Towards Spatial Transcriptomics-driven Pathology Foundation Models
Konstantin Hemker, Andrew H. Song, Cristina Almagro-P\'erez, Guillaume Jaume, Sophia J. Wagner, Anurag Vaidya, Nikola Simidjievski, Mateja Jamnik, Faisal Mahmood

TL;DR
This paper introduces SEAL, a self-supervised learning framework that enhances pathology models with spatial transcriptomics data, improving molecular and morphological predictions across various tissue types and tasks.
Contribution
SEAL provides a parameter-efficient method to incorporate spatial gene expression into existing pathology models, boosting their performance and cross-modal capabilities.
Findings
Improves slide-level molecular status and pathway activity prediction.
Enhances patch-level gene expression prediction.
Demonstrates robust domain generalization and gene-to-image retrieval.
Abstract
Spatial transcriptomics (ST) provides spatially resolved measurements of gene expression, enabling characterization of the molecular landscape of human tissue beyond histological assessment as well as localized readouts that can be aligned with morphology. Concurrently, the success of multimodal foundation models that integrate vision with complementary modalities suggests that morphomolecular coupling between local expression and morphology can be systematically used to improve histological representations themselves. We introduce Spatial Expression-Aligned Learning (SEAL), a vision-omics self-supervised learning framework that infuses localized molecular information into pathology vision encoders. Rather than training new encoders from scratch, SEAL is designed as a parameter-efficient vision-omics finetuning method that can be flexibly applied to widely used pathology foundation…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Cell Image Analysis Techniques · Domain Adaptation and Few-Shot Learning
