HMIL: Hierarchical Multi-Instance Learning for Fine-Grained Whole Slide Image Classification

Cheng Jin;Luyang Luo;Huangjing Lin;Jun Hou;Hao Chen
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Abstract

Fine-grained classification of whole slide images (WSIs) is essential in precision oncology, enabling precise cancer diagnosis and personalized treatment strategies. The core of this task involves distinguishing subtle morphological variations within the same broad category of gigapixel-resolution images, which presents a significant challenge. While the multi-instance learning (MIL) paradigm alleviates the computational burden of WSIs, existing MIL methods often overlook hierarchical label correlations, treating fine-grained classification as a flat multi-class classification task. To overcome these limitations, we introduce a novel hierarchical multi-instance learning (HMIL) framework. By facilitating on the hierarchical alignment of inherent relationships between different hierarchy of labels at instance and bag level, our approach provides a more structured and informative learning process. Specifically, HMIL incorporates a class-wise attention mechanism that aligns hierarchical information at both the instance and bag levels. Furthermore, we introduce supervised contrastive learning to enhance the discriminative capability for fine-grained classification and a curriculum-based dynamic weighting module to adaptively balance the hierarchical feature during training. Extensive experiments on our large-scale cytology cervical cancer (CCC) dataset and two public histology datasets, BRACS and PANDA, demonstrate the state-of-the-art class-wise and overall performance of our HMIL framework. Our source code is available at https://github.com/ChengJin-git/HMIL.
层次多实例学习用于细粒度整张幻灯片图像分类
全幻灯片图像(wsi)的细粒度分类在精确肿瘤学中至关重要,可以实现精确的癌症诊断和个性化的治疗策略。这项任务的核心是在同一大类千兆像素分辨率的图像中区分细微的形态变化,这是一个重大的挑战。虽然多实例学习(MIL)范式减轻了wsi的计算负担,但现有的MIL方法往往忽略了分层标签相关性,将细粒度分类视为扁平的多类分类任务。为了克服这些限制,我们引入了一种新的分层多实例学习(hml)框架。通过促进实例和袋级标签的不同层次之间的内在关系的层次对齐,我们的方法提供了一个更结构化和信息丰富的学习过程。具体来说,hml包含了一个类注意机制,该机制在实例和包级别上对齐分层信息。此外,我们引入了监督对比学习来增强细粒度分类的判别能力,并引入了基于课程的动态加权模块来自适应平衡训练过程中的分层特征。在我们的大规模细胞学宫颈癌(CCC)数据集和两个公共组织学数据集(BRACS和PANDA)上进行的大量实验表明,我们的hmi框架具有最先进的分类和整体性能。我们的源代码可从https://github.com/ChengJin-git/HMIL获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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