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Shrinkage estimation of dispersion in Negative Binomial models for RNA-seq experiments with small sample size

机译:负二项式模型中用于小样本RNA-seq实验的分散收缩估计

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Motivation: RNA-seq experiments produce digital counts of reads that are affected by both biological and technical variation. To distinguish the systematic changes in expression between conditions from noise, the counts are frequently modeled by the Negative Binomial distribution. However, in experiments with small sample size, the per-gene estimates of the dispersion parameter are unreliable. Method: We propose a simple and effective approach for estimating the dispersions. First, we obtain the initial estimates for each gene using the method of moments. Second, the estimates are regularized, i.e. shrunk towards a common value that minimizes the average squared difference between the initial estimates and the shrinkage estimates. The approach doesnot require extra modeling assumptions, is easy to compute and is compatible with the exact test of differential expression. Results: We evaluated the proposed approach using 10 simulated and experimental datasets and compared its performance with that of currently popular packages edgeR, DESeq, baySeq, BBSeq and SAMseq. For these datasets, sSeq performed favorably for experiments with small sample size in sensitivity, specificity and computational time. Availability: http://www.stat.purdue.edu/~ovitek/Software.html and Bioconductor.
机译:动机:RNA-seq实验可产生受生物学和技术差异影响的读数的数字计数。为了区分条件与噪声之间表达的系统变化,经常通过负二项分布来对计数进行建模。但是,在样本量较小的实验中,分散参数的每个基因的估计是不可靠的。方法:我们提出了一种简单有效的方法来估计色散。首先,我们使用矩量法获得每个基因的初始估计。第二,对估计值进行正则化,即缩小为一个公共值,以使初始估计值和收缩率估计值之间的均方差最小。该方法不需要额外的建模假设,易于计算并且与差异表达式的精确测试兼容。结果:我们使用10个模拟和实验数据集评估了该方法的性能,并将其性能与当前流行的edgeR,DESeq,baySeq,BBSeq和SAMseq软件包的性能进行了比较。对于这些数据集,sSeq在灵敏度,特异性和计算时间较小的样本实验中表现良好。可用性:http://www.stat.purdue.edu/~ovitek/Software.html和Bioconductor。

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