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Graph Constrained Discriminant Analysis: A New Method for the Integration of a Graph into a Classification Process

机译:图约束判别分析:一种将图集成到分类过程中的新方法

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摘要

Integrating gene regulatory networks (GRNs) into the classification process of DNA microarrays is an important issue in bioinformatics, both because this information has a true biological interest and because it helps in the interpretation of the final classifier. We present a method called graph-constrained discriminant analysis (gCDA), which aims to integrate the information contained in one or several GRNs into a classification procedure. We show that when the integrated graph includes erroneous information, gCDA's performance is only slightly worse, thus showing robustness to misspecifications in the given GRNs. The gCDA framework also allows the classification process to take into account as many a priori graphs as there are classes in the dataset. The gCDA procedure was applied to simulated data and to three publicly available microarray datasets. gCDA shows very interesting performance when compared to state-of-the-art classification methods. The software package gcda, along with the real datasets that were used in this study, are available online: .
机译:在生物信息学中,将基因调控网络(GRN)整合到DNA芯片的分类过程中是一个重要的问题,既因为此信息具有真正的生物学意义,又因为它有助于最终分类器的解释。我们提出了一种称为图约束判别分析(gCDA)的方法,该方法旨在将一个或多个GRN中包含的信息集成到分类过程中。我们表明,当集成图包含错误信息时,gCDA的性能仅稍差一些,从而显示出给定GRN中错误指定的鲁棒性。 gCDA框架还允许分类过程考虑与数据集中存在的类一样多的先验图。 gCDA程序应用于模拟数据和三个公开可用的微阵列数据集。与最新的分类方法相比,gCDA显示出非常有趣的性能。软件包gcda以及本研究中使用的实际数据集可在线获得:。

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