Computational discovery of novel anthelmintic natural compounds from Agave Brittoniana trel. Spp. Brachypus
Abstract:
Helminth infections are a medical problem in the world nowadays. This report used bond-based 2D quadratic indices, a bond-level QuBiLs-MAS molecular descriptor family, and Linear Discriminant Analysis (LDA) to obtain a quantitative linear model that discriminates between anthelmintic and non-anthelmintic drug-like organic-compounds. The model obtained correctly classified 87.46% and 81.82% of the training and external data sets, respectively. The developed model was used in a virtual screening to pbkp_redict the biological activity of all chemicals (19) previously obtained and chemically characterized by some authors of this report from Agave brittoniana Trel. spp. Brachypus. The model identified several metabolites (12) as possible anthelmintics, and a group of 5 novel natural products was tested in an in vitro assay against Fasciola hepatica (100% effectivity at 500 µg/mL). Finally, the two best hits were evaluated in vivo in bald/c mice and the same helminth parasite using a 25 mg/kg dose. Compound 8 (Karatavinoside A) showed an efficacy of 92.2% in vivo. It is important to remark that this natural compound exhibits similar-to-superior activity as triclabendazole, the best human fasciolicide available in the market against Fasciola hepatica, resulting in a novel lead scaffold with anti-helminthic activity.
Año de publicación:
2022
Keywords:
- LDA-Based QSAR Model
- Anthelmintic Agent
- Fasciola hepática
- QuBiLS-MAS
- nonstochastic and stochastic bond-based quadratic indices
- ToMoCoMD-CARDD software
- Agave brittoniana Trel. spp. Brachypus
- Computational Screening
Fuente:
Tipo de documento:
Article
Estado:
Acceso abierto
Áreas de conocimiento:
- Descubrimiento de fármacos
Áreas temáticas:
- Microorganismos, hongos y algas
- Farmacología y terapéutica