Motivation Constraints-based modeling is a powerful framework for understanding growth of organisms. Results from such simulation experiments can be affected at least in part by the quality of the metabolic models used. Reconstructing a metabolic network manually can produce a high-quality metabolic model but is a time-consuming task. At the same time, current methods for automating the process typically transfer metabolic function based on sequence similarity, a process known to produce many false positives. Results We created Architect, a pipeline for automatic metabolic model reconstruction from protein sequences. First, it performs enzyme annotation through an ensemble approach, whereby a likelihood score is computed for an EC prediction based on predictions from existing tools; for this step, our method shows both increased precision and recall compared to individual tools. Next, Architect uses these annotations to construct a high-quality metabolic network which is then gap-filled based on likelihood scores from the ensemble approach. The resulting metabolic model is output in SBML format, suitable for constraints-based analyses. Through comparisons of enzyme annotations and curated metabolic models, we demonstrate improved performance of Architect over other state-of-the-art tools. Availability Code for Architect is available at https://github.com/ParkinsonLab/Architect. Contact john.parkinson@utoronto.ca Supplementary information Supplementary data are available at Bioinformatics online.
Architect: a tool for producing high-quality metabolic models through improved enzyme annotation
Nirvana Nursimulu,Alan M. Moses,J. Parkinson
Published 2021 in bioRxiv
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- Publication year
2021
- Venue
bioRxiv
- Publication date
2021-10-13
- Fields of study
Biology, Computer Science
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