Department of Radiation Oncology, Dana-Farber/Brigham and Women's Cancer Center, Harvard Medical School, Boston, Massachusetts 02115, USA.
Med Phys. 2009 Oct;36(10):4536-46. doi: 10.1118/1.3218845.
In previous studies, an electronic portal imaging device (EPID) in cine mode was used for validating respiratory gating and stereotactic body radiation therapy (SBRT) by tracking implanted fiducials. The manual marker tracking methods that were used were time and labor intensive, limiting the utility of the validation. The authors have developed an automatic algorithm to quickly and accurately extract the markers in EPID images and reconstruct their 3D positions. Studies have been performed with gold fiducials placed in solid water and dynamic thorax phantoms. In addition, the authors have examined the cases of five patients being treated under an SBRT protocol for hepatic metastases. For each case, a sequence of images was created by collecting the exit radiation using the EPID. The markers were detected and recognized using an image processing algorithm based on the Laplacian of Gaussian function. To reduce false marker detection, a marker registration technique was applied using image intensity as well as the geometric spatial transformations between the reference marker positions produced from the projection of 3D CT images and the estimated marker positions. An average marker position in 3D was reconstructed by backprojecting, towards the source, the position of each marker on the 2D image plane. From the static phantom study, spatial accuracies of <1 mm were achieved in both 2D and 3D marker locations. From the dynamic phantom study, using only the Laplacian of the Gaussian algorithm, the marker detection success rate was 88.8%. However, adding a marker registration technique which utilizes prior CT information, the detection success rate was increased to 100%. From the SBRT patient study, intrafractional tumor motion (3.1-11.3 mm) in the SI direction was measured using the 2D images. The interfractional patient setup errors (0.1-12.7 mm) in the SI, AP, and LR directions were obtained from the average marker locations reconstructed in 3D and compared to the reference planning CT image. The authors have developed an automatic algorithm to extract marker locations from MV images and have evaluated its performance. The measured intrafractional tumor motion and the interfractional daily patient setup error can be used for off-line retrospective verification of SBRT.
在先前的研究中,通过跟踪植入的基准标记,使用电子射野影像装置(EPID)的电影模式来验证呼吸门控和立体定向体放射治疗(SBRT)。所使用的手动标记跟踪方法既费时又费力,限制了验证的实用性。作者开发了一种自动算法,用于快速准确地从 EPID 图像中提取标记并重建其 3D 位置。该研究已在固体水和动态胸部体模中进行了金基准标记的研究。此外,作者还检查了根据 SBRT 方案治疗肝转移的五名患者的病例。对于每个病例,通过使用 EPID 收集出口辐射来创建图像序列。使用基于拉普拉斯高斯函数的图像处理算法检测和识别标记。为了减少错误标记检测,应用了一种标记注册技术,该技术使用图像强度以及从 3D CT 图像投影产生的参考标记位置和估计的标记位置之间的几何空间变换。通过反向投影,将每个标记在 2D 图像平面上的位置重建到 3D 中的标记的平均位置。从静态体模研究中,在 2D 和 3D 标记位置均实现了 <1mm 的空间精度。从动态体模研究中,仅使用拉普拉斯高斯算法,标记检测成功率为 88.8%。但是,添加了一种利用先前 CT 信息的标记注册技术,检测成功率提高到 100%。从 SBRT 患者研究中,使用 2D 图像测量 SI 方向的分次内肿瘤运动(3.1-11.3mm)。从 3D 重建的平均标记位置获得 SI、AP 和 LR 方向的分次间患者设置误差(0.1-12.7mm),并与参考计划 CT 图像进行比较。作者已经开发了一种从 MV 图像中提取标记位置的自动算法,并对其性能进行了评估。测量的分次内肿瘤运动和分次间每日患者设置误差可用于 SBRT 的离线回顾性验证。