中性粒细胞颗粒微型化分离(MING)方法可对人类中性粒细胞颗粒进行深度蛋白质组图谱绘制。

IF 3.6 3区 医学 Q3 CELL BIOLOGY
Gabrielly Alexandria, Hellen P Valerio, Mariana P Massafera, Lorenna R Reis, Fernando R Coelho, Paolo Di Mascio, Graziella E Ronsein
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引用次数: 0

摘要

中性粒细胞是先天性免疫系统的第一道防线,它们的贮存细胞器对其功能至关重要。储存细胞器分为三种不同的颗粒类型,分别称为嗜氮粒、特异粒和明胶酶粒,此外还有第四种称为分泌泡的成分。嗜中性粒细胞颗粒的分离具有挑战性,现有程序依赖于大量样本(约 400 毫升外周血),因此无法使用多个生物和技术重复样本。因此,本研究旨在开发一种微型化的中性粒细胞颗粒分离(MING)方法,利用生化测定、基于质谱的蛋白质组学和机器学习方法来研究这些细胞器的蛋白质含量。从三名明显健康的志愿者身上采集的 40 毫升血液中分离出中性粒细胞,并使用氮气空化法将其破坏;使用不连续的 3 层 Percoll 密度梯度对细胞器进行分馏。分离结果证明是成功的,使用比文献中描述的方法小约 37 倍的梯度,合理地分离了中性粒细胞的储存细胞器。此外,基于质谱的蛋白质组学在 5 个分析样本中的至少 3 个样本中鉴定出了 368 种蛋白质,并利用机器学习策略与文献中的标记物进行了比对,从而有把握地预测出了 50 种蛋白质的定位。当使用聚类工具确定数据集中的标记时,348 个蛋白质的定位得到了可靠的确定。重要的是,这项研究首次利用技术和生物重复研究了中性粒细胞颗粒的蛋白质组,为进一步研究建立了可靠的数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Miniaturized Isolation of Neutrophil Granules (MING) method allowed a deep proteome mapping of human neutrophil granules.

Neutrophils are the innate immune system's first line of defense, and their storage organelles are essential to their function. The storage organelles are divided into three different granule types named azurophilic, specific, and gelatinase granules, besides a fourth component called secretory vesicles. The isolation of neutrophil's granules is challenging, and the existing procedures rely on large sample volumes, about 400 mL of peripheral blood, precluding the use of multiple biological and technical replicates. Therefore, the aim of this study was to develop a miniaturized isolation of neutrophil granules (MING) method, using biochemical assays, mass spectrometry-based proteomics and a machine learning approach to investigate the protein content of these organelles. Neutrophils were isolated from 40 mL of blood collected from three apparently healthy volunteers and disrupted using nitrogen cavitation; the organelles were fractionated with a discontinuous 3-layer Percoll density gradient. The isolation was proven successful and allowed for a reasonable separation of neutrophil's storage organelles using a gradient approximately 37 times smaller than the methods described in the literature. Moreover, mass spectrometry-based proteomics identified 368 proteins in at least 3 of the 5 analyzed samples, and using a machine learning strategy aligned with markers from the literature, the localization of 50 proteins was predicted with confidence. When using markers determined within our dataset by a clusterization tool, the localization of 348 proteins was confidently determined. Importantly, this study was the first to investigate the proteome of neutrophil granules using technical and biological replicates, creating a reliable database for further studies.

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来源期刊
Journal of Leukocyte Biology
Journal of Leukocyte Biology 医学-免疫学
CiteScore
11.50
自引率
0.00%
发文量
358
审稿时长
2 months
期刊介绍: JLB is a peer-reviewed, academic journal published by the Society for Leukocyte Biology for its members and the community of immunobiologists. The journal publishes papers devoted to the exploration of the cellular and molecular biology of granulocytes, mononuclear phagocytes, lymphocytes, NK cells, and other cells involved in host physiology and defense/resistance against disease. Since all cells in the body can directly or indirectly contribute to the maintenance of the integrity of the organism and restoration of homeostasis through repair, JLB also considers articles involving epithelial, endothelial, fibroblastic, neural, and other somatic cell types participating in host defense. Studies covering pathophysiology, cell development, differentiation and trafficking; fundamental, translational and clinical immunology, inflammation, extracellular mediators and effector molecules; receptors, signal transduction and genes are considered relevant. Research articles and reviews that provide a novel understanding in any of these fields are given priority as well as technical advances related to leukocyte research methods.
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