Prospective Analysis of Proteins Carried in Extracellular Vesicles with Clinical Outcome in Hepatocellular Carcinoma.

IF 1.8 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Wenbiao Chen, Feng Zhang, Huixuan Xu, Xianliang Hou, Donge Tang
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引用次数: 1

Abstract

Background: Extracellular vehicles (EVs) contain different proteins that relay information between tumor cells, thus promoting tumorigenesis. Therefore, EVs can serve as an ideal marker for tumor pathogenesis and clinical application. Objective: Here, we characterised EV-specific proteins in hepatocellular carcinoma (HCC) samples and established their potential protein-protein interaction (PPI) networks. Materials and Methods: We used multi-dimensional bioinformatics methods to mine a network module to use as a prognostic signature and validated the model's prediction using additional datasets. The relationship between the prognostic model and tumor immune cells or the tumor microenvironment status was also examined. Results: 1134 proteins from 316 HCC samples were mapped to the exoRBase database. HCC-specific EVs specifically expressed a total of 437 proteins. The PPI network revealed 321 proteins and 938 interaction pathways, which were mined to identify a three network module (3NM) with significant prognostic prediction ability. Validation of the 3NM in two more datasets demonstrated that the model outperformed the other signatures in prognostic prediction ability. Functional analysis revealed that the network proteins were involved in various tumor-related pathways. Additionally, these findings demonstrated a favorable association between the 3NM signature and macrophages, dendritic, and mast cells. Besides, the 3NM revealed the tumor microenvironment status, including hypoxia and inflammation. Conclusion: These findings demonstrate that the 3NM signature reliably predicts HCC pathogenesis. Therefore, the model may be used as an effective prognostic biomarker in managing patients with HCC.

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肝细胞癌细胞外囊泡携带蛋白与临床预后的前瞻性分析。
背景:细胞外载体(EVs)含有不同的蛋白质,在肿瘤细胞之间传递信息,从而促进肿瘤的发生。因此,EVs可以作为肿瘤发病机制和临床应用的理想标志物。目的:在这里,我们对肝细胞癌(HCC)样本中的ev特异性蛋白进行了表征,并建立了它们潜在的蛋白-蛋白相互作用(PPI)网络。材料和方法:我们使用多维生物信息学方法来挖掘网络模块作为预测签名,并使用其他数据集验证模型的预测。我们还探讨了预后模型与肿瘤免疫细胞或肿瘤微环境状态的关系。结果:来自316例HCC样本的1134种蛋白被映射到exoRBase数据库。hcc特异性ev共特异性表达437种蛋白。PPI网络揭示了321种蛋白和938种相互作用途径,并从中挖掘出具有显著预后预测能力的三网络模块(3NM)。3NM在另外两个数据集上的验证表明,该模型在预后预测能力方面优于其他特征。功能分析显示网络蛋白参与多种肿瘤相关通路。此外,这些发现表明3NM特征与巨噬细胞、树突状细胞和肥大细胞之间存在良好的关联。此外,3NM显示肿瘤微环境状态,包括缺氧和炎症。结论:3NM标记可靠地预测HCC发病机制。因此,该模型可作为HCC患者治疗的有效预后生物标志物。
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来源期刊
Current Genomics
Current Genomics 生物-生化与分子生物学
CiteScore
5.20
自引率
0.00%
发文量
29
审稿时长
>0 weeks
期刊介绍: Current Genomics is a peer-reviewed journal that provides essential reading about the latest and most important developments in genome science and related fields of research. Systems biology, systems modeling, machine learning, network inference, bioinformatics, computational biology, epigenetics, single cell genomics, extracellular vesicles, quantitative biology, and synthetic biology for the study of evolution, development, maintenance, aging and that of human health, human diseases, clinical genomics and precision medicine are topics of particular interest. The journal covers plant genomics. The journal will not consider articles dealing with breeding and livestock. Current Genomics publishes three types of articles including: i) Research papers from internationally-recognized experts reporting on new and original data generated at the genome scale level. Position papers dealing with new or challenging methodological approaches, whether experimental or mathematical, are greatly welcome in this section. ii) Authoritative and comprehensive full-length or mini reviews from widely recognized experts, covering the latest developments in genome science and related fields of research such as systems biology, statistics and machine learning, quantitative biology, and precision medicine. Proposals for mini-hot topics (2-3 review papers) and full hot topics (6-8 review papers) guest edited by internationally-recognized experts are welcome in this section. Hot topic proposals should not contain original data and they should contain articles originating from at least 2 different countries. iii) Opinion papers from internationally recognized experts addressing contemporary questions and issues in the field of genome science and systems biology and basic and clinical research practices.
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