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Papers/Dual-stream Multiple Instance Learning Network for Whole S...

Dual-stream Multiple Instance Learning Network for Whole Slide Image Classification with Self-supervised Contrastive Learning

Bin Li, Yin Li, Kevin W. Eliceiri

2020-11-17CVPR 2021 1Image Classificationwhole slide imagesMultiple Instance LearningContrastive LearningGeneral ClassificationClassification
PaperPDFCode(official)Code

Abstract

We address the challenging problem of whole slide image (WSI) classification. WSIs have very high resolutions and usually lack localized annotations. WSI classification can be cast as a multiple instance learning (MIL) problem when only slide-level labels are available. We propose a MIL-based method for WSI classification and tumor detection that does not require localized annotations. Our method has three major components. First, we introduce a novel MIL aggregator that models the relations of the instances in a dual-stream architecture with trainable distance measurement. Second, since WSIs can produce large or unbalanced bags that hinder the training of MIL models, we propose to use self-supervised contrastive learning to extract good representations for MIL and alleviate the issue of prohibitive memory cost for large bags. Third, we adopt a pyramidal fusion mechanism for multiscale WSI features, and further improve the accuracy of classification and localization. Our model is evaluated on two representative WSI datasets. The classification accuracy of our model compares favorably to fully-supervised methods, with less than 2% accuracy gap across datasets. Our results also outperform all previous MIL-based methods. Additional benchmark results on standard MIL datasets further demonstrate the superior performance of our MIL aggregator on general MIL problems. GitHub repository: https://github.com/binli123/dsmil-wsi

Results

TaskDatasetMetricValueModel
Multiple Instance LearningElephantACC0.929DSMIL
Multiple Instance LearningMusk v1ACC0.947DSMIL
Multiple Instance LearningTCGAACC0.9286DSMIL-LC
Multiple Instance LearningTCGAAUC0.9583DSMIL-LC
Multiple Instance LearningTCGAACC0.919DSMIL
Multiple Instance LearningTCGAAUC0.9633DSMIL
Multiple Instance LearningMusk v2ACC0.934DSMIL
Multiple Instance LearningCAMELYON16ACC0.8992DSMIL-LC
Multiple Instance LearningCAMELYON16AUC0.9165DSMIL-LC
Multiple Instance LearningCAMELYON16ACC0.8682DSMIL
Multiple Instance LearningCAMELYON16AUC0.8944DSMIL

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