NeoCoV Is Closer to MERS-CoV than SARS-CoV

Author:

Hassan Mohamed M1ORCID,Hussain Mohamed A2,Kambal Sumaya1,Elshikh Ahmed A3,Gendeel Osama R4,Ahmed Siddig A4,Altayeb Rami A4,Muhajir Abdelhafiz MA4,Mohamed Sofia B1ORCID

Affiliation:

1. Bioinformatics and Biostatistics Department, National University Biomedical Research Institute, National University, Khartoum, Sudan

2. Department of Pharmaceutical Microbiology, International University of Africa, Khartoum, Sudan

3. Department of Microbiology, Faculty of Pure and Applied Sciences, International University of Africa, Khartoum, Sudan

4. Faculty of Science and Technology, Omdurman Islamic University, Omdurman, Sudan

Abstract

Recently, Coronavirus has been given considerable attention from the biomedical community based on the emergence and isolation of a deadly coronavirus infecting human. To understand the behavior of the newly emerging MERS-CoV requires knowledge at different levels (epidemiologic, antigenic, and pathogenic), and this knowledge can be generated from the most related viruses. In this study, we aimed to compare between 3 species of Coronavirus, namely Middle East Respiratory Syndrome (MERS-CoV), Severe Acute Respiratory Syndrome (SARS-CoV), and NeoCoV regarding whole genomes and 6 similar proteins (E, M, N, S, ORF1a, and ORF1ab) using different bioinformatics tools to provide a better understanding of the relationship between the 3 viruses at the nucleotide and amino acids levels. All sequences have been retrieved from National Center for Biotechnology Information (NCBI). Regards to target genomes’ phylogenetic analysis showed that MERS and SARS-CoVs were closer to each other compared with NeoCoV, and the last has the longest relative time. We found that all phylogenetic methods in addition to all parameters (physical and chemical properties of amino acids such as the number of amino acid, molecular weight, atomic composition, theoretical pI, and structural formula) indicated that NeoCoV proteins were the most related to MERS-CoV one. All phylogenetic trees (by both maximum-likelihood and neighbor-joining methods) indicated that NeoCoV proteins have less evolutionary changes except for ORF1a by just maximum-likelihood method. Our results indicated high similarity between viral structural proteins which are responsible for viral infectivity; therefore, we expect that NeoCoV sooner may appear in human-related infection.

Publisher

SAGE Publications

Subject

General Medicine

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