DGR-MIL: Exploring Diverse Global Representation in Multiple Instance Learning for Whole Slide Image Classification.

Wenhui Zhu, Xiwen Chen, Peijie Qiu, Aristeidis Sotiras, Abolfazl Razi, Yalin Wang
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Abstract

Multiple instance learning (MIL) stands as a powerful approach in weakly supervised learning, regularly employed in histological whole slide image (WSI) classification for detecting tumorous lesions. However, existing mainstream MIL methods focus on modeling correlation between instances while overlooking the inherent diversity among instances. However, few MIL methods have aimed at diversity modeling, which empirically show inferior performance but with a high computational cost. To bridge this gap, we propose a novel MIL aggregation method based on diverse global representation (DGR-MIL), by modeling diversity among instances through a set of global vectors that serve as a summary of all instances. First, we turn the instance correlation into the similarity between instance embeddings and the predefined global vectors through a cross-attention mechanism. This stems from the fact that similar instance embeddings typically would result in a higher correlation with a certain global vector. Second, we propose two mechanisms to enforce the diversity among the global vectors to be more descriptive of the entire bag: (i) positive instance alignment and (ii) a novel, efficient, and theoretically guaranteed diversification learning paradigm. Specifically, the positive instance alignment module encourages the global vectors to align with the center of positive instances (e.g., instances containing tumors in WSI). To further diversify the global representations, we propose a novel diversification learning paradigm leveraging the determinantal point process. The proposed model outperforms the state-of-the-art MIL aggregation models by a substantial margin on the CAMELYON-16 and the TCGA-lung cancer datasets. The code is available at https://github.com/ChongQingNoSubway/DGR-MIL .

DGR-MIL:在全幻灯片图像分类的多实例学习中探索不同的全局表示。
多实例学习(Multiple instance learning, MIL)是弱监督学习中的一种强有力的方法,常用于组织全滑动图像(组织学whole slide image, WSI)分类中检测肿瘤病变。然而,现有的主流MIL方法侧重于对实例之间的相关性进行建模,而忽略了实例之间固有的多样性。然而,针对多样性建模的MIL方法很少,经验表明其性能较差且计算成本较高。为了弥补这一差距,我们提出了一种基于多样化全局表示(DGR-MIL)的MIL聚合方法,该方法通过一组作为所有实例摘要的全局向量来建模实例之间的多样性。首先,我们通过交叉注意机制将实例相关性转化为实例嵌入与预定义全局向量之间的相似性。这源于这样一个事实,即相似的实例嵌入通常会导致与某个全局向量的更高相关性。其次,我们提出了两种机制来加强全局向量之间的多样性,以更好地描述整个包:(i)积极的实例对齐和(ii)一种新颖、高效、理论上有保证的多样化学习范式。具体来说,正实例对齐模块鼓励全局向量与正实例(例如,WSI中包含肿瘤的实例)的中心对齐。为了进一步使全局表征多样化,我们提出了一种利用确定性点过程的新的多样化学习范式。在CAMELYON-16和tcga -肺癌数据集上,所提出的模型在很大程度上优于最先进的MIL聚合模型。代码可在https://github.com/ChongQingNoSubway/DGR-MIL上获得。
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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