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Multimodal AI-enabled mass spectrometry-based expansion proteomics for whole-slide at single-cell resolution

This article is a preprint and has not been certified by peer review.

Authors

    Shuaiyao Wang,  
    Shuaiyao Wang
    Zhen Dong,  
    Zhen Dong
    Chunlong Wu,   Jiayi Chen,   Changao Li,   Jianpeng Sheng,   Xiang Li,   Yi Chen,  
    Yi Chen
    Tiannan Guo
    Tiannan Guo
Categories
Keywords
tissue expansion; spatial proteomics; mass spectrometry; AI; single-cell

Abstract

Deep, quantitative proteome coverage at single-cell resolution across entire tissue sections remains a major challenge for mass spectrometry-based spatial proteomics. Here, we introduce an AI-empowered filter-aided expansion proteomics (FAXP) framework that combines FAXP with convolutional neural network (CNN)-based spatial inference to achieve whole-slide, single-cell-resolved proteomics. By combining tissue expansion with orthogonal laser capture microdissection to obtain whole-slide linear strip-resolved proteome measurements, we develop HetuNet, a CNN-based model that integrates these sparse orthogonal data with high-dimensional imaging-derived contexts to reconstruct comprehensive two-dimensional spatial protein expression landscapes. In mouse liver, this approach captures zone-specific protein patterns and continuous pathway-level gradients, validated by spatial transcriptomics. In colorectal cancer tissues, it resolves proteome-defined epithelial states, revealing functional divergence via differential epithelial-mesenchymal transition and necroptosis activation. Together, this framework enables deep, scalable spatial proteomic mapping across whole tissues at single-cell resolution, unlocking previously inaccessible insights into tissue organization and function.

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Posted

2026-02-20

How to Cite

Wang, S., Dong, Z., Wu, C., Chen, J., Li, C., Sheng, J., Li, X., Chen, Y., & Guo, T. (2026). Multimodal AI-enabled mass spectrometry-based expansion proteomics for whole-slide at single-cell resolution. LangTaoSha Preprint Server. https://doi.org/10.65215/LTSpreprints.2026.02.20.000134

Declaration of Competing Interests

The authors declare no competing interests to disclose.