Differential Expression Analysis for RNA-Seq Data.

ISRN bioinformatics Pub Date : 2012-09-20 eCollection Date: 2012-01-01 DOI:10.5402/2012/817508
Rashi Gupta, Isha Dewan, Richa Bharti, Alok Bhattacharya
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引用次数: 33

Abstract

RNA-Seq is increasingly being used for gene expression profiling. In this approach, next-generation sequencing (NGS) platforms are used for sequencing. Due to highly parallel nature, millions of reads are generated in a short time and at low cost. Therefore analysis of the data is a major challenge and development of statistical and computational methods is essential for drawing meaningful conclusions from this huge data. In here, we assessed three different types of normalization (transcript parts per million, trimmed mean of M values, quantile normalization) and evaluated if normalized data reduces technical variability across replicates. In addition, we also proposed two novel methods for detecting differentially expressed genes between two biological conditions: (i) likelihood ratio method, and (ii) Bayesian method. Our proposed methods for finding differentially expressed genes were tested on three real datasets. Our methods performed at least as well as, and often better than, the existing methods for analysis of differential expression.

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Abstract Image

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RNA-Seq数据的差异表达分析
RNA-Seq越来越多地被用于基因表达谱分析。在这种方法中,使用下一代测序(NGS)平台进行测序。由于其高度并行性,可以在短时间内以较低的成本生成数百万个读取。因此,数据分析是一项重大挑战,统计和计算方法的发展对于从这些庞大的数据中得出有意义的结论至关重要。在这里,我们评估了三种不同类型的规范化(转录物百万分率、M值的修剪平均值、分位数规范化),并评估规范化数据是否减少了重复之间的技术可变性。此外,我们还提出了两种检测两种生物条件下差异表达基因的新方法:(i)似然比法和(ii)贝叶斯法。我们提出的寻找差异表达基因的方法在三个真实数据集上进行了测试。我们的方法至少和现有的分析差异表达的方法一样好,甚至更好。
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