Team:USTC CHINA/Modeling/MiceModeling
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<li class="active"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/">Modeling</a> | <li class="active"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/">Modeling</a> | ||
<ul class="subs"> | <ul class="subs"> | ||
- | <li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/ReporterSystem"> | + | <li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/ReporterSystem">Kill Switch</a></li> |
<li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/B.SubtilisCulture">B.Subtilis Culture</a></li> | <li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/B.SubtilisCulture">B.Subtilis Culture</a></li> | ||
- | <li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/MiceModeling"> | + | <li><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/MiceModeling">Designs Of Immune Experiments</a></li> |
</ul> | </ul> | ||
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- | <h1> | + | <h1>Introduction</h1> |
<p>Our mice experiment has primarily proven the validity of our project. However, just like most scientific immune experiments on animals, the aim of our mice experiment was verification instead of exploring the optimal conditions for the production of our vaccine. In fact, fewer optimization experiments have been done by pure scientific researches, as most scientists care about facts and theories only, whereas exploring the optimal conditions is often viewed as the task of pharmaceutical factories. Yet since igem itself frequently involves industrial fields, which make igem seems like more an engineering competition than a science competition sometimes.</br> | <p>Our mice experiment has primarily proven the validity of our project. However, just like most scientific immune experiments on animals, the aim of our mice experiment was verification instead of exploring the optimal conditions for the production of our vaccine. In fact, fewer optimization experiments have been done by pure scientific researches, as most scientists care about facts and theories only, whereas exploring the optimal conditions is often viewed as the task of pharmaceutical factories. Yet since igem itself frequently involves industrial fields, which make igem seems like more an engineering competition than a science competition sometimes.</br> | ||
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- | <h1> | + | <h1>Sweeping factors</h1> |
The final effects of the vaccine hinge on various factors, in fact perhaps over ten factors. Yet the more factors, the more runs. In our laboratory, an experiment involving over five factors is hard to design, whatever the method. Fortunately we were designing experiments for pharmaceutical factories, which enabled us to take more factors into account without sacrificing accuracy too much. | The final effects of the vaccine hinge on various factors, in fact perhaps over ten factors. Yet the more factors, the more runs. In our laboratory, an experiment involving over five factors is hard to design, whatever the method. Fortunately we were designing experiments for pharmaceutical factories, which enabled us to take more factors into account without sacrificing accuracy too much. | ||
The first step of any method in DOE is to make a list of controllable factors, and the second step is to find out levels of each factors. In our design, we finally selected eight factor as follows:</br> | The first step of any method in DOE is to make a list of controllable factors, and the second step is to find out levels of each factors. In our design, we finally selected eight factor as follows:</br> | ||
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<li>The time consumed for culturing the bacteria;</li> | <li>The time consumed for culturing the bacteria;</li> | ||
<li>The molecule weight of the antigen;</li> | <li>The molecule weight of the antigen;</li> | ||
- | </ul> | + | </ul></br> |
The ranges of these factor is given as follows:</li> | The ranges of these factor is given as follows:</li> | ||
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- | <h1> | + | <h1>Abstract of DOE methods</h1> |
The classification standards of DOE methods are not unified, and according to one classification the DOE methods can be classifies into three plots:</br> | The classification standards of DOE methods are not unified, and according to one classification the DOE methods can be classifies into three plots:</br> | ||
Factorial Designs: Factorial Design is the most traditional method of DOE, and theoretically all other plots origin from it. Factorial Design is recommended when the ranges of factors is too large.</br> | Factorial Designs: Factorial Design is the most traditional method of DOE, and theoretically all other plots origin from it. Factorial Design is recommended when the ranges of factors is too large.</br> | ||
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- | <h1> | + | <h1>Factorial Designs</h1> |
To some extent, all DOE methods are branches of Factorial Designs. The easiest subplot of Factorial Designs is Full Factorial Designs, meaning making a list of all combinations of all levels, which in fact does nothing to minimizing the runs. Surly the overall runs of Full Factorial Designs is larger than any other method, yet it does provide the most detailed information, so it is recommended when the factory does not care about money and time.</br> | To some extent, all DOE methods are branches of Factorial Designs. The easiest subplot of Factorial Designs is Full Factorial Designs, meaning making a list of all combinations of all levels, which in fact does nothing to minimizing the runs. Surly the overall runs of Full Factorial Designs is larger than any other method, yet it does provide the most detailed information, so it is recommended when the factory does not care about money and time.</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> | 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> | ||
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- | <h1> | + | <h1>Plackett-Burman Design</h1> |
As an important subplot of Factorial Designs, Plackett-Burman Design is excellent in dealing with mass factors. Generally it was applied in the primary experiments to select the key factors for further experiments. The number of runs can be controlled at very low values, yet it is hard to get the best treatment from Plackett-Burman Design. </br> | As an important subplot of Factorial Designs, Plackett-Burman Design is excellent in dealing with mass factors. Generally it was applied in the primary experiments to select the key factors for further experiments. The number of runs can be controlled at very low values, yet it is hard to get the best treatment from Plackett-Burman Design. </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> | 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> | ||
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- | <h1> | + | <h1>Response Surface Design</h1> |
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> | ||
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</div> | </div> | ||
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- | <h1> | + | <h1>Taguchi Design</h1> |
Taguchi Designs use orthogonal table to decrease the runs. Created by Doctor Taguchi, it has obtained wide success all over the world, especially in Asia. Different from Response Surface Design, it does not aim to calculate a fitting surface or function but just find out the best level value of each factor. Generally the number of runs is smaller compared with RSM, yet the range of factors in Taguchi Design is relatively smaller.</br> | Taguchi Designs use orthogonal table to decrease the runs. Created by Doctor Taguchi, it has obtained wide success all over the world, especially in Asia. Different from Response Surface Design, it does not aim to calculate a fitting surface or function but just find out the best level value of each factor. Generally the number of runs is smaller compared with RSM, yet the range of factors in Taguchi Design is relatively smaller.</br> | ||
We tried to make Taguchi Designs but our tool software minitab is unable to make the design with eight factor. Additionally, our ranges of factors were too large for Taguchi Design, therefore we gave up this method in our design.</br> | We tried to make Taguchi Designs but our tool software minitab is unable to make the design with eight factor. Additionally, our ranges of factors were too large for Taguchi Design, therefore we gave up this method in our design.</br> | ||
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<div class="port-sidebar-border"><h>Modeling</h></div> | <div class="port-sidebar-border"><h>Modeling</h></div> | ||
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- | <div id="t1"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/ReporterSystem"> | + | <div id="t1"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/ReporterSystem">Kill Switch</a></div> |
<div id="t1"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/B.SubtilisCulture">B.Subtilis Culture</a></div> | <div id="t1"><a href="https://2013.igem.org/Team:USTC_CHINA/Modeling/B.SubtilisCulture">B.Subtilis Culture</a></div> | ||
- | <div id="t1"><a class="active" href="https://2013.igem.org/Team:USTC_CHINA/Modeling/MiceModeling"> | + | <div id="t1"><a class="active" href="https://2013.igem.org/Team:USTC_CHINA/Modeling/MiceModeling">Designs of Immune Experiments</a></div> |
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Latest revision as of 22:56, 26 September 2013