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| <ul> | | <ul> |
| <li><a href="#Analysis-Background">Background</a></li> | | <li><a href="#Analysis-Background">Background</a></li> |
− | <li><a href="#Analysis-Description">Description</a></li>
| |
| <li><a href="#Analysis-Model">Model</a></li> | | <li><a href="#Analysis-Model">Model</a></li> |
| + | <li><a href="#Analysis-Result">Result</a></li> |
| </ul> | | </ul> |
| </div> | | </div> |
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| <ul> | | <ul> |
| <li><a href="#Analysis-Background">Background</a></li> | | <li><a href="#Analysis-Background">Background</a></li> |
− | <li><a href="#Analysis-Description">Description</a></li>
| |
| <li><a href="#Analysis-Model">Model</a></li> | | <li><a href="#Analysis-Model">Model</a></li> |
| + | <li><a href="#Analysis-Result">Result</a></li> |
| </ul> | | </ul> |
| </div> | | </div> |
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| <p>To increase the accuracy and specificity of the detection, we developed an assay over our Paired dCas9 Reporter (PC Reporter) System to get more sequence information from the target genome in the purpose of a more reliable result. We designed m pairs of gRNA specific target sites as m markers in the MTB genome. To make sure if the idea mention above actually work, here we used the target gene and the mismatched gene to have a test, respectively. In experimental group, the gRNAs were used to detect the target gene, while in control group, the gRNA were used to detect the mismatched gene. And to reduce the random error, both the experimental and the control group were repeated n times, the result would be shown as the optical power signals, which is generated by our Paired dCas9 Reporter System. Then by comparing the intensity of the optical power signal corresponding to the target gene and mismatched gene, the difference can be seen directly. | | <p>To increase the accuracy and specificity of the detection, we developed an assay over our Paired dCas9 Reporter (PC Reporter) System to get more sequence information from the target genome in the purpose of a more reliable result. We designed m pairs of gRNA specific target sites as m markers in the MTB genome. To make sure if the idea mention above actually work, here we used the target gene and the mismatched gene to have a test, respectively. In experimental group, the gRNAs were used to detect the target gene, while in control group, the gRNA were used to detect the mismatched gene. And to reduce the random error, both the experimental and the control group were repeated n times, the result would be shown as the optical power signals, which is generated by our Paired dCas9 Reporter System. Then by comparing the intensity of the optical power signal corresponding to the target gene and mismatched gene, the difference can be seen directly. |
| </p> | | </p> |
− | </div>
| |
− | <!--Analysis-Description-->
| |
− | <!-- Classic Heading -->
| |
− | <div id="Analysis-Description" class="col-md-12" style="padding:0">
| |
− | <h3 class="classic-title" style="margin-top:50px"><span>Description</span></h3>
| |
| <ul class='disc'> | | <ul class='disc'> |
| <li>There is no recognition site for gRNA in the mismatched gene.</li> | | <li>There is no recognition site for gRNA in the mismatched gene.</li> |
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| <li>The measure values from n times repeated test compose the <img alt='Peking-Analysis-X_iY_i.gif' src="https://static.igem.org/mediawiki/2015/c/cf/Peking-Analysis-X_iY_i.gif" class='formula-inline'> sample set, respectively, and the sample sets are both small.</li> | | <li>The measure values from n times repeated test compose the <img alt='Peking-Analysis-X_iY_i.gif' src="https://static.igem.org/mediawiki/2015/c/cf/Peking-Analysis-X_iY_i.gif" class='formula-inline'> sample set, respectively, and the sample sets are both small.</li> |
| </ul> | | </ul> |
− | </div>
| |
| </div> | | </div> |
− | <!--End of Analysis-Description--> | + | <!--Analysis-Model--> |
− | <!--Start Model--> | + | <!-- Classic Heading --> |
| <div id="Analysis-Model" class="col-md-12" style="padding:0"> | | <div id="Analysis-Model" class="col-md-12" style="padding:0"> |
| <h3 class="classic-title" style="margin-top:50px"><span>Model</span></h3> | | <h3 class="classic-title" style="margin-top:50px"><span>Model</span></h3> |
− | <div> | + | <h4><em>Model: Wilcoxon Rank Sum Test of Block Design</em></h4> |
− | <h4><em>Model: Wilcoxon Rank Sum Test of Block Design</em></h4>
| + | |
| <p>In view of the unknown distributions and different variances of the signals by our Paired dCas9 Reporter System, we chose a non-parametric statistics method called Wilcoxon Rank Sum Test of Block Design with the data Rank instead of ANOVA. <br> | | <p>In view of the unknown distributions and different variances of the signals by our Paired dCas9 Reporter System, we chose a non-parametric statistics method called Wilcoxon Rank Sum Test of Block Design with the data Rank instead of ANOVA. <br> |
| In the Block Design, we regarded the same gRNA detection of two treatment, i.e. target and mismatch DNA, as a block. To test the difference between two treatments, we test the null hypothesis that two treatment have no difference. The Wilcoxon Rank Sum statistics <img alt='Peking-Analysis-W_j.gif' src="https://static.igem.org/mediawiki/2015/1/15/Peking-Analysis-W_j.gif" class='formula-inline'>of each block is calculated first by | | In the Block Design, we regarded the same gRNA detection of two treatment, i.e. target and mismatch DNA, as a block. To test the difference between two treatments, we test the null hypothesis that two treatment have no difference. The Wilcoxon Rank Sum statistics <img alt='Peking-Analysis-W_j.gif' src="https://static.igem.org/mediawiki/2015/1/15/Peking-Analysis-W_j.gif" class='formula-inline'>of each block is calculated first by |
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| So actually we use the statistics <img class='big-formula-inline' alt="Peking-Analysis-W_BD_statistics.gif" src="https://static.igem.org/mediawiki/2015/6/68/Peking-Analysis-W_BD_statistics.gif">, also we can calculate the p-value <img class='formula-inline' alt="Peking-Analysis-W_BD_p_value.gif" src="https://static.igem.org/mediawiki/2015/d/da/Peking-Analysis-W_BD_p_value.gif">, where <img class='formula-inline' alt="Peking-Analysis-Phi%28x%29.gif" src="https://static.igem.org/mediawiki/2015/1/19/Peking-Analysis-Phi%28x%29.gif"> is the distribution function of the standard normal distribution. If p-value is less than 0.01 or <img class='formula-inline' alt="Peking-Analysis-W_BD_gt_2.33.gif" src="https://static.igem.org/mediawiki/2015/2/20/Peking-Analysis-W_BD_gt_2.33.gif">, then we accept the alternative hypothesis that the two treatment, i.e. target and mismatch DNA, is highly statistic significantly.</p> | | So actually we use the statistics <img class='big-formula-inline' alt="Peking-Analysis-W_BD_statistics.gif" src="https://static.igem.org/mediawiki/2015/6/68/Peking-Analysis-W_BD_statistics.gif">, also we can calculate the p-value <img class='formula-inline' alt="Peking-Analysis-W_BD_p_value.gif" src="https://static.igem.org/mediawiki/2015/d/da/Peking-Analysis-W_BD_p_value.gif">, where <img class='formula-inline' alt="Peking-Analysis-Phi%28x%29.gif" src="https://static.igem.org/mediawiki/2015/1/19/Peking-Analysis-Phi%28x%29.gif"> is the distribution function of the standard normal distribution. If p-value is less than 0.01 or <img class='formula-inline' alt="Peking-Analysis-W_BD_gt_2.33.gif" src="https://static.igem.org/mediawiki/2015/2/20/Peking-Analysis-W_BD_gt_2.33.gif">, then we accept the alternative hypothesis that the two treatment, i.e. target and mismatch DNA, is highly statistic significantly.</p> |
| </div> | | </div> |
− | </div>
| + | </div> |
| + | <!--End of Analysis-Model--> |
| + | <!--Start Result--> |
| + | <div id="Analysis-Result" class="col-md-12" style="padding:0"> |
| + | <h3 class="classic-title" style="margin-top:50px"><span>Result</span></h3> |
| <div> | | <div> |
| <h4><em>Result</em></h4> | | <h4><em>Result</em></h4> |
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| </div> | | </div> |
| </div> | | </div> |
− | </div><!-- End Model--> | + | </div><!-- End Result--> |
| <div id="Analysis-Ref" class="col-md-12" style="padding:0"> | | <div id="Analysis-Ref" class="col-md-12" style="padding:0"> |
| <h3 class="classic-title"><span>Reference</span></h3> | | <h3 class="classic-title"><span>Reference</span></h3> |