub 2017 May 13.
In prostate cancer radiotherapy, computed tomography (CT) is widely used for dose planning purposes. However, because CT has low soft tissue contrast, it makes manual contouring difficult for major pelvic organs. In contrast, magnetic resonance imaging (MRI) provides high soft tissue contrast, which makes it ideal for accurate manual contouring. Therefore, the contouring accuracy on CT can be significantly improved if the contours in MRI can be mapped to CT domain by registering MRI with CT of the same subject, which would eventually lead to high treatment efficacy. In this paper, we propose a bi-directional image synthesis based approach for MRI-to-CT pelvic image registration. First, we use patch-wise random forest with auto-context model to learn the appearance mapping from CT to MRI domain, and then vice versa. Consequently, we can synthesize a pseudo-MRI whose anatomical structures are exactly same with CT but with MRI-like appearance, and a pseudo-CT as well. Then, our MRI-to-CT registration can be steered in a dual manner, by simultaneously estimating two deformation pathways: 1) one from the pseudo-CT to the actual CT and 2) another from actual MRI to the pseudo-MRI. Next, a dual-core deformation fusion framework is developed to iteratively and effectively combine these two registration pathways by using complementary information from both modalities. Experiments on a dataset with real pelvic CT and MRI have shown improved registration performance of the proposed method by comparing it to the conventional registration methods, thus indicating its high potential of translation to the routine radiation therapy.
在前列腺癌放射治疗中,计算机断层扫描(CT)广泛用于剂量规划目的。然而,由于 CT 软组织对比度低,使得主要盆骨器官的手动轮廓绘制变得困难。相比之下,磁共振成像(MRI)提供了高软组织对比度,非常适合准确的手动轮廓绘制。因此,如果可以通过将 MRI 与同一患者的 CT 进行配准,将 MRI 中的轮廓映射到 CT 域,从而显著提高 CT 上的轮廓准确性,最终将导致高治疗效果。在本文中,我们提出了一种基于双向图像合成的 MRI 到 CT 盆腔图像配准方法。首先,我们使用带有自动上下文模型的补丁随机森林来学习从 CT 到 MRI 域的外观映射,然后反之亦然。因此,我们可以合成一个伪 MRI,其解剖结构与 CT 完全相同,但具有 MRI 样的外观,以及一个伪 CT。然后,我们的 MRI 到 CT 配准可以通过同时估计两个变形路径来双向指导:1)从伪 CT 到实际 CT 的路径,2)从实际 MRI 到伪 MRI 的路径。接下来,开发了一个双核变形融合框架,通过利用来自两种模式的互补信息,迭代有效地结合这两个注册路径。在具有真实盆腔 CT 和 MRI 的数据集上的实验表明,与传统的注册方法相比,该方法的注册性能得到了提高,这表明它具有将其转化为常规放射治疗的巨大潜力。