Department of Radiotherapy, Academic medical Center, University of Amsterdam, 1105 AZ, Amsterdam, The Netherlands.
Phys Med Biol. 2012 Jun 21;57(12):3945-62. doi: 10.1088/0031-9155/57/12/3945. Epub 2012 May 30.
In multiple plan adaptive radiotherapy (ART) strategies of bladder cancer, a library of plans corresponding to different bladder volumes is created based on images acquired in early treatment sessions. Subsequently, the plan for the smallest PTV safely covering the bladder on cone-beam CT (CBCT) is selected as the plan of the day. The aim of this study is to develop an automatic bladder segmentation approach suitable for CBCT scans and test its ability to select the appropriate plan from the library of plans for such an ART procedure. Twenty-three bladder cancer patients with a planning CT and on average 11.6 CBCT scans were included in our study. For each patient, all CBCT scans were matched to the planning CT on bony anatomy. Bladder contours were manually delineated for each planning CT (for model building) and CBCT (for model building and validation). The automatic segmentation method consisted of two steps. A patient-specific bladder deformation model was built from the training data set of each patient (the planning CT and the first five CBCT scans). Then, the model was applied to automatically segment bladders in the validation data of the same patient (the remaining CBCT scans). Principal component analysis (PCA) was applied to the training data to model patient-specific bladder deformation patterns. The number of PCA modes for each patient was chosen such that the bladder shapes in the training set could be represented by such number of PCA modes with less than 0.1 cm mean residual error. The automatic segmentation started from the bladder shape of a reference CBCT, which was adjusted by changing the weight of each PCA mode. As a result, the segmentation contour was deformed consistently with the training set to fit the bladder in the validation image. A cost function was defined by the absolute difference between the directional gradient field of reference CBCT sampled on the corresponding bladder contour and the directional gradient field of validation CBCT sampled on the segmentation contour candidate. The cost function measured the goodness of fit of the segmentation on the validation image and was minimized using a simplex optimizer. For each validation CBCT image, the segmentations were done five times using a different reference CBCT. The one with the lowest cost function was selected as the final bladder segmentation. Volume- and distance-based metrics and the accuracy of plan selection were evaluated to quantify the performance. Two to four PCA modes were needed to represent the bladder shape variation with less than 0.1 cm average residual error for the training data of each patient. The automatically segmented bladders had a 78.5% mean conformity index with the manual delineations. The mean SD of the local residual error over all patients was 0.24 cm. The agreement of plan selection between automatic and manual bladder segmentations was 77.5%. PCA is an efficient method to describe patient-specific bladder deformation. The statistical-shape-based segmentation approach is robust to handle the relatively poor CBCT image quality and allows for fast and reliable automatic segmentation of the bladder on CBCT for selecting the appropriate plan from a library of plans.
在膀胱癌的多计划自适应放疗(ART)策略中,根据早期治疗过程中获得的图像,为不同的膀胱体积创建了一个计划库。随后,选择在锥形束 CT(CBCT)上安全覆盖膀胱的最小 PTV 的计划作为当天的计划。本研究的目的是开发一种适用于 CBCT 扫描的自动膀胱分割方法,并测试其从这种 ART 过程的计划库中选择合适计划的能力。我们的研究纳入了 23 例膀胱癌患者,他们均具有计划 CT 和平均 11.6 次 CBCT 扫描。对于每位患者,所有 CBCT 扫描均与计划 CT 上的骨解剖结构相匹配。为每位患者的所有计划 CT(用于模型构建)和 CBCT(用于模型构建和验证)手动描绘了膀胱轮廓。自动分割方法由两个步骤组成。从每位患者的训练数据集(计划 CT 和前 5 次 CBCT 扫描)中构建患者特异性的膀胱变形模型。然后,将模型应用于同一患者的验证数据(其余的 CBCT 扫描)中自动分割膀胱。主成分分析(PCA)应用于训练数据,以建立患者特异性的膀胱变形模式。为每位患者选择的 PCA 模式数量应使训练集中的膀胱形状可以用少于 0.1cm 的平均残差表示。自动分割从参考 CBCT 的膀胱形状开始,通过改变每个 PCA 模式的权重来调整该形状。因此,分割轮廓与训练集一致变形,以适应验证图像中的膀胱。定义了一个成本函数,该函数由参考 CBCT 上采样的方向梯度场与分割轮廓候选上采样的验证 CBCT 的方向梯度场之间的绝对差值表示。该成本函数测量了分割在验证图像上的拟合程度,并使用单纯形优化器最小化。对于每个验证 CBCT 图像,使用不同的参考 CBCT 进行五次分割。选择成本函数最低的分割作为最终的膀胱分割。使用体积和距离为基础的度量标准以及计划选择的准确性来量化性能。对于每位患者的训练数据,需要使用 2 到 4 个 PCA 模式来表示膀胱形状变化,平均残差小于 0.1cm。所有患者的局部残差平均值为 0.24cm。与手动描绘相比,自动分割的膀胱的一致性指数为 78.5%。所有患者的局部残差平均值为 0.24cm。与手动描绘相比,自动分割的膀胱的一致性指数为 78.5%。计划选择的一致性为 77.5%。主成分分析(PCA)是描述患者特异性膀胱变形的有效方法。基于统计形状的分割方法对于处理相对较差的 CBCT 图像质量具有鲁棒性,并允许在 CBCT 上快速可靠地自动分割膀胱,以从计划库中选择合适的计划。