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引用次数: 1

摘要

提高特征表征能力是许多病理全切片图像任务的基础。近年来在病理特异性自监督学习(SSL)方面的研究取得了很大的成功。然而,他们大多只专注于学习补丁级表征,因此在借口和幻灯片级下游任务(如subtyping, grading and staging)之间仍然存在差距。针对幻灯片级表示,我们提出了幻灯片级原型蒸馏(SLPD)来探索幻灯片内和幻灯片间的语义结构,以便在wsi上进行上下文建模。具体来说,我们对每个WSI内的区域(4096x4096个补丁)迭代地执行幻灯片内聚类,以产生原型,并鼓励区域表示更接近指定的原型。通过用原型表示每张幻灯片,我们进一步通过原型的设置距离选择相似的幻灯片,并通过交叉幻灯片原型分配区域进行蒸馏。SLPD在多个幻灯片级别的基准测试中取得了最先进的结果,并证明了幻灯片语义结构的表示学习可以为WSI分析提供合适的代理任务。代码将在https://github.com/Carboxy/SLPD上提供。
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SLPD: Slide-level Prototypical Distillation for WSIs
Improving the feature representation ability is the foundation of many whole slide pathological image (WSIs) tasks. Recent works have achieved great success in pathological-specific self-supervised learning (SSL). However, most of them only focus on learning patch-level representations, thus there is still a gap between pretext and slide-level downstream tasks, e.g., subtyping, grading and staging. Aiming towards slide-level representations, we propose Slide-Level Prototypical Distillation (SLPD) to explore intra- and inter-slide semantic structures for context modeling on WSIs. Specifically, we iteratively perform intra-slide clustering for the regions (4096x4096 patches) within each WSI to yield the prototypes and encourage the region representations to be closer to the assigned prototypes. By representing each slide with its prototypes, we further select similar slides by the set distance of prototypes and assign the regions by cross-slide prototypes for distillation. SLPD achieves state-of-the-art results on multiple slide-level benchmarks and demonstrates that representation learning of semantic structures of slides can make a suitable proxy task for WSI analysis. Code will be available at https://github.com/Carboxy/SLPD.
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