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Date of origin of the SARS coronavirus strains

BACKGROUND: A new respiratory infectious epidemic, severe acute respiratory syndrome (SARS), broke out and spread throughout the world. By now the putative pathogen of SARS has been identified as a new coronavirus, a single positive-strand RNA virus. RNA viruses commonly have a high rate of genetic...

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Autores principales: Lu, Hongchao, Zhao, Yi, Zhang, Jingfen, Wang, Yuelan, Li, Wei, Zhu, Xiaopeng, Sun, Shiwei, Xu, Jingyi, Ling, Lunjiang, Cai, Lun, Bu, Dongbo, Chen, Runsheng
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2004
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC516801/
https://www.ncbi.nlm.nih.gov/pubmed/15028113
http://dx.doi.org/10.1186/1471-2334-4-3
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author Lu, Hongchao
Zhao, Yi
Zhang, Jingfen
Wang, Yuelan
Li, Wei
Zhu, Xiaopeng
Sun, Shiwei
Xu, Jingyi
Ling, Lunjiang
Cai, Lun
Bu, Dongbo
Chen, Runsheng
author_facet Lu, Hongchao
Zhao, Yi
Zhang, Jingfen
Wang, Yuelan
Li, Wei
Zhu, Xiaopeng
Sun, Shiwei
Xu, Jingyi
Ling, Lunjiang
Cai, Lun
Bu, Dongbo
Chen, Runsheng
author_sort Lu, Hongchao
collection PubMed
description BACKGROUND: A new respiratory infectious epidemic, severe acute respiratory syndrome (SARS), broke out and spread throughout the world. By now the putative pathogen of SARS has been identified as a new coronavirus, a single positive-strand RNA virus. RNA viruses commonly have a high rate of genetic mutation. It is therefore important to know the mutation rate of the SARS coronavirus as it spreads through the population. Moreover, finding a date for the last common ancestor of SARS coronavirus strains would be useful for understanding the circumstances surrounding the emergence of the SARS pandemic and the rate at which SARS coronavirus diverge. METHODS: We propose a mathematical model to estimate the evolution rate of the SARS coronavirus genome and the time of the last common ancestor of the sequenced SARS strains. Under some common assumptions and justifiable simplifications, a few simple equations incorporating the evolution rate (K) and time of the last common ancestor of the strains (T(0)) can be deduced. We then implemented the least square method to estimate K and T(0 )from the dataset of sequences and corresponding times. Monte Carlo stimulation was employed to discuss the results. RESULTS: Based on 6 strains with accurate dates of host death, we estimated the time of the last common ancestor to be about August or September 2002, and the evolution rate to be about 0.16 base/day, that is, the SARS coronavirus would on average change a base every seven days. We validated our method by dividing the strains into two groups, which coincided with the results from comparative genomics. CONCLUSION: The applied method is simple to implement and avoid the difficulty and subjectivity of choosing the root of phylogenetic tree. Based on 6 strains with accurate date of host death, we estimated a time of the last common ancestor, which is coincident with epidemic investigations, and an evolution rate in the same range as that reported for the HIV-1 virus.
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spelling pubmed-5168012004-09-14 Date of origin of the SARS coronavirus strains Lu, Hongchao Zhao, Yi Zhang, Jingfen Wang, Yuelan Li, Wei Zhu, Xiaopeng Sun, Shiwei Xu, Jingyi Ling, Lunjiang Cai, Lun Bu, Dongbo Chen, Runsheng BMC Infect Dis Research Article BACKGROUND: A new respiratory infectious epidemic, severe acute respiratory syndrome (SARS), broke out and spread throughout the world. By now the putative pathogen of SARS has been identified as a new coronavirus, a single positive-strand RNA virus. RNA viruses commonly have a high rate of genetic mutation. It is therefore important to know the mutation rate of the SARS coronavirus as it spreads through the population. Moreover, finding a date for the last common ancestor of SARS coronavirus strains would be useful for understanding the circumstances surrounding the emergence of the SARS pandemic and the rate at which SARS coronavirus diverge. METHODS: We propose a mathematical model to estimate the evolution rate of the SARS coronavirus genome and the time of the last common ancestor of the sequenced SARS strains. Under some common assumptions and justifiable simplifications, a few simple equations incorporating the evolution rate (K) and time of the last common ancestor of the strains (T(0)) can be deduced. We then implemented the least square method to estimate K and T(0 )from the dataset of sequences and corresponding times. Monte Carlo stimulation was employed to discuss the results. RESULTS: Based on 6 strains with accurate dates of host death, we estimated the time of the last common ancestor to be about August or September 2002, and the evolution rate to be about 0.16 base/day, that is, the SARS coronavirus would on average change a base every seven days. We validated our method by dividing the strains into two groups, which coincided with the results from comparative genomics. CONCLUSION: The applied method is simple to implement and avoid the difficulty and subjectivity of choosing the root of phylogenetic tree. Based on 6 strains with accurate date of host death, we estimated a time of the last common ancestor, which is coincident with epidemic investigations, and an evolution rate in the same range as that reported for the HIV-1 virus. BioMed Central 2004-02-06 /pmc/articles/PMC516801/ /pubmed/15028113 http://dx.doi.org/10.1186/1471-2334-4-3 Text en Copyright © 2004 Lu et al; licensee BioMed Central Ltd. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose, provided this notice is preserved along with the article's original URL.
spellingShingle Research Article
Lu, Hongchao
Zhao, Yi
Zhang, Jingfen
Wang, Yuelan
Li, Wei
Zhu, Xiaopeng
Sun, Shiwei
Xu, Jingyi
Ling, Lunjiang
Cai, Lun
Bu, Dongbo
Chen, Runsheng
Date of origin of the SARS coronavirus strains
title Date of origin of the SARS coronavirus strains
title_full Date of origin of the SARS coronavirus strains
title_fullStr Date of origin of the SARS coronavirus strains
title_full_unstemmed Date of origin of the SARS coronavirus strains
title_short Date of origin of the SARS coronavirus strains
title_sort date of origin of the sars coronavirus strains
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC516801/
https://www.ncbi.nlm.nih.gov/pubmed/15028113
http://dx.doi.org/10.1186/1471-2334-4-3
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