Guide-Guard:CRISPR应用中的脱靶效应预测 / Guide-Guard: Off-Target Predicting in CRISPR Applications
1️⃣ 一句话总结
这篇论文提出了一种名为Guide-Guard的机器学习方法,能够以84%的准确率预测CRISPR基因编辑过程中给定引导RNA(gRNA)可能产生的脱靶效应,帮助研究人员更安全、高效地使用这项技术。
With the introduction of cyber-physical genome sequencing and editing technologies, such as CRISPR, researchers can more easily access tools to investigate and create remedies for a variety of topics in genetics and health science (e.g. agriculture and medicine). As the field advances and grows, new concerns present themselves in the ability to predict the off-target behavior. In this work, we explore the underlying biological and chemical model from a data driven perspective. Additionally, we present a machine learning based solution named \textit{Guide-Guard} to predict the behavior of the system given a gRNA in the CRISPR gene-editing process with 84\% accuracy. This solution is able to be trained on multiple different genes at the same time while retaining accuracy.
Guide-Guard:CRISPR应用中的脱靶效应预测 / Guide-Guard: Off-Target Predicting in CRISPR Applications
这篇论文提出了一种名为Guide-Guard的机器学习方法,能够以84%的准确率预测CRISPR基因编辑过程中给定引导RNA(gRNA)可能产生的脱靶效应,帮助研究人员更安全、高效地使用这项技术。
源自 arXiv: 2602.16327