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For modeling of our promoter-RBS combinations we used the given strength of the Anderson promoters (BBa_J23119,BBa_J23100 to BBa_J23110) and the strength of different RBS (BBa_J61100, BBa_B0030, BBa_B0031) to determine an estimate for their absolute strength. | For modeling of our promoter-RBS combinations we used the given strength of the Anderson promoters (BBa_J23119,BBa_J23100 to BBa_J23110) and the strength of different RBS (BBa_J61100, BBa_B0030, BBa_B0031) to determine an estimate for their absolute strength. | ||
− | Prior to the experiments, we modeled the expression strength of different promoter and RBS combinations to create a database for our experiments. Therefore we used the given strength of the Anderson promoters and the strength of the different known RBS to determine and visualize their absolute strength shown in Fig.: | + | <br>Promotor strength * RBS * 300(high value of our Measurment)<br> |
+ | Prior to the experiments, we modeled the expression strength of different promoter and RBS combinations to create a database for our experiments. Therefore we used the given strength of the Anderson promoters and the strength of the different known RBS to determine and visualize their absolute strength shown in Fig.: 1. | ||
When generating these results, we do not only wanted to consider the use of different Anderson promoters, but also analyze the expression strength of different promoters in combinations with different RBS. Especially for our siRNA system, it was interesting to see the difference between inducible and constitutive promoters. | When generating these results, we do not only wanted to consider the use of different Anderson promoters, but also analyze the expression strength of different promoters in combinations with different RBS. Especially for our siRNA system, it was interesting to see the difference between inducible and constitutive promoters. | ||
In addition, we modeled other promoters of the parts registry. | In addition, we modeled other promoters of the parts registry. | ||
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With this database we can predict the right Promoter and RBS for every system. We have weak combinations for proteins which are slightly toxic for the cells or cause stress responses and we have powerful combinations for anti-toxicity and membrane proteins. | With this database we can predict the right Promoter and RBS for every system. We have weak combinations for proteins which are slightly toxic for the cells or cause stress responses and we have powerful combinations for anti-toxicity and membrane proteins. | ||
+ | For further characterization a real-time PCR could be performed. | ||
</article> | </article> |
Revision as of 16:43, 17 October 2018
Part Collection
Short Summary
Design
Modeling
Promotor strength * RBS * 300(high value of our Measurment)
Prior to the experiments, we modeled the expression strength of different promoter and RBS combinations to create a database for our experiments. Therefore we used the given strength of the Anderson promoters and the strength of the different known RBS to determine and visualize their absolute strength shown in Fig.: 1. When generating these results, we do not only wanted to consider the use of different Anderson promoters, but also analyze the expression strength of different promoters in combinations with different RBS. Especially for our siRNA system, it was interesting to see the difference between inducible and constitutive promoters. In addition, we modeled other promoters of the parts registry.
Characterization
Results
Outlook
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