目的:从实例属性的角度重新探讨基于注意的病理图像分类多实例学习

IF 10.7 1区 医学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Linghan Cai , Shenjin Huang , Ye Zhang , Jinpeng Lu , Yongbing Zhang
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引用次数: 0

摘要

多实例学习(MIL)是全幻灯片病理图像(WSI)分析的一种强大方法,特别适合处理带有幻灯片级标签的千兆像素分辨率图像。最近基于注意力的MIL架构显著推进了弱监督WSI分类,促进了临床诊断和疾病阳性区域的定位。然而,这些方法在区分实例方面经常面临挑战,导致组织错误识别和分类性能的潜在下降。为了解决这些限制,我们提出了一个属性感知的多实例学习框架AttriMIL。通过分析基于注意的MIL模型的计算流程,我们引入了一种多分支属性评分机制来量化个体的病理属性。利用这些量化的属性,我们进一步建立了面向区域和面向幻灯片的属性约束,以便在训练期间动态建模幻灯片内部和幻灯片之间的实例相关性。这些限制促使网络捕捉图像斑块之间的内在空间模式和语义相似性,从而增强其区分细微组织变化的能力和对挑战性实例的敏感性。为了充分利用这两个约束,我们进一步开发了一种病理自适应学习技术来优化预训练的特征提取器,使模型能够有效地收集特定于任务的特征。在五个公共数据集上进行的大量实验表明,AttriMIL在各个维度上都优于最先进的方法,包括袋分类精度、泛化能力和疾病阳性区域定位。实现代码可从https://github.com/MedCAI/AttriMIL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。
AttriMIL: Revisiting attention-based multiple instance learning for whole-slide pathological image classification from a perspective of instance attributes
Multiple instance learning (MIL) is a powerful approach for whole-slide pathological image (WSI) analysis, particularly suited for processing gigapixel-resolution images with slide-level labels. Recent attention-based MIL architectures have significantly advanced weakly supervised WSI classification, facilitating both clinical diagnosis and localization of disease-positive regions. However, these methods often face challenges in differentiating between instances, leading to tissue misidentification and a potential degradation in classification performance. To address these limitations, we propose AttriMIL, an attribute-aware multiple instance learning framework. By dissecting the computational flow of attention-based MIL models, we introduce a multi-branch attribute scoring mechanism that quantifies the pathological attributes of individual instances. Leveraging these quantified attributes, we further establish region-wise and slide-wise attribute constraints to dynamically model instance correlations both within and across slides during training. These constraints encourage the network to capture intrinsic spatial patterns and semantic similarities between image patches, thereby enhancing its ability to distinguish subtle tissue variations and sensitivity to challenging instances. To fully exploit the two constraints, we further develop a pathology adaptive learning technique to optimize pre-trained feature extractors, enabling the model to efficiently gather task-specific features. Extensive experiments on five public datasets demonstrate that AttriMIL consistently outperforms state-of-the-art methods across various dimensions, including bag classification accuracy, generalization ability, and disease-positive region localization. The implementation code is available at https://github.com/MedCAI/AttriMIL.
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来源期刊
Medical image analysis
Medical image analysis 工程技术-工程:生物医学
CiteScore
22.10
自引率
6.40%
发文量
309
审稿时长
6.6 months
期刊介绍: Medical Image Analysis serves as a platform for sharing new research findings in the realm of medical and biological image analysis, with a focus on applications of computer vision, virtual reality, and robotics to biomedical imaging challenges. The journal prioritizes the publication of high-quality, original papers contributing to the fundamental science of processing, analyzing, and utilizing medical and biological images. It welcomes approaches utilizing biomedical image datasets across all spatial scales, from molecular/cellular imaging to tissue/organ imaging.
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