IEEE Trans Pattern Anal Mach Intell. 2015 Nov;37(11):2286-303. doi: 10.1109/TPAMI.2015.2424869.
Conventional learning-based methods for segmenting prostate in CT images ignore the relations among the low-level features by assuming all these features are independent. Also, their feature selection steps usually neglect the image appearance changes in different local regions of CT images. To this end, we present a novel semi-automatic learning-based prostate segmentation method in this article. For segmenting the prostate in a certain treatment image, the radiation oncologist will be first asked to take a few seconds to manually specify the first and last slices of the prostate. Then, prostate is segmented with the following two steps: (i) Estimation of 3D prostate-likelihood map to predict the likelihood of each voxel being prostate by employing the coupled feature representation, and the proposed Spatial-COnstrained Transductive LassO (SCOTO); (ii) Multi-atlases based label fusion to generate the final segmentation result by using the prostate shape information obtained from both planning and previous treatment images. The major contribution of the proposed method mainly includes: (i) incorporating radiation oncologist's manual specification to aid segmentation, (ii) adopting coupled features to relax previous assumption of feature independency for voxel representation, and (iii) developing SCOTO for joint feature selection across different local regions. The experimental result shows that the proposed method outperforms the state-of-the-art methods in a real-world prostate CT dataset, consisting of 24 patients with totally 330 images, all of which were manually delineated by the radiation oncologist for performance evaluation. Moreover, our method is also clinically feasible, since the segmentation performance can be improved by just requiring the radiation oncologist to spend only a few seconds for manual specification of ending slices in the current treatment CT image.
基于传统学习的 CT 图像前列腺分割方法通过假设所有这些特征都是独立的来忽略低级特征之间的关系。此外,它们的特征选择步骤通常忽略了 CT 图像不同局部区域的图像外观变化。为此,我们在本文中提出了一种新的基于半自动化学习的前列腺分割方法。在为特定治疗图像分割前列腺时,放射肿瘤学家首先需要花费几秒钟时间手动指定前列腺的第一和最后一个切片。然后,通过以下两个步骤分割前列腺:(i) 估计 3D 前列腺似然图,通过使用耦合特征表示和提出的空间约束转导 LASSO(SCOTO),预测每个体素为前列腺的可能性;(ii) 基于多图谱的标签融合,通过使用来自计划和以前治疗图像的前列腺形状信息生成最终分割结果。该方法的主要贡献主要包括:(i) 结合放射肿瘤学家的手动指定来辅助分割,(ii) 采用耦合特征来放松先前的体素表示特征独立性假设,以及 (iii) 开发 SCOTO 用于不同局部区域的联合特征选择。实验结果表明,该方法在由 24 名患者组成的 330 张真实世界前列腺 CT 数据集上优于最新方法,所有这些图像均由放射肿瘤学家手动绘制以进行性能评估。此外,我们的方法在临床上也是可行的,因为仅要求放射肿瘤学家在当前治疗 CT 图像中花费几秒钟手动指定结束切片,就可以提高分割性能。