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外泌体生物学中的多组学数据整合——乌托邦还是未来现实?

Multi-Omics Data Integration in Extracellular Vesicle Biology-Utopia or Future Reality?

机构信息

Ultrastructural Pathology and Bioimaging Laboratory, 'Victor Babeș' National Institute of Pathology, Bucharest 050096, Romania.

Department of Biochemistry and Molecular Biology, University of Bucharest, Bucharest 050095, Romania.

出版信息

Int J Mol Sci. 2020 Nov 13;21(22):8550. doi: 10.3390/ijms21228550.

Abstract

Extracellular vesicles (EVs) are membranous structures derived from the endosomal system or generated by plasma membrane shedding. Due to their composition of DNA, RNA, proteins, and lipids, EVs have garnered a lot of attention as an essential mechanism of cell-to-cell communication, with various implications in physiological and pathological processes. EVs are not only a highly heterogeneous population by means of size and biogenesis, but they are also a source of diverse, functionally rich biomolecules. Recent advances in high-throughput processing of biological samples have facilitated the development of databases comprised of characteristic genomic, transcriptomic, proteomic, metabolomic, and lipidomic profiles for EV cargo. Despite the in-depth approach used to map functional molecules in EV-mediated cellular cross-talk, few integrative methods have been applied to analyze the molecular interplay in these targeted delivery systems. New perspectives arise from the field of systems biology, where accounting for heterogeneity may lead to finding patterns in an apparently random pool of data. In this review, we map the biological and methodological causes of heterogeneity in EV multi-omics data and present current applications or possible statistical methods for integrating such data while keeping track of the current bottlenecks in the field.

摘要

细胞外囊泡 (EVs) 是源自内体系统的膜性结构,或者通过质膜脱落产生的。由于其 DNA、RNA、蛋白质和脂质的组成,EVs 作为细胞间通讯的重要机制引起了广泛关注,在生理和病理过程中具有多种意义。EVs 不仅在大小和生物发生方面具有高度异质性,而且还是各种功能丰富的生物分子的来源。生物样品高通量处理的最新进展促进了包含 EV 货物特征基因组、转录组、蛋白质组、代谢组和脂质组特征的数据库的发展。尽管在 EV 介导的细胞串扰中映射功能分子的方法深入,但很少有综合方法应用于分析这些靶向递送系统中的分子相互作用。系统生物学领域出现了新的观点,其中考虑异质性可能会导致在看似随机的数据池中找到模式。在这篇综述中,我们绘制了 EV 多组学数据中异质性的生物学和方法学原因,并介绍了当前用于整合此类数据的应用或可能的统计方法,同时跟踪该领域当前的瓶颈。

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