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Functional and informatics analysis enables glycosyltransferase activity prediction.

Min YangCharlie FehlKaren V LeesEng-Kiat LimWendy A OffenGideon J DaviesDianna J BowlesMatthew G DavidsonStephen J RobertsBenjamin G Davis
Published in: Nature chemical biology (2018)
The elucidation and prediction of how changes in a protein result in altered activities and selectivities remain a major challenge in chemistry. Two hurdles have prevented accurate family-wide models: obtaining (i) diverse datasets and (ii) suitable parameter frameworks that encapsulate activities in large sets. Here, we show that a relatively small but broad activity dataset is sufficient to train algorithms for functional prediction over the entire glycosyltransferase superfamily 1 (GT1) of the plant Arabidopsis thaliana. Whereas sequence analysis alone failed for GT1 substrate utilization patterns, our chemical-bioinformatic model, GT-Predict, succeeded by coupling physicochemical features with isozyme-recognition patterns over the family. GT-Predict identified GT1 biocatalysts for novel substrates and enabled functional annotation of uncharacterized GT1s. Finally, analyses of GT-Predict decision pathways revealed structural modulators of substrate recognition, thus providing information on mechanisms. This multifaceted approach to enzyme prediction may guide the streamlined utilization (and design) of biocatalysts and the discovery of other family-wide protein functions.
Keyphrases
  • arabidopsis thaliana
  • amino acid
  • deep learning
  • single cell
  • high throughput
  • mass spectrometry
  • electronic health record
  • room temperature
  • transcription factor
  • structural basis
  • cell wall
  • genome wide identification