Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Diagnose Like a Pathologist: Transformer-Enabled Hierarchical Attention-Guided Multiple Instance Learning for Whole Slide Image Classification

About

Multiple Instance Learning (MIL) and transformers are increasingly popular in histopathology Whole Slide Image (WSI) classification. However, unlike human pathologists who selectively observe specific regions of histopathology tissues under different magnifications, most methods do not incorporate multiple resolutions of the WSIs, hierarchically and attentively, thereby leading to a loss of focus on the WSIs and information from other resolutions. To resolve this issue, we propose a Hierarchical Attention-Guided Multiple Instance Learning framework to fully exploit the WSIs. This framework can dynamically and attentively discover the discriminative regions across multiple resolutions of the WSIs. Within this framework, an Integrated Attention Transformer is proposed to further enhance the performance of the transformer and obtain a more holistic WSI (bag) representation. This transformer consists of multiple Integrated Attention Modules, which is the combination of a transformer layer and an aggregation module that produces a bag representation based on every instance representation in that bag. The experimental results show that our method achieved state-of-the-art performances on multiple datasets, including Camelyon16, TCGA-RCC, TCGA-NSCLC, and an in-house IMGC dataset. The code is available at https://github.com/BearCleverProud/HAG-MIL.

Conghao Xiong, Hao Chen, Joseph J.Y. Sung, Irwin King• 2023

Related benchmarks

TaskDatasetResultRank
CRC Surv prognosis predictionSurGen
C-index0.6688
76
ER biomarker predictionNIHR BioResource
AUC0.9256
60
PR biomarker predictionNIHR BioResource
AUC85.16
60
HER2 biomarker predictionNIHR BioResource
AUC82.24
60
Cancer SubtypingBRACS-7
AUC0.757
40
Renal cell carcinoma stagingRCC-STAGING TCGA
AUC81.3
22
Breast cancer subtype classificationBRACS-3
AUC86.7
22
Gene Mutation PredictionMUT-SETD2 MUT-HET-RCC
AUC68.8
22
WSI ClassificationCAMELYON
F1 Score79.35
7
WSI ClassificationLung
F1 Score85.47
7
Showing 10 of 10 rows

Other info

Follow for update