Combining mechanistic and machine learning models for predictive engineering and optimization of tryptophan metabolism
Zhang, Jie; Petersen, Soren D.; Radivojevic, Tijana; Ramirez, Andres; Perez-Manriquez, Andres; Abeliuk, Eduardo; Sanchez, Benjamin J.; Costello, Zak; Chen, YU; Fero, Michael J.; Martin, Hector Garcia; Nielsen, Jens; Keasling, Jay D.; Jensen, Michael K.
NATURE COMMUNICATIONS
2020
VL / 11 - BP / - EP /
abstract
Through advanced mechanistic modeling and the generation of large high-quality datasets, machine learning is becoming an integral part of understanding and engineering living systems. Here we show that mechanistic and machine learning models can be combined to enable accurate genotype-to-phenotype predictions. We use a genome-scale model to pinpoint engineering targets, efficient library construction of metabolic pathway designs, and high-throughput biosensor-enabled screening for training diverse machine learning algorithms. From a single data-generation cycle, this enables successful forward engineering of complex aromatic amino acid metabolism in yeast, with the best machine learning-guided design recommendations improving tryptophan titer and productivity by up to 74 and 43%, respectively, compared to the best designs used for algorithm training. Thus, this study highlights the power of combining mechanistic and machine learning models to effectively direct metabolic engineering efforts. In metabolic engineering, mechanistic models require prior metabolism knowledge of the chassis strain, whereas machine learning models need ample training data. Here, the authors combine the mechanistic and machine learning models to improve prediction performance of tryptophan metabolism in baker's yeast.
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