WSSS4LUAD: Grand Challenge on Weakly-supervised Tissue Semantic Segmentation for Lung Adenocarcinoma
Chu Han, Xipeng Pan, Lixu Yan, Huan Lin, Bingbing Li, Su Yao, Shanshan, Lv, Zhenwei Shi, Jinhai Mai, Jiatai Lin, Bingchao Zhao, Zeyan Xu, Zhizhen, Wang, Yumeng Wang, Yuan Zhang, Huihui Wang, Chao Zhu, Chunhui Lin, Lijian, Mao, Min Wu, Luwen Duan, Jingsong Zhu, Dong Hu

TL;DR
This paper presents a grand challenge for weakly-supervised tissue segmentation in lung adenocarcinoma histopathology images, demonstrating that patch-level labels can effectively reduce annotation efforts while achieving high segmentation accuracy.
Contribution
The challenge organized a large-scale dataset and benchmark for weakly-supervised segmentation in LUAD, encouraging development of novel algorithms with minimal pixel-level annotations.
Findings
Top team achieved mIoU of 0.8413
CAM remains the most popular approach in WSSS
Cutmix data augmentation improves reliability
Abstract
Lung cancer is the leading cause of cancer death worldwide, and adenocarcinoma (LUAD) is the most common subtype. Exploiting the potential value of the histopathology images can promote precision medicine in oncology. Tissue segmentation is the basic upstream task of histopathology image analysis. Existing deep learning models have achieved superior segmentation performance but require sufficient pixel-level annotations, which is time-consuming and expensive. To enrich the label resources of LUAD and to alleviate the annotation efforts, we organize this challenge WSSS4LUAD to call for the outstanding weakly-supervised semantic segmentation (WSSS) techniques for histopathology images of LUAD. Participants have to design the algorithm to segment tumor epithelial, tumor-associated stroma and normal tissue with only patch-level labels. This challenge includes 10,091 patch-level annotations…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment
MethodsCutMix · Class-activation map
