junctionCounts:全面的替代剪接分析和预测同工酶对编码序列的影响。

IF 4 Q1 GENETICS & HEREDITY
NAR Genomics and Bioinformatics Pub Date : 2024-08-09 eCollection Date: 2024-09-01 DOI:10.1093/nargab/lqae093
Alexander J Ritter, Andrew Wallace, Neda Ronaghi, Jeremy R Sanford
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引用次数: 0

摘要

替代剪接(AS)正在成为复杂生物过程的一个重要调控过程。因此,转录组研究通常涉及替代加工事件的鉴定和量化,但预测替代事件相对包含性变化的功能性后果的需求在很大程度上仍未得到解决。针对前一项任务有许多工具,尽管每种工具都受限于自己的事件类型定义。用于后一项任务的工具很少,而且每种工具都有很大的局限性。为了解决这些问题,我们开发了 junctionCounts,它能捕获简单和复杂的成对 AS 事件,并通过 RNA-seq 数据中简单的外显子-外显子和外显子-内含子连接读数对其进行量化,在灵敏度、误发现率和量化准确性方面在同类工具中具有竞争力。它的搭档工具 cdsInsertion 通过对注释的起始密码子进行硅翻译来识别转录本编码序列(CDS)信息,包括是否存在过早终止密码子。最后,findSwitchEvents 将 AS 事件与 CDS 信息连接起来,预测单个事件对同工酶水平 CDS 的影响。我们利用 junctionCounts 描述了四种灵长类动物神经元分化过程中的剪接动态和 NMD 调控,证明了 junctionCounts 能够稳健地描述各种生物体中的 AS,并预测其对 mRNA 异构体命运的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
junctionCounts: comprehensive alternative splicing analysis and prediction of isoform-level impacts to the coding sequence.

Alternative splicing (AS) is emerging as an important regulatory process for complex biological processes. Transcriptomic studies therefore commonly involve the identification and quantification of alternative processing events, but the need for predicting the functional consequences of changes to the relative inclusion of alternative events remains largely unaddressed. Many tools exist for the former task, albeit each constrained to its own event type definitions. Few tools exist for the latter task; each with significant limitations. To address these issues we developed junctionCounts, which captures both simple and complex pairwise AS events and quantifies them with straightforward exon-exon and exon-intron junction reads in RNA-seq data, performing competitively among similar tools in terms of sensitivity, false discovery rate and quantification accuracy. Its partner utility, cdsInsertion, identifies transcript coding sequence (CDS) information via in silico translation from annotated start codons, including the presence of premature termination codons. Finally, findSwitchEvents connects AS events with CDS information to predict the impact of individual events to the isoform-level CDS. We used junctionCounts to characterize splicing dynamics and NMD regulation during neuronal differentiation across four primates, demonstrating junctionCounts' capacity to robustly characterize AS in a variety of organisms and to predict its effect on mRNA isoform fate.

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来源期刊
CiteScore
8.00
自引率
2.20%
发文量
95
审稿时长
15 weeks
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