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PNAS Plus: JUM is a computational method for comprehensive annotation-free analysis of alternative pre-mRNA splicing patterns

机译:PNAS Plus:JUM是一种计算方法可用于对其他前mRNA剪接模式进行全面的无注释分析

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摘要

Alternative pre-mRNA splicing (AS) greatly diversifies metazoan transcriptomes and proteomes and is crucial for gene regulation. Current computational analysis methods of AS from Illumina RNA-sequencing data rely on preannotated libraries of known spliced transcripts, which hinders AS analysis with poorly annotated genomes and can further mask unknown AS patterns. To address this critical bioinformatics problem, we developed a method called the junction usage model (JUM) that uses a bottom-up approach to identify, analyze, and quantitate global AS profiles without any prior transcriptome annotations. JUM accurately reports global AS changes in terms of the five conventional AS patterns and an additional “composite” category composed of inseparable combinations of conventional patterns. JUM stringently classifies the difficult and disease-relevant pattern of intron retention (IR), reducing the false positive rate of IR detection commonly seen in other annotation-based methods to near-negligible rates. When analyzing AS in RNA samples derived from Drosophila heads, human tumors, and human cell lines bearing cancer-associated splicing factor mutations, JUM consistently identified approximately twice the number of novel AS events missed by other methods. Computational simulations showed JUM exhibits a 1.2 to 4.8 times higher true positive rate at a fixed cutoff of 5% false discovery rate. In summary, JUM provides a framework and improved method that removes the necessity for transcriptome annotations and enables the detection, analysis, and quantification of AS patterns in complex metazoan transcriptomes with superior accuracy.
机译:替代性的前mRNA剪接(AS)大大简化了后生的转录组和蛋白质组,对于基因调控至关重要。当前从Illumina RNA测序数据进行AS的计算分析方法依赖于已知剪接转录本的预先注释文库,这阻碍了注释不佳的基因组的AS分析,并可能进一步掩盖未知的AS模式。为了解决这一关键的生物信息学问题,我们开发了一种称为结点使用模型(JUM)的方法,该方法使用一种自下而上的方法来识别,分析和定量全局AS概况,而无需任何先前的转录组注释。 JUM根据五个常规AS模式以及由常规模式的不可分割组合组成的附加“复合”类别,准确地报告了全局AS更改。 JUM对内含子保留(IR)的困难模式和与疾病相关的模式进行了严格分类,从而将其他基于注释的方法中常见的IR检测假阳性率降低到了几乎可以忽略的水平。在分析果蝇头部,人类肿瘤和带有癌症相关剪接因子突变的人类细胞系的RNA样品中的AS时,JUM始终确定其他方法遗漏的新型AS事件的数量大约是两倍。计算仿真表明,JUM在固定的5%错误发现率边界下,真实阳性率高出1.2到4.8倍。综上所述,JUM提供了一种框架和改进的方法,该方法消除了转录组注释的必要性,并能够以较高的准确性对复杂的后生转录组中的AS模式进行检测,分析和定量。

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