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Meta-analysis of gene expression data: a predictor-based approach

机译:基因表达数据的荟萃分析:基于预测变量的方法

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Motivation: With the increasing availability of cancer microarray data sets there is a growing need for integrative computational methods that evaluate multiple independent microarray data sets investigating a common theme or disorder. Meta-analysis techniques are designed to overcome the low sample size typical to microarray experiments and yield more valid and informative results than each experiment separately.Results: We propose a new meta-analysis technique that aims at finding a set of classifying genes, whose expression level may be used to answering the classification question in hand. Specifically, we apply our method to two independent lung cancer microarray data sets and identify a joint core subset of genes which putatively play an important role in tumor genesis of the lung. The robustness of the identified joint core set is demonstrated on a third unseen lung cancer data set, where it leads to successful classification using very few top-ranked genes. Identifying such a set of genes is of significant importance when searching for biologically meaningful biomarkers.
机译:动机:随着癌症微阵列数据集可用性的增加,对评估多个共同主题或病症的多个独立微阵列数据集的综合计算方法的需求日益增长。荟萃分析技术旨在克服微阵列实验典型的低样本量,并比每个实验分别产生更有效和有益的结果。结果:我们提出了一种旨在寻找一组分类基因的新荟萃分析技术,其表达级别可以用来回答手中的分类问题。具体来说,我们将我们的方法应用于两个独立的肺癌微阵列数据集,并确定基因的联合核心子集,这些基因在肺肿瘤的发生中起重要作用。在第三个看不见的肺癌数据集上证明了已识别的关节核心集的鲁棒性,该数据集可使用很少的排名靠前的基因成功进行分类。在寻找生物学上有意义的生物标记物时,鉴定出这样的一组基因非常重要。

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