Reconstruction of the microalga Nannochloropsis salina genome-scale metabolic model with applications to lipid production
Author
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Loira, Nicolás
Author
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Mendoza, Sebastián
Author
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Cortés, María Paz
Author
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Rojas, Natalia
Author
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Travisany, Dante
Author
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Di Genova, Alex
Author
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Gajardo, Natalia
Author
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Ehrenfeld, Nicole
Author
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Maass Sepúlveda, Alejandro
Admission date
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2018-05-23T19:32:31Z
Available date
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2018-05-23T19:32:31Z
Publication date
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2017
Cita de ítem
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BMC Systems Biology (2017) 11:66
es_ES
Identifier
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10.1186/s12918-017-0441-1
Identifier
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https://repositorio.uchile.cl/handle/2250/148080
Abstract
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Background: Nannochloropsis salina (= Eustigmatophyceae) is a marine microalga which has become a biotechnological target because of its high capacity to produce polyunsaturated fatty acids and triacylglycerols. It has been used as a source of biofuel, pigments and food supplements, like Omega 3. Only some Nannochloropsis species have been sequenced, but none of them benefit from a genome-scale metabolic model (GSMM), able to predict its metabolic capabilities.
Results: We present iNS934, the first GSMM for N. salina, including 2345 reactions, 934 genes and an exhaustive description of lipid and nitrogen metabolism. iNS934 has a 90% of accuracy when making simple growth/no-growth predictions and has a 15% error rate in predicting growth rates in different experimental conditions. Moreover, iNS934 allowed us to propose 82 different knockout strategies for strain optimization of triacylglycerols.
Conclusions: iNS934 provides a powerful tool for metabolic improvement, allowing predictions and simulations of N. salina metabolism under different media and genetic conditions. It also provides a systemic view of N. salina metabolism, potentially guiding research and providing context to -omics data.