利用局部感知扫描和重要性重采样,释放状态空间模型对整个幻灯片图像的处理能力

Yanyan Huang;Weiqin Zhao;Yu Fu;Lingting Zhu;Lequan Yu
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摘要

全幻灯片图像(WSI)分析在医学成像领域越来越受到重视。然而,由于其千兆像素的大小,以前的方法往往不能有效地处理整个wsi。受状态空间模型最新发展的启发,本文介绍了一种新的病理曼巴(PAM),用于更准确和健壮的WSI分析。PAM包括三个精心设计的组件,以解决WSI分析过程中巨大的图像尺寸、局部和分层信息的利用以及训练和测试特征分布之间的不匹配的挑战。具体来说,我们设计了一种双向曼巴编码器,有效地处理wsi中存在的大量斑块,可以处理大规模的病理图像,同时达到高性能和准确性。为了进一步利用WSI的局部信息和固有的层次结构,我们引入了一种新的局部感知扫描模块,该模块采用局部感知机制和层次扫描来熟练地捕获WSI中的局部信息和总体结构。此外,为了缓解训练阶段和测试阶段的补丁特征分布不一致,我们提出了测试时间重要性重采样模块,对测试阶段的补丁进行重采样,以保证训练阶段和测试阶段特征分布的一致性,从而增强模型预测能力。对9个具有癌症亚型和生存预测任务的WSI数据集的广泛评估表明,PAM优于当前最先进的方法,并且其在WSI中区分区域建模的能力也有所增强。源代码可从https://github.com/HKU-MedAI/PAM获得。
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Unleash the Power of State Space Model for Whole Slide Image With Local Aware Scanning and Importance Resampling
Whole slide image (WSI) analysis is gaining prominence within the medical imaging field. However, previous methods often fall short of efficiently processing entire WSIs due to their gigapixel size. Inspired by recent developments in state space models, this paper introduces a new Pathology Mamba (PAM) for more accurate and robust WSI analysis. PAM includes three carefully designed components to tackle the challenges of enormous image size, the utilization of local and hierarchical information, and the mismatch between the feature distributions of training and testing during WSI analysis. Specifically, we design a Bi-directional Mamba Encoder to process the extensive patches present in WSIs effectively and efficiently, which can handle large-scale pathological images while achieving high performance and accuracy. To further harness the local information and inherent hierarchical structure of WSI, we introduce a novel Local-aware Scanning module, which employs a local-aware mechanism alongside hierarchical scanning to adeptly capture both the local information and the overarching structure within WSIs. Moreover, to alleviate the patch feature distribution misalignment between training and testing, we propose a Test-time Importance Resampling module to conduct testing patch resampling to ensure consistency of feature distribution between the training and testing phases, and thus enhance model prediction. Extensive evaluation on nine WSI datasets with cancer subtyping and survival prediction tasks demonstrates that PAM outperforms current state-of-the-art methods and also its enhanced capability in modeling discriminative areas within WSIs. The source code is available at https://github.com/HKU-MedAI/PAM.
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