Literature DB >> 33431415

Analysis of Multidrug Resistance in Staphylococcus aureus with a Machine Learning-Generated Antibiogram.

Casey L Cazer1, Lars F Westblade2,3, Matthew S Simon3, Reed Magleby3, Mariana Castanheira4, James G Booth5, Stephen G Jenkins2,3, Yrjö T Gröhn6.   

Abstract

Multidrug resistance (MDR) surveillance consists of reporting MDR prevalence and MDR phenotypes. Detailed knowledge of the specific associations underlying MDR patterns can allow antimicrobial stewardship programs to accurately identify clinically relevant resistance patterns. We applied machine learning and graphical networks to quantify and visualize associations between resistance traits in a set of 1,091 Staphylococcus aureus isolates collected from one New York hospital between 2008 and 2018. Antimicrobial susceptibility testing was performed using reference broth microdilution. The isolates were analyzed by year, methicillin susceptibility, and infection site. Association mining was used to identify resistance patterns that consisted of two or more individual antimicrobial resistance (AMR) traits and quantify the association among the individual resistance traits in each pattern. The resistance patterns captured the majority of the most common MDR phenotypes and reflected previously identified pairwise relationships between AMR traits in S. aureus Associations between β-lactams and other antimicrobial classes (macrolides, lincosamides, and fluoroquinolones) were common, although the strength of the association among these antimicrobial classes varied by infection site and by methicillin susceptibility. Association mining identified associations between clinically important AMR traits, which could be further investigated for evidence of resistance coselection. For example, in skin and skin structure infections, clindamycin and tetracycline resistance occurred together 1.5 times more often than would be expected if they were independent from one another. Association mining efficiently discovered and quantified associations among resistance traits, allowing these associations to be compared between relevant subsets of isolates to identify and track clinically relevant MDR.
Copyright © 2021 American Society for Microbiology.

Entities:  

Keywords:  Staphylococcus aureus; antibiogram; antibiotic resistance; association mining; machine learning; multidrug resistance

Year:  2021        PMID: 33431415      PMCID: PMC8097487          DOI: 10.1128/AAC.02132-20

Source DB:  PubMed          Journal:  Antimicrob Agents Chemother        ISSN: 0066-4804            Impact factor:   5.191


  27 in total

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Authors:  Lili Ma; Fu-Chiang Tsui; William R Hogan; Michael M Wagner; Haobo Ma
Journal:  AMIA Annu Symp Proc       Date:  2003

Review 2.  Analysis and presentation of cumulative antibiograms: a new consensus guideline from the Clinical and Laboratory Standards Institute.

Authors:  Janet F Hindler; John Stelling
Journal:  Clin Infect Dis       Date:  2007-02-08       Impact factor: 9.079

3.  Association rules and data mining in hospital infection control and public health surveillance.

Authors:  S E Brossette; A P Sprague; J M Hardin; K B Waites; W T Jones; S A Moser
Journal:  J Am Med Inform Assoc       Date:  1998 Jul-Aug       Impact factor: 4.497

4.  Antimicrobial resistance trends among canine Escherichia coli isolates obtained from clinical samples in the northeastern USA, 2004-2011.

Authors:  Kevin J Cummings; Victor A Aprea; Craig Altier
Journal:  Can Vet J       Date:  2015-04       Impact factor: 1.008

Review 5.  Staphylococcus aureus infections: epidemiology, pathophysiology, clinical manifestations, and management.

Authors:  Steven Y C Tong; Joshua S Davis; Emily Eichenberger; Thomas L Holland; Vance G Fowler
Journal:  Clin Microbiol Rev       Date:  2015-07       Impact factor: 26.132

Review 6.  Mobile genetic elements of Staphylococcus aureus.

Authors:  Natalia Malachowa; Frank R DeLeo
Journal:  Cell Mol Life Sci       Date:  2010-07-29       Impact factor: 9.261

Review 7.  Collateral sensitivity of antibiotic-resistant microbes.

Authors:  Csaba Pál; Balázs Papp; Viktória Lázár
Journal:  Trends Microbiol       Date:  2015-03-25       Impact factor: 17.079

8.  The use of machine learning methodologies to analyse antibiotic and biocide susceptibility in Staphylococcus aureus.

Authors:  Joana Rosado Coelho; João André Carriço; Daniel Knight; Jose-Luis Martínez; Ian Morrissey; Marco Rinaldo Oggioni; Ana Teresa Freitas
Journal:  PLoS One       Date:  2013-02-19       Impact factor: 3.240

9.  Methicillin-susceptible Staphylococcus aureus ST398, New York and New Jersey, USA.

Authors:  José R Mediavilla; Liang Chen; Anne-Catrin Uhlemann; Blake M Hanson; Marnie Rosenthal; Kathryn Stanak; Brian Koll; Bettina C Fries; Donna Armellino; Mary Ellen Schilling; Don Weiss; Tara C Smith; Franklin D Lowy; Barry N Kreiswirth
Journal:  Emerg Infect Dis       Date:  2012-04       Impact factor: 6.883

10.  Markov Networks of Collateral Resistance: National Antimicrobial Resistance Monitoring System Surveillance Results from Escherichia coli Isolates, 2004-2012.

Authors:  William J Love; Kelson A Zawack; James G Booth; Yrjo T Grӧhn; Cristina Lanzas
Journal:  PLoS Comput Biol       Date:  2016-11-16       Impact factor: 4.475

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