Machine Learning Analysis of Essential Oils from Cuban Plants: Potential Activity against Protozoa Parasites

Molecules. 2022 Feb 17;27(4):1366. doi: 10.3390/molecules27041366.

Abstract

Essential oils (EOs) are a mixture of chemical compounds with a long history of use in food, cosmetics, perfumes, agricultural and pharmaceuticals industries. The main object of this study was to find chemical patterns between 45 EOs and antiprotozoal activity (antiplasmodial, antileishmanial and antitrypanosomal), using different machine learning algorithms. In the analyses, 45 samples of EOs were included, using unsupervised Self-Organizing Maps (SOM) and supervised Random Forest (RF) methodologies. In the generated map, the hit rate was higher than 70% and the results demonstrate that it is possible find chemical patterns using a supervised and unsupervised machine learning approach. A total of 20 compounds were identified (19 are terpenes and one sulfur-containing compound), which was compared with literature reports. These models can be used to investigate and screen for bioactivity of EOs that have antiprotozoal activity more effectively and with less time and financial cost.

Keywords: Cuban plants; antiprotozoal activity; essential oil; machine learning analysis.

MeSH terms

  • Antiprotozoal Agents / analysis*
  • Antiprotozoal Agents / pharmacology*
  • Cuba
  • Databases, Factual
  • Machine Learning*
  • Oils, Volatile / analysis*
  • Oils, Volatile / pharmacology*
  • Parasitic Sensitivity Tests
  • Plant Oils / analysis*
  • Plant Oils / pharmacology*

Substances

  • Antiprotozoal Agents
  • Oils, Volatile
  • Plant Oils