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TITER: predicting translation initiation sites by deep learning

机译:TITER:通过深度学习预测翻译起始位点

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摘要

MotivationTranslation initiation is a key step in the regulation of gene expression. In addition to the annotated translation initiation sites (TISs), the translation process may also start at multiple alternative TISs (including both AUG and non-AUG codons), which makes it challenging to predict TISs and study the underlying regulatory mechanisms. Meanwhile, the advent of several high-throughput sequencing techniques for profiling initiating ribosomes at single-nucleotide resolution, e.g. GTI-seq and QTI-seq, provides abundant data for systematically studying the general principles of translation initiation and the development of computational method for TIS identification.
机译:动机翻译起始是调节基因表达的关键步骤。除了带注释的翻译起始位点(TIS),翻译过程也可能始于多个替代性TIS(包括AUG和非AUG密码子),这给预测TIS和研究潜在的调控机制带来了挑战。同时,以单核苷酸分辨率对起始核糖体进行谱分析的几种高通量测序技术的问世,例如GTI-seq和QTI-seq为系统地研究翻译起始的一般原理以及TIS识别的计算方法的发展提供了丰富的数据。

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