空间脂质组学和蛋白质组学相关性的异质性评估和蛋白质通路预测:推进干蛋白质组学概念对人类胶质母细胞瘤预后的影响。

IF 6.1 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Molecular & Cellular Proteomics Pub Date : 2025-01-01 Epub Date: 2024-12-05 DOI:10.1016/j.mcpro.2024.100891
Laurine Lagache, Yanis Zirem, Émilie Le Rhun, Isabelle Fournier, Michel Salzet
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引用次数: 0

摘要

通过MALDI MSI预测脂质分析中的蛋白质和相关生物学途径是一个紧迫的挑战。我们引入了“干蛋白质组学”,使用MALDI MSI来验证脂质成像中确定的最佳簇的空间定位。组学图像中一致的簇状外观表明在不同的生物学途径中与特定的脂质和蛋白质有关,形成了干蛋白质组学的基础。该方法以大鼠脑组织为模型进行改进,然后应用于人类胶质母细胞瘤,这是一种高度异质性的癌症。连续组织切片进行组学MALDI MSI和无监督聚类。空间组学分析促进了脂质和蛋白质的表征,从而建立了一种预测模型,可以根据独特的脂质特征识别任何组织中的簇,并预测相关的蛋白质途径。应用于大鼠脑切片揭示了不同的组织亚群,包括成功预测小脑区域。同样,该方法应用于50名胶质母细胞瘤患者队列的数据集,重复使用了先前的研究。然而,在50例患者中,只有13例来自MALDI MSI数据的脂质特征可用,从而可以识别与患者预后相关的脂质-蛋白关联。对于缺乏脂质成像数据的病例,根据干燥的蛋白质组学结果开发了基于蛋白质数据的分类模型,以有效地对剩余队列进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Protein Pathways Associated to Tumor Heterogeneity by Correlating Spatial Lipidomics and Proteomics: The Dry Proteomic Concept.

Prediction of proteins and associated biological pathways from lipid analyses via matrix-assisted laser desorption/ionization (MALDI) MSI is a pressing challenge. We introduced "dry proteomics," using MALDI MSI to validate spatial localization of identified optimal clusters in lipid imaging. Consistent cluster appearance across omics images suggests association with specific lipid and protein in distinct biological pathways, forming the basis of dry proteomics. The methodology was refined using rat brain tissue as a model, then applied to human glioblastoma, a highly heterogeneous cancer. Sequential tissue sections underwent omics MALDI MSI and unsupervised clustering. Spatial omics analysis facilitated lipid and protein characterization, leading to a predictive model identifying clusters in any tissue based on unique lipid signatures and predicting associated protein pathways. Application to rat brain slices revealed diverse tissue subpopulations, including successfully predicted cerebellum areas. Similarly, the methodology was applied to a dataset from a cohort of 50 glioblastoma patients, reused from a previous study. However, among the 50 patients, only 13 lipid signatures from MALDI MSI data were available, allowing for the identification of lipid-protein associations that correlated with patient prognosis. For cases lacking lipid imaging data, a classification model based on protein data was developed from dry proteomic results to effectively categorize the remaining cohort.

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来源期刊
Molecular & Cellular Proteomics
Molecular & Cellular Proteomics 生物-生化研究方法
CiteScore
11.50
自引率
4.30%
发文量
131
审稿时长
84 days
期刊介绍: The mission of MCP is to foster the development and applications of proteomics in both basic and translational research. MCP will publish manuscripts that report significant new biological or clinical discoveries underpinned by proteomic observations across all kingdoms of life. Manuscripts must define the biological roles played by the proteins investigated or their mechanisms of action. The journal also emphasizes articles that describe innovative new computational methods and technological advancements that will enable future discoveries. Manuscripts describing such approaches do not have to include a solution to a biological problem, but must demonstrate that the technology works as described, is reproducible and is appropriate to uncover yet unknown protein/proteome function or properties using relevant model systems or publicly available data. Scope: -Fundamental studies in biology, including integrative "omics" studies, that provide mechanistic insights -Novel experimental and computational technologies -Proteogenomic data integration and analysis that enable greater understanding of physiology and disease processes -Pathway and network analyses of signaling that focus on the roles of post-translational modifications -Studies of proteome dynamics and quality controls, and their roles in disease -Studies of evolutionary processes effecting proteome dynamics, quality and regulation -Chemical proteomics, including mechanisms of drug action -Proteomics of the immune system and antigen presentation/recognition -Microbiome proteomics, host-microbe and host-pathogen interactions, and their roles in health and disease -Clinical and translational studies of human diseases -Metabolomics to understand functional connections between genes, proteins and phenotypes
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