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Modeling Global and local Codon Bias with Deep Language Models

机译:使用深语模型建模全局和本地密码子偏见

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Codon bias, the usage patterns of synonymous codons for encoding a protein sequence as nucleotides, is a biological phenomenon that is not fully understood. Several methods exist to represent the codon bias of an organism: codon adaptation index (CAI) [1], individual codon usage (ICU), hidden stop codons (HSC) [2] and codon context (CC) [3]. These methods are often employed in the optimization of heterologous gene expression to increase the accuracy and rate of translation. They, however, have many shortcomings as they dont take into account the local and global context of a gene. We present a method for modeling global and local codon bias through deep language models that is more robust than current methods by providing more contextual information and long-range dependencies.
机译:密码子偏置,用于编码蛋白质序列作为核苷酸的同义密码子的使用模式,是一种未得到完全理解的生物现象。存在几种方法来表示有机体的密码子偏置:密码子适应索引(CAI)[1],单个密码子使用(ICU),隐藏的终止密码子(HSC)[2]和密码子上下文(CC)[3]。这些方法通常用于优化异源基因表达以提高翻译的准确性和速率。然而,它们具有许多缺点,因为它们不会考虑到基因的本地和全局背景。我们介绍了一种通过通过提供更多上下文信息和远程依赖性来通过比当前方法更强大的深语言模型来建立全局和本地密码子偏置的方法。

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