IRS: Incremental Relationship-guided Segmentation for Digital Pathology
Ruining Deng, Junchao Zhu, Juming Xiong, Can Cui, Tianyuan Yao, Junlin Guo, Siqi Lu, Marilyn Lionts, Mengmeng Yin, Yu Wang, Shilin Zhao, Yucheng Tang, Yihe Yang, Paul Dennis Simonson, Mert R. Sabuncu, Haichun Yang, Yuankai Huo

TL;DR
This paper introduces IRS, a novel continual learning framework for digital pathology segmentation that models anatomical relationships to handle temporally acquired, partially annotated data and out-of-distribution classes across multiple scales.
Contribution
IRS is a unified incremental learning scheme that models anatomical relationships to improve segmentation of diverse structures and diseases in digital pathology, addressing partial annotations and OOD challenges.
Findings
Effective multi-scale kidney segmentation across structures and cells
Enhanced domain generalization for unseen diseases and populations
Robust handling of temporally acquired, partial annotations
Abstract
Continual learning is rapidly emerging as a key focus in computer vision, aiming to develop AI systems capable of continuous improvement, thereby enhancing their value and practicality in diverse real-world applications. In healthcare, continual learning holds great promise for continuously acquired digital pathology data, which is collected in hospitals on a daily basis. However, panoramic segmentation on digital whole slide images (WSIs) presents significant challenges, as it is often infeasible to obtain comprehensive annotations for all potential objects, spanning from coarse structures (e.g., regions and unit objects) to fine structures (e.g., cells). This results in temporally and partially annotated data, posing a major challenge in developing a holistic segmentation framework. Moreover, an ideal segmentation model should incorporate new phenotypes, unseen diseases, and diverse…
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Taxonomy
TopicsAI in cancer detection · Advanced Neural Network Applications · Domain Adaptation and Few-Shot Learning
MethodsFocus
