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IMPROVING THE EFFICIENCY OF BIOMARKER IDENTIFICATION USING BIOLOGICAL KNOWLEDGE

机译:使用生物学知识提高生物标志物鉴定的效率

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Identifying and validating biomarkers from high-throughput gene expression data is important for understanding and treating cancer. Typically, we identify candidate biomarkers as features that are differentially expressed between two or more classes of samples. Many feature selection metrics rely on ranking by some measure of differential expression. However, interpreting these results is difficult due to the large variety of existing algorithms and metrics, each of which may produce different results. Consequently, a feature ranking metric may work well on some datasets but perform considerably worse on others. We propose a method to choose an optimal feature ranking metric on an individual dataset basis. A metric is optimal if, for a particular dataset, it favorably ranks features that are known to be relevant biomarkers. Extensive knowledge of biomarker candidates is available in public databases and literature. Using this knowledge, we can choose a ranking metric that produces the most biologically meaningful results. In this paper, we first describe a framework for assessing the ability of a ranking metric to detect known relevant biomarkers. We then apply this method to clinical renal cancer microarray data to choose an optimal metric and identify several candidate biomarkers.
机译:从高通量基因表达数据中鉴定和验证生物标志物对于理解和治疗癌症是重要的。通常,我们将候选生物标志物识别为两类或多种样本之间差异表达的特征。许多特征选择度量依赖于某种差异表达式的排序。然而,解释这些结果由于众多现有算法和度量,每个结果可能产生不同的结果。因此,特征排名度量可以很好地在某些数据集上工作,但在其他数据集上执行非常差。我们提出了一种选择单个数据集的最佳特征排名度量的方法。如果对于特定数据集,则度量是最佳的,它有利地将已知是相关生物标记器的特征等级。公共数据库和文学中提供了对生物标志物候选人的广泛知识。使用这些知识,我们可以选择一个在最良好的生物学上有意义的结果的排名指标。在本文中,我们首先描述了一种评估排名度量来检测已知相关生物标志物的能力的框架。然后,我们将这种方法应用于临床肾癌微阵列数据,选择最佳的指标并识别几个候选生物标志物。

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