Li Kailu, Qian Ziniu, Han Yingnan, Chang Eric I-Chao, Wei Bingzheng, Lai Maode, Liao Jing, Fan Yubo, Xu Yan
School of Biological Science and Medical Engineering, State Key Laboratory of Software Development Environment, Key Laboratory of Biomechanics, Mechanobiology of Ministry of Education and Beijing Advanced Innovation Centre for Biomedical Engineering, Beihang University, Beijing 100191, China.
Microsoft Research, Beijing 100080, China.
Med Image Anal. 2023 May;86:102791. doi: 10.1016/j.media.2023.102791. Epub 2023 Mar 11.
Accurate segmentation in histopathology images at pixel-level plays a critical role in the digital pathology workflow. The development of weakly supervised methods for histopathology image segmentation liberates pathologists from time-consuming and labor-intensive works, opening up possibilities of further automated quantitative analysis of whole-slide histopathology images. As an effective subgroup of weakly supervised methods, multiple instance learning (MIL) has achieved great success in histopathology images. In this paper, we specially treat pixels as instances so that the histopathology image segmentation task is transformed into an instance prediction task in MIL. However, the lack of relations between instances in MIL limits the further improvement of segmentation performance. Therefore, we propose a novel weakly supervised method called SA-MIL for pixel-level segmentation in histopathology images. SA-MIL introduces a self-attention mechanism into the MIL framework, which captures global correlation among all instances. In addition, we use deep supervision to make the best use of information from limited annotations in the weakly supervised method. Our approach makes up for the shortcoming that instances are independent of each other in MIL by aggregating global contextual information. We demonstrate state-of-the-art results compared to other weakly supervised methods on two histopathology image datasets. It is evident that our approach has generalization ability for the high performance on both tissue and cell histopathology datasets. There is potential in our approach for various applications in medical images.
组织病理学图像的像素级精确分割在数字病理学工作流程中起着关键作用。用于组织病理学图像分割的弱监督方法的发展将病理学家从耗时且劳动密集的工作中解放出来,为全切片组织病理学图像的进一步自动化定量分析开辟了可能性。作为弱监督方法的一个有效子组,多实例学习(MIL)在组织病理学图像中取得了巨大成功。在本文中,我们特别将像素视为实例,从而将组织病理学图像分割任务转化为MIL中的实例预测任务。然而,MIL中实例之间缺乏关联限制了分割性能的进一步提升。因此,我们提出了一种名为SA - MIL的新型弱监督方法,用于组织病理学图像的像素级分割。SA - MIL将自注意力机制引入到MIL框架中,该机制捕获所有实例之间的全局相关性。此外,我们使用深度监督以充分利用弱监督方法中有限注释的信息。我们的方法通过聚合全局上下文信息弥补了MIL中实例相互独立的缺点。与其他弱监督方法相比,我们在两个组织病理学图像数据集上展示了最优的结果。显然,我们的方法在组织和细胞组织病理学数据集上都具有高性能的泛化能力。我们的方法在医学图像的各种应用中具有潜力。