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Analysis of Differential Gene Expression Based on Bayesian Estimation of Variance

机译:基于方差贝叶斯估计的差异基因表达分析

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摘要

Gene expression is arguably the most important indicator of biological function. Thus identifying differentially expressed genes is one of the main aims of high throughout studies that use microarray and RNAseq platforms to study deregulated cellular pathways. There are many tools for analysing differentia gene expression from transciptomic datasets. The major challenge of this topic is to estimate gene expression variance due to the high amount of 'background noise' that is generated from biological equipment and the lack of biological replicates. Bayesian inference has been widely used in the bioinformatics field. In this work, we reveal that the prior knowledge employed in the Bayesian framework also helps to improve the accuracy of differential gene expression analysis when using a small number of replicates. We have developed a differential analysis tool that uses Bayesian estimation of the variance of gene expression for use with small numbers of biological replicates. Our method is more consistent when compared to the widely used cyber-t tool that successfully introduced the Bayesian framework to differential analysis. We also provide a user-friendly web based Graphic User Interface for biologists to use with microarray and RNAseq data. Bayesian inference can compensate for the instability of variance caused when using a small number of biological replicates by using pseudo replicates as prior knowledge. We also show that our new strategy to select pseudo replicates will improve the performance of the analysis.
机译:基因表达可以说是生物学功能的最重要指标。因此,鉴定差异表达的基因是整个研究的主要目标之一,这些研究使用微阵列和RNAseq平台研究失调的细胞途径。有许多工具可以用来分析来自跨学科数据集的差异基因表达。该主题的主要挑战是估计由于生物设备产生的大量“背景噪声”和缺乏生物复制而导致的基因表达差异。贝叶斯推理已被广泛应用于生物信息学领域。在这项工作中,我们揭示了在使用少量重复样本时,贝叶斯框架中使用的先验知识还有助于提高差异基因表达分析的准确性。我们开发了一种差异分析工具,该工具使用贝叶斯估计基因表达的方差,以用于少量生物学复制。与成功使用贝叶斯框架进行差异分析的广泛使用的cyber-t工具相比,我们的方法更加一致。我们还为生物学家提供了用户友好的基于Web的图形用户界面,可用于微阵列和RNAseq数据。贝叶斯推理可以通过使用伪复制作为先验知识来补偿使用少量生物复制时引起的方差的不稳定性。我们还表明,选择伪复制品的新策略将提高分析性能。

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