University of Wisconsin-Madison, Madison, USA.
University of Cincinnati, Cincinnati, USA.
Sci Rep. 2020 Sep 24;10(1):15669. doi: 10.1038/s41598-020-72482-w.
RNA-Seq expression analysis currently relies primarily upon exon expression data. The recognized role of introns during translation, and the presence of substantial RNA-Seq counts attributable to introns, provide the rationale for the simultaneous consideration of both exon and intron data. We describe here a method for the coordinated analysis of exon and intron data by investigating their relationship within individual genes and across samples, while taking into account changes in both variability and expression level. This coordinated analysis of exon and intron data offers strong evidence for significant differences that distinguish the profiles of the exon-only expression data from the combined exon and intron data. One advantage of our proposed method, called matched change characterization for exons and introns (MEI), is its straightforward applicability to existing archived data using small modifications to standard RNA-Seq pipelines. Using MEI, we demonstrate that when data are examined for changes in variability across control and case conditions, novel differential changes can be detected. Notably, when MEI criteria were employed in the analysis of an archived data set involving polyarthritic subjects, the number of differentially expressed genes was expanded by sevenfold. More importantly, the observed changes in exon and intron variability with statistically significant false discovery rates could be traced to specific immune pathway gene networks. The application of MEI analysis provides a strategy for incorporating the significance of exon and intron variability and further developing the role of using both exons and intron sequencing counts in studies of gene regulatory processes.
RNA-Seq 表达分析目前主要依赖于外显子表达数据。内含子在翻译过程中的作用以及大量归因于内含子的 RNA-Seq 计数为同时考虑外显子和内含子数据提供了依据。我们在这里描述了一种通过研究单个基因内和样本间的外显子和内含子数据之间的关系,同时考虑到变异性和表达水平变化,来协调分析外显子和内含子数据的方法。这种对外显子和内含子数据的协调分析为区分仅外显子表达数据和组合外显子和内含子数据的特征提供了强有力的证据。我们提出的方法称为外显子和内含子的匹配变化特征分析(MEI),其优点是只需对标准 RNA-Seq 管道进行微小修改,就可以直接应用于现有存档数据。使用 MEI,我们证明了当数据在控制和病例条件下的变异性方面进行检查时,可以检测到新的差异变化。值得注意的是,当 MEI 标准应用于涉及多关节炎患者的存档数据集的分析时,差异表达基因的数量增加了七倍。更重要的是,观察到的外显子和内含子变异性的变化具有统计学意义的假发现率可以追溯到特定的免疫途径基因网络。MEI 分析的应用提供了一种策略,用于整合外显子和内含子变异性的重要性,并进一步发展在基因调控过程研究中使用外显子和内含子测序计数的作用。