Wu Xingen, Dibiase Steven J, Gullapalli Rao, Yu Cedric X
Department of Radiation Oncology, University of Maryland School of Medicine, Baltimore, Maryland 21201, USA.
Int J Radiat Oncol Biol Phys. 2004 Apr 1;58(5):1577-83. doi: 10.1016/j.ijrobp.2003.09.072.
There is now convincing evidence that prostate cancer cells lack the ability to produce and accumulate citrate. Using magnetic resonance spectroscopy imaging (MRSI), regions of absent or low citrate concentration in the prostate can be visualized at a resolution of a few mm. This new advancement provides not only a tool for early diagnosis and screening but also the opportunity for preferential targeting of radiation to regions of high tumor burden in the prostate. The differences in the shape and location of the prostate between MRSI imaging and treatment have been the major obstacle in integrating MRSI in radiation therapy treatment planning. The purpose of this study is to develop a reliable method for deforming the prostate and surrounding regions from the geometry of MRSI imaging to the geometry of treatment planning, so that the regions of high tumor burden identified by the MRSI study can be faithfully transferred to the images used for treatment planning.
Magnetic resonance spectroscopy imaging studies have been performed on 2 prostate cancer patients using a commercial MRSI system with an endorectal coil and coupling balloon. At the end of each study, we also acquired the MRI of the pelvic region at both the deformed state where the prostate is distorted by the endorectal balloon and the resting state with the endorectal balloon deflated and removed. The task is to find a three-dimensional matrix of transformation vectors for all volume elements that links the two image sets. We have implemented an optimization method to iteratively optimize the transformation vectors using a Newton-Ralphson algorithm. The objective function is based on the mutual information. The distorted images using the transformation vectors are compared with the images acquired at the resting conditions.
The algorithm is capable of performing the registration automatically without the need for intervention. It does not require manual contouring of the organs. By applying the algorithm to multiple image sets of different patients, we found a good agreement between the images transformed from those acquired at the deformed state and those acquired at resting conditions. The computation time required for achieving the registration is in the range of a half-hour (for image size: 256 pixels x 256 pixels x 25 slices). However, the space of registration can be restricted to speed up the process.
In this article, we described a three-dimensional deformable image registration method to automatically transform images from the deformed imaging state to resting state. Our examples show that this method is feasible and useful to the treatment planning system.
目前有确凿证据表明前列腺癌细胞缺乏产生和积累柠檬酸盐的能力。使用磁共振波谱成像(MRSI),可以在几毫米的分辨率下可视化前列腺中柠檬酸盐浓度缺失或较低的区域。这一新技术进展不仅为早期诊断和筛查提供了一种工具,还为将辐射优先靶向前列腺中肿瘤负荷高的区域提供了机会。MRSI成像与治疗时前列腺的形状和位置差异一直是将MRSI纳入放射治疗治疗计划的主要障碍。本研究的目的是开发一种可靠的方法,将前列腺及周围区域从MRSI成像的几何形状变形为治疗计划的几何形状,以便将MRSI研究确定的高肿瘤负荷区域准确地转移到用于治疗计划的图像中。
使用带有直肠内线圈和耦合球囊的商用MRSI系统对2例前列腺癌患者进行了磁共振波谱成像研究。在每项研究结束时,我们还获取了盆腔区域的MRI图像,包括前列腺因直肠内球囊变形的变形状态以及直肠内球囊放气并移除后的静止状态。任务是为连接这两组图像的所有体素找到一个三维变换向量矩阵。我们实现了一种优化方法,使用牛顿 - 拉夫森算法迭代优化变换向量。目标函数基于互信息。将使用变换向量得到的变形图像与在静止条件下获取的图像进行比较。
该算法能够自动执行配准,无需干预。它不需要对器官进行手动轮廓勾画。通过将该算法应用于不同患者的多个图像集,我们发现从变形状态获取的图像变换后的图像与静止条件下获取的图像之间具有良好的一致性。实现配准所需的计算时间在半小时左右(图像大小:256像素×256像素×25层)。然而,可以限制配准空间以加快处理过程。
在本文中,我们描述了一种三维可变形图像配准方法,用于自动将图像从变形成像状态转换为静止状态。我们的示例表明,该方法对治疗计划系统是可行且有用的。