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基于功能质谱的蛋白质组学中的机遇与陷阱介绍

Introduction to opportunities and pitfalls in functional mass spectrometry based proteomics.

作者信息

Vaudel Marc, Sickmann Albert, Martens Lennart

机构信息

Leibniz-Institut für Analytische Wissenschaften - ISAS - e.V., Dortmund, Germany; Proteomics Unit (PROBE), Department of Biomedicine, University of Bergen, Bergen, Norway.

出版信息

Biochim Biophys Acta. 2014 Jan;1844(1 Pt A):12-20. doi: 10.1016/j.bbapap.2013.06.019. Epub 2013 Jul 9.

Abstract

With the advent of mass spectrometry based proteomics, the identification of thousands of proteins has become commonplace in biology nowadays. Increasingly, efforts have also been invested toward the detection and localization of posttranslational modifications. It is furthermore common practice to quantify the identified entities, a task supported by a panel of different methods. Finally, the results can also be enriched with functional knowledge gained on the proteins, detecting for instance differentially expressed gene ontology terms or biological pathways. In this study, we review the resources, methods and tools available for the researcher to achieve such a quantitative functional analysis. These include statistics for the post-processing of identification and quantification results, online resources and public repositories. With a focus on free but user-friendly software, preferably also open-source, we provide a list of tools designed to help the researcher manage the vast amount of data generated. We also indicate where such applications currently remain lacking. Moreover, we stress the eventual pitfalls of every step of such studies. This article is part of a Special Issue entitled: Computational Proteomics in the Post-Identification Era. Guest Editors: Martin Eisenacher and Christian Stephan.

摘要

随着基于质谱的蛋白质组学的出现,如今在生物学中鉴定数千种蛋白质已变得司空见惯。人们也越来越多地投入精力用于检测和定位翻译后修饰。此外,对已鉴定的实体进行定量也是常见做法,这一任务由一系列不同方法提供支持。最后,研究结果还可以通过从蛋白质上获得的功能知识进行充实,例如检测差异表达的基因本体术语或生物途径。在本研究中,我们回顾了可供研究人员用于实现这种定量功能分析的资源、方法和工具。这些包括用于鉴定和定量结果后处理的统计学方法、在线资源和公共数据库。我们重点介绍免费且用户友好的软件,最好也是开源软件,提供一份旨在帮助研究人员管理所产生的大量数据的工具列表。我们还指出了此类应用目前仍存在的不足之处。此外,我们强调了此类研究每一步中最终可能出现的陷阱。本文是名为“鉴定后时代的计算蛋白质组学”的特刊的一部分。客座编辑:Martin Eisenacher和Christian Stephan。

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