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  5. Predictive engineering and optimization of tryptophan metabolism in yeast through a combination of mechanistic and machine learning models

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Preprint
en
2019

Predictive engineering and optimization of tryptophan metabolism in yeast through a combination of mechanistic and machine learning models

0 Datasets

0 Files

en
2019
DOI: 10.1101/858464

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Jay D Keasling
Jay D Keasling

University of California, Berkeley

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Jie Zhang
Søren D. Petersen
Tijana Radivojević
+11 more

Abstract

SUMMARY In combination with advanced mechanistic modeling and the generation of high-quality multi-dimensional data sets, machine learning is becoming an integral part of understanding and engineering living systems. Here we show that mechanistic and machine learning models can complement each other and be used in a combined approach to enable accurate genotype-to-phenotype predictions. We use a genome-scale model to pinpoint engineering targets and produce a large combinatorial library of metabolic pathway designs with different promoters which, once phenotyped, provide the basis for machine learning algorithms to be trained and used for new design recommendations. The approach enables successful forward engineering of aromatic amino acid metabolism in yeast, with the new recommended designs improving tryptophan production by up to 17% compared to the best designs used for algorithm training, and ultimately producing a total increase of 106% in tryptophan accumulation compared to optimized reference designs. Based on a single high-throughput data-generation iteration, this study highlights the power of combining mechanistic and machine learning models to enhance their predictive power and effectively direct metabolic engineering efforts.

How to cite this publication

Jie Zhang, Søren D. Petersen, Tijana Radivojević, Andrés Ramirez, Andrés M. Perez, Eduardo Abeliuk, Benjamín J. Sánchez, Zachary Costello, Yu Chen, Mike Fero, Héctor García Martín, Jens Nielsen, Jay D Keasling, Michael K. Jensen (2019). Predictive engineering and optimization of tryptophan metabolism in yeast through a combination of mechanistic and machine learning models. , DOI: https://doi.org/10.1101/858464.

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Publication Details

Type

Preprint

Year

2019

Authors

14

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1101/858464

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