The application of computer-aided drug discovery (CADD)
approaches
has enabled the discovery of new antimicrobial therapeutic agents
in the past. The high prevalence of methicillin-resistantStaphylococcus aureus(MRSA) strains promoted this
pathogen to a high-priority pathogen for drug development. In this
sense, modern CADD techniques can be valuable tools for the search
for new antimicrobial agents. We employed a combination of a series
of machine learning (ML) techniques to select and evaluate potential
compounds with antibacterial activity against methicillin-susceptible S. aureus (MSSA) and MRSA strains. In the present
study, we describe the antibacterial activity of six compounds against
MSSA and MRSA reference (American Type Culture Collection (ATCC))
strains as well as two clinical strains of MRSA. These compounds showed
minimal inhibitory concentrations (MIC) in the range from 12.5 to
200 μM against the different bacterial strains evaluated. Our
results constitute relevant proven ML-workflow models to distinctively
screen for novel MRSA antibiotics.