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A Proposal Towards a Rational Classification of the Antimicrobial Activity of Acetone Tree Leaf Extracts in a Search for New Antimicrobials.

Jacobus Nicolaas Eloff
Published in: Planta medica (2021)
Many scientists investigate the potential of finding new antibiotics from plants, leading to more than a thousand publications per year. Many different minimum inhibitory concentrations of extracts have been proposed to decide if an extract has interesting activity that could lead to the discovery of a new antibiotic. To date, no rational explanation has been given for the selection criteria different authors have used. The cumulative percentage of plant extracts with different activities from a large experiment determining the activity of 714 acetone tree leaf extracts of 537 different South African tree species against 4 nosocomial pathogenic bacteria and 2 yeasts was calculated using a widely accepted serial dilution microplate method with p-iodonitrotetrazolium violet as indicator of growth. All the extracts were active at a concentration of 2.5 mg/mL. The formula, % of active extracts = 439 × minimum inhibitory concentration in mg/mL1.5385, describes the results for minimum inhibitory concentrations below 0.16 mg/mL, with a correlation coefficient of 0.9998. A rational approach could be to determine the minimum inhibitory concentrations of the most active 1, 3, 9, 25, 50, and > 50% of a large number of plant extracts investigated against these six important microbial pathogens. Starting with an extract concentration of 10 mg/mL, I propose the following classification based on minimum inhibitory concentrations: OUTSTANDING ACTIVITY: < 0.02 mg/mL, EXCELLENT ACTIVITY: 0.021 - 0.04 mg/mL, VERY GOOD ACTIVITY: 041 - 0.08 mg/mL, GOOD ACTIVITY: 0.081 - 0.16 mg/mL, AVERAGE ACTIVITY: 0.161 - 0.32 mg/mL, and WEAK ACTIVITY: > 0.32 mg/mL. Higher minimum inhibitory concentrations may still be effective in ethnopharmacological studies.
Keyphrases
  • machine learning
  • escherichia coli
  • small molecule
  • risk assessment
  • cystic fibrosis
  • climate change
  • microbial community
  • staphylococcus aureus
  • ms ms
  • single cell
  • antimicrobial resistance
  • saccharomyces cerevisiae