Volumetric image segmentation with convolutional neural networks (CNNs) encounters several challenges, which are specific to medical images. Among these challenges are large volumes of interest, high class imbalances, and difficulties in learning shape representations. To tackle these challenges, we propose to improve over traditional CNN-based volumetric image segmentation through point-wise classification of point clouds. The sparsity of point clouds allows processing of entire image volumes, balancing highly imbalanced segmentation problems, and explicitly learning an anatomical shape. We build upon PointCNN, a neural network proposed to process point clouds, and propose here to jointly encode shape and volumetric information within the point cloud in a compact and computationally effective manner. We demonstrate how this approach can then be used to refine CNN-based segmentation, which yields significantly improved results in our experiments on the difficult task of peripheral nerve segmentation from magnetic resonance neurography images. By synthetic experiments, we further show the capability of our approach in learning an explicit anatomical shape representation.
翻译:为了应对这些挑战,我们建议通过对点云进行点分类,改善基于CNN的传统量子图像分解。点云的广度使得能够处理整批图像,平衡高度不平衡的分解问题,并明确学习解剖形状。我们以PointCNN为基础,这是一个神经网络,建议处理点云,并在此提议以紧凑和计算有效的方式将点云内的形状和体积信息联合编码。我们展示如何利用这一方法改进CNN的分解,从而大大改进我们在磁共振神经成像图的边缘神经分解困难任务方面的实验结果。通过合成实验,我们进一步展示了我们学习清晰解剖形状代表的方法的能力。