Department of Medical Physics, Memorial Sloan-Kettering Cancer Center, New York, NY, USA.
Med Phys. 2012 Jul;39(7):4547-58. doi: 10.1118/1.4728979.
Contouring a normal anatomical structure during radiation treatment planning requires significant time and effort. The authors present a fast and accurate semiautomatic contour delineation method to reduce the time and effort required of expert users.
Following an initial segmentation on one CT slice, the user marks the target organ and nontarget pixels with a few simple brush strokes. The algorithm calculates statistics from this information that, in turn, determines the parameters of an energy function containing both boundary and regional components. The method uses a conditional random field graphical model to define the energy function to be minimized for obtaining an estimated optimal segmentation, and a graph partition algorithm to efficiently solve the energy function minimization. Organ boundary statistics are estimated from the segmentation and propagated to subsequent images; regional statistics are estimated from the simple brush strokes that are either propagated or redrawn as needed on subsequent images. This greatly reduces the user input needed and speeds up segmentations. The proposed method can be further accelerated with graph-based interpolation of alternating slices in place of user-guided segmentation. CT images from phantom and patients were used to evaluate this method. The authors determined the sensitivity and specificity of organ segmentations using physician-drawn contours as ground truth, as well as the predicted-to-ground truth surface distances. Finally, three physicians evaluated the contours for subjective acceptability. Interobserver and intraobserver analysis was also performed and Bland-Altman plots were used to evaluate agreement.
Liver and kidney segmentations in patient volumetric CT images show that boundary samples provided on a single CT slice can be reused through the entire 3D stack of images to obtain accurate segmentation. In liver, our method has better sensitivity and specificity (0.925 and 0.995) than region growing (0.897 and 0.995) and level set methods (0.912 and 0.985) as well as shorter mean predicted-to-ground truth distance (2.13 mm) compared to regional growing (4.58 mm) and level set methods (8.55 mm and 4.74 mm). Similar results are observed in kidney segmentation. Physician evaluation of ten liver cases showed that 83% of contours did not need any modification, while 6% of contours needed modifications as assessed by two or more evaluators. In interobserver and intraobserver analysis, Bland-Altman plots showed our method to have better repeatability than the manual method while the delineation time was 15% faster on average.
Our method achieves high accuracy in liver and kidney segmentation and considerably reduces the time and labor required for contour delineation. Since it extracts purely statistical information from the samples interactively specified by expert users, the method avoids heuristic assumptions commonly used by other methods. In addition, the method can be expanded to 3D directly without modification because the underlying graphical framework and graph partition optimization method fit naturally with the image grid structure.
在放射治疗计划中勾画正常解剖结构需要大量的时间和精力。作者提出了一种快速准确的半自动轮廓勾画方法,以减少专家用户所需的时间和精力。
在一个 CT 切片上进行初始分割后,用户只需用几个简单的画笔 strokes 标记目标器官和非目标像素。该算法从这些信息中计算统计数据,这些统计数据反过来确定一个能量函数的参数,该能量函数包含边界和区域分量。该方法使用条件随机场图形模型来定义要最小化的能量函数,以获得估计的最佳分割,并使用图划分算法来有效地求解能量函数最小化。器官边界统计数据是从分割中估计的,并传播到后续的图像中;区域统计数据是从简单的画笔 strokes 中估计的,这些画笔 strokes 可以根据需要在后续的图像中传播或重新绘制。这大大减少了所需的用户输入,并加快了分割速度。该方法可以通过在替代用户引导分割的情况下使用基于图的交替切片插值来进一步加速。使用来自体模和患者的 CT 图像来评估该方法。作者使用医生绘制的轮廓作为ground truth,以及预测到 ground truth 的表面距离,来确定器官分割的灵敏度和特异性。最后,三位医生对轮廓进行了主观可接受性评估。还进行了观察者间和观察者内分析,并使用 Bland-Altman 图来评估一致性。
在患者容积 CT 图像中,肝脏和肾脏的分割结果表明,在整个 3D 图像堆栈中可以重复使用在单个 CT 切片上提供的边界样本,以获得准确的分割。在肝脏中,我们的方法在灵敏度和特异性方面(0.925 和 0.995)优于区域生长(0.897 和 0.995)和水平集方法(0.912 和 0.985),与区域生长(4.58mm)和水平集方法(8.55mm 和 4.74mm)相比,预测到 ground truth 的平均距离也更短(2.13mm)。在肾脏分割中也观察到了类似的结果。对十个肝脏病例的医生评估显示,83%的轮廓不需要任何修改,而 6%的轮廓需要两个或更多评估者进行修改。在观察者间和观察者内分析中,Bland-Altman 图显示我们的方法比手动方法具有更好的可重复性,而平均轮廓勾画时间快 15%。
我们的方法在肝脏和肾脏分割中达到了很高的准确性,并大大减少了轮廓勾画所需的时间和劳动。由于它从专家用户交互指定的样本中提取纯粹的统计信息,因此该方法避免了其他方法常用的启发式假设。此外,该方法可以直接扩展到 3D,而无需修改,因为基础图形框架和图划分优化方法自然适合图像网格结构。