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Multiple hypothesis testing and clustering with mixtures of non-central t-distributions applied in microarray data analysis

机译:多重假设检验和非中心t分布混合的聚类应用于微阵列数据分析

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摘要

Multiple testing analysis and clustering methodologies are usually applied in microarray data analysis. A combination of both methods to deal with multiple comparisons among groups obtained from microarray expressions of genes is proposed. Assuming normal data, a statistic which depends on sample means and sample variances, distributed as a non-central t-distribution is defined. As multiple comparisons among groups are considered, a mixture of non-central t-distributions is derived. The estimation of the components of mixtures is obtained via a Bayesian approach, and the model is applied in a multiple comparison problem from a microarray experiment obtained from gorilla, bonobo and human cultured fibroblasts.
机译:通常在微阵列数据分析中应用多种测试分析和聚类方法。提出了两种方法的组合,以处理从基因的微阵列表达获得的组之间的多重比较。假设数据为正态,则定义了一个统计数据,该统计数据取决于样本均值和样本方差,并以非中心t分布的形式分布。考虑到各组之间的多重比较,得出了非中心t分布的混合。通过贝叶斯方法获得混合物成分的估计值,并将该模型应用于大猩猩,bo黑猩猩和人类培养的成纤维细胞的微阵列实验的多重比较问题中。

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