Department of Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD 21218, USA.
IEEE Trans Med Imaging. 2011 Jan;30(1):38-51. doi: 10.1109/TMI.2010.2059709. Epub 2010 Jul 19.
The success of prostate brachytherapy critically depends on delivering adequate dose to the prostate gland. Intraoperative localization of the implanted seeds provides potential for dose evaluation and optimization during therapy. A reduced-dimensionality matching algorithm for prostate brachytherapy seed reconstruction (REDMAPS) that uses multiple X-ray fluoroscopy images obtained from different poses is proposed. The seed reconstruction problem is formulated as a combinatorial optimization problem, and REDMAPS finds a solution in a clinically acceptable amount of time using dimensionality reduction to create a smaller space of possible solutions. Dimensionality reduction is possible since the optimal solution has approximately zero cost when the poses of the acquired images are known to be within a small error. REDMAPS is also formulated to address the "hidden seed problem" in which seeds overlap on one or more observed images. REDMAPS uses a pruning algorithm to avoid unnecessary computation of cost metrics and the reduced problem is solved using linear programming. REDMAPS was first evaluated and its parameters tuned using simulations. It was then validated using five phantom and 21 patient datasets. REDMAPS was successful in reconstructing the seeds with an overall seed matching rate above 99% and a reconstruction error below 1 mm in less than 5 s.
前列腺近距离放射治疗的成功在很大程度上取决于能否将足够的剂量传递到前列腺。术中植入种子的定位为治疗过程中的剂量评估和优化提供了潜力。本文提出了一种基于多视角 X 射线荧光透视图像的前列腺近距离放射治疗种子重建的降维匹配算法(REDMAPS)。该算法将种子重建问题表述为一个组合优化问题,通过降维来创建一个可能解的较小空间,从而在临床可接受的时间内找到一个解决方案。由于当获取图像的姿势在小误差范围内时,最优解的代价近似为零,因此降维是可行的。REDMAPS 还针对“隐藏种子问题”进行了设计,其中一个或多个观察图像上的种子发生了重叠。REDMAPS 使用一种剪枝算法来避免不必要的代价度量计算,并且使用线性规划来解决简化问题。首先使用模拟数据对 REDMAPS 进行了评估和参数调整,然后使用五个体模和 21 个患者数据集进行了验证。REDMAPS 成功地重建了种子,总体种子匹配率超过 99%,重建误差小于 1mm,用时不到 5 秒。