A study of genetic variants of SARS-CoV-2 using bioinformatics tools

GABJ Pub Date : 2022-01-01 DOI:10.46325/gabj.v6i1.206
Louiza Derouiche, Yasmine Benzayed, Maroua Belmihoub, Fatma Derouiche
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Abstract

The severe acute respiratory syndrome coronavirus 2, that is commonly known as SARS-CoV-2, appeared for the first time in December 2019 in the City of Wuhan (China) and has since affected most countries around the world, hence becoming a major global threat to all humans. The present study was carried out for the purpose of better understanding the molecular structure of this virus. It is based on the inventory and processing of all DNA sequences that have been published to date on the general biological data storage bank GenBank. In order to carry out this study, it was deemed necessary to use various bioinformatics tools such as MEGA 11 software for building the phylogenetic trees, DnaSP 6 for identifying haplotypes, NetWork 10 for determining phylogenetic networks, and DAMBE 7 to perform statistical analyses which were then supplemented by the new DnBA program that was developed in the present work. These analyses allowed us to classify the 11 SARS-CoV-2 genes under study into 3three categories; first, the most variable genes, such as ORF1ab, ORF3a, N, and S, next, the less variable genes, such as ORF8, ORF10, ORF7a, and ORF7b, and then the unvaried genes, such as ORF6, E, and  M.
利用生物信息学工具研究SARS-CoV-2的遗传变异
严重急性呼吸系统综合征冠状病毒2,俗称SARS-CoV-2,于2019年12月首次在中国武汉市出现,此后影响了世界上大多数国家,成为对所有人类的重大全球威胁。本研究的目的是为了更好地了解这种病毒的分子结构。它基于迄今为止在通用生物数据存储银行GenBank上发表的所有DNA序列的清单和处理。为了开展这项研究,我们认为有必要使用各种生物信息学工具,如MEGA 11软件用于构建系统发育树,DnaSP 6用于识别单倍型,NetWork 10用于确定系统发育网络,DAMBE 7用于进行统计分析,然后由本工作开发的新DnBA程序进行补充。这些分析使我们能够将正在研究的11个SARS-CoV-2基因分为33类;首先是变异最多的基因,如ORF1ab、ORF3a、N、S,其次是变异较少的基因,如ORF8、ORF10、ORF7a、ORF7b,然后是不变的基因,如ORF6、E、M。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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