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Statistical detection of geographic clusters of resistant Escherichia coli in a regional network with WHONET and SaTScan.

Authors :
Park, Rachel
Park, Rachel
O'Brien, Thomas F
Huang, Susan S
Baker, Meghan A
Yokoe, Deborah S
Kulldorff, Martin
Barrett, Craig
Swift, Jamie
Stelling, John
Centers for Disease Control and Prevention Epicenters Program
Park, Rachel
Park, Rachel
O'Brien, Thomas F
Huang, Susan S
Baker, Meghan A
Yokoe, Deborah S
Kulldorff, Martin
Barrett, Craig
Swift, Jamie
Stelling, John
Centers for Disease Control and Prevention Epicenters Program
Source :
Expert review of anti-infective therapy; vol 14, iss 11, 1097-1107; 1478-7210
Publication Year :
2016

Abstract

BackgroundWhile antimicrobial resistance threatens the prevention, treatment, and control of infectious diseases, systematic analysis of routine microbiology laboratory test results worldwide can alert new threats and promote timely response. This study explores statistical algorithms for recognizing geographic clustering of multi-resistant microbes within a healthcare network and monitoring the dissemination of new strains over time.MethodsEscherichia coli antimicrobial susceptibility data from a three-year period stored in WHONET were analyzed across ten facilities in a healthcare network utilizing SaTScan's spatial multinomial model with two models for defining geographic proximity. We explored geographic clustering of multi-resistance phenotypes within the network and changes in clustering over time.ResultsGeographic clustering identified from both latitude/longitude and non-parametric facility groupings geographic models were similar, while the latter was offers greater flexibility and generalizability. Iterative application of the clustering algorithms suggested the possible recognition of the initial appearance of invasive E. coli ST131 in the clinical database of a single hospital and subsequent dissemination to others.ConclusionSystematic analysis of routine antimicrobial resistance susceptibility test results supports the recognition of geographic clustering of microbial phenotypic subpopulations with WHONET and SaTScan, and iterative application of these algorithms can detect the initial appearance in and dissemination across a region prompting early investigation, response, and containment measures.

Details

Database :
OAIster
Journal :
Expert review of anti-infective therapy; vol 14, iss 11, 1097-1107; 1478-7210
Notes :
application/pdf, Expert review of anti-infective therapy vol 14, iss 11, 1097-1107 1478-7210
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287350130
Document Type :
Electronic Resource