Complete genomes of two clinical <i>Staphylococcus aureus</i> strains: Evidence for the rapid evolution of virulence and drug resistance

Matthew T. G. Holden(Wellcome Sanger Institute), Edward J. Feil(Wellcome Sanger Institute), Jodi A. Lindsay(Wellcome Sanger Institute), Sharon J. Peacock(Wellcome Sanger Institute), Nicholas Day(Wellcome Sanger Institute), Mark C. Enright(Wellcome Sanger Institute), Tim J. Foster(Wellcome Sanger Institute), Catrin E. Moore(Wellcome Sanger Institute), Laurence D. Hurst(Wellcome Sanger Institute), Rebecca Atkin(Wellcome Sanger Institute), Andrew Barron(Wellcome Sanger Institute), Nathalie Bason(Wellcome Sanger Institute), Stephen D. Bentley(Wellcome Sanger Institute), C. Chillingworth(Wellcome Sanger Institute), Tracey Chillingworth(Wellcome Sanger Institute), Carol Churcher(Wellcome Sanger Institute), Louise Clark(Wellcome Sanger Institute), Craig Corton(Wellcome Sanger Institute), Ann Cronin(Wellcome Sanger Institute), Jon Doggett(Wellcome Sanger Institute), Linda Dowd(Wellcome Sanger Institute), Theresa Feltwell(Wellcome Sanger Institute), Zahra Hance(Wellcome Sanger Institute), Barbara Harris(Wellcome Sanger Institute), Heidi Hauser(Wellcome Sanger Institute), S. Holroyd(Wellcome Sanger Institute), Kay Jagels(Wellcome Sanger Institute), Keith James(Wellcome Sanger Institute), Nicola Lennard(Wellcome Sanger Institute), Alexandra Line(Wellcome Sanger Institute), Rebecca Mayes(Wellcome Sanger Institute), Sharon Moule(Wellcome Sanger Institute), Karen Mungall(Wellcome Sanger Institute), Douglas Ormond(Wellcome Sanger Institute), Michael A. Quail(Wellcome Sanger Institute), Ester Rabbinowitsch(Wellcome Sanger Institute), Kim Rutherford(Wellcome Sanger Institute), Mandy Sanders(Wellcome Sanger Institute), Sarah Sharp(Wellcome Sanger Institute), Mark Simmonds(Wellcome Sanger Institute), Kim Stevens(Wellcome Sanger Institute), Sally Whitehead(Wellcome Sanger Institute), Bart Barrell(Wellcome Sanger Institute), Brian G. Spratt(Wellcome Sanger Institute), Julian Parkhill(Wellcome Sanger Institute)
Proceedings of the National Academy of Sciences
June 22, 2004
Cited by 901Open Access
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Abstract

Staphylococcus aureus is an important nosocomial and community-acquired pathogen. Its genetic plasticity has facilitated the evolution of many virulent and drug-resistant strains, presenting a major and constantly changing clinical challenge. We sequenced the approximately 2.8-Mbp genomes of two disease-causing S. aureus strains isolated from distinct clinical settings: a recent hospital-acquired representative of the epidemic methicillin-resistant S. aureus EMRSA-16 clone (MRSA252), a clinically important and globally prevalent lineage; and a representative of an invasive community-acquired methicillin-susceptible S. aureus clone (MSSA476). A comparative-genomics approach was used to explore the mechanisms of evolution of clinically important S. aureus genomes and to identify regions affecting virulence and drug resistance. The genome sequences of MRSA252 and MSSA476 have a well conserved core region but differ markedly in their accessory genetic elements. MRSA252 is the most genetically diverse S. aureus strain sequenced to date: approximately 6% of the genome is novel compared with other published genomes, and it contains several unique genetic elements. MSSA476 is methicillin-susceptible, but it contains a novel Staphylococcal chromosomal cassette (SCC) mec-like element (designated SCC(476)), which is integrated at the same site on the chromosome as SCCmec elements in MRSA strains but encodes a putative fusidic acid resistance protein. The crucial role that accessory elements play in the rapid evolution of S. aureus is clearly illustrated by comparing the MSSA476 genome with that of an extremely closely related MRSA community-acquired strain; the differential distribution of large mobile elements carrying virulence and drug-resistance determinants may be responsible for the clinically important phenotypic differences in these strains.


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