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Genome Annotation of Protein Function using Structural Data: Catalytic Residue Information

Genome Annotation of Protein Function using Structural Data: Catalytic Residue Information. Janet Thornton European Bioinformatics Institute ISMB/ECCB 2004 Glasgow. From Structure to Functional Annotation. From Structure To Biochemical Function.

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Genome Annotation of Protein Function using Structural Data: Catalytic Residue Information

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  1. Genome Annotation of Protein Function using Structural Data: Catalytic Residue Information Janet Thornton European Bioinformatics Institute ISMB/ECCB 2004 Glasgow

  2. From Structure to Functional Annotation

  3. From Structure To Biochemical Function Gene  Protein  3D Structure  Function Given a protein structure: • Where is the functional site? • What is the multimeric state of the protein? • Which ligands bind to the protein? • What is biochemical function?

  4. Automated Structure Comparison • The most powerful method for assigning function from structure is global or partial 3D structure comparison (e.g. Dali, SSAP; SSM) • Hidden Markov Models derived from structural domains can often recognise distant relatives from sequence

  5. Surface clefts Residue conservation Most likely binding site Conserved surface patches Binding-site analysis: cutA Predicting Binding Site

  6. Identifying Binding Site Function Using Motifs - 3D enzyme active site structural motifs (Craig Porter) - Catalytic Site Atlas - Identification of catalytic residues (Gail Bartlett, Alex Gutteridge) - Metal binding sites (Malcolm MacArthur) - Binding site features (Gareth Stockwell) - Automatically generated templates of ligand-binding and - DNA binding motifs (Sue Jones, Hugh Shanahan) - “Reverse” templates (Roman Laskowski) JESS – fast template search algorithm (Jonathan Barker)

  7. Using information on Catalytic Residues derived from Structures • Catalytic Site Atlas • Using info for annotation of enzymes in genomes • 3D Templates

  8. The Catalytic Site Atlas: a resource of catalytic sites and residues identified in enzymes using structural data. Craig T. Porter, Gail J. Bartlett, and Janet M. Thornton Nucl. Acids. Res. 2004 32: D129-D133. http://www.ebi.ac.uk/thornton-srv/databases/CSA

  9. Catalytic Site Information Enzyme reports from primary literature information • -lactamase Class A • EC: 3.5.2.6 • PDB: 1btl • Reaction: -lactam + H2O  -amino acid • Active site residues: S70, K73, S130, E166 • Plausible mechanism:

  10. Annotates catalytic residues in the PDB • Based on a dataset of 514 enzyme families • Representative catalytic site for each family • Homologues assigned by Psi-BLAST • Limited substitution allowed. • Homologues updated monthly. • Literature references • Data also available via MSDsite • http://www.ebi.ac.uk/thornton-srv/databases/CSA • http://www.ebi.ac.uk/msd-srv/msdsite

  11. CSA Coverage (Current 512 Enzyme Dataset) 512 Representative Sites 9075 PDB Files 20001 Catalytic Sites Class In CSA In PDB E.C. 1.-.-.- Oxidoreductases. 194 / 271 E.C. 2.-.-.- Transferases. 151 / 280 E.C. 3.-.-.- Hydrolases. 221 / 421 E.C. 4.-.-.- Lyases. 96 / 122 E.C. 5.-.-.- Isomerases. 44 / 63 E.C. 6.-.-.- Ligases. 33 / 58 Total 739 / 1215

  12. Metal Site Atlas • Annotates Metal Sites in PDB • Similar to CSA database • Searchable by: • PDB code • Swiss-Prot code • Homologues. • Dataset includes: • Copper, Zinc, Calcium, Iron (excl. hemes), Cobalt, Magnesium, Manganese, Molybdenum, Nickel and Tungsten.

  13. Metal Site Atlas Contents Templates: 46 Cu 195 Zn 270 Ca 83 Fe 6 Co 86 Mg 45 Mn 10 Mo 7 Ni 4 W 752 Total Templates Sites in MSA: 6301 PDB Files 25374 Metal Binding Sites

  14. Comparison of CSA v1.0 with Swiss-Prot and PDB Site Annotations

  15. EC Wheels CSA v1.0 - Literature CSA v1.0 – plus homologues

  16. iCSA: Using Functional Residue Conservation to Improve Function Annotation • Starting with over 500 enzymes from the CSA, with EC numbers and high quality catalytic site information • Retrieve homologues from BiopendiumTM • Align homologues with query enzyme, using • PSI-BLAST profiles • CLUSTAL W multiple alignments • Smith and Waterman pairwise alignments • Check for conservation of catalytic residues • If all residues are conserved, assign EC from annotated enzyme to homologue • Also deals with mutation, etc. if necessary

  17. Testing the iCSA Method • Searches with 517 CSA sites retrieved over 30700 Swiss-Prot sequences within four iterations of PSI-BLAST • These were assigned three digit EC numbers using the iCSA method • The assigned EC numbers were then compared with the EC annotation given in the Swiss-Prot database • The accuracy of EC assignment was compared with the accuracy achieved using sequence homology (i.e. PSI-BLAST) CSA query enzyme iCSA filtered homologues Homology search Homologues iCSA filter Swiss-Prot Function assignment by homology Function assignment using CSA

  18. EC Assignment Accuracy Correct EC assigned An EC assigned CSA

  19. Improvement in EC Assignment Accuracy, Compared with Homology Alone AccuracyiCSA-AccuracyHomology AccuracyHomology 48% overall

  20. iCSA vs. Sequence Homology Alone • The accuracy of EC assignment is improved by using iCSA • The improvement in accuracy is more pronounced with more distant homologues: from 7% at iteration 1 to 88% at iteration 4 • Overall, EC assignment accuracy is improved by 48% • Overall, EC assignment accuracy using iCSA is 86% (vs. 58% using sequence homology alone)

  21. iCSA EC Coverage Correct EC assigned Homologues with correct EC % coverage PSI-BLAST iteration

  22. iCSA vs. Sequence Homology Alone • iCSA coverage is 78% overall • The iCSA is right to reject many of these homologues even though they have the same EC as the CSA site used as the query • EC covered by more than one specific catalytic site • Incorrect EC assignment in Swiss-Prot • But misaligned sequences are also possible, especially with more distant homologues

  23. iCSA Correctly Rejects Homologues • The iCSA accuracy with the CSA trypsin site is 100% • The benefits of the iCSA method can be seen in the homologues not assigned the trypsin EC • Trypsin homologues that do not pass the catalytic residue checks in iCSA include several haptoglobin proteins • Haptoglobin is closely related to trypsin, but is a known non-enzyme • Sequence homology alone would assign these haptoglobin sequences the trypsin EC, but iCSA can correctly identify that the residues for catalysis are not present

  24. Human Genome Annotation • We applied iCSA to the human ENSEMBL sequence database • The iCSA directly annotated 2064 sequences with an EC • Only 64% of these have an equivalent Swiss-Prot protein • at least 90% pairwise sequence identity and a difference in length of less than 10% of the shorter sequence • So 743 sequence annotations have been efficiently expanded • A further 2257 homologues did not have a conserved site and an EC was not assigned • 73% of the equivalent Swiss-Prot sequences had an alternative EC number to the iCSA query • Homology-based functional assignments in these cases could prove incorrect

  25. Summary • iCSA methodology developed • Database currently contains: • 7013 PDBs (11710 chains) • 18033 Swiss-Prot sequences • 4321 Human ENSEMBL sequences • 4227 Mouse ENSEMBL sequences

  26. Poster E-37Session 1 (Sunday)

  27. (~600 Metal binding site templates) (189 enzyme active site templates) Template searches 3D Templates to Characterise Functional Sites

  28. GARTfase Cholesterol oxidase IIAglc histidine kinase 189 templates Database of enzyme active site templates … Carbamoylsarcosine amidohhydrase Ser-His-Asp catalytic triad Dihydrofolate reductase

  29. MCSG structure BioH – unknown function involved in biotin synthesis in E.coli Expected to be an enzyme Sequence contains two Gly-X-Ser-X-Gly motifs typical of acyltransferases and thioesterases An example Structure: Rossmann fold, hence many structural homologues

  30. Ser-His-Asp catalytic triad of the lipases with rmsd=0.28Å (template cut-off is 1.2Å) Experimentally confirmed by hydrolase assays Novel carboxylesterase acting on short acyl chain substrates CSA template search One very strong hit

  31. Generation of 3D Active Site Templates for Enzymes in the Catalytic Site Atlas Gail J Bartlett*, James W Torrance, Craig T Porter, Jonathan A Barker, Alex Gutteridge, Malcolm W MacArthur, Janet M Thornton EMBL Outstation - European Bioinformatics Institute (EBI), Hinxton, Cambridge CB10 1SD, UK * Centre For Bioinformatics, Biochemistry Building, Imperial College London, South Kensington Campus, London SW7 2AZ, UK 1. Introduction Structural templates can be used to search protein structures for particular patterns of residues, such as catalytic sites. Structural templates are thus a tool for predicting protein function. There are many methods that employ structural templates, but no reliable template libraries. The Catalytic Site Atlas1 is a database of catalytic residues within proteins of known structure. This information can be used to create a template library. We hope to use this library to uncover cases of convergent evolution and to predict function from structure. • 2. Objectives • To use the Catalytic Site Atlas to create a library of structural templates representing catalytic sites • To assess the effectiveness of these templates for identifying proteins with a particular catalytic function 3. Methods Template generation and analysis of active site geometry Two types of template were created (atoms used are highlighted in ball form): Templates within the same homologous enzyme family were superposed and the distribution of RMSDs examined. Assessing template effectiveness The Jess template-matching method2 was used to query all the templates against a non-redundant subset of the PDB. Hits were scored using both RMSD and a statistical significance measure. The effectiveness of hits was measured by comparing scores of hits between relatives with scores from random hits identified in the PDB. 5. A “good” template - aldolase A Aldolase A relatives superpose well (below right) and there is a clear separation between these and random hits to PDB (below left). Superposition of homologous family templates Ca and Cb atoms Three “functional” atoms ° Distribution of RMSDs of hits to aldolase template (based on PDB 1ald) 6. A “bad” template - fructose 1,6-bisphosphatase It is difficult to construct a sensitive template for fructose 1,6-bisphosphatase because one catalytic residue is on a flexible loop that moves when AMP binds at an allosteric site. Flexible loop Structures of closed form • 4. Results • No correlation between RMSD of template atoms and percentage pairwise sequence identity found within homologous enzyme families • Majority of RMSD values between templates from homologous family members were below 1Å • Templates distinguish related enzymes well in most families, with > 75% of relatives having RMSDs better than that of any random match. • Some families showed wide variation of catalytic residue geometry, making prediction difficult. • Templates based on Ca / Cb atoms performed slightly better than those which used functional atoms. Catalytic residues Structures of open form AMP Open form Loop closed ° Distribution of RMSDs of hits to fructose 1,6-bisphosphatase template (based on PDB 1eyi) Closed form • 7. Conclusions • Structural templates representing catalytic sites effectively distinguish between family members and random hits. • The lack of correlation between RMSD and pairwise % sequence identity within families is a result of catalytic residue position being affected not only by evolutionary divergence, but also by factors such as presence or absence of ligand, ligand type, and possible functional variation. 8. References 1. Porter, C.T., Bartlett, G.J., Thornton, J.M. (2004) The Catalytic Site Atlas: a resource of catalytic sites and residues identified in enzymes using structural data. Nucleic Acids Res32, D129-33. 2. Barker, J.A., Thornton, J.M. (2003) An algorithm for constraint-based structural template matching: application to 3D templates with statistical analysis. Bioinformatics19, 1644-9. EBI Home Page http://www.ebi.ac.uk Email torrance@ebi.ac.uk gbart@ebi.ac.uk FTP ftp.ebi.ac.uk Telephone +44(0) 1223 492537 Fax +44(0) 1223 494468 Poster Number I76 - Monday

  32. Template databases • HAND CURATED • Enzyme active sites (PROCAT) – 189 templates • Currently being extended • Metal-binding sites – 600 templates • AUTOMATED • Ligand-binding sites – 10,000 templates • DNA-binding sites – 800 templates

  33. ProFunc – function from 3D structure Homologous structures of known function Homologous sequences of known function DNA-, ligand- binding and “reverse” templates Functional sequence motifs Q-x(3)-[GE]-x-C-[YW]-x(2)-[STAGC] HTH-motifs Electrostatics Surface comparison … etc Binding site identification and analysis Enzyme active site 3D-templates Residue conservation analysis

  34. Acknowledgements CSA: Craig Porter, Gail Bartlett, Alex Gutteridge, Malcolm MacArthur (EBI), Neera Borkakoti Genome Annotation: Ruth Spriggs, Richard George, Mark Swindells, B. Al-Lazikhani (Inpharmatica) ProFunc: Roman Laskowski; James Watson (EBI)

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