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Mapping Splicing Quantitative Trait Loci in RNA-Seq

机译:在RNA-Seq中绘制剪接定量性状基因座

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Background: One of the major mechanisms of generating mRNA diversity is alternative splicing, a regulated process that allows for the flexibility of producing functionally different proteins from the same genomic sequences. This process is often altered in cancer cells to produce aberrant proteins that drive the progression of cancer. A better understanding of the misregulation of alternative splicing will shed light on the development of novel targets for pharmacological interventions of cancer.Methods: In this study, we evaluated three statistical methods, random effects meta-regression, beta regression, and generalized linear mixed effects model, for the analysis of splicing quantitative trait loci (sQTL) using RNA-Seq data. All the three methods use exon-inclusion levels estimated by the PennSeq algorithm, a statistical method that utilizes paired-end reads and accounts for non-uniform sequencing coverage.Results: Using both simulated and real RNA-Seq datasets, we compared these three methods with GLiMMPS, a recently developed method for sQTL analysis. Our results indicate that the most reliable and powerful method was the random effects meta-regression approach, which identified sQTLs at low false discovery rates but higher power when compared to GLiMMPS.Conclusions: We have evaluated three statistical methods for the analysis of sQTLs in RNA-Seq. Results from our study will be instructive for researchers in selecting the appropriate statistical methods for sQTL analysis. Corrected and Republished: An editorial error resulted in this article appearing in the wrong supplementary issue. The article has now been republished in the correct issue, here: http://www.la-press.com/mapping-splicing-quantitative-trait-loci-in-rna-seq-article-a4669. The full text remains available here for the readers' convenience. For citation purposes, please use the republished details: Cancer Informatics 2015;14(Suppl. 1): 45-53.
机译:背景:产生mRNA多样性的主要机制之一是选择性剪接,这是一种受调控的过程,可以灵活地从相同基因组序列生产功能不同的蛋白质。该过程通常在癌细胞中发生改变,以产生驱动癌症进展的异常蛋白质。方法:在这项研究中,我们评估了三种统计方法,随机效应的荟萃回归,β回归和广义线性混合效应,这将有助于更好地理解替代剪接的调控异常,从而为癌症药理学干预新靶标的开发提供启发。模型,用于使用RNA-Seq数据分析剪接定量性状基因座(sQTL)。这三种方法都使用PennSeq算法估计的外显子包含水平,PennSeq算法是一种统计方法,该方法利用配对末端读数并说明了不均匀的测序覆盖率。结果:我们使用模拟和真实RNA-Seq数据集对这三种方法进行了比较使用GLiMMPS(一种最近开发的sQTL分析方法)。我们的结果表明,最可靠,最强大的方法是随机效应元回归方法,该方法以较低的错误发现率识别sQTL,但与GLiMMPS相比具有更高的功效。结论:我们评估了三种统计方法来分析RNA中的sQTL -序列我们的研究结果将为研究人员选择合适的sQTL分析统计方法提供指导。更正并重新发布:编辑错误导致本文出现在错误的补充问题上。现在,该文章已以正确的版本重新发布,位于:http://www.la-press.com/mapping-splicing-quantitative-trait-loci-in-rna-seq-article-a4669。全文仍在此处提供,以方便读者。出于引用目的,请使用重新发布的详细信息:Cancer Informatics 2015; 14(Suppl。1):45-53。

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