论文标题

可信赖的多尺度分类框架整体幻灯片图像

Trusted Multi-Scale Classification Framework for Whole Slide Image

论文作者

Feng, Ming, Xu, Kele, Wu, Nanhui, Huang, Weiquan, Bai, Yan, Wang, Changjian, Wang, Huaimin

论文摘要

尽管做出了巨大的努力,但千兆像素的分类全扫描图像(WSI)被严重限制在整个幻灯片的约束计算资源中,或者使用不同尺度的知识利用有限。此外,以前的大多数尝试都缺乏不确定性估计的能力。通常,病理学家通常会共同分析来自不同宏伟的WSI。如果使用单个放大倍率不确定病理学家,那么他们将反复更改放大倍率以发现组织的各种特征。在本文中,由病理学家的诊断过程促进,我们为WSI提出了一个值得信赖的多尺度分类框架。我们的框架利用视觉变压器作为多部门的骨干,可以共同分类建模,估计显微镜的每个放大倍数的不确定性,并整合了来自不同放大倍率的证据。此外,为了利用WSI的歧视性补丁并减少对计算资源的要求,我们使用注意力推出和非最大抑制作用提出了一种新颖的补丁选择模式。为了从经验研究我们的方法的有效性,使用两个基准数据库对我们的WSI分类任务进行了经验实验。获得的结果表明,与最先进的方法相比,受信任的框架可以显着改善WSI分类性能。

Despite remarkable efforts been made, the classification of gigapixels whole-slide image (WSI) is severely restrained from either the constrained computing resources for the whole slides, or limited utilizing of the knowledge from different scales. Moreover, most of the previous attempts lacked of the ability of uncertainty estimation. Generally, the pathologists often jointly analyze WSI from the different magnifications. If the pathologists are uncertain by using single magnification, then they will change the magnification repeatedly to discover various features of the tissues. Motivated by the diagnose process of the pathologists, in this paper, we propose a trusted multi-scale classification framework for the WSI. Leveraging the Vision Transformer as the backbone for multi branches, our framework can jointly classification modeling, estimating the uncertainty of each magnification of a microscope and integrate the evidence from different magnification. Moreover, to exploit discriminative patches from WSIs and reduce the requirement for computation resources, we propose a novel patch selection schema using attention rollout and non-maximum suppression. To empirically investigate the effectiveness of our approach, empirical experiments are conducted on our WSI classification tasks, using two benchmark databases. The obtained results suggest that the trusted framework can significantly improve the WSI classification performance compared with the state-of-the-art methods.

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