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首页> 外文期刊>Journal of proteomics >Back to the basics: Maximizing the information obtained by quantitative two dimensional gel electrophoresis analyses by an appropriate experimental design and statistical analyses.
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Back to the basics: Maximizing the information obtained by quantitative two dimensional gel electrophoresis analyses by an appropriate experimental design and statistical analyses.

机译:回到基础:通过适当的实验设计和统计分析,最大化通过定量二维凝胶电泳分析获得的信息。

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摘要

Two dimensional gel electrophoresis has been one of the techniques most used for protein separation in proteomics experiments and still continues to be so for some species such as plants. Despite the constant technical advances and continuous improvements in the field of 2-DE, the experimental design and analysis of protein abundance data continue to be ignored or not properly documented in the literature. An appropriate experimental design, followed by decisive statistical methods is mandatory to extract all the information that is concealed in the complexity of 2-DE data. In this work we review, in a biologist's language, all the experimental design and statistical tests to be considered while planning a 2-DE based proteomics experiment and for the correct analysis and interpretation of the data. We aim to provide the researcher with an up to date introduction to these areas, starting with the experimental design and ending with the application of multivariate statistical methodologies such as PCA, ICA or neural network-based self-organizing maps. In between we have described, in an understandable way, the current methodologies available to deal with all the stages of the experimental design, data processing and analysis.
机译:二维凝胶电泳已成为蛋白质组学实验中最常用于蛋白质分离的技术之一,并且对于某些物种(例如植物)仍然如此。尽管2-DE领域技术上不断进步和不断改进,但是蛋白质丰度数据的实验设计和分析仍被忽略或在文献中没有正确记录。必须采用适当的实验设计,然后采用决定性的统计方法,以提取隐藏在2-DE数据复杂性中的所有信息。在这项工作中,我们将以生物学家的语言审查在计划基于2-DE的蛋白质组学实验以及数据的正确分析和解释时要考虑的所有实验设计和统计测试。我们的目的是为研究人员提供有关这些领域的最新介绍,从实验设计开始到以多元统计方法(例如PCA,ICA或基于神经网络的自组织图)的应用结束。在两者之间,我们以一种可以理解的方式描述了可用于处理实验设计,数据处理和分析的所有阶段的当前方法。

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