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Inter-Slice Image Augmentation Based on Frame Interpolation for Boosting Medical Image Segmentation Accuracy

机译:基于帧插值的切片间图像增强,用于提升医学图像分割精度

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We introduce the idea of inter-slice image augmentation whereby the numbers of the medical images and the corresponding segmentation labels are increased between two consecutive images in order to boost medical image segmentation accuracy. Unlike conventional data augmentation methods in medical imaging, which only increase the number of training samples directly by adding new virtual samples using simple parameterized transformations such as rotation, flipping, scaling, etc., we aim to augment data based on the relationship between two consecutive images, which increases not only the number but also the information of training samples. For this purpose, we propose a frame-interpolation-based data augmentation method to generate intermediate medical images and the corresponding segmentation labels between two consecutive images. We train and test a supervised U-Net liver segmentation network on SLIVER07 and CHAOS2019, respectively, with the augmented training samples, and obtain segmentation scores exhibiting significant improvement compared to the conventional augmentation methods.
机译:我们介绍了切片间图像增强的思想,由此在两个连续图像之间增加了医学图像和相应的分割标签的数量,以便提高医学图像分割精度。与医学成像中的传统数据增强方法不同,只需使用简单的参数化转换(例如旋转,翻转,缩放等)添加新的虚拟样本即可直接增加培训样本的数量,我们的目标是基于连续两个之间的关系增强数据图像不仅增加了数量,还增加了训练样本的信息。为此目的,我们提出了一种基于帧插值的数据增强方法,以在两个连续图像之间生成中间医学图像和相应的分段标签。我们分别在SLIVER07和CHAOS2019上培训和测试SLIVER07和CHAOS2019的监督,并获得与传统增强方法相比表现出显着改善的分割评分。

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