RNA剪接
计算生物学
序列(生物学)
核糖核酸
背景(考古学)
选择性拼接
剪接
生物
遗传学
基因
人工智能
计算机科学
信使核糖核酸
古生物学
作者
Ken Chen,Yue Zhou,Maolin Ding,Yu Wang,Zhixiang Ren,Yuedong Yang
标识
DOI:10.1101/2023.01.31.526427
摘要
ABSTRACT RNA splicing is an important post-transcriptional process of gene expression in eukaryotic cells. Predicting RNA splicing from primary sequences can facilitate the interpretation of genomic variants. In this study, we developed a novel self-supervised pre-trained language model, SpliceBERT, to improve sequence-based RNA splicing prediction. Pre-training on pre-mRNA sequences from vertebrates enables SpliceBERT to capture evolutionary conservation information and characterize the unique property of splice sites. SpliceBERT also improves zero-shot prediction of variant effects on splicing by considering sequence context information, and achieves superior performance for predicting branchpoint in the human genome and splice sites across species. Our study highlighted the importance of pre-training genomic language models on a diverse range of species and suggested that pre-trained language models were promising for deciphering the sequence logic of RNA splicing.
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