Team:USTC CHINA/Modeling/DesignsofImmuneExperiments
From 2013.igem.org
(Difference between revisions)
Line 71: | Line 71: | ||
<h1>Sweeping factors</h1> | <h1>Sweeping factors</h1> | ||
<p align="justify"> | <p align="justify"> | ||
- | The final effects of our T-vaccine | + | The final effects of our T-vaccine hinge on various factors, in fact over ten factors. The more factors, the more runs. In our laboratory, any experiment involving over five factors is hard to design, whatever the methodology. 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 then 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 then find out levels of each factors. In our design, we finally selected eight factor as follows:</br> | ||
The rate of four engineered bacteria, which produce antigen, LTB, KNFα and reporter respectively;(We selected the concentration of antigen as our standard, fixed at 1, and the rates of other three bacteria to engineered bacteria produced antigen provides three independent factors);</p> | The rate of four engineered bacteria, which produce antigen, LTB, KNFα and reporter respectively;(We selected the concentration of antigen as our standard, fixed at 1, and the rates of other three bacteria to engineered bacteria produced antigen provides three independent factors);</p> | ||
<ul> | <ul> | ||
- | <li>The area of the sticky | + | <li>The area of the sticky patch;</li> |
<li>The concentration of bacteria per unit area;</li> | <li>The concentration of bacteria per unit area;</li> | ||
<li>The body temperature of the vaccines;</li> | <li>The body temperature of the vaccines;</li> | ||
Line 81: | Line 81: | ||
<li>The molecule weight of the antigen;</li> | <li>The molecule weight of the antigen;</li> | ||
</ul></br> | </ul></br> | ||
- | The ranges of these factor | + | The ranges of these factor are given as follows:</li> |
<div align="center"> | <div align="center"> | ||
Line 134: | Line 134: | ||
The classification standards of DOE methods are not unified, and according to one classification the DOE methods can be classified into three plots:</br> | The classification standards of DOE methods are not unified, and according to one classification the DOE methods can be classified into three plots:</br> | ||
Factorial Design: 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 Design: 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> | ||
- | Response Surface Design: Response Surface utilizes response surface and excels in data analysis. </br> | + | Response Surface Design: Response Surface Design utilizes response surface and excels in data analysis. </br> |
- | Taguchi Design: Taguchi Design utilizes orthogonal | + | Taguchi Design: Taguchi Design utilizes orthogonal tables to decrease runs, and emphasizes the stability of qualities. Some mathematicians doubt the accuracy of this method, but its wide success has proven its power.</br> |
We have tried them all in our project.</br> | We have tried them all in our project.</br> | ||
Line 145: | Line 145: | ||
<h1>Factorial Designs</h1> | <h1>Factorial Designs</h1> | ||
<p align="justify"> | <p align="justify"> | ||
- | To some extent, all DOE methods are branches of Factorial Design. The easiest subplot of Factorial Designs is Full Factorial Design, | + | To some extent, all DOE methods are branches of Factorial Design. The easiest subplot of Factorial Designs is Full Factorial Design, which means making a list of all combinations of all levels, which in fact tries nothing to minimize the runs. Surely the overall runs of Full Factorial Design is larger than any other method, but 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:</p> | 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:</p> | ||
Line 194: | Line 194: | ||
<p align="justify"> | <p align="justify"> | ||
- | Next we turned to traditional Factional Factorial Design. 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 | + | Next we turned to traditional Factional Factorial Design. 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 others.</br> |
Here we got a half Factional Factorial Design and a quater one, and the numbers of runs are 128 and 64, separately.</br> | Here we got a half Factional Factorial Design and a quater one, and the numbers of runs are 128 and 64, separately.</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/e/ed/Factorial_Designs_64runs.XLS"> Factorial Designs 64runs</a></br> | ||
Line 208: | Line 208: | ||
<h1>Plackett-Burman Design</h1> | <h1>Plackett-Burman Design</h1> | ||
<p align="justify"> | <p align="justify"> | ||
- | As an important subplot of Factorial Design, 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, | + | As an important subplot of Factorial Design, 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, although 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 works as preparation for 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 one still requires further designs.</br> | Naturally the levels of all factors were two. On most occasions it works as preparation for 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 one 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> |
Revision as of 15:19, 25 October 2013