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| + | font-family: arial, sans-serif; |
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| + | width: 100%; |
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| + | td, th { |
| + | border: 1px solid #dddddd; |
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| + | padding: 8px; |
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| + | tr:nth-child(even) { |
| + | background-color: #dddddd; |
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| + | </style> |
| + | </head> |
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| <table> | | <table> |
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| <td>1. Ligand Preparation</td> | | <td>1. Ligand Preparation</td> |
| <td>Manually via <a href="https://avogadro.cc/">Avogadro</a></td> | | <td>Manually via <a href="https://avogadro.cc/">Avogadro</a></td> |
− | <td>Due to the novelty of our amino acid, no information on the ligand is available in databases. Therefore, all information has to be provided manually and then generate a conformer ensemble, containing for example all energetically useful arrangements of atoms within the molecule.</td> | + | <td>Due to the novelty of our amino acid, no information on the ligand is available in databases. |
| + | Therefore, all information has to be provided manually and then generate a conformer ensemble, containing |
| + | for example all energetically useful arrangements of atoms within the molecule.</td> |
| </tr> | | </tr> |
| <tr> | | <tr> |
| <td>2. Scaffold categorization</td> | | <td>2. Scaffold categorization</td> |
| <td>ROSETTA protocol</td> | | <td>ROSETTA protocol</td> |
− | <td>The scaffold describes the rough layout of the synthetase. We downloaded the scaffold <a href="http://www.rcsb.org/pdb/explore/explore.do?structureId=1j1u">1J1U </a>, the aaRS of <i Methalonococcus janischii </i> as a template, and then relaxed its structure to improve the outcome of the ROSETTA algorithm.</td> | + | <td>The scaffold describes the rough layout of the synthetase. We downloaded the scaffold |
| + | <a href="http://www.rcsb.org/pdb/explore/explore.do?structureId=1j1u">1J1U </a>, the aaRS of <i> Methalonococcus janischii </i> |
| + | as a template, and then relaxed its structure to improve the outcome of the ROSETTA algorithm.</td> |
| </tr> | | </tr> |
| <tr> | | <tr> |
| <td>3. Set simulation constrains</td> | | <td>3. Set simulation constrains</td> |
| <td>Manually via ROSETTA</td> | | <td>Manually via ROSETTA</td> |
− | <td>Constrains with regards to possible mutations of the synthetase ensure that the generated sequences fit to the amino acid. For example, we constrained the distance between certain atoms and their angle to a range optimal for hydrogen bonds.</td> | + | <td>Constrains with regards to possible mutations of the synthetase ensure that the generated sequences fit to the amino acid. |
| + | For example, we constrained the distance between certain atoms and their angle to a range optimal for hydrogen bonds.</td> |
| </tr> | | </tr> |
| <tr> | | <tr> |
| <td>4. <a href="https://www.rosettacommons.org/manuals/archive/rosetta3.5_user_guide/d7/dfc/match.html">Enzyme Matching</a></td> | | <td>4. <a href="https://www.rosettacommons.org/manuals/archive/rosetta3.5_user_guide/d7/dfc/match.html">Enzyme Matching</a></td> |
| <td>ROSETTA protocol</td> | | <td>ROSETTA protocol</td> |
− | <td>ROSETTA combines information about the ligand and constrains to find possible hydrogen bonding partners and propose the shape of the scaffold within the set constraints.</td> | + | <td>ROSETTA combines information about the ligand and constrains to find possible hydrogen bonding partners and propose the shape |
| + | of the scaffold within the set constraints.</td> |
| </tr> | | </tr> |
| <tr> | | <tr> |
| <td>5. <a href="https://www.rosettacommons.org/manuals/archive/rosetta3.5_user_guide/d6/dbc/enzyme_design.html">Enzyme Design</a></td> | | <td>5. <a href="https://www.rosettacommons.org/manuals/archive/rosetta3.5_user_guide/d6/dbc/enzyme_design.html">Enzyme Design</a></td> |
| <td>ROSETTA protocol</td> | | <td>ROSETTA protocol</td> |
− | <td>An algorithm uses the information from the previous step and information on the ligand to simulate the mutation process and generate sequences for optimized scaffolds with corresponding scores as measures of fit.</td> | + | <td>An algorithm uses the information from the previous step and information on the ligand to simulate the mutation process and |
| + | generate sequences for optimized scaffolds with corresponding scores as measures of fit.</td> |
| </tr> | | </tr> |
| <tr> | | <tr> |
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| <td>7. Evaluate results in vivo</td> | | <td>7. Evaluate results in vivo</td> |
| <td>Manually</td> | | <td>Manually</td> |
− | <td>The synthetases are validated in the lab with the corresponding ncAA via a <a href="https://2017.igem.org/Team:Bielefeld-CeBiTec/Project/translational_system/library_and_selection">positive-negative selection system.</a>. </td> | + | <td>The synthetases are validated in the lab with the corresponding ncAA via a |
| + | <a href="https://2017.igem.org/Team:Bielefeld-CeBiTec/Project/translational_system/library_and_selection">positive-negative selection system.</a> </td> |
| </tr> | | </tr> |
| </table> | | </table> |
| | | |
− | <div class="article">
| + | <p class="figure subtitle"><b>Table 1: Steps of our modeling project</b><br> Our modeling project consists of seven main steps, combining <i>in silico</i> |
− | As a result, we obtained a couple of sequences of possible aaRS candidates, which we evaluated, based on a ROSETTA score, and ordered via gene synthesis.
| + | and <i>in vivo</i> components.</p> |
− | Figure A describes our modeling project as a whole
| + | |
− | </div> | + | |
| </div> | | </div> |
| <div class="bevel bl"></div> | | <div class="bevel bl"></div> |
| </div> | | </div> |
− |
| |
| | | |
| <div class="contentbox"> | | <div class="contentbox"> |
References
Liu, W., Brock, A., Chen, S., Chen, S., Schultz, P. G. ,(2007). Genetic incorporation of unnatural amino acids into proteins in mammalian cells. Nature methods, 4(3), 239-244.
Richter, F., Leaver-Fay, A., Khare, S. D., Bjelic, S., Baker, D. (2011). De novo enzyme design using Rosetta3. PloS one, 6(5): e19230.
Simons, K. T., Kooperberg, C., Huang, E., Baker, D. (1997). Assembly of protein tertiary structures from fragments with similar local sequences using simulated annealing and Bayesian scoring functions. Journal of molecular biology, 268(1), 209-225.