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A machine learning approach for predicting CRISPR-Cas9 cleavage efficiencies and patterns underlying its mechanism of action

机译:一种预测CRISPR-Cas9切割效率和作用机理的机器学习方法

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摘要

The adaptation of the CRISPR-Cas9 system as a genome editing technique has generated much excitement in recent years owing to its ability to manipulate targeted genes and genomic regions that are complementary to a programmed single guide RNA (sgRNA). However, the efficacy of a specific sgRNA is not uniquely defined by exact sequence homology to the target site, thus unintended off-targets might additionally be cleaved. Current methods for sgRNA design are mainly concerned with predicting off-targets for a given sgRNA using basic sequence features and employ elementary rules for ranking possible sgRNAs. Here, we introduce CRISTA (CRISPR Target Assessment), a novel algorithm within the machine learning framework that determines the propensity of a genomic site to be cleaved by a given sgRNA. We show that the predictions made with CRISTA are more accurate than other available methodologies. We further demonstrate that the occurrence of bulges is not a rare phenomenon and should be accounted for in the prediction process. Beyond predicting cleavage efficiencies, the learning process provides inferences regarding patterns that underlie the mechanism of action of the CRISPR-Cas9 system. We discover that attributes that describe the spatial structure and rigidity of the entire genomic site as well as those surrounding the PAM region are a major component of the prediction capabilities.
机译:CRISPR-Cas9系统作为一种基因组编辑技术的改编在最近几年引起了极大的兴趣,这是因为它具有操纵与编程的单向导RNA(sgRNA)互补的靶向基因和基因组区域的能力。但是,特异性sgRNA的功效并不是由与靶位点的确切序列同源性唯一定义的,因此可能会切割出意想不到的脱靶。 sgRNA设计的当前方法主要涉及使用基本序列特征预测给定sgRNA的脱靶,并采用基本规则对可能的sgRNA进行排名。在这里,我们介绍CRISTA(CRISPR目标评估),这是一种机器学习框架内的新颖算法,可确定给定sgRNA切割的基因组位点的倾向。我们表明,使用CRISTA进行的预测比其他可用方法更准确。我们进一步证明凸起的发生并不是罕见的现象,应该在预测过程中加以考虑。除了预测切割效率外,学习过程还提供了有关模式的推论,这些模式是CRISPR-Cas9系统作用机理的基础。我们发现,描述整个基因组位点以及PAM区域周围的空间结构和刚度的属性是预测功能的主要组成部分。

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