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Automatic Data Augmentation Via Deep Reinforcement Learning for Effective Kidney Tumor Segmentation

机译:通过深度加固学习自动数据增强,用于有效的肾肿瘤分割

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Conventional data augmentation realized by performing simple pre-processing operations (e.g., rotation, crop, etc.) has been validated for its advantage in enhancing the performance for medical image segmentation. However, the data generated by these conventional augmentation methods are random and sometimes harmful to the subsequent segmentation. In this paper, we developed a novel automatic learning-based data augmentation method for medical image segmentation which models the augmentation task as a trial-and-error procedure using deep reinforcement learning (DRL). In our method, we innovatively combine the data augmentation module and the subsequent segmentation module in an end-to-end training manner with a consistent loss. Specifically, the best sequential combination of different basic operations is automatically learned by directly maximizing the performance improvement (i.e., Dice ratio) on the available validation set. We extensively evaluated our method on CT kidney tumor segmentation which validated the promising results of our method.
机译:通过执行简单的预处理操作(例如,旋转,作物等)来实现传统的数据增强已经验证了其优点,以提高医学图像分割的性能。然而,这些传统增强方法产生的数据是随机的,有时对后续分割有害。在本文中,我们开发了一种新的基于自动学习的数据增强方法,用于医学图像分割,其使用深增强学习(DRL)将增强任务模拟作为试验和错误程序。在我们的方法中,我们创新地将数据增强模块和后续分割模块以端到端的训练方式与一致的损耗结合起来。具体地,通过直接最大化可用验证集上的性能改进(即骰子比率)来自动学习不同基本操作的最佳顺序组合。我们广泛地评估了我们对CT肾肿瘤细分的方法,验证了我们方法的有希望的结果。

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