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BCB 444/544

BCB 444/544. Lab 7 Protein Structure Prediction Oct 11, 2007. Chp 14 - Secondary Structure Prediction. SECTION V STRUCTURAL BIOINFORMATICS Xiong: Chp 14 Protein Secondary Structure Prediction Secondary Structure Prediction for Globular Proteins

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BCB 444/544

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  1. BCB 444/544 Lab 7 Protein Structure Prediction Oct 11, 2007 BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  2. Chp 14 - Secondary Structure Prediction SECTION V STRUCTURAL BIOINFORMATICS Xiong: Chp 14 Protein Secondary Structure Prediction • Secondary Structure Prediction for Globular Proteins • Secondary Structure Prediction for Transmembrane Proteins • Coiled-Coil Prediction BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  3. Secondary Structure Prediction Has become highly accurate in recent years (>85%) • Usually 3 (or 4) state predictions: • H = -helix • E = -strand • C = coil (or loop) • (T = turn) BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  4. Secondary Structure Prediction Methods • 1st Generation methods Ab initio - used relatively small dataset of structures available Chou-Fasman - based on amino acid propensities (3-state) GOR - also propensity-based (4-state) • 2nd Generation methods based on much larger datasets of structures now available GOR II, III, IV, SOPM, GOR V, FDM • 3rd Generation methods Homology-based & Neural network based PHD, PSIPRED, SSPRO, PROF, HMMSTR, CDM • Meta-Servers combine several different methods Consensus & Ensemble based JPRED, PredictProtein, Proteus BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  5. Secondary Structure Prediction Servers Prediction Evaluation? • Q3 score - % of residues correctly predicted (3-state) in cross-validation experiments Best results? Meta-servers • http://expasy.org/tools/(scroll for 2' structure prediction) • http://www.russell.embl-heidelberg.de/gtsp/secstrucpred.html • JPred www.compbio.dundee.ac.uk/~www-jpred • PredictProtein http://www.predictprotein.org/Rost, Columbia Best "individual" programs? ?? • CDM http://gor.bb.iastate.edu/cdm/ Sen…Jernigan, ISU • FDM (not available separately as server) Cheng…Jernigan, ISU • GOR Vhttp://gor.bb.iastate.edu/ Kloczkowsky…Jernigan, ISU BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  6. Consensus Data Mining (CDM) • Developed by Jernigan Group at ISU • Basic premise: combination of 2 complementary methods can enhance performance by harnessing distinct advantages of both methods; combines FDM & GOR V: • FDM - Fragment Data Mining - exploits availability of sequence-similar fragments in the PDB, which can lead to highly accurate prediction - much better than GOR V - for such fragments, but such fragments are not available for many cases • GOR V - Garnier, Osguthorpe, Robson V - predicts secondary structure of less similar fragments with good performance; these are protein fragments for which FDM method cannot find suitable structures • For references & additional details: http://gor.bb.iastate.edu/cdm/ BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  7. Secondary Structure Prediction: for Different Types of Proteins/Domains For Complete proteins: Globular Proteins - use methods previously described Transmembrane (TMM) Proteins - use special methods (next slides) For Structural Domains:many under development: Coiled-Coil Domains (Protein interaction domains) Zinc Finger Domains (DNA binding domains), others… BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  8. SS Prediction for Transmembrane Proteins Transmembrane (TM) Proteins • Only a few in the PDB - but ~ 30% of cellular proteins are membrane-associated ! • Hard to determine experimentally, so prediction important • TM domains are relatively 'easy' to predict! Why? constraints due to hydrophobic environment 2 main classes of TM proteins: -helical - barrel BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  9. SS Prediction for TM -Helices -Helical TM domains: • Helices are 17-25 amino acids long (span the membrane) • Predominantly hydrophobic residues • Helices oriented perpendicular to membrane • Orientation can be predicted using "positive inside" rule Residues at cytosolic (inside or cytoplasmic) side of TM helix, near hydrophobic anchor are more positively charged than those on lumenal (inside an organelle in eukaryotes) or periplasmic side (space between inner & outer membrane in gram-negative bacteria) • Alternating polar & hydrophobic residues provide clues to interactions among helices within membrane Servers? • TMHMM or HMMTOP - 70% accuracy - confused by hydrophobic signal peptides (short hydrophobic sequences that target proteins to the endoplasmic reticulum, ER) • Phobius - 94% accuracy - uses distinct HMM models for TM helices & signal peptide sequences BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  10. SS Prediction for TM -Barrels -Barrel TM domains:  • -strands are amphipathic (partly hydrophobic, partly hydrophilic) • Strands are 10 - 22 amino acids long • Every 2nd residue is hydrophobic, facing lipid bilayer • Other residues are hydrophilic, facing "pore" or opening Servers?Harder problem, fewer servers… TBBPred - uses NN or SVM (more on these ML methods later) Accuracy ? BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  11. Chp 15 - Tertiary Structure Prediction SECTION V STRUCTURAL BIOINFORMATICS Xiong: Chp 15 Protein Tertiary Structure Prediction • Methods • Homology Modeling • Threading and Fold Recognition • Ab Initio Protein Structural Prediction • CASP BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  12. Protein Tertiary Structure Prediction 3 Major Methods: • Homology Modeling (easiest!) • Threading and Fold Recognition (harder) • Ab Initio Protein Structural Prediction (really hard) BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  13. Comparative Modeling? Comparative modeling - term is sometimes used interchangeably with homology modeling, but also sometimes used to mean bothhomology modeling and/or threading/fold recognition BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  14. Ab Initio Prediction • Develop energy function • bond energy • bond angle energy • dihedral angle energy • van der Waals energy • electrostatic energy • Calculate structure by minimizing energy function (usually Molecular Dynamics or Monte Carlo methods) • Ab initio prediction - impractical for most real (long) proteins • Computationally? very expensive • Accuracy? Usually poor for all except short peptides • (but much improvement recently!) Provides both folding pathway & folded structure BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  15. Comparative Modeling Two types: 1) Homology modeling 2) Threading (fold recognition) Both rely on availability of experimentally determined structures that are "homologous" or at least structurally very similar to target Provide folded structure only BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  16. Homology Modeling • Identify homologous protein sequences (-BLAST) • Among available structures (in PDB), choose one with closest sequence to target as template (can combine steps 1 & 2 by using PDB-BLAST) • Build model by placing target sequence residues in corresponding positions of homologous structure & refine by "tweaking" modeled structure (energy minimization) • Homology modeling -works "well" • Computationally? "relatively" inexpensive • Accuracy?higher sequence identity  better model • Requires ~30% sequence identity with sequence for which structure is known BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  17. Threading - Fold Recognition • Develop energy function • Develop template library • Align target sequence with each template & score • Identify top scoring template (1D to 3D alignment) • Refine structure as in homology modeling • Threading - works "sometimes" • Computationally? Can be expensive or cheap, depends on energy function & whether "all atom" or "backbone only" threading • Accuracy? in theory, should not depend on sequence identity (should depend on quality of template library & "luck") • Usually, higher sequence identity to protein of known structure  better model Identify “best” fit between target sequence & template structure BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

  18. Today's Lab: • Homology Modeling - using SWISS-MODEL • http://swissmodel.expasy.org//SWISS-MODEL.html • Threading - using 3-D JURY(BioinfoBank, a METAserver) • http://meta.bioinfo.pl/submit_wizard.pl • Take a look at CASP contest: • http://predictioncenter.gc.ucdavis.edu/ • CASP7 contest in 2006 • http://www.predictioncenter.org/casp7/Casp7.html BCB 444/544 F07 ISU Dobbs - Lab 3 - BLAST

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