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Protein Structure Prediction

Protein Structure Prediction. Reporter: Chia-Chang Wang Date: April 1, 2005. Introduction. Why do we need protein structure prediction  X-ray Crystallography, Nuclear Magnetic Resource(NMR) and Molecular Dynamics(MD)

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Protein Structure Prediction

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  1. Protein Structure Prediction Reporter: Chia-Chang Wang Date: April 1, 2005

  2. Introduction • Why do we need protein structure prediction • X-ray Crystallography, Nuclear Magnetic Resource(NMR) and Molecular Dynamics(MD) • Expensive, time-consumong, sensitive to the experimental conditions and limit to small or medium protein

  3. Prediction of Protein Structures • Homology Modeling Homology modeling, which is also called knowledge base modeling, is based on the theory of the property of reservation for homology protein tertiary structure • Ab Initio Methods These methods can be contrasted to the threading methods for fold assignment without reference from other known structures.

  4. Homology Modeling • Presuppoition: • Little changes on protein sequence would also alter little changes on structure. • protein identity > 30%

  5. Homology Modeling(cont.) • General Processes: • Datebase search and template select • Multiple sequence alignment • Framework construction, loop structure and side-chains simulation • Energy minimization • Reasonableness evaluation

  6. Homology Modeling(cont.) • Datebase search • Swiss-prot, PDB • Classification: CATH,SCOP • Template select • Resolution < 3Å • Complete protein • Closest functional site with the target unknown protein structure, such as the ligand-bound receptor, active site of an enzyme, etc

  7. Homology Modeling(cont.)

  8. Homology Modeling(cont.) • Multiple sequence alingment • Alignment algorithm, ClustalW • Structural superposition • Secondary structure prediction Structural reserved blocks

  9. Homology Modeling(cont.) • Score function for alignment of protein sequences

  10. Homology Modeling(cont.) • Framework Construction • Rapid-body assembly • Mapping from template protein directly • Segment matching(coordinate reconstruction) • Satisfaction of spatial restraints

  11. Homology Modeling(cont.) • Side-chain simulation • Mainly for predicting the variation of amino acids side chains • Two kind of database: • Backbone-dependence rotamer library • Dihedral angle probabilities, dihedral angle value, etc • Backbone-independence library • Monte Carlo or energy-minization algorithms

  12. Homology Modeling(cont.) • Energy minimization • Etotaol = Estretching+Ebending+Edihedral+Eelectrostatics+… • Force fields: CHARMM,AMBER,CVFF,CFF91,etc • Local minimum  Evaluate the reasonableness of structure

  13. Ab initio Method • Score functions • Evaluate balance of energy • Mostly, electrostatics, VdW and H-bonds are considered. • hydrophobic and hydrophilic • Efficient searching methods • Genetic Algorithm • Ant Colony Optimization • Other Monte Carlo algorithms

  14. Folding Problem • Minimizing the total free energy • HP model • Polar(P) & Hydrophobic(H) • In rough, conformations tend to have the hydrophobic amino acid residues inside surrounded by hydrophilic amino acid residues. H H P H H P

  15. Folding Problem(Cont.)

  16. Lattice Model Cubic Lattice Model Face Center Cubic Model (Triangular)

  17. Cubic Model v.s. FCC Model • Measured by RMSD(Å) • Data Source: PDB

  18. Conclusion • The homology is based on those Presuppoitions. • The ab initio methods is limited by their score functions and searching methods. • No current ab initio protein folding algorithm is able to obtain very high accuracy (<3.0Å) for large protein structures

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