基于微流体和迁移学习的复杂组织的高分辨率空间分辨蛋白质组学

IF 45.5 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Cell Pub Date : 2025-01-23 DOI:10.1016/j.cell.2024.12.023
Beiyu Hu, Ruiqiao He, Kun Pang, Guibin Wang, Ning Wang, Wenzhuo Zhu, Xin Sui, Huajing Teng, Tianxin Liu, Junjie Zhu, Zewen Jiang, Jinyang Zhang, Zhenqiang Zuo, Weihu Wang, Peifeng Ji, Fangqing Zhao
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引用次数: 0

摘要

尽管基于成像和抗体的方法最近取得了进展,但在空间蛋白质组学中,实现整个组织的深度、高分辨率蛋白质图谱仍然是一个重大挑战。在这里,我们提出了跨组学数据的并行流投影和迁移学习(PLATO),这是一个将微流体与深度学习相结合的集成框架,可以在整个组织切片中实现数千种蛋白质的高分辨率映射。我们通过分析小鼠小脑的空间蛋白质组来验证PLATO框架,在一次运行中鉴定了2564个蛋白质组。然后,我们将PLATO应用于大鼠绒毛和人类乳腺癌样本,实现了25 μm的空间分辨率,并揭示了与疾病状态相关的蛋白质组动力学。该方法揭示了空间上不同的肿瘤亚型,鉴定了关键的失调蛋白,并为肿瘤微环境的复杂性提供了新的见解。我们相信PLATO代表了一个探索空间蛋白质组学调控及其与遗传和环境因素相互作用的变革性平台。
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High-resolution spatially resolved proteomics of complex tissues based on microfluidics and transfer learning
Despite recent advances in imaging- and antibody-based methods, achieving in-depth, high-resolution protein mapping across entire tissues remains a significant challenge in spatial proteomics. Here, we present parallel-flow projection and transfer learning across omics data (PLATO), an integrated framework combining microfluidics with deep learning to enable high-resolution mapping of thousands of proteins in whole tissue sections. We validated the PLATO framework by profiling the spatial proteome of the mouse cerebellum, identifying 2,564 protein groups in a single run. We then applied PLATO to rat villus and human breast cancer samples, achieving a spatial resolution of 25 μm and uncovering proteomic dynamics associated with disease states. This approach revealed spatially distinct tumor subtypes, identified key dysregulated proteins, and provided novel insights into the complexity of the tumor microenvironment. We believe that PLATO represents a transformative platform for exploring spatial proteomic regulation and its interplay with genetic and environmental factors.
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来源期刊
Cell
Cell 生物-生化与分子生物学
CiteScore
110.00
自引率
0.80%
发文量
396
审稿时长
2 months
期刊介绍: Cells is an international, peer-reviewed, open access journal that focuses on cell biology, molecular biology, and biophysics. It is affiliated with several societies, including the Spanish Society for Biochemistry and Molecular Biology (SEBBM), Nordic Autophagy Society (NAS), Spanish Society of Hematology and Hemotherapy (SEHH), and Society for Regenerative Medicine (Russian Federation) (RPO). The journal publishes research findings of significant importance in various areas of experimental biology, such as cell biology, molecular biology, neuroscience, immunology, virology, microbiology, cancer, human genetics, systems biology, signaling, and disease mechanisms and therapeutics. The primary criterion for considering papers is whether the results contribute to significant conceptual advances or raise thought-provoking questions and hypotheses related to interesting and important biological inquiries. In addition to primary research articles presented in four formats, Cells also features review and opinion articles in its "leading edge" section, discussing recent research advancements and topics of interest to its wide readership.
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