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Structural Bioinformatics Proteins Structure Prediction Motivation • Understand protein function – Locate binding sites • Broaden homology – Detect similar function where sequence differs (only ~50% remote homologies can be detected based on sequence) • Explain disease – See effect of amino acid changes – Design suitable compensatory drugs 2 Myoglobin – the first high resolution protein structure Solved in 1958 by Max Perutz John Kendrew of Cambridge University. Won the 1962 and Nobel Prize in Chemistry. “ Perhaps the most remarkable features of the molecule are its complexity and its lack of symmetry. The arrangement seems to be almost totally lacking in the kind of regularities which one instinctively anticipates.” 3 From the structure we can get information about the secondary and tertiary structure of the protein What are Secondary Structures ?? 4 Secondary Structure Secondary structure is usually divided into three categories: Alpha helix Beta strand (sheet) Anything else – turn/loop 5 Alpha Helix: Pauling (1951) • A consecutive stretch of 5-40 amino acids (average 10). • A right-handed spiral conformation. • 3.6 amino acids per turn. 3.6 residues 5.6 Å • Stabilized by H-bonds 6 Beta Strand: Pauling and Corey (1951) • Different polypeptide chains run alongside each other and are linked together by hydrogen bonds. • Each section is called β -strand, and consists of 5-10 amino acids. β -strand 7 3.47Å Beta Sheet 4.6Å The strands become adjacent to each other, forming beta-sheet. 3.25Å Antiparallel Parallel 4.6Å 8 Loops • Connect the secondary structure elements. • Have various length and shapes. • Located at the surface of the folded protein and therefore may have important role in biological recognition processes. 9 Tertiary Structure Describes the packing of alpha-helices, beta-sheets and random coils with respect to each other on the level of one whole polypeptide chain 10 How does the structure relate to the primary protein sequence?? 11 SEQUENCE STRUCTURE FUNCTION Each protein has a particular 3D structure that determines its function Early experiments have shown that the sequence of the protein is sufficient to determine its structure Protein structure is more conserved than protein sequence , and more closely related to function. Homologous proteins are of the same evolutionary origin. Despite the differences which have been accumulated in their sequences, the structure and function of these proteins can be remarkably conserved. 12 How (CAN) Different Amino Acid Sequence Determine Similar Protein Structure ?? Lesk and Chothia 1980 13 The Globin Family 14 Different sequences can result in similar structures 1ecd 2hhd 15 We can learn about the important features which determine structure and function by comparing the sequences and structures ? 16 The Globin Family 17 Why is Proline 36 conserved in all the globin family ? 18 Where are the gaps?? The gaps in the pairwise alignment are mapped to the loop regions 19 How are remote homologs related in terms of their structure? RBD retinol-binding protein apolipoprotein D b-lactoglobulin odorant-binding protein 20 PSI-BLAST alignment of RBP and b-lactoglobulin: iteration 3 Score = 159 bits (404), Expect = 1e-38 Identities = 41/170 (24%), Positives = 69/170 (40%), Gaps = 19/170 (11%) Query: 3 Sbjct: 1 Query: 55 Sbjct: 60 WVWALLLLAAWAAAERD--------CRVSSFRVKENFDKARFSGTWYAMAKKDPEGLFLQ 54 V L+ LA A + S V+ENFD ++ G WY + K MVTMLMFLATLAGLFTTAKGQNFHLGKCPSPPVQENFDVKKYLGRWYEIEKIPASFE-KG 59 DNIVAEFSVDETGQMSATAKGRVRLLNNWDVCADMVGTFTDTEDPAKFKMKYWGVASFLQ 114 + I A +S+ E G + K V + ++ +PAK +++++ + NCIQANYSLMENGNIEVLNKELSPDGTMNQVKGE--AKQSNVSEPAKLEVQFFPL----- 112 Query: 115 KGNDDHWIVDTDYDTYAVQYSCRLLNLDGTCADSYSFVFSRDPNGLPPEA 164 +WI+ TDY+ YA+ YSC + ++ R+P LPPE Sbjct: 113 MPPAPYWILATDYENYALVYSCTTFFWL--FHVDFFWILGRNPY-LPPET 159 21 The Retinol Binding Protein b-lactoglobulin 22 So how can we obtain the structure information ??? 23 PDB: Protein Data Bank • DataBase of molecular structures : Protein, Nucleic Acids (DNA and RNA), • Structures solved by X-ray crystallography NMR Electron microscopy 24 RCSB PDB – Protein Data Bank http://www.rcsb.org/pdb/ 25 How Many Structures ? March 2008 – 49295 Structures 26 Structure Prediction: Motivation • Hundreds of thousands of gene sequences translated to proteins (genbanbk, SW, PIR) • Only about ~40000 solved protein structures • Experimental methods are time consuming and not always possible • Goal: Predict protein structure based on sequence information Prediction Approaches • Primary (sequence) to secondary structure – Sequence characteristics • Secondary to tertiary structure – Fold recognition – Threading against known structures • Primary to tertiary structure – Ab initio modelling 28 Secondary Structure Prediction • Given a primary sequence ADSGHYRFASGFTYKKMNCTEAA what secondary structure will it adopt ? 29 RBP RBP (Retinol Binding Protein) Globin 30 According to the most simplified model: • In a first step, the secondary structure is predicted based on the sequence. • The secondary structure elements are then arranged to produce the tertiary structure, i.e. the structure of a protein chain. • For molecules which are composed of different subunits, the protein chains are arranged to form the quaternary structure. 31 Secondary Structure Prediction Methods • Chou-Fasman / GOR Method – Based on amino acid frequencies • Machine learning methods – PHDsec and PSIpred • HMM (Hidden Markov Model) • Best accuracy nowadays ~80% 32 Chou and Fasman (1974) The propensity of an amino acid to be part of a certain secondary structure (e.g. – Proline has a low propensity of being in an alpha helix or beta sheet breaker) Name Alanine Arginine Aspartic Acid Asparagine Cysteine Glutamic Acid Glutamine Glycine Histidine Isoleucine Leucine Lysine Methionine Phenylalanine Proline Serine Threonine Tryptophan Tyrosine Valine P(a) 142 98 101 67 70 151 111 57 100 108 121 114 145 113 57 77 83 108 69 106 P(b) 83 93 54 89 119 037 110 75 87 160 130 74 105 138 55 75 119 137 147 170 P(turn) 66 95 146 156 119 74 98 156 95 47 59 101 60 60 152 143 96 96 114 50 Success rate of 50% 33 Secondary Structure Method Improvements ‘Sliding window’ approach • Most alpha helices are ~12 residues long Most beta strands are ~6 residues long Look at all windows of size 6/12 Calculate a score for each window. If >threshold predict this is an alpha helix/beta sheet TGTAGPOLKCHIQWMLPLKK 34 Improvements since 1980’s • Adding information from conservation in MSA • Smarter algorithms (e.g. HMM, neural networks). Success -> 75%-80% 35 PHDsec and PSIpred • PHDsec – Rost & Sander, 1993 – Based on sequence family alignments (MaxHom) • PSIpred – Jones, 1999 – Based on Position Specific Scoring Matrix Generated by PSI-BLAST • Both consider long-range interactions 36 How does secondary structure prediction work? Query SwissProt Query Subject Subject Subject Subject Step 1: Generating a multiple sequence alignment 37 Steps in secondary structure prediction: Query Step 2: Additional sequences are added using a profile: – A PSI-BLAST PSSM. – A conservation profile (MaxHom). seed We end up with a MSA which represents the protein family. MSA Query Subject Subject Subject Subject 38 Steps in secondary structure prediction: Query The sequence profile of the protein family is compared (by machine learning methods) to sequences with known secondary structure. seed MSA Query Subject Subject Subject Subject Machine Learning Approach Known structures 39 SS prediction using Neural Network A C D E F G H I K L M N P Q R S T V W Y . Sequence Profile 40 PHDsec Neural Net A C D E F G H I K L M N P Q R S T V W Y . Hidden layer (known ss) Output prediction H= helix E= strand C= Coil Confidence 0=low,9=high 41 HMM • HMM enables us to calculate the probability of assigning a sequence of hidden states to the observation TGTAGPOLKCHIQWML HHHHHHHLLLLBBBBB observation p=? Hidden state (known ss) 42 Beginning with an αhelix α-helix followed by α-helix The probability of observing Alanine as part of a βsheet The probability of observing a residue which belongs to an α-helix followed by a residue belonging to a turn = 0.15 Table built according to large database of known secondary structures 43 HMM • The above table enables us to calculate the probability of assigning secondary structure to a protein • Example TGQ HHH p = 0.45 x 0.041 x 0.8 x 0.028 x 0.8 x 0.0635 = 0.0020995 44 Secondary structure prediction • • • • • • • • • • • • • • AGADIR - An algorithm to predict the helical content of peptides APSSP - Advanced Protein Secondary Structure Prediction Server GOR - Garnier et al, 1996 HNN - Hierarchical Neural Network method (Guermeur, 1997) Jpred - A consensus method for protein secondary structure prediction at University of Dundee JUFO - Protein secondary structure prediction from sequence (neural network) nnPredict - University of California at San Francisco (UCSF) PredictProtein - PHDsec, PHDacc, PHDhtm, PHDtopology, PHDthreader, MaxHom, EvalSec from Columbia University Prof - Cascaded Multiple Classifiers for Secondary Structure Prediction PSA - BioMolecular Engineering Research Center (BMERC) / Boston PSIpred - Various protein structure prediction methods at Brunel University SOPMA - Geourjon and Delיage, 1995 SSpro - Secondary structure prediction using bidirectional recurrent neural networks at University of California DLP - Domain linker prediction at RIKEN 45