Team:USTC CHINA/Modeling/MiceModeling
From 2013.igem.org
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Generally Full Factorial Design has nothing mathematically sophisticated, all required is to list the specific values of all factors without any limitation on levels, which grants us more flexibility and freedom. Here is our table of levels of factors:</br> | Generally Full Factorial Design has nothing mathematically sophisticated, all required is to list the specific values of all factors without any limitation on levels, which grants us more flexibility and freedom. Here is our table of levels of factors:</br> | ||
<表格> | <表格> | ||
- | And we got our first design, whose number of overall runs is 17820! In reality we did not deem this level values table was detailed enough, but the number of runs was already enormous. Perhaps only the biggest pharmaceutical factory can afford this design.</br> | + | And we got our first design, whose number of overall runs is 17820! </br> |
+ | <a href="https://static.igem.org/mediawiki/2013/2/22/Full_Factorial_Designs_17280runs.XLS">Full Factorial Designs 17280 runs</a></br> | ||
+ | In reality we did not deem this level values table was detailed enough, but the number of runs was already enormous. Perhaps only the biggest pharmaceutical factory can afford this design.</br> | ||
Next we turned to traditional Factional Factorial Designs. To minimize the runs, the levels of all factors were fixed at 2. A general 2-level-8-factor Full Factorial design contains 2^8=256 treatments, but we can further decrease the runs by defining alias. That is to say, define some specific factors as logical operation results of other factor.</br> | Next we turned to traditional Factional Factorial Designs. To minimize the runs, the levels of all factors were fixed at 2. A general 2-level-8-factor Full Factorial design contains 2^8=256 treatments, but we can further decrease the runs by defining alias. That is to say, define some specific factors as logical operation results of other factor.</br> | ||
- | Here we got a | + | Here we got a half and a quater Factional Factorial Designs, and the numbers of runs of them are 128 and 64.</br> |
- | + | <a href="https://static.igem.org/mediawiki/2013/e/ed/Factorial_Designs_64runs.XLS"> Factorial Designs 64runs</a></br> | |
+ | <a href="https://static.igem.org/mediawiki/2013/3/3c/Factorial_Designs_128runs.XLS"> Factorial Designs 128 runs</a></br> | ||
Any effort trying to decrease runs will inevitably lower the cogency of the experiments, and this influence is irreversible. Factories are supposed to strike a balance between the accuracy of experiments and the costs they can afford when designing experiments.</br> | Any effort trying to decrease runs will inevitably lower the cogency of the experiments, and this influence is irreversible. Factories are supposed to strike a balance between the accuracy of experiments and the costs they can afford when designing experiments.</br> | ||
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Naturally the levels of all factors were two. On most occasions it is combined with other DOE methods, like RSM. In our project, we made three Plackett-Burman Designs of 12 runs, 20 runs and 48 runs. The more runs, the more reliable results will be get, but even the last design still requires further designs.</br> | Naturally the levels of all factors were two. On most occasions it is combined with other DOE methods, like RSM. In our project, we made three Plackett-Burman Designs of 12 runs, 20 runs and 48 runs. The more runs, the more reliable results will be get, but even the last design still requires further designs.</br> | ||
<a href="https://static.igem.org/mediawiki/2013/b/b3/Plackett-Burman_20_runs.XLS">Plackett-Burman 20 runs</a></br> | <a href="https://static.igem.org/mediawiki/2013/b/b3/Plackett-Burman_20_runs.XLS">Plackett-Burman 20 runs</a></br> | ||
- | Plackett- | + | <a href="https://static.igem.org/mediawiki/2013/3/3f/Plackett-Burman_12_runs.XLS">Plackett-Burman 12 runs</a></br> |
+ | <a href="https://static.igem.org/mediawiki/2013/e/e0/Plackett-Burman_48_runs.XLS">Plackett-Burman 48 runs</a></br> | ||
</br> | </br> | ||
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Utilized response surface and gradient, Response Surface Design excels in analysis of data, which makes it more mathematically gracefully than Taguchi Designs, and this accounts for why we selected it for our experiments on the optimization of medium | Utilized response surface and gradient, Response Surface Design excels in analysis of data, which makes it more mathematically gracefully than Taguchi Designs, and this accounts for why we selected it for our experiments on the optimization of medium | ||
The most widespread subplots of Response Surface Design is Central Composite Design and Box-Behnken Designs, both of which were considered when we designed our experiments on medium. The number of factors of Box-Behnken Designs is fixed on some given values, which does not include eight, therefore we had to turn to Central Composite Design (CCD). CCD itself contains three subplots, namely Central Composite Circumscribed Design (CCC), Central Composite Inscribed Design (CCI) and Central Composite Face-centered Design (CCF). Only CCC is rotatable, and thus CCC is mathematically preferred. We designed the experiments on CCC and CCF. The numbers of runs in half CCC and CCF designs were 154, whereas in quarter designs 90.</br> | The most widespread subplots of Response Surface Design is Central Composite Design and Box-Behnken Designs, both of which were considered when we designed our experiments on medium. The number of factors of Box-Behnken Designs is fixed on some given values, which does not include eight, therefore we had to turn to Central Composite Design (CCD). CCD itself contains three subplots, namely Central Composite Circumscribed Design (CCC), Central Composite Inscribed Design (CCI) and Central Composite Face-centered Design (CCF). Only CCC is rotatable, and thus CCC is mathematically preferred. We designed the experiments on CCC and CCF. The numbers of runs in half CCC and CCF designs were 154, whereas in quarter designs 90.</br> | ||
- | + | <a href="https://static.igem.org/mediawiki/2013/0/02/CCC-90runs.XLS">CCC 90runs</a></br> | |
+ | <a href="https://static.igem.org/mediawiki/2013/b/bc/CCC-154runs.XLS">CCC 154runs</a></br> | ||
+ | <a href="https://static.igem.org/mediawiki/2013/c/ce/CCF-90runs.XLS">CCF 90runs</a></br> | ||
+ | <a href="https://static.igem.org/mediawiki/2013/7/75/CCF-154runs.XLS">CCF 154runs</a></br> | ||
In spite of the mathematical advantages of CCC, the alpha value, which means the distance from axial point to the center point, is larger than one, some absurd treatment might be yielded. In our half CCC design the alpha value was 3.364, while in quarter CCC design 2.828. In both designs, some treatments are irrational, for their area or concentration were negative, which contradicts the common sense. However, factories can still adopt these CCC designs by giving up the irrational treatments.</br> | In spite of the mathematical advantages of CCC, the alpha value, which means the distance from axial point to the center point, is larger than one, some absurd treatment might be yielded. In our half CCC design the alpha value was 3.364, while in quarter CCC design 2.828. In both designs, some treatments are irrational, for their area or concentration were negative, which contradicts the common sense. However, factories can still adopt these CCC designs by giving up the irrational treatments.</br> | ||
Revision as of 08:57, 26 September 2013