Optimization of analytical parameters for inferring relationships among Escherichia coli isolates from repetitive-element PCR by maximizing correspondence with multilocus sequence typing data
被引:25
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作者:
Goldberg, Tony L.
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机构:Univ Illinois, Dept Pathobiol, Urbana, IL 61801 USA
Goldberg, Tony L.
Gillespie, Thomas R.
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机构:Univ Illinois, Dept Pathobiol, Urbana, IL 61801 USA
Gillespie, Thomas R.
Singer, Randall S.
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机构:Univ Illinois, Dept Pathobiol, Urbana, IL 61801 USA
Singer, Randall S.
机构:
[1] Univ Illinois, Dept Pathobiol, Urbana, IL 61801 USA
[2] Univ Illinois, Dept Anthropol, Urbana, IL 61801 USA
[3] Univ Minnesota, Dept Vet Biomed Sci, St Paul, MN 55108 USA
Repetitive-element PCR (rep-PCR) is a method for genotyping bacteria based on the selective amplification of repetitive genetic elements dispersed throughout bacterial chromosomes. The method has great potential for large-scale epidemiological studies because of its speed and simplicity; however, objective guidelines for inferring relationships among bacterial isolates from rep-PCR data are lacking. We used multilocus sequence typing (MLST) as a "gold standard" to optimize the analytical parameters for inferring relationships among Escherichia coli isolates from rep-PCR data. We chose 12 isolates from a large database to represent a wide range of pairwise genetic distances, based on the initial evaluation of their rep-PCR fingerprints. We conducted MLST with these same isolates and systematically varied the analytical parameters to maximize the correspondence between the relationships inferred from rep-PCR and those inferred from MLST. Methods that compared the shapes of densitometric profiles ("curve-based" methods) yielded consistently higher correspondence values between data types than did methods that calculated indices of similarity based on shared and different bands (maximum correspondences of 84.5% and 80.3%, respectively). Curve-based methods were also markedly more robust in accommodating variations in user-specified analytical parameter values than were "band-sharing coefficient" methods, and they enhanced the reproducibility of rep-PCR. Phylogenetic analyses of rep-PCR data yielded trees with high topological correspondence to trees based on MLST and high statistical support for major clades. These results indicate that rep-PCR yields accurate information for inferring relationships among E. coli isolates and that accuracy can be enhanced with the use of analytical methods that consider the shapes of densitometric profiles.