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首页> 外文期刊>BMC Bioinformatics >Use of genomic DNA control features and predicted operon structure in microarray data analysis: ArrayLeaRNA – a Bayesian approach
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Use of genomic DNA control features and predicted operon structure in microarray data analysis: ArrayLeaRNA – a Bayesian approach

机译:微阵列数据分析中基因组DNA控制特征的使用和预测的操纵杆结构:ArrayLearna - 一种贝叶斯方法

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Background Microarrays are widely used for the study of gene expression; however deciding on whether observed differences in expression are significant remains a challenge. Results A computing tool (ArrayLeaRNA) has been developed for gene expression analysis. It implements a Bayesian approach which is based on the Gumbel distribution and uses printed genomic DNA control features for normalization and for estimation of the parameters of the Bayesian model and prior knowledge from predicted operon structure. The method is compared with two other approaches: the classical LOWESS normalization followed by a two fold cut-off criterion and the OpWise method (Price, et al. 2006. BMC Bioinformatics. 7, 19), a published Bayesian approach also using predicted operon structure. The three methods were compared on experimental datasets with prior knowledge of gene expression. With ArrayLeaRNA, data normalization is carried out according to the genomic features which reflect the results of equally transcribed genes; also the statistical significance of the difference in expression is based on the variability of the equally transcribed genes. The operon information helps the classification of genes with low confidence measurements. ArrayLeaRNA is implemented in Visual Basic and freely available as an Excel add-in at http://www.ifr.ac.uk/safety/ArrayLeaRNA/ Conclusion We have introduced a novel Bayesian model and demonstrated that it is a robust method for analysing microarray expression profiles. ArrayLeaRNA showed a considerable improvement in data normalization, in the estimation of the experimental variability intrinsic to each hybridization and in the establishment of a clear boundary between non-changing and differentially expressed genes. The method is applicable to data derived from hybridizations of labelled cDNA samples as well as from hybridizations of labelled cDNA with genomic DNA and can be used for the analysis of datasets where differentially regulated genes predominate.
机译:背景技术微阵列广泛用于基因表达的研究;然而,决定观察到表达的差异是否有重大仍然是一个挑战。结果已开发用于基因表达分析的计算工具(ArrrarleArna)。它实现了一种基于Gumbel分布的贝叶斯方法,并使用印刷的基因组DNA控制特征进行标准化和估计贝叶斯模型的参数和预测的操纵子结构的先验知识。该方法与另外两种方法进行比较:经典的杠杆归一化,然后是两个折叠截止标准和OpWise方法(价格,等,2006. BMC生物信息学。7,19),也使用预测的操纵歌手结构体。将三种方法与实验数据集进行比较,具有基因表达的先验知识。对于ArrayLearna,根据反映同等转录基因的结果的基因组特征进行数据归一化;表达差异的统计显着性也基于同等转录基因的可变性。操纵子信息有助于对具有低置信度测量的基因进行分类。 ArrayLearna以Visual Basic和Freely可用为Excel加载项,以Http://www.ifr.ac.uk/safety/arraylearna/结论,我们介绍了一个新颖的贝叶斯模型,并证明它是一种稳健的分析方法微阵列表达配置文件。 Arrraylearna显示数据标准化的显着改善,在估计每个杂交的实验变异性,并且在非变化和差异表达基因之间建立明显的边界。该方法适用于源自标记的cDNA样品的杂交以及与基因组DNA的标记cDNA的杂交衍生的数据,并且可用于分析差异调节基因占主导地位的数据集。

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