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SCOUR: a stepwise machine learning framework for predicting metabolite-dependent regulatory interactions.

Justin Y LeeBritney NguyenCarlos OroscoMark P Styczynski
Published in: BMC bioinformatics (2021)
SCOUR uses a novel approach to synthetically generate the training data needed to identify regulators of reaction fluxes in a given metabolic system, enabling metabolomics and fluxomics data to be leveraged for regulatory structure inference. By identifying and triaging the most likely candidate regulatory interactions, SCOUR can drastically reduce the amount of time needed to identify and experimentally validate metabolic regulatory interactions. As high-throughput experimental methods for testing these interactions are further developed, SCOUR will provide critical impact in the development of predictive metabolic models in new organisms and pathways.
Keyphrases
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