The vast majority of semantic segmentation approaches rely on pixel-level annotations that are tedious and time consuming to obtain and suffer from significant inter and intra-expert variability. To address these issues, recent approaches have leveraged categorical annotations at the slide-level, that in general suffer from robustness and generalization. In this paper, we propose a novel weakly supervised multi-instance learning approach that deciphers quantitative slide-level annotations which are fast to obtain and regularly present in clinical routine. The extreme potentials of the proposed approach are demonstrated for tumor segmentation of solid cancer subtypes. The proposed approach achieves superior performance in out-of-distribution, out-of-location, and out-of-domain testing sets.
翻译:绝大多数语义分解方法都依赖于像素级说明,这些说明既乏味又费时,以获得专家之间和专家内部的显著差异。为了解决这些问题,最近的办法利用了幻灯片级的绝对说明,一般而言,这种说明是稳健和概括性的。在本文件中,我们建议采用新颖的、监督薄弱的多语种学习方法,将快速获得和经常存在于临床常规中的定量幻灯片级说明解译出来。提议的办法的极端潜力表现在固态癌症子型肿瘤分解上。提议的办法在分配之外、地点外和体外测试中取得了优异的成绩。