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Now showing items 11-17 of 17
Biofilm disruption activity of absorbent sustained action alginate and iodine combined wound dressings
(The University of Nottingham, 2024-01-01)
Test new wound dressing formulations against clinically relevant polymicrobial biofilms
A linear, binary classifier to predict bacterial biofilm formation on polyacrylates
(The University of Nottingham, 2022-09-08)
Datafiles, in Microsoft Excel format, associated with the manuscript "A linear, binary classifier to predict bacterial biofilm formation on polyacrylates"
These files contain ToF-SIMS ion peaks and the bacterial attachment ...
A linear, binary classifier to predict bacterial biofilm formation on polyacrylates
(The University of Nottingham, 2022-12-21)
Research data and Python code to undertake machine learning to predict bacterial attachment to polyacrylates.
Engineering nanowires in bacteria to elucidate electron transport structural–functional relationships
(University of Nottingham, 2023-06-02)
Data set associated with the following manuscript: "Engineering nanowires in bacteria to elucidate electron transport structural–functional relationships"
Accepted for publication in Scientific Reports
Development of a polymicrobial colony biofilm model
(The University of Nottingham, 2023-08-17)
The main aim of this study was to develop and optimise a polymicrobial colony biofilm model to test commercial wound dressings
Variables of horses and serostatus to some emerging equine RNA viruses in northwest Nigeria
(The University of Nottingham, 2024-04-01)
The deposited Excel file contains demography of horses sampled from northwest Nigeria and the seroprevalence of some emerging RNA viruses.
RNA-seq data- 12 hrs and 24 hrs for C. beijerinckii NCIMB 8052 WT versus agrB mutants
(The University of Nottingham, 2023-11-17)
RNA-seq data from three independent agrB mutants made in C. beijerinckii NCIMB 8052. Mutations were made in three different Agr systems, denoted by Agr2, Agr4 and Agr5. Total RNA was extracted from three replicates of each ...