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Semi-supervised Learning for Network-Based Cardiac MR Image Segmentation

机译:基于网络的心脏MR图像分割的半监督学习

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Training a fully convolutional network for pixel-wise (or voxel-wise) image segmentation normally requires a large number of training images with corresponding ground truth label maps. However, it is a challenge to obtain such a large training set in the medical imaging domain, where expert annotations are time-consuming and difficult to obtain. In this paper, we propose a semi-supervised learning approach, in which a segmentation network is trained from both labelled and unlabelled data. The network parameters and the segmentations for the unlabelled data are alternately updated. We evaluate the method for short-axis cardiac MR image segmentation and it has demonstrated a high performance, outperforming a baseline supervised method. The mean Dice overlap metric is 0.92 for the left ventricular cavity, 0.85 for the myocardium and 0.89 for the right ventricular cavity. It also outperforms a state-of-the-art multi-atlas segmentation method by a large margin and the speed is substantially faster.
机译:训练全卷积网络以进行像素级(或体素级)图像分割通常需要大量具有相应地面真实标签图的训练图像。然而,在医学成像领域中获得如此大的训练集是一项挑战,因为专家注解既耗时又难以获得。在本文中,我们提出了一种半监督学习方法,其中从标记和未标记的数据中训练分割网络。网络参数和未标记数据的分段会交替更新。我们评估了短轴心脏MR图像分割的方法,并证明了该方法具有较高的性能,优于基线监督方法。左室的平均Dice重叠量度为0.92,心肌的平均Dice重叠量度为0.85,右室的平均Dice重叠量度为0.89。它也大大领先于最新的多图集分割方法,并且速度明显更快。

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