Whole Slide Image
Whole slide images (WSIs) are gigapixel-scale digital representations of tissue samples, crucial for pathology. Research focuses on developing efficient and accurate algorithms, often employing deep learning architectures like transformers and graph neural networks within multiple instance learning (MIL) frameworks, to classify WSIs, predict patient outcomes (e.g., survival, treatment response), and detect biomarkers from the images. These advancements aim to improve diagnostic accuracy, personalize treatment strategies, and accelerate the analysis of large WSI datasets, ultimately impacting both research and clinical practice in pathology.
Papers
Adversary-Robust Graph-Based Learning of WSIs
Saba Heidari Gheshlaghi, Milan Aryal, Nasim Yahyasoltani, Masoud Ganji
Towards Efficient Information Fusion: Concentric Dual Fusion Attention Based Multiple Instance Learning for Whole Slide Images
Yujian Liu, Ruoxuan Wu, Xinjie Shen, Zihuang Lu, Lingyu Liang, Haiyu Zhou, Shipu Xu, Shaoai Cai, Shidang Xu
HistoSegCap: Capsules for Weakly-Supervised Semantic Segmentation of Histological Tissue Type in Whole Slide Images
Mobina Mansoori, Sajjad Shahabodini, Jamshid Abouei, Arash Mohammadi, Konstantinos N. Plataniotis
Compact and De-biased Negative Instance Embedding for Multi-Instance Learning on Whole-Slide Image Classification
Joohyung Lee, Heejeong Nam, Kwanhyung Lee, Sangchul Hahn