CARE: A Molecular-Guided Foundation Model with Adaptive Region Modeling for Whole Slide Image Analysis
Di Zhang, Zhangpeng Gong, Xiaobo Pang, Jiashuai Liu, Junbo Lu, Hao Cui, Jiusong Ge, Zhi Zeng, Kai Yi, Yinghua Li, Si Liu, Tingsong Yu, Haoran Wang, Mireia Crispin-Ortuzar, Weimiao Yu, Chen Li, Zeyu Gao

TL;DR
CARE is a novel foundation model for pathology that uses molecular guidance to adaptively partition whole slide images into meaningful regions, improving interpretability and performance across diverse tasks.
Contribution
It introduces a two-stage pretraining strategy with molecular guidance to automatically identify biologically relevant tissue regions in WSIs.
Findings
Outperforms baseline models on 33 downstream tasks
Achieves superior results with only one-tenth of typical pretraining data
Supports diverse pathology tasks using adaptive region features
Abstract
Foundation models have recently achieved impressive success in computational pathology, demonstrating strong generalization across diverse histopathology tasks. However, existing models overlook the heterogeneous and non-uniform organization of pathological regions of interest (ROIs) because they rely on natural image backbones not tailored for tissue morphology. Consequently, they often fail to capture the coherent tissue architecture beyond isolated patches, limiting interpretability and clinical relevance. To address these challenges, we present Cross-modal Adaptive Region Encoder (CARE), a foundation model for pathology that automatically partitions WSIs into several morphologically relevant regions. Specifically, CARE employs a two-stage pretraining strategy: (1) a self-supervised unimodal pretraining stage that learns morphological representations from 34,277 whole-slide images…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Radiomics and Machine Learning in Medical Imaging
