3.8 Proceedings Paper

Differentiable Zooming for Multiple Instance Learning on Whole-Slide Images

Journal

COMPUTER VISION, ECCV 2022, PT XXI
Volume 13681, Issue -, Pages 699-715

Publisher

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-19803-8_41

Keywords

Whole-slide image classification; Multiple instance learning; Multi-scale zooming; Efficient computational pathology

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This paper introduces a method called ZoomMIL, which achieves high performance in classifying gigapixel-sized Whole-Slide Images (WSIs) in digital pathology. The method builds WSI representations by aggregating tissue-context information from multiple magnifications, significantly reducing computational demands.
Multiple Instance Learning (MIL) methods have become increasingly popular for classifying gigapixel-sized Whole-Slide Images (WSIs) in digital pathology. Most MIL methods operate at a single WSI magnification, by processing all the tissue patches. Such a formulation induces high computational requirements and constrains the contextualization of the WSI-level representation to a single scale. Certain MIL methods extend to multiple scales, but they are computationally more demanding. In this paper, inspired by the pathological diagnostic process, we propose ZoomMIL, a method that learns to perform multi-level zooming in an end-to-end manner. ZoomMIL builds WSI representations by aggregating tissue-context information from multiple magnifications. The proposed method outperforms the state-of-the-art MIL methods in WSI classification on two large datasets, while significantly reducing computational demands with regard to Floating-Point Operations (FLOPs) and processing time by 40-50x. Our code is available at: https://github. com/histocartography/zoommil.

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