Recent advances in model-assisted metabolic engineering

Current Opinion in Systems Biology - Tập 28 - Trang 100392 - 2021
Steinn Gudmundsson1, Juan Nogales2,3
1University of Iceland, Department of Computer Science, School of Engineering and Natural Sciences, Bjargargata 1, 102 Reykjavik, Iceland
2Department of Systems Biology, Centro Nacional de Biotecnología, CSIC, Madrid, Spain
3Interdisciplinary Platform for Sustainable Plastics towards a Circular Economy- Spanish National Research Council (SusPlast-CSIC), Madrid, Spain

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