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质谱成像技术在肿瘤空间蛋白质组学研究中的进展与应用

黄培勍 赵杨 朱静 巩蔚 郭丽梅 韩国军

质谱学报2025,Vol.46Issue(6):694-712,19.
质谱学报2025,Vol.46Issue(6):694-712,19.DOI:10.7538/zpxb.2025.0088

质谱成像技术在肿瘤空间蛋白质组学研究中的进展与应用

Advances and Applications of Mass Spectrometry Imaging in Tumor Spatial Proteomics Research

黄培勍 1赵杨 2朱静 1巩蔚 3郭丽梅 4韩国军2

作者信息

  • 1. 北京大学医学部医学技术研究院,北京 100191
  • 2. 北京大学临床医学高等研究院,北京 100191||北京大学国际癌症研究院,北京 100191
  • 3. 北京大学-云南白药国际医学研究中心,北京 100191
  • 4. 北京大学第三医院病理科/北京大学医学部病理系,北京 100191
  • 折叠

摘要

Abstract

Tumor tissues exhibit pronounced spatial heterogeneity and a complex microenvironment,making it difficult for traditional bulk-level analytical approaches such as transcriptomics and proteomics to capture the intricate cellular interactions and spatial distribution patterns within tumors.In recent years,spatial proteomics methods with spatially resolved capabilities have emerged.Nontargeted techniques allow for panoramic molecular detection but are often limited by insufficient sensitivity and specificity,while conventional targeted approaches provide multiplexing capacity and specificity but remain constrained by throughput,quantitative accuracy,and spatial resolution.To overcome these limitations,mass spectrometry imaging(MSI)has been developed,with representative platforms including imaging mass cytometry(IMC),multiplex ion beam imaging(MIBI),matrix-assisted laser desorption/ionization mass spectrometry imaging(MALDI-MSI),and secondary ion mass spectrometry(SIMS)imaging.These platforms offer unique advantages by achieving subcellular-level resolution,enabling simultaneous multi-target quantification,and delivering robust quantitative performance,thereby addressing key challenges in spatial proteomics research.The data acquisition and analysis workflow of MSI typically involves standardized preparation of tumor samples,target-specific labeling and multiplex staining,point-by-point imaging through laser or ion beams,signal preprocessing,machine learning or deep learning-based cell segmentation and phenotype annotation,and higher-order spatial structure analyses.Through these processes,antibody-based MSI enables the detailed mapping of cellular architecture and interactions within tumor tissues.Clinical studies have demonstrated its ability to uncover spatial interaction networks among immune cells,tumor cells,and stromal cells,as well as to identify spatial microdomains associated with prognosis and treatment response.These findings not only contribute to the discovery of tumor spatial biomarkers but also provide valuable evidence for treatment evaluation,ultimately facilitating the optimization of precision oncology strategies.Looking ahead,further advancements will require the optimization of high-throughput data acquisition workflows,integration of multi-platform spatial omics data,incorporation of dynamic spatiotemporal imaging techniques,and the development of unified artificial intelligence-driven analytical frameworks.Together,these innovations will enable multimodal characterization of the tumor microenvironment and accelerate the translation of MSI into clinical applications,thereby advancing personalized cancer diagnosis and therapeutics.

关键词

肿瘤异质性/肿瘤微环境/空间蛋白质组学/质谱成像(MSI)/细胞互作/临床转化

Key words

tumor heterogeneity/tumor microenvironment/spatial proteomics/mass spectrometry imaging(MSI)/cell-cell interactions/clinical translation

分类

化学化工

引用本文复制引用

黄培勍,赵杨,朱静,巩蔚,郭丽梅,韩国军..质谱成像技术在肿瘤空间蛋白质组学研究中的进展与应用[J].质谱学报,2025,46(6):694-712,19.

基金项目

国家重点研发计划项目(2022YFC2406300) (2022YFC2406300)

国家重点研发计划青年科学家项目(2022YFC3401900) (2022YFC3401900)

国家科学自然基金面上项目(22174004) (22174004)

质谱学报

OA北大核心

1004-2997

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