Exploring the Relationship between Polymer Surface Chemistry and Bacterial Attachment Using ToF‐SIMS and Self‐Organizing maps

Author:

Wong See Yoong1,Hook Andrew L.2ORCID,Gardner Wil1,Chang Chien‐Yi3,Mei Ying4,Davies Martyn C.2,Williams Paul5,Alexander Morgan R.2,Ballabio Davide6,Muir Benjamin W.7,Winkler David A.289,Pigram Paul J.1ORCID

Affiliation:

1. Centre for Materials and Surface Science and the Department of Mathematical and Physical Sciences La Trobe University Melbourne Victoria 3086 Australia

2. Advanced Materials and Healthcare Technologies School of Pharmacy University of Nottingham Nottingham NG7 2RD UK

3. School of Dental Science Newcastle University Newcastle upon Tyne NE2 4BW UK

4. Department of Bioengineering Clemson University Charleston SC 29425 USA

5. Biodiscovery Institute University of Nottingham Nottingham NG7 2RD UK

6. Milano Chemometrics and QSAR Research Group Department of Earth and Environmental Sciences University of Milano‐Bicocca Piazza della Scienza 1 20126 Milano Italy

7. CSIRO Manufacturing Clayton Victoria 3168 Australia

8. Department of Biochemistry and Chemistry La Trobe Institute for Molecular Sciences La Trobe University Melbourne Victoria 3086 Australia

9. Monash Institute of Pharmaceutical Sciences Monash University Parkville 3052 Australia

Abstract

AbstractBiofilm formation is a major cause of hospital‐acquired infections. Research into biofilm‐resistant materials is therefore critical to reduce the frequency of these events. Polymer microarrays offer a high‐throughput approach to enable the efficient discovery of novel biofilm‐resistant polymers. Herein, bacterial attachment and surface chemistry are studied for a polymer microarray to improve the understanding of Pseudomonas aeruginosa biofilm formation on a diverse set of polymeric surfaces. The relationships between time‐of‐flight secondary ion mass spectrometry (ToF‐SIMS) data and biofilm formation are analyzed using linear multivariate analysis (partial least squares [PLS] regression) and a nonlinear self‐organizing map (SOM). The SOM models revealed several combinations of fragment ions that are positively or negatively associated with bacterial biofilm formation, which are not identified by PLS. With these insights, a second PLS model is calculated, in which interactions between key fragments (identified by the SOM) are explicitly considered. Inclusion of these terms improved the PLS model performance and shows that, without such terms, certain key fragment ions correlated with bacterial attachment may not be identified. The chemical insights provided by the combination of PLS regression and SOM will be useful for the design of materials that support negligible pathogen attachment.

Funder

Australian Government

National Science Foundation

Australian National Fabrication Facility

Publisher

Wiley

Subject

Mechanical Engineering,Mechanics of Materials

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