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Unfortunately, with the current model testing the various Michaelis constants (<em>K<sub>m</sub></em>) is not possible. This is due to how the reactions producing PHB and PHV are parallel to each other (as commented on above). Thus, we decided to test a wide range of turnover rates for phaA and bktB. One of the main observations that resonates with previous simulations. The maximal predicted molar composition of PHV is shown to also be approximately 30%; the composition remains the same while the total PHBV produced increases as long as the reagents are not limiting. | Unfortunately, with the current model testing the various Michaelis constants (<em>K<sub>m</sub></em>) is not possible. This is due to how the reactions producing PHB and PHV are parallel to each other (as commented on above). Thus, we decided to test a wide range of turnover rates for phaA and bktB. One of the main observations that resonates with previous simulations. The maximal predicted molar composition of PHV is shown to also be approximately 30%; the composition remains the same while the total PHBV produced increases as long as the reagents are not limiting. | ||
+ | </p> | ||
+ | <p> | ||
+ | Testing the dynamic model reveals its severe limitations when it does encompass the various relevant pathways for PHA biosynthesis. To optimize it would require a significant array of data. One of the main caveats in using this type of model to understand cell factory design is that it is does not account for cell growth. We represent the mixture of enzymes as a single-compartment, homogeneous system and thus cannot use it to predict growth phenotypes. For this latter purpose, it was decided to use a constraint-based modeling approach. | ||
</p> | </p> | ||
Revision as of 02:18, 16 October 2018