Self-Supervised Medical Image Segmentation Using Deep Reinforced Adaptive Masking.

Zhenghua Xu, Yunxin Liu, Gang Xu, Thomas Lukasiewicz
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Abstract

Self-supervised learning aims to learn transferable representations from unlabeled data for downstream tasks. Inspired by masked language modeling in natural language processing, masked image modeling (MIM) has achieved certain success in the field of computer vision, but its effectiveness in medical images remains unsatisfactory. This is mainly due to the high redundancy and small discriminative regions in medical images compared to natural images. Therefore, this paper proposes an adaptive hard masking (AHM) approach based on deep reinforcement learning to expand the application of MIM in medical images. Unlike predefined random masks, AHM uses an asynchronous advantage actor-critic (A3C) model to predict reconstruction loss for each patch, enabling the model to learn where masking is valuable. By optimizing the non-differentiable sampling process using reinforcement learning, AHM enhances the understanding of key regions, thereby improving downstream task performance. Experimental results on two medical image datasets demonstrate that AHM outperforms state-of-the-art methods. Additional experiments under various settings validate the effectiveness of AHM in constructing masked images.

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利用深度强化自适应屏蔽进行自监督医学图像分割
自我监督学习旨在从未标明的数据中学习可转移的表征,用于下游任务。受自然语言处理中的遮蔽语言建模启发,遮蔽图像建模(MIM)在计算机视觉领域取得了一定的成功,但其在医学图像中的效果仍不尽如人意。这主要是由于与自然图像相比,医学图像的冗余度高、辨别区域小。因此,本文提出了一种基于深度强化学习的自适应硬掩膜(AHM)方法,以拓展 MIM 在医学图像中的应用。与预定义的随机遮罩不同,AHM 使用异步优势行为批判(A3C)模型来预测每个补丁的重建损失,使模型能够学习遮罩在哪些地方是有价值的。通过使用强化学习优化无差别采样过程,AHM 增强了对关键区域的理解,从而提高了下游任务的性能。在两个医学图像数据集上的实验结果表明,AHM 的性能优于最先进的方法。在各种设置下进行的其他实验验证了 AHM 在构建遮蔽图像方面的有效性。
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