Multiple Instance Learning
Multiple Instance Learning (MIL) is a machine learning approach addressing the challenge of classifying data sets where labels are assigned to groups (bags) of instances, rather than individual instances. Current research heavily focuses on applying MIL to whole slide image (WSI) analysis in digital pathology, employing architectures like transformers and incorporating techniques such as attention mechanisms, pseudo-labeling, and graph neural networks to improve classification accuracy and interpretability. This work is significant because it allows for efficient analysis of large, complex medical images without requiring exhaustive pixel-level annotation, potentially leading to faster and more accurate diagnoses in healthcare.
Papers
Atrial Septal Defect Detection in Children Based on Ultrasound Video Using Multiple Instances Learning
Yiman Liu, Qiming Huang, Xiaoxiang Han, Tongtong Liang, Zhifang Zhang, Lijun Chen, Jinfeng Wang, Angelos Stefanidis, Jionglong Su, Jiangang Chen, Qingli Li, Yuqi Zhang
LESS: Label-efficient Multi-scale Learning for Cytological Whole Slide Image Screening
Beidi Zhao, Wenlong Deng, Zi Han, Li, Chen Zhou, Zuhua Gao, Gang Wang, Xiaoxiao Li
The Rise of AI Language Pathologists: Exploring Two-level Prompt Learning for Few-shot Weakly-supervised Whole Slide Image Classification
Linhao Qu, Xiaoyuan Luo, Kexue Fu, Manning Wang, Zhijian Song
Proposal-Based Multiple Instance Learning for Weakly-Supervised Temporal Action Localization
Huan Ren, Wenfei Yang, Tianzhu Zhang, Yongdong Zhang