Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, People's Republic of China. Medical Physics Division in the Department of Radiation Oncology, Stanford University, Palo Alto, CA 94305, United States of America. University of Chinese Academy of Sciences, Beijing 100049, People's Republic of China.
Phys Med Biol. 2018 May 4;63(9):095017. doi: 10.1088/1361-6560/aabd19.
Segmentation of liver in abdominal computed tomography (CT) is an important step for radiation therapy planning of hepatocellular carcinoma. Practically, a fully automatic segmentation of liver remains challenging because of low soft tissue contrast between liver and its surrounding organs, and its highly deformable shape. The purpose of this work is to develop a novel superpixel-based and boundary sensitive convolutional neural network (SBBS-CNN) pipeline for automated liver segmentation. The entire CT images were first partitioned into superpixel regions, where nearby pixels with similar CT number were aggregated. Secondly, we converted the conventional binary segmentation into a multinomial classification by labeling the superpixels into three classes: interior liver, liver boundary, and non-liver background. By doing this, the boundary region of the liver was explicitly identified and highlighted for the subsequent classification. Thirdly, we computed an entropy-based saliency map for each CT volume, and leveraged this map to guide the sampling of image patches over the superpixels. In this way, more patches were extracted from informative regions (e.g. the liver boundary with irregular changes) and fewer patches were extracted from homogeneous regions. Finally, deep CNN pipeline was built and trained to predict the probability map of the liver boundary. We tested the proposed algorithm in a cohort of 100 patients. With 10-fold cross validation, the SBBS-CNN achieved mean Dice similarity coefficients of 97.31 ± 0.36% and average symmetric surface distance of 1.77 ± 0.49 mm. Moreover, it showed superior performance in comparison with state-of-art methods, including U-Net, pixel-based CNN, active contour, level-sets and graph-cut algorithms. SBBS-CNN provides an accurate and effective tool for automated liver segmentation. It is also envisioned that the proposed framework is directly applicable in other medical image segmentation scenarios.
肝脏在腹部计算机断层扫描(CT)中的分割是肝细胞癌放射治疗计划的重要步骤。实际上,由于肝脏与其周围器官之间的软组织对比度低,以及肝脏形状高度可变形,完全自动的肝脏分割仍然具有挑战性。本工作的目的是开发一种新的基于超像素和边界敏感的卷积神经网络(SBBS-CNN)管道,用于自动肝脏分割。首先,将整个 CT 图像分割成超像素区域,将具有相似 CT 数的邻近像素聚集在一起。其次,通过将超像素标记为三类:内部肝脏、肝脏边界和非肝脏背景,将传统的二进制分割转换为多项式分类。通过这样做,明确识别并突出显示肝脏的边界区域,以便随后进行分类。第三,我们为每个 CT 体积计算了基于熵的显著图,并利用该图指导对超像素上的图像补丁进行采样。通过这种方式,从信息丰富的区域(例如具有不规则变化的肝脏边界)提取更多的补丁,从均匀的区域提取更少的补丁。最后,构建并训练深度 CNN 管道来预测肝脏边界的概率图。我们在 100 名患者的队列中测试了所提出的算法。通过 10 折交叉验证,SBBS-CNN 实现了 97.31 ± 0.36%的平均骰子相似系数和 1.77 ± 0.49mm 的平均对称面距离。此外,与包括 U-Net、基于像素的 CNN、主动轮廓、水平集和图割算法在内的最先进方法相比,它表现出了优越的性能。SBBS-CNN 为自动肝脏分割提供了一种准确有效的工具。预计所提出的框架也可以直接应用于其他医学图像分割场景。