Ma Zongqing, Wu Xi, Song Qi, Luo Yong, Wang Yan, Zhou Jiliu
College of Computer Science, Sichuan University, Chengdu, Sichuan 610065, P.R. China.
School of Computer Science, Chengdu University of Information Technology, Chengdu, Sichuan 610225, P.R. China.
Exp Ther Med. 2018 Sep;16(3):2511-2521. doi: 10.3892/etm.2018.6478. Epub 2018 Jul 18.
Accurate and reliable segmentation of nasopharyngeal carcinoma (NPC) in medical images is an import task for clinical applications, including radiotherapy. However, NPC features large variations in lesion size and shape, as well as inhomogeneous intensities within the tumor and similar intensity to that of nearby tissues, making its segmentation a challenging task. The present study proposes a novel automated NPC segmentation method in magnetic resonance (MR) images by combining a deep convolutional neural network (CNN) model and a 3-dimensional (3D) graph cut-based method in a two-stage manner. First, a multi-view deep CNN-based segmentation method is performed. A voxel-wise initial segmentation is generated by integrating the inferential classification information of three trained single-view CNNs. Instead of directly using the CNN classification results to achieve a final segmentation, the proposed method uses a 3D graph cut-based method to refine the initial segmentation. Specifically, the probability response map obtained using the multi-view CNN method is utilized to calculate the region cost, which represents the likelihood of a voxel being assigned to the tumor or non-tumor. Structure information in 3D from the original MR images is used to calculate the boundary cost, which measures the difference between the two voxels in the 3D neighborhood. The proposed method was evaluated on T1-weighted images from 30 NPC patients using the leave-one-out method. The experimental results demonstrated that the proposed method is effective and accurate for NPC segmentation.
在医学图像中准确可靠地分割鼻咽癌(NPC)是包括放射治疗在内的临床应用中的一项重要任务。然而,NPC在病变大小和形状上有很大差异,肿瘤内部强度不均匀,且与附近组织的强度相似,这使得其分割成为一项具有挑战性的任务。本研究提出了一种在磁共振(MR)图像中自动分割NPC的新方法,该方法分两阶段将深度卷积神经网络(CNN)模型与基于三维(3D)图割的方法相结合。首先,执行基于多视图深度CNN的分割方法。通过整合三个训练好的单视图CNN的推理分类信息生成体素级初始分割。该方法不是直接使用CNN分类结果来实现最终分割,而是使用基于3D图割的方法来细化初始分割。具体来说,利用多视图CNN方法获得的概率响应图来计算区域成本,该成本表示一个体素被分配到肿瘤或非肿瘤的可能性。利用原始MR图像的3D结构信息来计算边界成本,该成本衡量3D邻域中两个体素之间的差异。使用留一法对30例NPC患者的T1加权图像评估了该方法。实验结果表明,该方法对NPC分割有效且准确。