蛋白质组学
数据科学
计算生物学
计算机科学
生物
生物化学
基因
作者
Johann Wenckstern,Eeshaan Jain,Cheng, Yexiang,von Querfurth, Benedikt,Kiril Vasilev,Matteo Pariset,Cheng, Phil F.,Liakopoulos, Petros,Michielin, Olivier,Andreas Wicki,Gabriele Gut,Charlotte Bunne
标识
DOI:10.48550/arxiv.2501.06039
摘要
Spatial proteomics technologies have transformed our understanding of complex tissue architecture in cancer but present unique challenges for computational analysis. Each study uses a different marker panel and protocol, and most methods are tailored to single cohorts, which limits knowledge transfer and robust biomarker discovery. Here we present Virtual Tissues (VirTues), a general-purpose foundation model for spatial proteomics that learns marker-aware, multi-scale representations of proteins, cells, niches and tissues directly from multiplex imaging data. From a single pretrained backbone, VirTues supports marker reconstruction, cell typing and niche annotation, spatial biomarker discovery, and patient stratification, including zero-shot annotation across heterogeneous panels and datasets. In triple-negative breast cancer, VirTues-derived biomarkers predict anti-PD-L1 chemo-immunotherapy response and stratify disease-free survival in an independent cohort, outperforming state-of-the-art biomarkers derived from the same datasets and current clinical stratification schemes.
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