2022 Annual Meeting
(586e) Structure-Guided Metabolic Modeling of Non-Model Organisms
Author
Combining structural information (of each and every enzyme per biocatalytic conversion), and more comprehensive utilization of metagenomic data, with metabolic pathway analyses â provides us with the right set of reaction cascades and enzymesâ combinations that aid intended overall bioconversions in vivo in engineered strains. This lends into a future generation of synthetic biology and more efficient synthesis of precursors for key pharmaceutical concoctions, biodegradable polymers, agriculturally relevant toxins, food-flavoring/ preserving agents, and even biofuel.
Our learning algorithms glean rules for energetically-favorable (ÎG>0) conversion routes for synthesis of a desired biomolecule â by optimizing protein cost, translation efficiency, and ATP usage etc. We additionally explore the limits of promiscuity of natural enzymes (from organisms phylogenetically related to the host) that show any activity for a desired bioconversion by compromising its native activity.