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Evaluating Switching Neural Networks for Gene Selection

机译:评估用于选择基因的开关神经网络

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摘要

A new gene selection method for analyzing microarray experiments pertaining to two classes of tissues and for determining relevant genes characterizing differences between the two classes is proposed. The new technique is based on Switching Neural Networks (SNN), learning machines that assign a relevance value to each input variable, and adopts Recursive Feature Addition (RFA) for performing gene selection. The performances of SNN-RFA are evaluated by considering its application on two real and two artificial gene expression datasets generated according to a proper mathematical model that possesses biological and statistical plausibility. Comparisons with other two widely used gene selection methods are also shown.
机译:提出了一种新的基因选择方法,用于分析涉及两类组织的微阵列实验并确定表征这两类差异的相关基因。这项新技术基于开关神经网络(SNN),为每个输入变量分配相关值的学习机,并采用递归特征加法(RFA)进行基因选择。通过考虑将SNN-RFA应用于根据具有生物学和统计合理性的适当数学模型生成的两个真实和两个人工基因表达数据集,来评估SNN-RFA的性能。还显示了与其他两种广泛使用的基因选择方法的比较。

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