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A New Gene Selection Method Based on PCA for Molecular Classification

机译:一种基于PCA分子分类的新基因选择方法

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Microarray expression experiments generating thousands of gene expression measurements simultaneously provide information for tissue and cell samples, which are useful for disease diagnosis. These experiments primarily either monitor each gene multiple times under different conditions or alternatively evaluate each gene in a single environment but in different types of tissues. In general, microarray data are huge and difficult to analyze. In order to extract information from gene expression measurements, various methods have been employed to analyze this data such as SVM, clustering methods, self-organizing maps, and weighted correlation method. Support vector machines have been shown to perform very well in many areas of biological data analysis, in particular microarray expression data analysis. We present a new gene selection method for microarray data analysis. This method removes noisy data using principal component analysis, and selects genes with high contribution to constitute principal components. Selected genes have discriminative power to distinguish classes. When we used the presented method with SVM, we were able to analyze microarray data more correctly than previously known methods for molecular classification.
机译:微阵列表达实验产生成千上万的基因表达测量,同时为组织和细胞样品提供可用于疾病诊断的信息。这些实验主要在不同条件下多次监测每个基因,或者可选地评估单个环境中的每个基因,但在不同类型的组织中。通常,微阵列数据巨大且难以分析。为了从基因表达测量中提取信息,已经采用了各种方法来分析该数据,例如SVM,聚类方法,自组织地图和加权相关方法。已经证明了支持向量机在生物数据分析的许多领域中表现得非常好,特别是微阵列表达数据分析。我们为微阵列数据分析提出了一种新的基因选择方法。该方法使用主成分分析去除噪声数据,并选择具有高贡献的基因来构成主成分。所选基因具有区分类别的歧视力。当我们使用SVM的呈现方法时,我们能够比以前已知的分子分类方法更正确地分析微阵列数据。

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