首页> 美国卫生研究院文献>BMC Bioinformatics >Normalization and expression changes in predefined sets of proteins using 2D gel electrophoresis: A proteomic study of L-DOPA induced dyskinesia in an animal model of Parkinsons disease using DIGE
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Normalization and expression changes in predefined sets of proteins using 2D gel electrophoresis: A proteomic study of L-DOPA induced dyskinesia in an animal model of Parkinsons disease using DIGE

机译:使用2D凝胶电泳对预定义的蛋白质组进行标准化和表达变化:使用DIGE对帕金森氏病动物模型中L-DOPA诱导的运动障碍的蛋白质组学研究

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摘要

BackgroundTwo-Dimensional Difference In Gel Electrophoresis (2D-DIGE) is a powerful tool for measuring differences in protein expression between samples or conditions. However, to remove systematic variability within and between gels the data has to be normalized.In this study we examined the ability of four existing and four novel normalization methods to remove systematic bias in data produced with 2D-DIGE. We also propose a modification of an existing method where the statistical framework determines whether a set of proteins shows an association with the predefined phenotypes of interest. This method was applied to our data generated from a monkey model (Macaca fascicularis) of Parkinson's disease.
机译:背景技术凝胶电泳二维差异(2D-DIGE)是一种强大的工具,可用于测量样品或条件之间蛋白质表达的差异。然而,要消除凝胶内部和凝胶之间的系统变异性,必须对数据进行归一化。在这项研究中,我们研究了四种现有的和四种新颖的归一化方法消除2D-DIGE产生的数据中系统性偏差的能力。我们还提出了对现有方法的修改,其中统计框架确定一组蛋白质是否显示与目标预定义表型的关联。此方法已应用于我们从帕金森氏病猴子模型(Macaca fascicularis)生成的数据。

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