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  4. A Designed Experiments Approach to Optimizing MALDI-TOF MS Spectrum Processing Parameters Enhances Detection of Antibiotic Resistance in Campylobacter Jejuni
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A Designed Experiments Approach to Optimizing MALDI-TOF MS Spectrum Processing Parameters Enhances Detection of Antibiotic Resistance in Campylobacter Jejuni

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Description

MALDI-TOF MS has been utilized as a reliable and rapid tool for microbial fingerprinting at the genus and species levels. Recently, there has been keen interest in using MALDI-TOF MS beyond the genus and species levels to rapidly identify antibiotic resistant strains of bacteria. The purpose of this study was to enhance strain level resolution for Campylobacter jejuni through the optimization of spectrum processing parameters using a series of designed experiments. A collection of 172 strains of C. jejuni were collected from Luxembourg, New Zealand, North America, and South Africa, consisting of four groups of antibiotic resistant isolates. The groups included: (1) 65 strains resistant to cefoperazone (2) 26 resistant to cefoperazone and beta-lactams (3) 5 strains resistant to cefoperazone, beta-lactams, and tetracycline, and (4) 76 strains resistant to cefoperazone, teicoplanin, amphotericin, B and cephalothin.

Initially, a model set of 16 strains (three biological replicates and three technical replicates per isolate, yielding a total of 144 spectra) of C. jejuni was subjected to each designed experiment to enhance detection of antibiotic resistance. The most optimal parameters were applied to the larger collection of 172 isolates (two biological replicates and three technical replicates per isolate, yielding a total of 1,031 spectra). We observed an increase in antibiotic resistance detection whenever either a curve based similarity coefficient (Pearson or ranked Pearson) was applied rather than a peak based (Dice) and/or the optimized preprocessing parameters were applied. Increases in antimicrobial resistance detection were scored using the jackknife maximum similarity technique following cluster analysis. From the first four groups of antibiotic resistant isolates, the optimized preprocessing parameters increased detection respective to the aforementioned groups by: (1) 5% (2) 9% (3) 10%, and (4) 2%. An additional second categorization was created from the collection consisting of 31 strains resistant to beta-lactams and 141 strains sensitive to beta-lactams. Applying optimal preprocessing parameters, beta-lactam resistance detection was increased by 34%. These results suggest that spectrum processing parameters, which are rarely optimized or adjusted, affect the performance of MALDI-TOF MS-based detection of antibiotic resistance and can be fine-tuned to enhance screening performance.

Date Created
2016-05-31
Contributors
  • Penny, Christian (Author)
  • Grothendick, Beau (Author)
  • Zhang, Lin (Author)
  • Borror, Connie (Author)
  • Barbano, Duane (Author)
  • Cornelius, Angela J. (Author)
  • Gilpin, Brent J. (Author)
  • Fagerquist, Clifton K. (Author)
  • Zaragoza, William J. (Author)
  • Jay-Russell, Michele T. (Author)
  • Lastovica, Albert J. (Author)
  • Ragimbeau, Catherine (Author)
  • Cauchie, Henry-Michel (Author)
  • Sandrin, Todd (Author)
  • New College of Interdisciplinary Arts and Sciences (Contributor)
Resource Type
Text
Extent
9 pages
Language
eng
Copyright Statement
In Copyright
Reuse Permissions
Attribution
Primary Member of
ASU Scholarship Showcase
Identifier
Digital object identifier: 10.3389/fmicb.2016.00818
Identifier Type
International standard serial number
Identifier Value
1664-1078
Peer-reviewed
No
Open Access
No
Series
FRONTIERS IN MICROBIOLOGY
Handle
https://hdl.handle.net/2286/R.I.43806
Preferred Citation

Penny, C., Grothendick, B., Zhang, L., Borror, C. M., Barbano, D., Cornelius, A. J., . . . Sandrin, T. R. (2016). A Designed Experiments Approach to Optimizing MALDI-TOF MS Spectrum Processing Parameters Enhances Detection of Antibiotic Resistance in Campylobacter jejuni. Frontiers in Microbiology, 7. doi:10.3389/fmicb.2016.00818

Level of coding
minimal
Cataloging Standards
asu1
Note
View the article as published at http://journal.frontiersin.org/article/10.3389/fmicb.2016.00818/full, opens in a new window
System Created
  • 2017-05-23 04:12:49
System Modified
  • 2021-10-27 01:36:19
  •     
  • 1 year 5 months ago
Additional Formats
  • OAI Dublin Core
  • MODS XML

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