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Patch Transformer for Multi-tagging Whole Slide Histopathology Images

About

Automated whole slide image (WSI) tagging has become a growing demand due to the increasing volume and diversity of WSIs collected nowadays in histopathology. Various methods have been studied to classify WSIs with single tags but none of them focuses on labeling WSIs with multiple tags. To this end, we propose a novel end-to-end trainable deep neural network named Patch Transformer which can effectively predict multiple slide-level tags from WSI patches based on both the correlations and the uniqueness between the tags. Specifically, the proposed method learns patch characteristics considering 1) patch-wise relations through a patch transformation module and 2) tag-wise uniqueness for each tagging task through a multi-tag attention module. Extensive experiments on a large and diverse dataset consisting of 4,920 WSIs prove the effectiveness of the proposed model.

Weijian Li, Viet-Duy Nguyen, Haofu Liao, Matt Wilder, Ke Cheng, Jiebo Luo• 2019

Related benchmarks

TaskDatasetResultRank
WSI ClassificationTCGA lung cancer dataset (test)
Accuracy73.79
67
Whole Slide Image classificationTCGA-RCC (test)
AUC97
54
WSI ClassificationCAMELYON16 (test)
Avg Acc82.17
28
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