Data considerations for predictive modeling applied to the discovery of bioactive natural products

Drug Discov Today. 2022 Aug;27(8):2235-2243. doi: 10.1016/j.drudis.2022.05.009. Epub 2022 May 14.

Abstract

Natural products (NPs) constitute a large reserve of bioactive compounds useful for drug development. Recent advances in high-throughput technologies facilitate functional analysis of therapeutic effects and NP-based drug discovery. However, the large amount of generated data is complex and difficult to analyze effectively. This limitation is increasingly surmounted by artificial intelligence (AI) techniques but more needs to be done. Here, we present and discuss two crucial issues limiting NP-AI drug discovery: the first is on knowledge and resource development (data integration) to bridge the gap between NPs and functional or therapeutic effects. The second issue is on NP-AI modeling considerations, limitations and challenges.

Keywords: Artificial intelligence; Data integration; Data mining; Database; Deep learning; Knowledge discovery; Natural products.

Publication types

  • Review
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Artificial Intelligence*
  • Biological Products* / pharmacology
  • Drug Development
  • Drug Discovery / methods

Substances

  • Biological Products