论文标题
MCMC指导CNN培训和分割胰腺提取
MCMC Guided CNN Training and Segmentation for Pancreas Extraction
论文作者
论文摘要
有效的器官分割是各种定量分析的先决条件。从腹部CT图像中分割胰腺是一项具有挑战性的任务,因为其形状,大小和位置的较高解剖变异性。更重要的是,胰腺只占据腹部的一小部分,器官边界非常模糊。所有这些因素使其他器官的分割方法不太适合胰腺分割。在本报告中,我们提出了马尔可夫链蒙特卡洛(MCMC)采样引导卷积神经网络(CNN)方法,以应对形态和光度法变异性方面的困难。具体而言,提出的方法主要包含三个步骤:首先,进行注册以减轻体重和位置变异性。然后,采用MCMC采样来指导3D贴片的采样,这些贴片被馈送到CNN进行训练。同时,还学习了胰腺分布以进行后续分段。第三,从学习分布中取样,MCMC过程指导分割过程。最后,使用贝叶斯投票方案融合了基于补丁的细分。该方法在NIH胰腺数据集上进行评估,该数据集包含82个腹部对比度增强的CT体积。最后,我们在测试数据中获得了78.13%的骰子相似性系数值和82.65%的召回值的竞争结果。
Efficient organ segmentation is the precondition of various quantitative analysis. Segmenting the pancreas from abdominal CT images is a challenging task because of its high anatomical variability in shape, size and location. What's more, the pancreas only occupies a small portion in abdomen, and the organ border is very fuzzy. All these factors make the segmentation methods of other organs less suitable for the pancreas segmentation. In this report, we propose a Markov Chain Monte Carlo (MCMC) sampling guided convolutional neural network (CNN) approach, in order to handle such difficulties in morphological and photometric variabilities. Specifically, the proposed method mainly contains three steps: First, registration is carried out to mitigate the body weight and location variability. Then, an MCMC sampling is employed to guide the sampling of 3D patches, which are fed to the CNN for training. At the same time, the pancreas distribution is also learned for the subsequent segmentation. Third, sampled from the learned distribution, an MCMC process guides the segmentation process. Lastly, the patches based segmentation is fused using a Bayesian voting scheme. This method is evaluated on the NIH pancreatic datasets which contains 82 abdominal contrast-enhanced CT volumes. Finally, we achieved a competitive result of 78.13% Dice Similarity Coefficient value and 82.65% Recall value in testing data.