Pathology Image
Pathology image analysis focuses on extracting meaningful information from digitized microscope slides to improve disease diagnosis and prognosis. Current research heavily utilizes deep learning, employing architectures like convolutional neural networks (CNNs), transformers, and variational autoencoders (VAEs), often incorporating techniques such as contrastive learning, multiple instance learning (MIL), and self-supervised learning to address challenges like limited labeled data and the inherent complexity of whole slide images. These advancements are significantly impacting healthcare by enabling faster, more accurate diagnoses, personalized treatment strategies, and potentially reducing the workload on pathologists, particularly for tasks like cancer grading and recurrence prediction.
Papers
PLUTO: Pathology-Universal Transformer
Dinkar Juyal, Harshith Padigela, Chintan Shah, Daniel Shenker, Natalia Harguindeguy, Yi Liu, Blake Martin, Yibo Zhang, Michael Nercessian, Miles Markey, Isaac Finberg, Kelsey Luu, Daniel Borders, Syed Ashar Javed, Emma Krause, Raymond Biju, Aashish Sood, Allen Ma, Jackson Nyman, John Shamshoian, Guillaume Chhor, Darpan Sanghavi, Marc Thibault, Limin Yu, Fedaa Najdawi, Jennifer A. Hipp, Darren Fahy, Benjamin Glass, Eric Walk, John Abel, Harsha Pokkalla, Andrew H. Beck, Sean Grullon
FORESEE: Multimodal and Multi-view Representation Learning for Robust Prediction of Cancer Survival
Liangrui Pan, Yijun Peng, Yan Li, Yiyi Liang, Liwen Xu, Qingchun Liang, Shaoliang Peng