Affiliation:
1. School of Biological Sciences and Engineering, Yachay Tech University, Urcuquí 100119, Ecuador
2. Departamento de Electrónica, Universidad Simon Bolivar, Caracas 1080, Venezuela
3. MIND Research Group, Model Intelligent Networks Development, Urcuquí 100119, Ecuador
Abstract
Over the past decade, genetic engineering has witnessed a revolution with the emergence of a relatively new genetic editing tool based on RNA-guided nucleases: the CRISPR/Cas9 system. Since the first report in 1987 and characterization in 2007 as a bacterial defense mechanism, this system has garnered immense interest and research attention. CRISPR systems provide immunity to bacteria against invading genetic material; however, with specific modifications in sequence and structure, it becomes a precise editing system capable of modifying the genomes of a wide range of organisms. The refinement of these modifications encompasses diverse approaches, including the development of more accurate nucleases, understanding of the cellular context and epigenetic conditions, and the re-designing guide RNAs (gRNAs). Considering the critical importance of the correct performance of CRISPR/Cas9 systems, our scope will emphasize the latter approach. Hence, we present an overview of the past and the most recent guide RNA web-based design tools, highlighting the evolution of their computational architecture and gRNA characteristics over the years. Our study explains computational approaches that use machine learning techniques, neural networks, and gRNA/target interactions data to enable predictions and classifications. This review could open the door to a dynamic community that uses up-to-date algorithms to optimize and create promising gRNAs, suitable for modern CRISPR/Cas9 engineering.
Subject
Molecular Biology,Biochemistry
Reference98 articles.
1. Niazi, S.K. (2006). Handbook of Biogeneric Therapeutic Proteins, Taylor & Francis Group.
2. The new frontier of genome engineering with CRISPR-Cas9;Doudna;Science,2014
3. Recent advances in genome editing using CRISPR/Cas9;Ding;Front. Plant Sci.,2016
4. Weiskittel, T.M., Correia, C., Yu, G.T., Ung, C.Y., Kaufmann, S.H., Billadeau, D.D., and Li, H. (2021). The trifecta of single-cell, systems-biology, and machine-learning approaches. Genes, 12.
5. Hudson, I.L. (2021). Artificial Neural Networks, Springer.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献