4.6 Article

MetNC: Predicting Metabolites in vivo for Natural Compounds

Journal

FRONTIERS IN CHEMISTRY
Volume 10, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fchem.2022.881975

Keywords

natural compounds; in vivo biotransformation; metabolites; prediction; reaction rules

Funding

  1. National Key R&D Program of China [2017YFC1700200, 2019YFA0905900]
  2. National Natural Science Foundation of China [81830080]
  3. Shanghai Municipal Science and Technology Major Project [2017SHZDZX01]

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This study proposes a method called MetNC for predicting the metabolites of natural compounds (NCs) through simulating in vivo biotransformation. The results show that MetNC performs the best in terms of metabolite coverage and short-listing true products, and it has an additional advantage in recommending microbiota-transformed metabolites.
Natural compounds (NCs) undergo complicated biotransformation in vivo to produce diverse forms of metabolites dynamically, many of which are of high medicinal value. Predicting the profiles of chemical products may help to narrow down possible candidates, yet current computational methods for predicting biotransformation largely focus on synthetic compounds. Here, we proposed a method of MetNC, a tailor-made method for NC biotransformation prediction, after exploring the overall patterns of NC in vivo metabolism. Based on 850 pairs of the biotransformation dataset validated by comprehensive in vivo experiments with sourcing compounds from medicinal plants, MetNC was designed to produce a list of potential metabolites through simulating in vivo biotransformation and then prioritize true metabolites into the top list according to the functional groups in compound structures and steric hindrance around the reaction sites. Among the well-known peers of GLORYx and BioTransformer, MetNC gave the highest performance in both the metabolite coverage and the ability to short-list true products. More importantly, MetNC seemed to display an extra advantage in recommending the microbiota-transformed metabolites, suggesting its potential usefulness in the overall metabolism estimation. In summary, complemented to those techniques focusing on synthetic compounds, MetNC may help to fill the gap of natural compound metabolism and narrow down those products likely to be identified in vivo.

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