Wang He, Dong Lei, O'Daniel Jennifer, Mohan Radhe, Garden Adam S, Ang K Kian, Kuban Deborah A, Bonnen Mark, Chang Joe Y, Cheung Rex
Department of Radiation Physics, The University of Texas MD Anderson Cancer Center, 1515 Holcombe Blvd, Houston, TX 77030, USA.
Phys Med Biol. 2005 Jun 21;50(12):2887-905. doi: 10.1088/0031-9155/50/12/011. Epub 2005 Jun 1.
A greyscale-based fully automatic deformable image registration algorithm, originally known as the 'demons' algorithm, was implemented for CT image-guided radiotherapy. We accelerated the algorithm by introducing an 'active force' along with an adaptive force strength adjustment during the iterative process. These improvements led to a 40% speed improvement over the original algorithm and a high tolerance of large organ deformations. We used three methods to evaluate the accuracy of the algorithm. First, we created a set of mathematical transformations for a series of patient's CT images. This provides a 'ground truth' solution for quantitatively validating the deformable image registration algorithm. Second, we used a physically deformable pelvic phantom, which can measure deformed objects under different conditions. The results of these two tests allowed us to quantify the accuracy of the deformable registration. Validation results showed that more than 96% of the voxels were within 2 mm of their intended shifts for a prostate and a head-and-neck patient case. The mean errors and standard deviations were 0.5 mm+/-1.5 mm and 0.2 mm+/-0.6 mm, respectively. Using the deformable pelvis phantom, the result showed a tracking accuracy of better than 1.5 mm for 23 seeds implanted in a phantom prostate that was deformed by inflation of a rectal balloon. Third, physician-drawn contours outlining the tumour volumes and certain anatomical structures in the original CT images were deformed along with the CT images acquired during subsequent treatments or during a different respiratory phase for a lung cancer case. Visual inspection of the positions and shapes of these deformed contours agreed well with human judgment. Together, these results suggest that the accelerated demons algorithm has significant potential for delineating and tracking doses in targets and critical structures during CT-guided radiotherapy.
一种基于灰度的全自动可变形图像配准算法,最初称为“魔鬼”算法,被应用于CT图像引导的放射治疗。我们通过在迭代过程中引入“主动力”以及自适应力强度调整来加速该算法。这些改进使算法速度比原始算法提高了40%,并且对大器官变形具有较高的耐受性。我们使用三种方法来评估算法的准确性。首先,我们为一系列患者的CT图像创建了一组数学变换。这为定量验证可变形图像配准算法提供了一个“真实”解决方案。其次,我们使用了一个物理上可变形的盆腔模体,它可以测量不同条件下的变形物体。这两项测试的结果使我们能够量化可变形配准的准确性。验证结果表明,对于前列腺癌和头颈癌患者病例,超过96%的体素在其预期位移的2毫米范围内。平均误差和标准差分别为0.5毫米±1.5毫米和0.2毫米±0.6毫米。使用可变形盆腔模体,结果显示对于植入在因直肠球囊充气而变形的模体前列腺中的23颗种子,跟踪精度优于1.5毫米。第三,在肺癌病例中,在原始CT图像中勾勒肿瘤体积和某些解剖结构的医生绘制轮廓与后续治疗期间或不同呼吸阶段获取的CT图像一起变形。对这些变形轮廓的位置和形状进行目视检查与人类判断非常吻合。总之,这些结果表明,加速的魔鬼算法在CT引导的放射治疗期间描绘和跟踪靶区及关键结构中的剂量方面具有巨大潜力。