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

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作者

    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
分类
关键词
tissue expansion; spatial proteomics; mass spectrometry; AI; single-cell

摘要

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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下载次数

已发布

2026-02-20

如何引用

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. 浪淘沙预印本平台. https://doi.org/10.65215/LTSpreprints.2026.02.20.000134

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