Accurate segmentation and motion estimation of myocardium have always been important in clinic field, which essentially contribute to the downstream diagnosis. However, existing methods cannot always guarantee the shape integrity for myocardium segmentation. In addition, motion estimation requires point correspondence on the myocardium region across different frames. In this paper, we propose a novel end-to-end deep statistic shape model to focus on myocardium segmentation with both shape integrity and boundary correspondence preserving. Specifically, myocardium shapes are represented by a fixed number of points, whose variations are extracted by Principal Component Analysis (PCA). Deep neural network is used to predict the transformation parameters (both affine and deformation), which are then used to warp the mean point cloud to the image domain. Furthermore, a differentiable rendering layer is introduced to incorporate mask supervision into the framework to learn more accurate point clouds. In this way, the proposed method is able to consistently produce anatomically reasonable segmentation mask without post processing. Additionally, the predicted point cloud guarantees boundary correspondence for sequential images, which contributes to the downstream tasks, such as the motion estimation of myocardium. We conduct several experiments to demonstrate the effectiveness of the proposed method on several benchmark datasets.
翻译:心肌梗塞的准确分解和运动估计在临床领域一直很重要,这在很大程度上有助于下游诊断。但是,现有方法并不总是能够保证心心肌部分的形状完整性。此外,运动估计需要不同框架对心肌区域进行点对点的对应。在本文中,我们提出一个新的端到端深度统计形状模型,侧重于心肌部分的分解,同时保持形状完整性和边界对应。具体地说,心肌形状的分解由固定的点数代表,其变异由主构件分析(PCA)提取。深神经网络用来预测变异参数(包括直角和变形),这些变异参数随后用于将中点云对图像区域进行扭动。此外,我们引入了一种不同的演化层,将遮罩监督纳入框架,以了解更准确的点云层。这样,拟议的方法能够持续产生解剖合理分解的遮罩,而无需后处理。此外,预测的点云能保证连续图像的边界对应,有助于下游任务,例如对几颗基度数据进行运动估计。我们进行了若干项实验。