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Structural Bioinformatics Protein Tertiary Structure Prediction The Different levels of Protein Structure Primary: amino acid linear sequence. Secondary: -helices, β-sheets and loops. Tertiary: the 3D shape of the fully folded polypeptide chain How can we view the protein structure ? • Download the coordinates of the structure from the PDB http://www.rcsb.org/pdb/ • Launch a 3D viewer program For example we will use the program Pymol The program can be downloaded freely from the Pymol homepage http://pymol.sourceforge.net/ • Upload the coordinates to the viewer Pymol example • • • • • • • • • Launch Pymol Open file “1aqb” (PDB coordinate file) Display sequence Hide everything Show main chain / hide main chain Show cartoon Color by ss Color red Color green, resi 1:40 Help http://pymol.sourceforge.net/newman/user/toc.html Predicting 3D Structure Outstanding difficult problem Based on sequence homology – Comparative modeling (homology) Based on structural homology – Fold recognition (threading) Comparative Modeling Similar sequences suggests similar structure Sequence and Structure alignments of two Retinol Binding Protein Structure Alignments There are many different algorithms for structural Alignment. The outputs of a structural alignment are a superposition of the atomic coordinates and a minimal Root Mean Square Distance (RMSD) between the structures. The RMSD of two aligned structures indicates their divergence from one another. Low values of RMSD mean similar structures Dali (Distance mAtrix aLIgnment) DALI offers pairwise alignments of protein structures. The algorithm uses the threedimensional coordinates of each protein to calculate distance matrices comparing residues. See Holm L and Sander C (1993) J. Mol. Biol. 233:123-138. SALIGN http://salilab.org/DBALI/?page=tools Fold classification based on structure-structure alignment of proteins (FSSP) FSSP is based on a comprehensive comparison of PDB proteins (greater than 30 amino acids in length) using DALI. Representative sets exclude sequence homologs sharing > 25% amino acid identity. http://www.ebi.ac.uk/dali/fssp Page 293 Comparative Modeling Similar sequence suggests similar structure Comparative structure prediction produces an all atom model of a sequence, based on its alignment to one or more related protein structures in the database Comparative Modeling • Accuracy of the comparative model is related to the sequence identity on which it is based >50% sequence identity = high accuracy 30%-50% sequence identity= 90% modeled <30% sequence identity =low accuracy (many errors) Homology Threshold for Different Alignment Lengths 90 80 70 Homology Threshold (t) 60 50 40 30 20 10 0 0 20 40 60 80 100 Alignment length (L) A sequence alignment between two proteins is considered to imply structural homology if the sequence identity is equal to or above the homology threshold t in a sequence region of a given length L. The threshold values t(L) are derived from PDB Comparative Modeling • Similarity particularly high in core – Alpha helices and beta sheets preserved – Even near-identical sequences vary in loops Comparative Modeling Methods MODELLER (Sali –Rockefeller/UCSF) SCWRL (Dunbrack- UCSF ) SWISS-MODEL http://swissmodel.expasy.org//SWISS-MODEL.html Comparative Modeling Modeling of a sequence based on known structures Consist of four major steps : 1. Finding a known structure(s) related to the sequence to be modeled (template), using sequence comparison methods such as PSI-BLAST 2. Aligning sequence with the templates 3. Building a model 4. Assessing the model Fold Recognition Protein Folds • A combination of secondary structural units – Forms basic level of classification • Each protein family belongs to a fold • Different sequences can share similar folds Protein Folds: sequential and spatial arrangement of secondary structures Hemoglobin TIM Protein Folds • A combination of secondary structural units – Forms basic level of classification • Each protein family belongs to a fold • Different sequences can share similar folds Similar folds usually mean similar function Homeodomain Transcription factors Protein Folds • A combination of secondary structural units – Forms basic level of classification • Each protein family belongs to a fold • Different sequences can share similar folds The same fold can have multiple functions Rossmann 12 functions TIM barrel 31 functions SCOP Structure Classification Of Proteins Fold classification: •Class: All alpha All beta Alpha/beta Alpha+beta •Fold •Superfamily •Family Retinol Binding Protein Fold Recognition • Methods of protein fold recognition attempt to detect similarities between protein 3D structure that have no significant sequence similarity. • Search for folds that are compatible with a particular sequence. • "the turn the protein folding problem on it's head” rather than predicting how a sequence will fold, they predict how well a fold will fit a sequence Basic steps in Fold Recognition : Compare sequence against a Library of all known Protein Folds (finite number) Query sequence MTYGFRIPLNCERWGHKLSTVILKRP... Goal: find to what folding template the sequence fits best There are different ways to evaluate sequence-structure fit There are different ways to evaluate sequence-structure fit 1) ... 56) ... MAHFPGFGQSLLFGYPVYVFGD... -10 ... ... n) ... -123 ... Potential fold 20.5 Programs for fold recognition • • • • TOPITS (Rost 1995) GenTHREADER (Jones 1999) SAMT02 (UCSC HMM) 3D-PSSM http://www.sbg.bio.ic.ac.uk/~3dpssm/ Ab Initio Modeling • Compute molecular structure from laws of physics and chemistry alone Theoretically Ideal solution Practically nearly impossible WHY ? – Exceptionally complex calculations – Biophysics understanding incomplete Ab Initio Methods • Rosetta (Bakers lab, Seattle) • Undertaker (Karplus, UCSC) CASP - Critical Assessment of Structure Prediction • Competition among different groups for resolving the 3D structure of proteins that are about to be solved experimentally. • Current state – ab-initio - the worst, but greatly improved in the last years. – Modeling - performs very well when homologous sequences with known structures exist. – Fold recognition - performs well. What’s Next Predicting function from structure Structural Genomics : a large scale structure determination project designed to cover all representative protein structures ATP binding domain of protein MJ0577 Zarembinski, et al., Proc.Nat.Acad.Sci.USA, 99:15189 (1998) Currently ~800 unique folds ~300 unique folds in PDB ~1000- 3000 unique folds Estimated in “structure space” Structure Genomics expectations ~ 5 proteins to characterize the ~10000-15000 sequence space new structures expected corresponding to 1 fold As a result of the Structure Genomic initiative many structures of proteins with unknown function will be solved Wanted ! Automated methods to predict function from the protein structures resulting from the structural genomic project. Approaches for predicting function from structure ConSurf - Mapping the evolution conservation on the protein structure http://consurf.tau.ac.il/ Approaches for predicting function from structure PHPlus – Identifying positive electrostatic patches on the protein structure http://pfp.technion.ac.il/ Approaches for predicting function from structure SHARP2 – Identifying positive electrostatic patches on the protein structure http://www.bioinformatics.sussex.ac.uk/SHARP2