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baySeq: Empirical Bayesian methods for identifying differential expression in sequence count data

机译:baySeq:经验贝叶斯方法,用于识别序列计数数据中的差异表达

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Background High throughput sequencing has become an important technology for studying expression levels in many types of genomic, and particularly transcriptomic, data. One key way of analysing such data is to look for elements of the data which display particular patterns of differential expression in order to take these forward for further analysis and validation. Results We propose a framework for defining patterns of differential expression and develop a novel algorithm, baySeq, which uses an empirical Bayes approach to detect these patterns of differential expression within a set of sequencing samples. The method assumes a negative binomial distribution for the data and derives an empirically determined prior distribution from the entire dataset. We examine the performance of the method on real and simulated data. Conclusions Our method performs at least as well, and often better, than existing methods for analyses of pairwise differential expression in both real and simulated data. When we compare methods for the analysis of data from experimental designs involving multiple sample groups, our method again shows substantial gains in performance. We believe that this approach thus represents an important step forward for the analysis of count data from sequencing experiments.
机译:背景技术高通量测序已成为研究许多类型的基因组数据,尤其是转录组数据中表达水平的重要技术。分析此类数据的一种关键方法是寻找显示差异表达特定模式的数据元素,以便将其向前进行进一步的分析和验证。结果我们提出了定义差异表达模式的框架,并开发了一种新颖的算法baySeq,该算法使用经验贝叶斯方法在一组测序样品中检测这些差异表达模式。该方法假设数据为负二项式分布,并从整个数据集中得出经验确定的先验分布。我们检查了该方法在真实和模拟数据上的性能。结论我们的方法在分析真实数据和模拟数据中的成对差异表达时,其性能至少比现有方法好,并且通常更好。当我们比较涉及多个样本组的实验设计数据的分析方法时,我们的方法再次显示出性能上的显着提高。我们认为,这种方法代表了对测序实验计数数据进行分析的重要一步。

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