首页> 外文期刊>BMC Bioinformatics >QNB: differential RNA methylation analysis for count-based small-sample sequencing data with a quad-negative binomial model
【24h】

QNB: differential RNA methylation analysis for count-based small-sample sequencing data with a quad-negative binomial model

机译:QNB:使用四负二项式模型对基于计数的小样本测序数据进行差异RNA甲基化分析

获取原文
           

摘要

Background As a newly emerged research area, RNA epigenetics has drawn increasing attention recently for the participation of RNA methylation and other modifications in a number of crucial biological processes. Thanks to high throughput sequencing techniques, such as, MeRIP-Seq, transcriptome-wide RNA methylation profile is now available in the form of count-based data, with which it is often of interests to study the dynamics at epitranscriptomic layer. However, the sample size of RNA methylation experiment is usually very small due to its costs; and additionally, there usually exist a large number of genes whose methylation level cannot be accurately estimated due to their low expression level, making differential RNA methylation analysis a difficult task. Results We present QNB, a statistical approach for differential RNA methylation analysis with count-based small-sample sequencing data. Compared with previous approaches such as DRME model based on a statistical test covering the IP samples only with 2 negative binomial distributions, QNB is based on 4 independent negative binomial distributions with their variances and means linked by local regressions, and in the way, the input control samples are also properly taken care of. In addition, different from DRME approach, which relies only the input control sample only for estimating the background, QNB uses a more robust estimator for gene expression by combining information from both input and IP samples, which could largely improve the testing performance for very lowly expressed genes. Conclusion QNB showed improved performance on both simulated and real MeRIP-Seq datasets when compared with competing algorithms. And the QNB model is also applicable to other datasets related RNA modifications, including but not limited to RNA bisulfite sequencing, m1A-Seq, Par-CLIP, RIP-Seq, etc.
机译:背景技术作为新兴的研究领域,RNA表观遗传学最近在许多重要的生物学过程中引起了人们对RNA甲基化和其他修饰的关注。由于采用了高通量测序技术(例如MeRIP-Seq),现在可以基于计数的数据形式获得转录组范围的RNA甲基化谱图,研究表观转录组层的动力学常常是人们感兴趣的。但是,RNA甲基化实验的样本量通常很小,原因是它的成本高。另外,通常存在大量的基因,由于它们的低表达水平,其甲基化水平不能被准确估计,这使得差异RNA甲基化分析成为困难的任务。结果我们提出了QNB,一种用于基于计数的小样本测序数据进行差异RNA甲基化分析的统计方法。与之前的方法相比,例如基于统计检验的DRME模型仅覆盖具有2个负二项式分布的IP样本,QNB基于4个独立的负二项式分布,其方差和均值通过局部回归链接,并且通过输入对照样品也要妥善处理。此外,与DRME方法不同,DRME方法仅依赖输入控制样本来估计背景,而QNB通过结合来自输入和IP样本的信息,对基因表达使用了更强大的估计器,这可以大大降低测试性能。表达的基因。结论与竞争算法相比,QNB在模拟和实际MeRIP-Seq数据集上均表现出更高的性能。 QNB模型也适用于其他与RNA修饰有关的数据集,包括但不限于RNA亚硫酸氢盐测序,m 1 A-Seq,Par-CLIP,RIP-Seq等。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号