Existing self-supervised learning methods based on contrastive learning and masked image modeling have demonstrated impressive performances. However, current masked image modeling methods are mainly utilized in natural images, and their applications in medical images are relatively lacking. Besides, their fixed high masking strategy limits the upper bound of conditional mutual information, and the gradient noise is considerable, making less the learned representation information. Motivated by these limitations, in this paper, we propose masked patches selection and adaptive masking strategy based self-supervised medical image segmentation method, named MPS-AMS. We leverage the masked patches selection strategy to choose masked patches with lesions to obtain more lesion representation information, and the adaptive masking strategy is utilized to help learn more mutual information and improve performance further. Extensive experiments on three public medical image segmentation datasets (BUSI, Hecktor, and Brats2018) show that our proposed method greatly outperforms the state-of-the-art self-supervised baselines.
翻译:基于对比式学习和蒙面图像建模的现有自我监督学习方法显示了令人印象深刻的绩效。然而,目前的蒙面图像建模方法主要在自然图像中使用,其在医疗图像中的应用相对缺乏。 此外,他们固定的高面掩模战略限制了有条件的相互信息的上限,而梯度噪音则相当大,减少了所学的表述信息。受这些局限性的驱使,我们在本文件中提出了蒙面补丁选择和适应性遮罩战略,基于自我监督的医疗图像分割法,名为MPS-AMS。我们利用遮面补板选择战略选择带有损伤的蒙面补丁以获取更多的损伤代表信息,而适应性遮罩战略则被用来帮助学习更多的相互信息,进一步改进绩效。关于三种公共医学图像分割数据集(BUSI、Heckttor和Brats-2018)的广泛实验表明,我们拟议的方法大大超越了最先进的自我监督基线。</s>