论文标题
基于变压器的多个实例学习,用于弱监督的组织病理学图像分割
Transformer based multiple instance learning for weakly supervised histopathology image segmentation
论文作者
论文摘要
他的病理图像细分算法在计算机辅助诊断技术中起着至关重要的作用。弱监督分割算法的发展减轻了医学图像注释的问题,即耗时且劳动力密集。作为弱监督学习的子集,多个实例学习(MIL)已被证明在细分中有效。但是,MIL中的实例之间缺乏相关信息,这限制了细分性能的进一步改善。在本文中,我们提出了一种新型的组织病理学图像中像素级分割的弱监督方法,该方法将变压器引入MIL框架中以捕获全球或远程依赖性。变压器中的多头自我注意力建立了实例之间的关系,这解决了一个事件在MIL中彼此独立的缺点。此外,引入了深入的监督,以克服弱监督方法中注释的局限性,并使对层次信息的利用更好。结肠癌数据集的最新结果证明了该方法与其他弱监督方法相比的优越性。值得相信,我们在医学图像中有各种应用的方法有潜力。
Hispathological image segmentation algorithms play a critical role in computer aided diagnosis technology. The development of weakly supervised segmentation algorithm alleviates the problem of medical image annotation that it is time-consuming and labor-intensive. As a subset of weakly supervised learning, Multiple Instance Learning (MIL) has been proven to be effective in segmentation. However, there is a lack of related information between instances in MIL, which limits the further improvement of segmentation performance. In this paper, we propose a novel weakly supervised method for pixel-level segmentation in histopathology images, which introduces Transformer into the MIL framework to capture global or long-range dependencies. The multi-head self-attention in the Transformer establishes the relationship between instances, which solves the shortcoming that instances are independent of each other in MIL. In addition, deep supervision is introduced to overcome the limitation of annotations in weakly supervised methods and make the better utilization of hierarchical information. The state-of-the-art results on the colon cancer dataset demonstrate the superiority of the proposed method compared with other weakly supervised methods. It is worth believing that there is a potential of our approach for various applications in medical images.