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JEDI: circular RNA prediction based on junction encoders and deep interaction among splice sites

剪接 RNA剪接 计算生物学 环状RNA 编码器 计算机科学 核糖核酸 人工智能 生物 遗传学 基因 操作系统
作者
Jyun‐Yu Jiang,Chelsea J.‐T. Ju,Junheng Hao,Muhao Chen,Wei Wang
出处
期刊:Bioinformatics [Oxford University Press]
卷期号:37 (Supplement_1): i289-i298 被引量:17
标识
DOI:10.1093/bioinformatics/btab288
摘要

Circular RNA (circRNA) is a novel class of long non-coding RNAs that have been broadly discovered in the eukaryotic transcriptome. The circular structure arises from a non-canonical splicing process, where the donor site backspliced to an upstream acceptor site. These circRNA sequences are conserved across species. More importantly, rising evidence suggests their vital roles in gene regulation and association with diseases. As the fundamental effort toward elucidating their functions and mechanisms, several computational methods have been proposed to predict the circular structure from the primary sequence. Recently, advanced computational methods leverage deep learning to capture the relevant patterns from RNA sequences and model their interactions to facilitate the prediction. However, these methods fail to fully explore positional information of splice junctions and their deep interaction.We present a robust end-to-end framework, Junction Encoder with Deep Interaction (JEDI), for circRNA prediction using only nucleotide sequences. JEDI first leverages the attention mechanism to encode each junction site based on deep bidirectional recurrent neural networks and then presents the novel cross-attention layer to model deep interaction among these sites for backsplicing. Finally, JEDI can not only predict circRNAs but also interpret relationships among splice sites to discover backsplicing hotspots within a gene region. Experiments demonstrate JEDI significantly outperforms state-of-the-art approaches in circRNA prediction on both isoform level and gene level. Moreover, JEDI also shows promising results on zero-shot backsplicing discovery, where none of the existing approaches can achieve.The implementation of our framework is available at https://github.com/hallogameboy/JEDI.Supplementary data are available at Bioinformatics online.

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