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Protein Structure Prediction
Protein
Sequence +
Structure
By:-
KARAMVEER
M.Sc. LIFE SCIENCES SPECIALIZATION
WITH BIOINFORMATICS
WEL-COME
1
Different Levels of Protein Structure
2
METHODS FOR PROTEIN STRUCTURE PREDICTION
1. EXPERIMANTAL METHODS
2. COMPUTIONAL METHODS
3
Experimental Protein StructureExperimental Protein Structure
DeterminationDetermination
• X-ray crystallographyX-ray crystallography
– most accuratemost accurate
– in vitroin vitro
– needs crystalsneeds crystals
– ~$100-200K per structure~$100-200K per structure
– time consuming and expansive.time consuming and expansive.
• NMRNMR
– fairly accuratefairly accurate
– in vivoin vivo
– no need for crystalsno need for crystals
– limited to very small proteinslimited to very small proteins
– time consuming and hardly .time consuming and hardly .
• Electron-microscopyElectron-microscopy
– imaging technologyimaging technology
– low resolutionlow resolution
– not more observable.not more observable.
4
Computational method
• Major Techniques
– Template Modeling
• Homology Modeling
• Threading
• Both are use known protein structure
– Template-Free Modeling
• ab initio Methods
– Physics-Based
– Knowledge-Based
– without use of known protein structure
5
Homology Modelling
• also called comparitive modeling.
• predict protein structures based on sequence
homology with known structure.
• Principle:-
• if two proteins share a high enough sequence
similarity,they are likely to have very similar
three dimensional structure.
• modeling server:-modbase,swiss-model etc.
• Fail in absence of homology
6
Homology Modelling
 six steps:-
1.template selection (BLAST and FASTA)
2.sequence alignment (T-coffee and PRALINE)
3.model building (CODA)
(a)backbone model building
(b)loop modeling
4.side chain refinement (SCWRL)
5.model refinement using energy function (GROMOS)
6.model evalution (PROCHECK & WHAT IF)
• Has been observed that even proteins with 30% sequence identity
fold into similar structures
• Does not work for remote homologs (< 30% pairwise identity)
7
Homology Modeling: How it works
o Find template
o Align target sequence
with template
o Generate model:
- add loops
- add sidechains
o Refine model
8
Threading
• Given:
– sequence of protein 'P 'with unknown structure
– Database of known folds
• Find:
– Most plausible fold for 'P'
– Evaluate quality of such arrangement
• Places the residues of unknown 'P' along the
backbone of a known structure and determines
stability of side chains in that arrangement
9
Threading and fold recognition
• predicts the structural fold of unknown protein
sequences by fitting the sequence into a
structural database and selecting the best
fitting fold.
• we can identify structurally similar proteins
even without detectablesequence similarity.
• two algorithms:-
1.pairwise energy based method
2.profile based method
10
1.Pairwise energy based method (threading)
• Searched for a structural fold database to find the best
matching structural fold using energy based criteria.
• Using dynamic programming and heuristic approaches.
• Calculate energy for raw model.
• Lowest energy fold that correspond to the structurally a
group of most compatible fold.
2.profile based method (fold recognition)
• A profile is constructed for related protein structures.
• Generated by superimposition of the structures to
expose corresponding residues.
• Secondary structure type,polarity,hydrophobicity.
• The protein fold to be predicted does not exist in the
fold library,method will fail. 3D-PSSM
http://www.sbg.bio.ic.ac.uk/~3dpssm/
11
12
13
Ab InitioAb Initio Protein Structure PredictionProtein Structure Prediction
• Ab initio protein structure prediction methods build protein 3D
structures from sequence based on physical principles.
• Importance
– The ab initio methods are important even though they are
computationally demanding
– Ab initio methods predict protein structure based on physical models,
they are indispensable complementary methods to Knowledge-based
approach.
Knowledge-based approach would fail in following conditions:
• Structure homologues are not available
• Possible undiscovered new fold exists.
Anfinsen’s theory: Protein native structure corresponds to the
state with the lowest free energy of the protein-solvent system.
Rosetta
• web server for protein 3d structure prediction.
• mini threading method.
 breaks down the quary sequence into many short segments (3
to 9).
 predicts the secondary structure of small segments using
HMMSTR.
 Segments with assigned secondary structure are subsequently
assembled into a 3D configuration.
 random combination of fragments, a large number of models
are built and their over all energy potential calculated.
 conformation with lowest free energy is choosen as the best
model.
14
15o CASP
Protein Sequence
Database Searching
Multiple Sequence
Alignment
Homologue
in PDB
Homology
Modelling
Secondary
Structure
Prediction
No
Yes
3-D Protein Model
Fold
Recognition
Predicted
Fold
Sequence-Structure
Alignment
Ab-initio
Structure
Prediction
No
Yes
Overall Approach
16
Reference
• http://www.golujain/biology-protein-
structure-in-cloud-computing
• http://infoman.teikav.edu.gr/~stpapad/Ess
entialBioinformatics.pdf
• https://en.wikipedia.org/wiki/Ab_Initio_Soft
ware
• Dictionary of bioinformatics/ by k.
manikandakumar.
17
18.

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methods for protein structure prediction

  • 1. Protein Structure Prediction Protein Sequence + Structure By:- KARAMVEER M.Sc. LIFE SCIENCES SPECIALIZATION WITH BIOINFORMATICS WEL-COME 1
  • 2. Different Levels of Protein Structure 2
  • 3. METHODS FOR PROTEIN STRUCTURE PREDICTION 1. EXPERIMANTAL METHODS 2. COMPUTIONAL METHODS 3
  • 4. Experimental Protein StructureExperimental Protein Structure DeterminationDetermination • X-ray crystallographyX-ray crystallography – most accuratemost accurate – in vitroin vitro – needs crystalsneeds crystals – ~$100-200K per structure~$100-200K per structure – time consuming and expansive.time consuming and expansive. • NMRNMR – fairly accuratefairly accurate – in vivoin vivo – no need for crystalsno need for crystals – limited to very small proteinslimited to very small proteins – time consuming and hardly .time consuming and hardly . • Electron-microscopyElectron-microscopy – imaging technologyimaging technology – low resolutionlow resolution – not more observable.not more observable. 4
  • 5. Computational method • Major Techniques – Template Modeling • Homology Modeling • Threading • Both are use known protein structure – Template-Free Modeling • ab initio Methods – Physics-Based – Knowledge-Based – without use of known protein structure 5
  • 6. Homology Modelling • also called comparitive modeling. • predict protein structures based on sequence homology with known structure. • Principle:- • if two proteins share a high enough sequence similarity,they are likely to have very similar three dimensional structure. • modeling server:-modbase,swiss-model etc. • Fail in absence of homology 6
  • 7. Homology Modelling  six steps:- 1.template selection (BLAST and FASTA) 2.sequence alignment (T-coffee and PRALINE) 3.model building (CODA) (a)backbone model building (b)loop modeling 4.side chain refinement (SCWRL) 5.model refinement using energy function (GROMOS) 6.model evalution (PROCHECK & WHAT IF) • Has been observed that even proteins with 30% sequence identity fold into similar structures • Does not work for remote homologs (< 30% pairwise identity) 7
  • 8. Homology Modeling: How it works o Find template o Align target sequence with template o Generate model: - add loops - add sidechains o Refine model 8
  • 9. Threading • Given: – sequence of protein 'P 'with unknown structure – Database of known folds • Find: – Most plausible fold for 'P' – Evaluate quality of such arrangement • Places the residues of unknown 'P' along the backbone of a known structure and determines stability of side chains in that arrangement 9
  • 10. Threading and fold recognition • predicts the structural fold of unknown protein sequences by fitting the sequence into a structural database and selecting the best fitting fold. • we can identify structurally similar proteins even without detectablesequence similarity. • two algorithms:- 1.pairwise energy based method 2.profile based method 10
  • 11. 1.Pairwise energy based method (threading) • Searched for a structural fold database to find the best matching structural fold using energy based criteria. • Using dynamic programming and heuristic approaches. • Calculate energy for raw model. • Lowest energy fold that correspond to the structurally a group of most compatible fold. 2.profile based method (fold recognition) • A profile is constructed for related protein structures. • Generated by superimposition of the structures to expose corresponding residues. • Secondary structure type,polarity,hydrophobicity. • The protein fold to be predicted does not exist in the fold library,method will fail. 3D-PSSM http://www.sbg.bio.ic.ac.uk/~3dpssm/ 11
  • 12. 12
  • 13. 13 Ab InitioAb Initio Protein Structure PredictionProtein Structure Prediction • Ab initio protein structure prediction methods build protein 3D structures from sequence based on physical principles. • Importance – The ab initio methods are important even though they are computationally demanding – Ab initio methods predict protein structure based on physical models, they are indispensable complementary methods to Knowledge-based approach. Knowledge-based approach would fail in following conditions: • Structure homologues are not available • Possible undiscovered new fold exists. Anfinsen’s theory: Protein native structure corresponds to the state with the lowest free energy of the protein-solvent system.
  • 14. Rosetta • web server for protein 3d structure prediction. • mini threading method.  breaks down the quary sequence into many short segments (3 to 9).  predicts the secondary structure of small segments using HMMSTR.  Segments with assigned secondary structure are subsequently assembled into a 3D configuration.  random combination of fragments, a large number of models are built and their over all energy potential calculated.  conformation with lowest free energy is choosen as the best model. 14
  • 16. Protein Sequence Database Searching Multiple Sequence Alignment Homologue in PDB Homology Modelling Secondary Structure Prediction No Yes 3-D Protein Model Fold Recognition Predicted Fold Sequence-Structure Alignment Ab-initio Structure Prediction No Yes Overall Approach 16
  • 17. Reference • http://www.golujain/biology-protein- structure-in-cloud-computing • http://infoman.teikav.edu.gr/~stpapad/Ess entialBioinformatics.pdf • https://en.wikipedia.org/wiki/Ab_Initio_Soft ware • Dictionary of bioinformatics/ by k. manikandakumar. 17
  • 18. 18.