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Development of a classification and ranking method for the identification of possible biomarkers in two-dimensional gel-electrophoresis based on principal component analysis and variable selection proceduresf J

机译:基于主成分分析和变量选择程序的二维凝胶电泳中可能的生物标记物识别分类和分级方法的开发

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摘要

The identification of biomarkers is one of the leading research areas in proteomics. When biomarkers have to be searched for in spot volume datasets produced by 2D gel-electrophoresis, problems may arise related to the large number of spots present in each map and the small number of samples available in each class (control/pathological). In such cases multivariate methods are usually exploited together with variable selection procedures, to provide a set of possible biomarkers: they are however usually aimed to the selection of the smallest set of variables (spots) providing the best performances in prediction. This approach seems not to be suitable for the identification of potential biomarkers since in this case all the possible candidate biomarkers have to be identified to provide a general picture of the "pathological state": in this case exhaustivity has to be preferred to provide a complete understanding of the mechanisms underlying the pathology. We propose here a ranking and classification method, "Ranking-PCA", based on Principal Component Analysis and variable selection in forward search: the method selects one variable at a time as the one providing the best separation of the two classes investigated in the space given by the relevant PCs. The method was applied to an artificial dataset and a real case-study: Ranking-PCA exhaustively identified the potential biomarkers and provided reliable and robust results.
机译:生物标志物的鉴定是蛋白质组学领域的领先研究领域之一。当必须在2D凝胶电泳产生的斑点体积数据集中搜索生物标记时,可能会出现与每个图谱中存在大量斑点和每个类别中可用的样本数量少(对照/病理学)有关的问题。在这种情况下,通常将多变量方法与变量选择程序一起使用,以提供一组可能的生物标记物;但是,它们通常旨在选择在预测中提供最佳性能的最小变量集(点)。这种方法似乎不适合用于识别潜在的生物标记,因为在这种情况下,必须识别所有可能的候选生物标记以提供“病理状态”的一般情况:在这种情况下,必须首选穷举性来提供完整的“病理状态”了解病理基础。我们在此提出一种基于主成分分析和正向搜索中的变量选择的排名和分类方法“ Ranking-PCA”:该方法一次选择一个变量,该变量提供了在空间中调查的两个类别的最佳分离由相关PC提供。该方法已应用于人工数据集和真实案例研究:Rating-PCA详尽地确定了潜在的生物标志物,并提供了可靠而可靠的结果。

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  • 来源
    《Molecular BioSystems》 |2011年第3期|p.677-686|共10页
  • 作者单位

    Department of Environmental and Life Sciences, University of Eastern Piedmont, Viale T. Michel 11, 15121 Alessandria, Italy;

    Department of Environmental and Life Sciences, University of Eastern Piedmont, Viale T. Michel 11, 15121 Alessandria, Italy;

    Department of Environmental and Life Sciences, University of Eastern Piedmont, Viale T. Michel 11, 15121 Alessandria, Italy;

    Universitd Cattolica del Sacro Cuore, Via Emilia Parmense, 84,29122 Piacenza, Italy;

    Department of Environmental and Life Sciences, University of Eastern Piedmont, Viale T. Michel 11, 15121 Alessandria, Italy;

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