Team:ZJU-China/models.htm

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<h2>RNA folding and 3D Structures</h2>
<h2>RNA folding and 3D Structures</h2>
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<h5>Introduction</h5>
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<h3>Introduction</h3>
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<p align="justify">For most small RNA molecules, secondary structure is enough for predicting their possible functions since their size limits their ability to fold into complex structures. However, our riboscaffold is a large one of 100~160 bp and has several arms. As in addition, our design of kissing loop is on the level of tertiary structure. So it is helpful if we can simulate RNA folding in silico.</p>
<p align="justify">For most small RNA molecules, secondary structure is enough for predicting their possible functions since their size limits their ability to fold into complex structures. However, our riboscaffold is a large one of 100~160 bp and has several arms. As in addition, our design of kissing loop is on the level of tertiary structure. So it is helpful if we can simulate RNA folding in silico.</p>
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<h5>Methods</h5>
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<h3>Methods</h3>
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<p align="justify">NAST/C2A [10] is a set of Python tools that can generate full-atomic 3D RNA structures from secondary structure information. NAST generates coarse grained 3D structures from secondary structure information, and C2A adds the full-atomic details to these coarse-grained models. PyOpenMM [11] was required, VMD [12] and PyMOL [13] was used to view the results and trajectories.</p>
<p align="justify">NAST/C2A [10] is a set of Python tools that can generate full-atomic 3D RNA structures from secondary structure information. NAST generates coarse grained 3D structures from secondary structure information, and C2A adds the full-atomic details to these coarse-grained models. PyOpenMM [11] was required, VMD [12] and PyMOL [13] was used to view the results and trajectories.</p>
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<p align="justify">Beginning with sequences and secondary structures, NAST generates 3D structures in two different ways. The first is to start an MD simulation from an unfolded circle state. The second is a more sophisticate approach that starts at a random position in the sequence, and adds residues to each end at a random plausible position. Details about the sequences and design strategy can be found here.</p>
<p align="justify">Beginning with sequences and secondary structures, NAST generates 3D structures in two different ways. The first is to start an MD simulation from an unfolded circle state. The second is a more sophisticate approach that starts at a random position in the sequence, and adds residues to each end at a random plausible position. Details about the sequences and design strategy can be found here.</p>
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<h5>Results</h5>
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<h3>Results</h3>
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<p align="justify">The following two movies about the folding process of D0 explain the two different ways of 3D structure prediction provided by NAST. </p>
<p align="justify">The following two movies about the folding process of D0 explain the two different ways of 3D structure prediction provided by NAST. </p>
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<h2>Docking</h2>
<h2>Docking</h2>
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<h5>Introduction</h5>
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<h3>Introduction</h3>
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<p align="justify">Docking is a method which predicts the preferred orientation and binding affinity of one molecule to a second when bound to each other to form a stable complex. Docking is frequently used to predict the binding orientation of small molecule drug candidates to their protein targets in order to in turn predict the affinity and activity of the small molecule. Hence docking plays an important role in the rational design of drugs.</p>
<p align="justify">Docking is a method which predicts the preferred orientation and binding affinity of one molecule to a second when bound to each other to form a stable complex. Docking is frequently used to predict the binding orientation of small molecule drug candidates to their protein targets in order to in turn predict the affinity and activity of the small molecule. Hence docking plays an important role in the rational design of drugs.</p>
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<p align="justify">In our cases, riboscaffolds are designed as targets of small ligands, so we can dock the ligand to the riboscaffold to find the binding site and evaluate the binding state. </p>
<p align="justify">In our cases, riboscaffolds are designed as targets of small ligands, so we can dock the ligand to the riboscaffold to find the binding site and evaluate the binding state. </p>
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<h5>Methods</h5>
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<h3>Methods</h3>
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<p align="justify">Although most docking algorithms and tools, as well as tutorials and documents are designed for drug-protein docking, we managed to find several approaches to conduct docking on RNA aptamers[1,2], which is a heating ground in the research of RNA targeting drugs. Among the popular docking tools, AutoDock package [3] has demonstrated its ability to dock compounds to RNA molecules [1]. In our approach, we docked theophylline to our riboscaffolds (with the predicted 3D structure) to search for the binding sites and construct ligand-riboscaffold complex for dynamic analysis.</p>
<p align="justify">Although most docking algorithms and tools, as well as tutorials and documents are designed for drug-protein docking, we managed to find several approaches to conduct docking on RNA aptamers[1,2], which is a heating ground in the research of RNA targeting drugs. Among the popular docking tools, AutoDock package [3] has demonstrated its ability to dock compounds to RNA molecules [1]. In our approach, we docked theophylline to our riboscaffolds (with the predicted 3D structure) to search for the binding sites and construct ligand-riboscaffold complex for dynamic analysis.</p>
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<p align="justify">Once the receptor and ligand are prepared, we can use the AutoDock 4.2 package. The grid box for site searching was created on different arms on our riboscaffolds according to their dimensions with the default 0.375 angstrom for spacing between the grid points. For each riboscaffold, 20 docking experiments were performed using the Lamarckian genetic algorithm conformational search, with the population size of 150, one million energy evaluations, and a maximum of 27 000 generations per run.</p>
<p align="justify">Once the receptor and ligand are prepared, we can use the AutoDock 4.2 package. The grid box for site searching was created on different arms on our riboscaffolds according to their dimensions with the default 0.375 angstrom for spacing between the grid points. For each riboscaffold, 20 docking experiments were performed using the Lamarckian genetic algorithm conformational search, with the population size of 150, one million energy evaluations, and a maximum of 27 000 generations per run.</p>
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<h5>Results</h5>
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<h3>Results</h3>
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<p align="justify"><img src="https://static.igem.org/mediawiki/igem.org/e/ee/Zju_model1_6.png" width="500px" /></p>
<p align="justify"><img src="https://static.igem.org/mediawiki/igem.org/e/ee/Zju_model1_6.png" width="500px" /></p>
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<h2>Molecular Dynamics</h2>
<h2>Molecular Dynamics</h2>
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<p align="justify">Molecular dynamics (MD) is a computer simulation of physical movements of atoms and molecules. The atoms and molecules are allowed to interact for a period of time, giving a view of the motion of the atoms by numerically solving the Newton's equations. The results of molecular dynamics simulations includes the trajectory of molecules and atoms in the system and other parameters such as energy potential, temperature and pressure fluctuations, number of hydrogen bonds of the system, which may be used to find the properties of such complex systems analytically. </p>
<p align="justify">Molecular dynamics (MD) is a computer simulation of physical movements of atoms and molecules. The atoms and molecules are allowed to interact for a period of time, giving a view of the motion of the atoms by numerically solving the Newton's equations. The results of molecular dynamics simulations includes the trajectory of molecules and atoms in the system and other parameters such as energy potential, temperature and pressure fluctuations, number of hydrogen bonds of the system, which may be used to find the properties of such complex systems analytically. </p>
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<h3>Methods</h3>
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<p align="justify">Here in our project, we use GROMACS 4.5 [5] to run MD and analyze the state of theophylline-riboscaffold complex. GROMACS is a versatile package to perform molecular dynamics on macromolecules like proteins, lipids and nucleic acids. It is fast, has multiple choices for force field, and comes with a large selection of flexible tools for trajectory analysis. </p>
<p align="justify">Here in our project, we use GROMACS 4.5 [5] to run MD and analyze the state of theophylline-riboscaffold complex. GROMACS is a versatile package to perform molecular dynamics on macromolecules like proteins, lipids and nucleic acids. It is fast, has multiple choices for force field, and comes with a large selection of flexible tools for trajectory analysis. </p>
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<p align="justify">After two phases of equilibration, the system has reached the desired temperature and pressure. So we will run MD again and get the products.</p>
<p align="justify">After two phases of equilibration, the system has reached the desired temperature and pressure. So we will run MD again and get the products.</p>
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<h5>Results</h5>
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<h3>Results</h3>
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<p align="justify"><img src="https://static.igem.org/mediawiki/igem.org/c/cd/Zju_model1_7.png" width="500px" /></p>
<p align="justify"><img src="https://static.igem.org/mediawiki/igem.org/c/cd/Zju_model1_7.png" width="500px" /></p>

Revision as of 09:35, 26 September 2012

MODELS

01 Molecular Modeling

02 Scaffold or Non-scaffold

03 Binding analysis