Multi-Cohort Framework with Cohort-Aware Attention and Adversarial Mutual-Information Minimization for Whole Slide Image Classification

Sharon Peled, Yosef E. Maruvka, Moti Freiman
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Abstract

Whole Slide Images (WSIs) are critical for various clinical applications, including histopathological analysis. However, current deep learning approaches in this field predominantly focus on individual tumor types, limiting model generalization and scalability. This relatively narrow focus ultimately stems from the inherent heterogeneity in histopathology and the diverse morphological and molecular characteristics of different tumors. To this end, we propose a novel approach for multi-cohort WSI analysis, designed to leverage the diversity of different tumor types. We introduce a Cohort-Aware Attention module, enabling the capture of both shared and tumor-specific pathological patterns, enhancing cross-tumor generalization. Furthermore, we construct an adversarial cohort regularization mechanism to minimize cohort-specific biases through mutual information minimization. Additionally, we develop a hierarchical sample balancing strategy to mitigate cohort imbalances and promote unbiased learning. Together, these form a cohesive framework for unbiased multi-cohort WSI analysis. Extensive experiments on a uniquely constructed multi-cancer dataset demonstrate significant improvements in generalization, providing a scalable solution for WSI classification across diverse cancer types. Our code for the experiments is publicly available at .
具有同群感知注意力和逆向互信息最小化功能的多同群框架,用于整张幻灯片图像分类
全切片图像(WSI)对于包括组织病理学分析在内的各种临床应用至关重要。然而,目前该领域的深度学习方法主要集中在单个肿瘤类型上,限制了模型的通用性和可扩展性。这种相对狭隘的关注点最终源于组织病理学固有的异质性以及不同肿瘤形态和分子特征的多样性。为此,我们提出了一种新的多队列 WSI 分析方法,旨在利用不同肿瘤类型的多样性。我们引入了群组感知注意力模块(Cohort-Aware Attentionmodule),能够捕捉共有的和肿瘤特有的病理模式,从而增强跨肿瘤的概括能力。此外,我们还构建了一种对抗群组正则化机制,通过互信息最小化来最小化群组特异性偏差。此外,我们还开发了一种分层样本平衡策略,以减轻队列不平衡,促进无偏学习。这些措施共同构成了无偏多队列 WSI 分析的内聚框架。在一个独特构建的多癌症数据集上进行的广泛实验表明,该方法的泛化能力有了显著提高,为不同癌症类型的 WSI 分类提供了一个可扩展的解决方案。我们的实验代码可在以下网址公开获取。
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