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DGMIL: Distribution Guided Multiple Instance Learning for Whole Slide Image Classification

About

Multiple Instance Learning (MIL) is widely used in analyzing histopathological Whole Slide Images (WSIs). However, existing MIL methods do not explicitly model the data distribution, and instead they only learn a bag-level or instance-level decision boundary discriminatively by training a classifier. In this paper, we propose DGMIL: a feature distribution guided deep MIL framework for WSI classification and positive patch localization. Instead of designing complex discriminative network architectures, we reveal that the inherent feature distribution of histopathological image data can serve as a very effective guide for instance classification. We propose a cluster-conditioned feature distribution modeling method and a pseudo label-based iterative feature space refinement strategy so that in the final feature space the positive and negative instances can be easily separated. Experiments on the CAMELYON16 dataset and the TCGA Lung Cancer dataset show that our method achieves new SOTA for both global classification and positive patch localization tasks.

Linhao Qu, Xiaoyuan Luo, Shaolei Liu, Manning Wang, Zhijian Song• 2022

Related benchmarks

TaskDatasetResultRank
Slide-level classificationCamelyon16
AUC0.8368
52
Patch Classification and ROI DetectionCamelyon16
AUC0.904
12
Whole Slide Image classificationTCGA Slide-level
AUC97
11
WSI ClassificationTCGA-NSCLC (20% val)
Accuracy60.1
8
WSI ClassificationCAMELYON16 (20% val)
Accuracy62
8
Patch-level localizationCamelyon16
AUC0.9045
7
Slide-level classificationTCGA Lung Cancer dataset
AUC (Slide)0.9702
6
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