| Literature DB >> 32826316 |
Serina L Robinson1,2,3, Barbara R Terlouw4, Megan D Smith5,3, Sacha J Pidot6, Timothy P Stinear6, Marnix H Medema4, Lawrence P Wackett5,2,3.
Abstract
Enzymes that cleave ATP to activate carboxylic acids play essential roles in primary and secondary metabolism in all domains of life. Class I adenylate-forming enzymes share a conserved structural fold but act on a wide range of substrates to catalyze reactions involved in bioluminescence, nonribosomal peptide biosynthesis, fatty acid activation, and β-lactone formation. Despite their metabolic importance, the substrates and functions of the vast majority of adenylate-forming enzymes are unknown without tools available to accurately predict them. Given the crucial roles of adenylate-forming enzymes in biosynthesis, this also severely limits our ability to predict natural product structures from biosynthetic gene clusters. Here we used machine learning to predict adenylate-forming enzyme function and substrate specificity from protein sequences. We built a web-based predictive tool and used it to comprehensively map the biochemical diversity of adenylate-forming enzymes across >50,000 candidate biosynthetic gene clusters in bacterial, fungal, and plant genomes. Ancestral phylogenetic reconstruction and sequence similarity networking of enzymes from these clusters suggested divergent evolution of the adenylate-forming superfamily from a core enzyme scaffold most related to contemporary CoA ligases toward more specialized functions including β-lactone synthetases. Our classifier predicted β-lactone synthetases in uncharacterized biosynthetic gene clusters conserved in >90 different strains of Nocardia. To test our prediction, we purified a candidate β-lactone synthetase from Nocardia brasiliensis and reconstituted the biosynthetic pathway in vitro to link the gene cluster to the β-lactone natural product, nocardiolactone. We anticipate that our machine learning approach will aid in functional classification of enzymes and advance natural product discovery.Entities:
Keywords: Nocardia; acetyl-CoA synthetase; adenylate-forming enzymes; bioinformatics; coenzyme A (CoA); enzyme catalysis; machine learning; natural product biosynthesis; substrate specificity; β-lactone synthetases
Year: 2020 PMID: 32826316 PMCID: PMC7606675 DOI: 10.1074/jbc.RA120.013528
Source DB: PubMed Journal: J Biol Chem ISSN: 0021-9258 Impact factor: 5.157