The combination of untargeted metabolomics and machine learning predicts the biosynthesis of phenolic compounds in bryophyllum medicinal plants (Genus kalanchoe)

Pascual García-Pérez, Leilei Zhang, Maria Begona Miras Moreno, Eva Lozano-Milo, Mariana Landin, Luigi Lucini, Pedro P. Gallego

Risultato della ricerca: Contributo in rivistaArticolo in rivista

Abstract

Phenolic compounds constitute an important family of natural bioactive compounds re-sponsible for the medicinal properties attributed to Bryophyllum plants (genus Kalanchoe, Crassu-laceae), but their production by these medicinal plants has not been characterized to date. In this work, a combinatorial approach including plant tissue culture, untargeted metabolomics, and machine learning is proposed to unravel the critical factors behind the biosynthesis of phenolic compounds in these species. The untargeted metabolomics revealed 485 annotated compounds that were produced by three Bryophyllum species cultured in vitro in a genotype and organ-dependent manner. Neurofuzzy logic (NFL) predictive models assessed the significant influence of genotypes and organs and identified the key nutrients from culture media formulations involved in phenolic compound biosynthesis. Sulfate played a critical role in tyrosol and lignan biosynthesis, copper in phenolic acid biosynthesis, calcium in stilbene biosynthesis, and magnesium in flavanol biosynthe-sis. Flavonol and anthocyanin biosynthesis was not significantly affected by mineral components. As a result, a predictive biosynthetic model for all the Bryophyllum genotypes was proposed. The combination of untargeted metabolomics with machine learning provided a robust approach to achieve the phytochemical characterization of the previously unexplored species belonging to the Bryophyllum subgenus, facilitating their biotechnological exploitation as a promising source of bio-active compounds.
Lingua originaleEnglish
pagine (da-a)N/A-N/A
RivistaPlants
Volume10
DOI
Stato di pubblicazionePubblicato - 2021

Keywords

  • Artificial intelligence
  • Bioactive compounds
  • Kalanchoe
  • Mineral nutrition
  • Phytochemistry
  • Plant biotechnology
  • Plant tissue culture
  • Polyphenols
  • Secondary metabolism

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