首页> 外文会议>International Conference on Genome Informatics >ISOFORM ABUNDANCE INFERENCE PROVIDES A MORE ACCURATE ESTIMATION OF GENE EXPRESSION LEVELS IN RNA-SEQ
【24h】

ISOFORM ABUNDANCE INFERENCE PROVIDES A MORE ACCURATE ESTIMATION OF GENE EXPRESSION LEVELS IN RNA-SEQ

机译:同种型丰度推理提供RNA-SEQ中基因表达水平的更准确估计

获取原文

摘要

Due to its unprecedented high-resolution and detailed information, RNA-seq technology based on next-generation high-throughput sequencing signi.cantly boosts the ability to study transcriptomes. The estimation of gene transcript abundance levels or gene expression levels has always been an important question in research on the transcriptional regulation and gene functions. On the basis of the concept of Reads Per Kilo-base per Million reads (RPKM), taking the union-intersection genes (UI-based) and summing up inferred isoform abundance (isoform-based) are the two current strategies to estimate gene expression levels, but produce di.erent estimations. In this paper, we made the. rst attempt to compare the two strategie performances through a series of simulation studies. Our results showed that the isoform-based method gives not only more accurate estimation but also has less uncertainty than the UI-based strategy. If taking into account the non-uniformity of read distribution, the isoform-based method can further reduce estimation errors. We applied both strategies to real RNA-seq datasets of technical replicates, and found that the isoform-based strategy also displays a better performance. For a more accurate estimation of gene expression levels from RNA-seq data, even if the abundance levels of isoforms are not of interest, it is still better to. rst infer the isoform abundance and sum them up to get the expression level of a gene as a whole.
机译:由于其前所未有的高分辨率和详细信息,基于下一代高通量测序标志的RNA-SEQ技术。促使能够研究转录omes的能力。基因转录物丰富水平或基因表达水平的估计始终是对转录调控和基因功能的研究中的重要问题。上的概念的基础上读取每公斤基每百万读取(RPKM),服用联合相交基因(基于UI)和总结推断同种型丰度(同种型为基础)是估计的基因表达两个电流策略水平,但产生Di.erent估算。在本文中,我们制作了。 RST试图通过一系列仿真研究比较两项策略性能。我们的研究结果表明,基于同种型的方法不仅提供了更准确的估计,而且比基于UI的策略更少不确定性。如果考虑到读分布的不均匀性,基于同种型的方法可以进一步降低估计误差。我们将两种策略应用于技术复制的真实RNA-SEQ数据集,发现基于同种类的策略也显示出更好的性能。为了更准确地估计来自RNA-SEQ数据的基因表达水平,即使丰富的同种型水平是非感兴趣的,它仍然更好。 RST推断同种型丰度并将它们施加,以获得整体基因的表达水平。

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