Self-supervised learning has developed rapidly and also advances computer-aided diagnosis in the medical field. Masked image modeling (MIM) is one of the self-supervised learning methods that masks a portion of input pixels and tries to predict the masked pixels. Traditional MIM methods often use a random masking strategy. However, medical images often have a small region of interest for disease detection compared to ordinary images. For example, the regions outside the lung do not contain the information for decision, which may cause the random masking strategy not to learn enough information for COVID-19 detection. Hence, we propose a novel region-guided masked image modeling method (RGMIM) for COVID-19 detection in this paper. In our method, we design a new masking strategy that uses lung mask information to locate valid regions to learn more helpful information for COVID-19 detection. Experimental results show that RGMIM can outperform other state-of-the-art self-supervised learning methods on an open COVID-19 radiography dataset.
翻译:自我监督的学习发展迅速,也促进了医疗领域的计算机辅助诊断。蒙面图像模型(MIM)是自我监督的学习方法之一,它掩盖了部分输入像素,并试图预测蒙面像素。传统的MIM方法经常使用随机遮罩策略。然而,与普通图像相比,医疗图像对疾病检测的兴趣通常较小,但与普通图像相比,医疗图像对疾病检测的兴趣范围较小。例如,肺外区域并不包含需要决定的信息,这可能导致随机遮蔽策略无法为COVID-19检测学习足够的信息。因此,我们建议了一种新的区域引导蒙面图像模型方法(RGMIM),用于检测COVID-19。在我们的方法中,我们设计了新的遮罩策略,利用肺罩信息定位有效区域,以学习有助于COVID-19检测的有用信息。实验结果表明,RGMIM可以在开放的COVID-19射频成像数据集上超越其他最先进的自我监督学习方法。