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Bridging Bioinformatics Bridging Bioinformatics and Chem(o)informaticsand Chem(o)informatics
Gary WigginsGary WigginsSchool of InformaticsSchool of Informatics
Indiana UniversityIndiana Universitywiggins@indiana.eduwiggins@indiana.edu
Yan He (SLIS MLS Student)Yan He (SLIS MLS Student)Meredith Saba (SLIS MLS Student)Meredith Saba (SLIS MLS Student)
Provocative ThoughtProvocative Thought
““While much bioscience is published with While much bioscience is published with the knowledge that machines will be the knowledge that machines will be expected to understand at least part of it, expected to understand at least part of it, almost all chemistry is published purely for almost all chemistry is published purely for humans to read.”humans to read.” Murray-Rust et al. Org. Biomol. Chem. 2004, Murray-Rust et al. Org. Biomol. Chem. 2004,
2, 3201.2, 3201.
Overview of the TalkOverview of the Talk
Review of ACS CINF 2004 PapersReview of ACS CINF 2004 Papers Review of Relevant ArticlesReview of Relevant Articles Public Chemistry Databases and Data Public Chemistry Databases and Data
Repositories with Bioinformatics Info/Links Repositories with Bioinformatics Info/Links Overview of Web ServicesOverview of Web Services NIH-funded Projects Underway or Planned NIH-funded Projects Underway or Planned
at Indiana Universityat Indiana University
““The Bigger Picture — Linking The Bigger Picture — Linking Bioinformatics to Cheminformatics”Bioinformatics to Cheminformatics”
American Chemical Society Division of Chemical American Chemical Society Division of Chemical Information (CINF) Symposium, Anaheim, Information (CINF) Symposium, Anaheim, Spring 2004Spring 2004 All-day session with 16 papersAll-day session with 16 papers http://www.acscinf.org/new/docs/meetings/http://www.acscinf.org/new/docs/meetings/
227nm/227cinfabstracts.htm227nm/227cinfabstracts.htm
Problems from ACS CINF 2004Problems from ACS CINF 2004
Both technical and people factors hinder Both technical and people factors hinder knowledge exchange between biology and knowledge exchange between biology and chemistry. (Lipinski)chemistry. (Lipinski)
People Problems per Chris LipinskiPeople Problems per Chris Lipinski Meta data capture is complicated by people Meta data capture is complicated by people
issues, particularly those between chemists issues, particularly those between chemists and biologists.and biologists.
Discipline-based disconnects occur Discipline-based disconnects occur distressingly often and are frequently distressingly often and are frequently overlooked as a cause of lost productivity.overlooked as a cause of lost productivity.
Interdisciplinary Collaborations: Interdisciplinary Collaborations: Biology and ChemistryBiology and Chemistry
[What’s] “... important for these collaborations is, [What’s] “... important for these collaborations is, not only do you have to accept the other guy’s not only do you have to accept the other guy’s paradigm or at least live with it; you have to be paradigm or at least live with it; you have to be willing to accept the other guy’s foibles or your willing to accept the other guy’s foibles or your perception of the other guy’s foibles (and perception of the other guy’s foibles (and recognize the opposite of this). We each have recognize the opposite of this). We each have our own approaches to how we do science, and our own approaches to how we do science, and it’s just different cultures.”it’s just different cultures.”
--Thom Kauffman interview in ACS LiveWire, March 2005, 7.3. --Thom Kauffman interview in ACS LiveWire, March 2005, 7.3. http://pubs.acs.org/4librarians/livewire/2006/7.3/profile.html http://pubs.acs.org/4librarians/livewire/2006/7.3/profile.html
Some Questions from the ACS Some Questions from the ACS CINF 2004 SymposiumCINF 2004 Symposium
"Find all proteins related to protein A (i.e. "Find all proteins related to protein A (i.e. within a given path length of A) in a protein within a given path length of A) in a protein interaction graph, and retrieve related interaction graph, and retrieve related assay results and compound structures.” assay results and compound structures.”
““Find all pathways where compound X Find all pathways where compound X inhibits or slows a reaction, and retrieve inhibits or slows a reaction, and retrieve Gene Ontology classifications for all Gene Ontology classifications for all proteins involved in the reaction.” proteins involved in the reaction.”
Problems from ACS CINF 2004Problems from ACS CINF 2004
Commercial vs. public dataCommercial vs. public data Batch mode data processing possible in biology, Batch mode data processing possible in biology,
but primitive in chemistrybut primitive in chemistry Primary HTS data has a very high noise factorPrimary HTS data has a very high noise factor Data format standardization problemData format standardization problem
Chemoinformatics and bioinformatics use completely Chemoinformatics and bioinformatics use completely different data formats and analysis toolsdifferent data formats and analysis tools
Chemical and protein sequence information has Chemical and protein sequence information has been largely analyzed separatelybeen largely analyzed separately
Solutions from ACS CINF 2004Solutions from ACS CINF 2004
Linking biological and chemical information in Linking biological and chemical information in computational approaches to predict biological computational approaches to predict biological activity, ADME profiles, and adverse drug activity, ADME profiles, and adverse drug reactions (ADR)reactions (ADR)
Energetics of binding for more accurate and Energetics of binding for more accurate and sensitive chemical representation of DNA-sensitive chemical representation of DNA-protein interactionsprotein interactions
A discovery informatics platform that facilitates A discovery informatics platform that facilitates archival, sharing, integration, and exploration of archival, sharing, integration, and exploration of synthetic methods and biological activity datasynthetic methods and biological activity data
Solutions from ACS CINF 2004 Solutions from ACS CINF 2004
Data pipelining approach makes it Data pipelining approach makes it possible to apply bioinformatics and possible to apply bioinformatics and chemoinformatics data and analyses chemoinformatics data and analyses together.together.
Visualizations are the best way for people Visualizations are the best way for people to understand data.to understand data.
Solutions from ACS CINF 2004Solutions from ACS CINF 2004
Cabinet (Chemical And Biological Information Cabinet (Chemical And Biological Information NETwork, formerly Fedora) servers includeNETwork, formerly Fedora) servers include Metabolic pathway network chart (Empath)Metabolic pathway network chart (Empath) Protein-Ligand Association Network (Planet)Protein-Ligand Association Network (Planet) Enzyme Commission Codebook (EC Book)Enzyme Commission Codebook (EC Book) Traditional Chinese Medicines (TCM)Traditional Chinese Medicines (TCM) World Drug Index (WDI), and others.World Drug Index (WDI), and others.
Built on the Daylight HTTP toolkitBuilt on the Daylight HTTP toolkit http://www.metaphorics.com/products/cabinet.hthttp://www.metaphorics.com/products/cabinet.ht
mlml
Overview of the TalkOverview of the Talk
Review of ACS CINF 2004 PapersReview of ACS CINF 2004 Papers Review of Relevant ArticlesReview of Relevant Articles Public Chemistry Databases and Data Public Chemistry Databases and Data
Repositories with Bioinformatics Info/Links Repositories with Bioinformatics Info/Links Overview of Web ServicesOverview of Web Services NIH-funded Projects Underway or Planned NIH-funded Projects Underway or Planned
at Indiana Universityat Indiana University
What is Chemoinformatics? What is Chemoinformatics? (Brown)(Brown)
“…“…the essence of chemoinformatics is the essence of chemoinformatics is integrationintegration and and focusfocus rather than its rather than its components, which are independent components, which are independent disciplines.”disciplines.”
Supporting disciplines:Supporting disciplines: Chemical informationChemical information Computational chemistryComputational chemistry ChemometricsChemometrics
Chemoinformatics and DiseaseChemoinformatics and Disease
Toolkits as Integrators (Brown)Toolkits as Integrators (Brown)
Companies such as Daylight, Advanced Companies such as Daylight, Advanced Visual Systems, OpenEye, and SciTegic Visual Systems, OpenEye, and SciTegic provide integration systems for:provide integration systems for: Statistical methodsStatistical methods Text miningText mining Computational chemistryComputational chemistry VisualizationVisualization
Genego’s MetaDrug ProductGenego’s MetaDrug Product
Toxicogenomics platform for the prediction Toxicogenomics platform for the prediction of human drug metabolism and toxicity of of human drug metabolism and toxicity of novel compoundsnovel compounds
Enables the visualization of pre-clinical Enables the visualization of pre-clinical and clinical high-throughput data in the and clinical high-throughput data in the context of the complete biological system context of the complete biological system
Integrates chemical, biological, and protein Integrates chemical, biological, and protein function datafunction data
http://www.genego.com/ http://www.genego.com/
BioWisdomBioWisdom
Examination of vast amounts of available Examination of vast amounts of available information using its Sofia KnowledgeScan information using its Sofia KnowledgeScan methodologymethodology
SRS data integration platformSRS data integration platform http://www.biowisdom.com/ http://www.biowisdom.com/
Lessons from Hip Hop (Salamone)Lessons from Hip Hop (Salamone)
Mashup techniqueMashup technique Bring together disparate informatics, Bring together disparate informatics,
biological, chemical, and imaging information biological, chemical, and imaging information when conducting researchwhen conducting research
Example of an integration tool: Example of an integration tool: iSpecies.orgiSpecies.org A search for a species returns a page with A search for a species returns a page with
NCBI genomics information, Yahoo images of NCBI genomics information, Yahoo images of the species, and articles culled from Google the species, and articles culled from Google ScholarScholar
iSpecies.org SearchiSpecies.org Search
For mus musculusFor mus musculus
Chemogenomics and Chemogenomics and Chemoproteomics (Gagna)Chemoproteomics (Gagna)
Chemogenomics (def.)—The description of all Chemogenomics (def.)—The description of all potential drugs that can be used against all potential drugs that can be used against all possible target sites, OR the actions of target-possible target sites, OR the actions of target-specific chemical ligands and how they are used specific chemical ligands and how they are used to globally examine genesto globally examine genes
Chemoproteomics (def.)—Uses chemistry to Chemoproteomics (def.)—Uses chemistry to characterize protein structure and functionscharacterize protein structure and functions
They are “. . . a form of chemical biology brought They are “. . . a form of chemical biology brought up to date in the area of genome and proteome up to date in the area of genome and proteome analysis.”analysis.”
New Interdisciplinary JournalsNew Interdisciplinary Journals ACS Chemical Biology (ACS)ACS Chemical Biology (ACS) ChemBioChem; A European Journal of ChemBioChem; A European Journal of
Chemical Biology (Wiley/VCH)Chemical Biology (Wiley/VCH) Chemical Biology and Drug Design (Blackwell)Chemical Biology and Drug Design (Blackwell) JBIC; Journal of Biological and Inorganic JBIC; Journal of Biological and Inorganic
Chemistry (Springer)Chemistry (Springer) Journal of Biochemical and Molecular Journal of Biochemical and Molecular
Toxicology (Wiley)Toxicology (Wiley) Molecular Biosystems (RSC)Molecular Biosystems (RSC) Nature Chemical Biology (Nature Publishing)Nature Chemical Biology (Nature Publishing) Organic & Biomolecular Chemistry (RSC)Organic & Biomolecular Chemistry (RSC)
Open Source Software Open Source Software (Geldenhuys)(Geldenhuys)
Log Log PP calculator from Interactive Analysis calculator from Interactive Analysis http://www.logp.comhttp://www.logp.com
University of Utah’s Computational Science and University of Utah’s Computational Science and Engineering OnlineEngineering Online Can submit jobs for molecular mechanics, quantum Can submit jobs for molecular mechanics, quantum
chemical calculations, and biomolecular interfaces for chemical calculations, and biomolecular interfaces for viewing PDB filesviewing PDB files
http://www.cse-online.nethttp://www.cse-online.net
Virtual Computational Chemistry LaboratoryVirtual Computational Chemistry Laboratory http://www.vcclab.orghttp://www.vcclab.org
The Blue Obelisk (Guha)The Blue Obelisk (Guha)
Several open chemistry and Several open chemistry and chemoinformatics projects that have chemoinformatics projects that have pooled forces to enhance interoperabilitypooled forces to enhance interoperability
Maintain: Maintain: Chemoinformatics Algorithms DictionaryChemoinformatics Algorithms Dictionary Data Repository for standardized data for Data Repository for standardized data for
chemical properties and other facts (e.g., chemical properties and other facts (e.g., mass)mass)
http://www.blueobelisk.org/http://www.blueobelisk.org/
BlueObelisk.orgBlueObelisk.org
Working collaboratively on projects such as:Working collaboratively on projects such as: Chemistry Development Kit (CDK)Chemistry Development Kit (CDK) JChemPaintJChemPaint JmolJmol JUMBOJUMBO NMRShiftDBNMRShiftDB OctetOctet Open BabelOpen Babel QSARQSAR World Wide Molecular Matrix (WWMM)World Wide Molecular Matrix (WWMM)
Barriers to the Use of Open Source Barriers to the Use of Open Source SoftwareSoftware
Unix command lineUnix command line Problem: Lack of known standards and Problem: Lack of known standards and
datasets of compounds for validation, e.g., datasets of compounds for validation, e.g., in docking programs in docking programs
Lessons from the Human Genome Lessons from the Human Genome Project (Austin)Project (Austin)
Keys to success in the HGP were:Keys to success in the HGP were: ComprehensivenessComprehensiveness Commitment to open access to the sequence as a Commitment to open access to the sequence as a
research tool without encumbranceresearch tool without encumbrance Proposed tools for a “genome functionation Proposed tools for a “genome functionation
toolbox”:toolbox”: Whole-genome transcriptome and proteome Whole-genome transcriptome and proteome
characterizationcharacterization Development of small inhibitory RNAs (siRNAs) and Development of small inhibitory RNAs (siRNAs) and
knockout mice for every geneknockout mice for every gene Small molecules and the druggable genomeSmall molecules and the druggable genome
ChemDB ChemDB http://cdb.ics.uci.edu/CHEM/Web/ http://cdb.ics.uci.edu/CHEM/Web/
ChEBI, Chemical Entities of ChEBI, Chemical Entities of Biological InterestBiological Interest
Dictionary of molecular entities focused on Dictionary of molecular entities focused on small chemical compoundssmall chemical compounds
Features an ontological classification, Features an ontological classification, showing the relationships between showing the relationships between molecular entities or classes of entities molecular entities or classes of entities and their parents and/or children and their parents and/or children
Vioxx Entry in ChEBIVioxx Entry in ChEBI
The IUPAC International Chemical The IUPAC International Chemical Identifier (InChI)Identifier (InChI)
Open source, non-proprietary, public-domain identifier Open source, non-proprietary, public-domain identifier for chemicalsfor chemicals
String of characters that uniquely represent a molecular String of characters that uniquely represent a molecular substancesubstance
Independent of the way the chemical structure is drawnIndependent of the way the chemical structure is drawn Enables reliable structure recognition and easy linking of Enables reliable structure recognition and easy linking of
diverse data compilationsdiverse data compilations Accepts as input MOLfiles (or SDfiles) and CML filesAccepts as input MOLfiles (or SDfiles) and CML files Download the program to your computer at: Download the program to your computer at:
http://www.iupac.org/inchi/license.htmlhttp://www.iupac.org/inchi/license.html
Generation of InChI for Vioxx with Generation of InChI for Vioxx with wInChIwInChI
Vioxx Entry in PubChem Vioxx Entry in PubChem Compounds Found with InChICompounds Found with InChI
Vioxx Bioassay Data in PubChemVioxx Bioassay Data in PubChem
Vioxx PubChem Link to External Vioxx PubChem Link to External Sources of InformationSources of Information
The Elsevier MDL/NIH Link via The Elsevier MDL/NIH Link via PubChem and DiscoveryGatePubChem and DiscoveryGate
Cross-indexes PubChem to the Compound Cross-indexes PubChem to the Compound Index hosted on Elsevier MDL’s DiscoveryGate Index hosted on Elsevier MDL’s DiscoveryGate platformplatform
MDL added 5 million structures from PubChem MDL added 5 million structures from PubChem to their index, resulting in over 14 million unique to their index, resulting in over 14 million unique chemical structureschemical structures
Links go both waysLinks go both ways Can move from biological data in PubChem to Can move from biological data in PubChem to
bioactivity, chemical sourcing, synthetic methodology, bioactivity, chemical sourcing, synthetic methodology, and EHS data in DiscoveryGate sources and EHS data in DiscoveryGate sources
Elsevier MDL’s xPharmElsevier MDL’s xPharm
Comprehensive set of records linking:Comprehensive set of records linking: Agents (compounds) (2300)Agents (compounds) (2300) Targets (600)Targets (600) Disorders (450)Disorders (450) Principles that govern their interactions (180)Principles that govern their interactions (180)
Answers questions such as:Answers questions such as:• What targets are associated with control of blood What targets are associated with control of blood
pressure?pressure?• What adverse effects are associated with What adverse effects are associated with
monoamine oxidase inhibitors?monoamine oxidase inhibitors?
Text Datamining (Banville)Text Datamining (Banville)
““In the pharmaceutical field, it is ideally the In the pharmaceutical field, it is ideally the marriage of biological and chemical information marriage of biological and chemical information that needs to be the ultimate focus of text data that needs to be the ultimate focus of text data mining applications.”mining applications.”
Problems:Problems: Lack of universal publication standards for identifying Lack of universal publication standards for identifying
each unique chemical entityeach unique chemical entity Selective indexing policies of A&I servicesSelective indexing policies of A&I services Need to understand how chemical structures link to Need to understand how chemical structures link to
biological processesbiological processes
Chemical Datamining SoftwareChemical Datamining Software SureChemSureChem
http://surechem.reeltwo.com/http://surechem.reeltwo.com/ CLiDECLiDE
Recognizes structures, reactions, and textRecognizes structures, reactions, and text http://www.simbiosys.ca/clide/http://www.simbiosys.ca/clide/
OSCAR OSCAR ““OSCAR1” to check experimental dataOSCAR1” to check experimental data
• http://www.ch.cam.ac.uk/magnus/checker.htmlhttp://www.ch.cam.ac.uk/magnus/checker.html• http://www.rsc.org/Publishing/ReSourCe/AuthorGuidelines/AuthoringTools/Ehttp://www.rsc.org/Publishing/ReSourCe/AuthorGuidelines/AuthoringTools/E
xperimentalDataChecker/xperimentalDataChecker/
CSR (Chemical Structure Reconstruction)CSR (Chemical Structure Reconstruction) http://www.scai.fraunhofer.de/uploads/media/MZ-ERCIM05_04.pdfhttp://www.scai.fraunhofer.de/uploads/media/MZ-ERCIM05_04.pdf
MDL DocSearch—combines MDL’s Isentris platform and EMC’s MDL DocSearch—combines MDL’s Isentris platform and EMC’s DocumentumDocumentum
Overview of the TalkOverview of the Talk
Review of ACS CINF 2004 PapersReview of ACS CINF 2004 Papers Review of Relevant ArticlesReview of Relevant Articles Public Chemistry Databases and Public Chemistry Databases and
Data Repositories with Data Repositories with Bioinformatics Info/LinksBioinformatics Info/Links
Overview of Web ServicesOverview of Web Services NIH-funded Projects Underway or Planned NIH-funded Projects Underway or Planned
at Indiana Universityat Indiana University
Themes from SwissProt’s 20Themes from SwissProt’s 20thth Anniversary Conference, Anniversary Conference,
“In silico Analysis of Proteins”“In silico Analysis of Proteins” Knowledgebases, databases and other Knowledgebases, databases and other
information resources for proteinsinformation resources for proteins Sequence searches and alignmentsSequence searches and alignments Protein sequence analysisProtein sequence analysis Protein structure prediction, analysis and Protein structure prediction, analysis and
visualizationvisualization Proteomics data analysisProteomics data analysis
Chemoinformatics Databases Chemoinformatics Databases (J(Jóónsdnsdóóttir)ttir)
Lists databases relevant to drug discovery Lists databases relevant to drug discovery and development, including:and development, including: General databasesGeneral databases DBs for screening compoundsDBs for screening compounds DBs for medicinal agentsDBs for medicinal agents DBs with ADMET propertiesDBs with ADMET properties DBs with physico-chemical propertiesDBs with physico-chemical properties
Curiously Curiously does not mentiondoes not mention Chemical Chemical AbstractsAbstracts
Databases with Protein and Ligand Databases with Protein and Ligand Information (JInformation (Jóónsdnsdóóttir)ttir)
Protein Data BankProtein Data Bank Target Registration DatabaseTarget Registration Database Relibase—uses structural info to analyze Relibase—uses structural info to analyze
protein-ligand interactions; Relibase+ for protein-ligand interactions; Relibase+ for protein-protein interaction searchingprotein-protein interaction searching
Cambridge Structural DatabaseCambridge Structural Database KEGG LIGAND DB for enzyme reactionsKEGG LIGAND DB for enzyme reactions
http://www.genome.ad.jp/ligandhttp://www.genome.ad.jp/ligand
Other Databases with Protein and Other Databases with Protein and Ligand InformationLigand Information
SitesBase--a database of known ligand SitesBase--a database of known ligand binding sites within the PDBbinding sites within the PDB http://www.bioinformatics.leeds.ac.uk/sb/http://www.bioinformatics.leeds.ac.uk/sb/
main.htmlmain.html Binding MOADBinding MOAD
http://www.bindingmoad.org/http://www.bindingmoad.org/ sc-PDB (Kellenberger)sc-PDB (Kellenberger)
http://bioinfo-pharma.u-strasbg.fr:8080/http://bioinfo-pharma.u-strasbg.fr:8080/scPDB/index.jspscPDB/index.jsp
sc-PDB sc-PDB http://bioinfo-pharma.u-strasbg.fr:8080/scPDB/index.jsphttp://bioinfo-pharma.u-strasbg.fr:8080/scPDB/index.jsp
Isatin Search on sc-PDBIsatin Search on sc-PDB
Other Databases with Protein-Other Databases with Protein-Protein Interaction Data (JProtein Interaction Data (Jóónsdnsdóóttir)ttir) YPD, Yeast Proteome Database (for YPD, Yeast Proteome Database (for
proteins from S. cerevisiae)proteins from S. cerevisiae) http://www.biobase.de/pages/index.php?id=139http://www.biobase.de/pages/index.php?id=139
Human Protein Reference DatabaseHuman Protein Reference Database http://www.hprd.org/http://www.hprd.org/
BIND, Biomolecular Interaction Network BIND, Biomolecular Interaction Network Database (ceased as of 11/16/2005?)Database (ceased as of 11/16/2005?) http://www.bind.ca/Action http://www.bind.ca/Action
International Molecular Exchange International Molecular Exchange (IMEx) Consortium(IMEx) Consortium
http://imex.sourceforge.net/http://imex.sourceforge.net/ BIND (http://www.blueprint.org) The Blueprint Initiative
AsiaPte. Ltd, Singapore and The Blueprint Initiative North America,Toronto Canada
DIP (http://dip.doe-mbi.ucla.edu) http://dip.doe-mbi.ucla.edu) UCLA-DOE Institute for Genomics & Proteomics
IntAct (http://www.ebi.ac.uk/intact), EMBL–European Bioinformatics Institute, Hinxton, UK;
MINT (http://mint.bio.uniroma2.it/mint/) University of Rome “Tor Vergata”, Rome Italy
MPact (http://mips.gsf.de/genre/proj/mpact), MIPS / Institute for Bioinformatics, Munich, Germany.
Protein Sites from IU I533 Students Protein Sites from IU I533 Students and othersand others
LigandDepot—integrated source for small moleculesLigandDepot—integrated source for small molecules http://ligand-depot.rutgers.edu/index.html http://ligand-depot.rutgers.edu/index.html
PSIPRED Protein Structure Prediction ServerPSIPRED Protein Structure Prediction Server http://bioinf.cs.ucl.ac.uk/psipred/ http://bioinf.cs.ucl.ac.uk/psipred/
DSSP--a database of secondary structure assignments DSSP--a database of secondary structure assignments (and much more) for all protein entries in the PDB (and much more) for all protein entries in the PDB
http://swift.cmbi.ru.nl/gv/dssp/ http://swift.cmbi.ru.nl/gv/dssp/ Dr. Predrag Radivojac’s I690 class on Structural Dr. Predrag Radivojac’s I690 class on Structural
BioinformaticsBioinformatics http://www.informatics.indiana.edu/predrag/http://www.informatics.indiana.edu/predrag/
2006springi690/2006springi690.htm 2006springi690/2006springi690.htm
Protein Secondary Structure Protein Secondary Structure PredictionPrediction
MethodsMethods Neural NetworkNeural Network Rule BasedRule Based Other Machine LearningOther Machine Learning Homology BasedHomology Based
Protein Secondary Structure Protein Secondary Structure Prediction SoftwarePrediction Software
PredictProtein PredictProtein http://www.predictprotein.org/http://www.predictprotein.org/Chou-Fasman Chou-Fasman http://http://
fasta.bioch.virginia.edu/fasta_www/chofas.htmfasta.bioch.virginia.edu/fasta_www/chofas.htm NN PredictNN Predict
http://www.cmpharm.ucsf.edu/~nomi/nnpredict.http://www.cmpharm.ucsf.edu/~nomi/nnpredict.htmlhtml
Structure-Based Docking MethodsStructure-Based Docking Methods
MethodMethod Scans many small molecules and “docks” Scans many small molecules and “docks”
them to a site of interest on a protein structurethem to a site of interest on a protein structure Predicts free energy of bindingPredicts free energy of binding Filters thousands of compounds relatively Filters thousands of compounds relatively
quicklyquickly Top hits can be used for more rigorous Top hits can be used for more rigorous
computational/experimental characterization computational/experimental characterization and optimizationand optimization
Structure-Based Docking MethodsStructure-Based Docking Methods DOCK DOCK
http://dock.compbio.ucsf.edu/http://dock.compbio.ucsf.edu/ Accelrys’s Insight (built on DOCK)Accelrys’s Insight (built on DOCK)
• http://www.accelrys.com/products/insight/http://www.accelrys.com/products/insight/
FlexXFlexX http://www.biosolveit.de/FlexX/http://www.biosolveit.de/FlexX/
GlideGlide http://www.schrodinger.com/http://www.schrodinger.com/
ProductDescription.php?mID=6&sID=6 ProductDescription.php?mID=6&sID=6 GOLDGOLD
http://www.ccdc.cam.ac.uk/products/http://www.ccdc.cam.ac.uk/products/life_sciences/gold/ life_sciences/gold/
Useful Structure DatabasesUseful Structure Databases
ModBase ModBase http://modbase.compbio.ucsf.edu/modbase-cgi-http://modbase.compbio.ucsf.edu/modbase-cgi-
new/search_form.cginew/search_form.cgi Dali Database (Fold classification; based on Dali Database (Fold classification; based on
PDB)PDB) http://ekhidna.biocenter.helsinki.fi/dali/starthttp://ekhidna.biocenter.helsinki.fi/dali/start
Protein Structure Analysis, Comparison, &/or Protein Structure Analysis, Comparison, &/or Classification [Guide]Classification [Guide] http://www.bio.vu.nl/nvtb/Structures.html http://www.bio.vu.nl/nvtb/Structures.html
SCOP, Structural Classification of SCOP, Structural Classification of ProteinsProteins
Curated database of structural and Curated database of structural and evolutionary relationshipsevolutionary relationships All known protein folds (v. 1.69, July 2005)All known protein folds (v. 1.69, July 2005)
• 70,859 domains organized into 2,845 families, 70,859 domains organized into 2,845 families, 1,539 superfamilies, and 945 folds1,539 superfamilies, and 945 folds
Detailed information about close relativesDetailed information about close relatives Links to coordinates, images of structures, Links to coordinates, images of structures,
interactive viewers, and literature interactive viewers, and literature referencesreferences http://scop.mrc-lmb.cam.ac.uk/scop/ http://scop.mrc-lmb.cam.ac.uk/scop/
SCOP Search OptionsSCOP Search Options
Homology search yields a list of structures Homology search yields a list of structures with significant levels of sequence with significant levels of sequence similaritysimilarity
Keyword search matches words in SCOP Keyword search matches words in SCOP and PDBand PDB
CATH Protein Structure CATH Protein Structure Classification Classification
Like SCOP, structured hierarchically by:Like SCOP, structured hierarchically by: Class (determined by secondary structure)Class (determined by secondary structure) Architecture (overall shape, e.g., barrel, sandwich, roll, etc.) – no Architecture (overall shape, e.g., barrel, sandwich, roll, etc.) – no
equivalent in SCOPequivalent in SCOP Topology (grouped into fold families based on overall shape and Topology (grouped into fold families based on overall shape and
connectivity of secondary structures)connectivity of secondary structures) Homologous Superfamily (domains thought to share a common Homologous Superfamily (domains thought to share a common
ancestor)ancestor) As of January 2005, had 43,229 domains classified into As of January 2005, had 43,229 domains classified into
1,467 superfamilies and 5,107 sequence families; A 1,467 superfamilies and 5,107 sequence families; A protein family database (CATH-PFDB) contained a total protein family database (CATH-PFDB) contained a total of 616,470 domain sequences classified into 23,876 of 616,470 domain sequences classified into 23,876 sequence families sequence families
• http://cathwww.biochem.ucl.ac.uk/latest/index.html http://cathwww.biochem.ucl.ac.uk/latest/index.html
CATH Search OptionsCATH Search Options
Can browse or search the classification by Can browse or search the classification by CATH codeCATH code
CATH codes can be used to search other CATH codes can be used to search other databases, e.g., DHS, Gene3D, and databases, e.g., DHS, Gene3D, and ImpalaImpala
Gasteiger’s Biochemical Pathways Gasteiger’s Biochemical Pathways DatabaseDatabase
Database of biochemical pathways that represents Database of biochemical pathways that represents chemical structures and reactions on the atomic levelchemical structures and reactions on the atomic level
Gives access to each atom and bond of the substrates of Gives access to each atom and bond of the substrates of enzyme reactionsenzyme reactions
Allows the study of transition state hypotheses of Allows the study of transition state hypotheses of enzyme reactionsenzyme reactions
Analysis of the physicochemical effects operating at the Analysis of the physicochemical effects operating at the reaction site allows a classification of enzyme reactions reaction site allows a classification of enzyme reactions that goes beyond the traditional EC code for enzymes. that goes beyond the traditional EC code for enzymes.
1533 biochemical molecules and 2175 reactions1533 biochemical molecules and 2175 reactions http://www2.chemie.uni-erlangen.de/services/biopath/indhttp://www2.chemie.uni-erlangen.de/services/biopath/ind
ex.htmlex.html
A Gene Expression Database for A Gene Expression Database for NCI60 (Scherf)NCI60 (Scherf)
Published in Nature Genetics, 2000Published in Nature Genetics, 2000 First study to integrate gene expression First study to integrate gene expression
with molecular pharmacology databaseswith molecular pharmacology databases Gene expression profiles for NCI60 Gene expression profiles for NCI60
assessed using microarray technologyassessed using microarray technology Gene-drug relationships investigated by Gene-drug relationships investigated by
how the gene transcription levels vary with how the gene transcription levels vary with respect to drug activitiesrespect to drug activities
Correlation Matrix Between Drug Correlation Matrix Between Drug Activity and Gene ExpressionActivity and Gene Expression
Other Relevant Databases/ServersOther Relevant Databases/Servers
Each year Nucleic Acids Each year Nucleic Acids Research publishes a Research publishes a Database Issue in January and Database Issue in January and a Web Server Issue in July a Web Server Issue in July (See refs in Bibliography (See refs in Bibliography section). Examples from the section). Examples from the most recent issues:most recent issues:
DatabasesDatabases ServersServers
KEGGKEGG BASysBASys
PDBPDB BRIDGEPBRIDGEP
PINTPINT SCRATCHSCRATCH
MutDBMutDB GlyprotGlyprot
GLIDAGLIDA I2I-SiteEngI2I-SiteEng
DrugBankDrugBank PatchDockPatchDock
SPACESPACE
SymmDockSymmDock
DeNovoIDDeNovoID
Overview of the TalkOverview of the Talk
Review of ACS CINF 2004 PapersReview of ACS CINF 2004 Papers Review of Relevant ArticlesReview of Relevant Articles Public Chemistry Databases and Data Public Chemistry Databases and Data
Repositories with Bioinformatics Info/Links Repositories with Bioinformatics Info/Links Overview of Web ServicesOverview of Web Services NIH-funded Projects Underway or Planned NIH-funded Projects Underway or Planned
at Indiana Universityat Indiana University
Web Services OverviewWeb Services Overview
What are “Web Services”?What are “Web Services”? A distributed invocation system built on Grid A distributed invocation system built on Grid
computingcomputing• Independent of platform and programming Independent of platform and programming
languagelanguage• Built on existing Web standardsBuilt on existing Web standards
A service oriented architecture withA service oriented architecture with• Interfaces based on Internet protocolsInterfaces based on Internet protocols• Messages in XML (except for binary data Messages in XML (except for binary data
attachments)attachments)
Service-Oriented ArchitectureService-Oriented Architecture
From Curcin et al. From Curcin et al. DDT, 2005, DDT, 2005, 10(12),86710(12),867
Web Services for Chemistry: Web Services for Chemistry: ProblemsProblems
Performance and scalabilityPerformance and scalability Proprietary dataProprietary data Competition from high-performance desktop Competition from high-performance desktop
applicationsapplications-- Geoff Hutchison, it’s a puzzle blog, 2005-01-05-- Geoff Hutchison, it’s a puzzle blog, 2005-01-05
ALSO: ALSO: Lack of a substantial body of trustworthy Open Lack of a substantial body of trustworthy Open
Access databasesAccess databases Non-standard chemical data formats (over 40 in Non-standard chemical data formats (over 40 in
regular use and requiring normalization to one regular use and requiring normalization to one another)another)
Overview of the TalkOverview of the Talk
Review of ACS CINF 2004 PapersReview of ACS CINF 2004 Papers Review of Relevant ArticlesReview of Relevant Articles Public Chemistry Databases and Data Public Chemistry Databases and Data
Repositories with Bioinformatics Info/Links Repositories with Bioinformatics Info/Links Overview of Web ServicesOverview of Web Services NIH-funded Projects Underway or NIH-funded Projects Underway or
Planned at Indiana UniversityPlanned at Indiana University
Indiana University Planned Indiana University Planned Projects:Projects:
http://www.chembiogrid.org http://www.chembiogrid.org Design of a Grid-based distributed data Design of a Grid-based distributed data
architecturearchitecture Development of tools for HTS data analysis and Development of tools for HTS data analysis and
virtual screeningvirtual screening Database for quantum mechanical simulation Database for quantum mechanical simulation
datadata Chemical prototype projectsChemical prototype projects
Novel routes to enzymatic reaction mechanismsNovel routes to enzymatic reaction mechanisms Mechanism-based drug designMechanism-based drug design Data-inquiry-based development of new methods in Data-inquiry-based development of new methods in
natural product synthesisnatural product synthesis
Web Services for Chemistry at IUWeb Services for Chemistry at IUPurpose Purpose Technologies Technologies
Interaction LayerInteraction Layer Interactive software for Interactive software for creative access and creative access and exploitation of information exploitation of information by humans by humans
Microsoft .NET Smart Microsoft .NET Smart Clients, portlets, Java Clients, portlets, Java applets, email and browser applets, email and browser clients, visualization clients, visualization technologies technologies
Aggregation LayerAggregation Layer Workflows and data Workflows and data schemas customized for schemas customized for particular domains, particular domains, applications and users applications and users
BPEL, Taverna and other BPEL, Taverna and other workflow modeling tools, workflow modeling tools, aggregate web servicesaggregate web services
Web service layerWeb service layer Comprehensive data and Comprehensive data and computation provision computation provision including storage, including storage, calculation, semantics and calculation, semantics and meta-data exposed as web meta-data exposed as web services services
Apache web services, Apache web services, SOAP wrappers, WSDL, SOAP wrappers, WSDL, UDDI, XML, UDDI, XML,
Microsoft .NET Microsoft .NET
NCI Developmental Therapeutics NCI Developmental Therapeutics Program (DTP)Program (DTP)
Downloadable data:Downloadable data: In vitroIn vitro 60 cell line results 60 cell line results in vitroin vitro anti-HIV results anti-HIV results Yeast assayYeast assay 200,000+ chemical structures200,000+ chemical structures molecular targetsmolecular targets microarray data microarray data
Or search the database at:Or search the database at:• http://http://dtp.nci.nih.gov/docs/dtp_search.htmldtp.nci.nih.gov/docs/dtp_search.html
IU Database of NIH DTP DataIU Database of NIH DTP Data Contains over 200,000 chemical structures Contains over 200,000 chemical structures
tested in 60 cellular assays from different human tested in 60 cellular assays from different human tumor cell linestumor cell lines
Also includes microarray assay profiles for the Also includes microarray assay profiles for the untreated cell lines (~14,000 datapoints)untreated cell lines (~14,000 datapoints)
A local PostgreSQL database containing the A local PostgreSQL database containing the data that is exposed as a web servicedata that is exposed as a web service
Using workflows and complex SQL queries, we Using workflows and complex SQL queries, we can do advanced data mining that exploits the can do advanced data mining that exploits the chemical, biological and genomic information for chemical, biological and genomic information for particular audiences (chemists, biologists, etc)particular audiences (chemists, biologists, etc)
Mining the NIH DTP databaseMining the NIH DTP database
~20
0,00
0 ~
200,
000
com
poun
dsco
mpo
unds
60 cell lines60 cell lines
~14,000 gene expression
~14,000 gene expression valuesvalues
Cell lines can be clustered based on gene expression similarity
Compounds can be clustered based on similarity of profileacross cell lines, or by chemical structure fingerprint similarity
Use of Taverna at IUUse of Taverna at IU A protein implicated in tumor growth is supplied to the docking A protein implicated in tumor growth is supplied to the docking
program (in this case HSP90 taken from the PDB 1Y4 complex)program (in this case HSP90 taken from the PDB 1Y4 complex) The workflow employs our local NIH DTP database service to The workflow employs our local NIH DTP database service to
search 200,000 compounds tested in human tumor cellular assays search 200,000 compounds tested in human tumor cellular assays for similar structures to the ligand. for similar structures to the ligand.
Client portlets are used to browse these structuresClient portlets are used to browse these structures Once docking is complete, the user visualizes the high-scoring Once docking is complete, the user visualizes the high-scoring
docked structures in a portlet using the JMOL applet.docked structures in a portlet using the JMOL applet. Similar structures are filtered for drugability, and are automatically Similar structures are filtered for drugability, and are automatically
passed to the OpenEye FRED docking program for docking into the passed to the OpenEye FRED docking program for docking into the target protein.target protein.
A 2D structure is supplied for input into the similarity search (in this A 2D structure is supplied for input into the similarity search (in this case, the extracted bound ligand from the PDB IY4 complex)case, the extracted bound ligand from the PDB IY4 complex)
Correlation of docking results and “biological fingerprints” across the Correlation of docking results and “biological fingerprints” across the human tumor cell lines can help identify potential mechanisms of human tumor cell lines can help identify potential mechanisms of action of DTP compoundsaction of DTP compounds
Taverna WorkflowTaverna Workflow
Visual depiction of workflow
Workflow definition
Available web services(WSDL)
Taverna in ActionTaverna in Action
Overall WorkflowOverall Workflow
Pre-Closing QuotePre-Closing Quote
““There is not going to be a ‘voila’ moment There is not going to be a ‘voila’ moment at the computer terminal. Instead, there is at the computer terminal. Instead, there is systematic use of wide-ranging systematic use of wide-ranging computational tools to facilitate and computational tools to facilitate and enhance the drug discovery process.”enhance the drug discovery process.” Jorgensen. Science, March 19, 2004, 303, Jorgensen. Science, March 19, 2004, 303,
1814.1814.
Closing quoteClosing quote
““The future of chemistry depends on the The future of chemistry depends on the automated analysis of chemical automated analysis of chemical knowledge, combining disparate data knowledge, combining disparate data sources in a single resource, such as the sources in a single resource, such as the World-Wide Molecular Matrix, which can World-Wide Molecular Matrix, which can be analysed using computational be analysed using computational techniques to assess and build on these techniques to assess and build on these data.”data.” Townsend et al. Org. Biomol. Chem. 2004, 2, Townsend et al. Org. Biomol. Chem. 2004, 2,
3299.3299.
Post-closing quote: zzzzzCASPost-closing quote: zzzzzCAS
““In an industry first, Chemical Abstracts In an industry first, Chemical Abstracts Service (CAS) has unveiled a Service (CAS) has unveiled a revolutionary new literature searching tool revolutionary new literature searching tool which will permit scientists to search and which will permit scientists to search and retrieve the world’s chemical literature—retrieve the world’s chemical literature—including patents and obscure technical including patents and obscure technical reports—in their sleep.”reports—in their sleep.”--Author unknown--Author unknown
AcknowledgementsAcknowledgements
Randy ArnoldRandy Arnold Xiao DongXiao Dong Sean MooneySean Mooney Peter Murray-RustPeter Murray-Rust David J. WildDavid J. Wild I533 Chemical Informatics Seminar I533 Chemical Informatics Seminar
StudentsStudents Elsevier ScienceElsevier Science
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Zhang, Yong. “Enhancement of the chemical semantic web through Zhang, Yong. “Enhancement of the chemical semantic web through InChIfication.” InChIfication.” Organic & Biomolecular ChemistryOrganic & Biomolecular Chemistry 20052005, , 33, 1832-, 1832-1834.1834.
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Geldenhuys, W.J.; Gaasch, K.E.; Watson, M.; Allen, D.D.;Van Der Geldenhuys, W.J.; Gaasch, K.E.; Watson, M.; Allen, D.D.;Van Der Schyf, C.J. “Optimizing the use of open-source software applications Schyf, C.J. “Optimizing the use of open-source software applications in drug discovery.” Drug Discovery Today February 2006, 11(3/4), in drug discovery.” Drug Discovery Today February 2006, 11(3/4), 127-132.127-132.
Guha, R.; Howard, M.T.; Hutchison, G.R.; Murray-Rust, P.; Rzepa, Guha, R.; Howard, M.T.; Hutchison, G.R.; Murray-Rust, P.; Rzepa, H.; Steinbeck, C; Wegner, J.; Willighagen, E.L. “The Blue Obelisk—H.; Steinbeck, C; Wegner, J.; Willighagen, E.L. “The Blue Obelisk—Interoperability in chemical informatics.” Journal of Chemical Interoperability in chemical informatics.” Journal of Chemical Information and Modeling 2006 Web Release Date: 22-Feb-2006; Information and Modeling 2006 Web Release Date: 22-Feb-2006; DOI: 10.1021/ci050400b DOI: 10.1021/ci050400b
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Biotech Validation Suite for Protein Biotech Validation Suite for Protein StructuresStructures
Send the server a PDB fileSend the server a PDB file Server provides a comprehensive check of Server provides a comprehensive check of
the protein, including:the protein, including: Atomic volume analysisAtomic volume analysis Full geometric analysisFull geometric analysis NMR restraint dataNMR restraint data
http://biotech.ebi.ac.uk:8400/http://biotech.ebi.ac.uk:8400/
Knowledge-Driven Bioinformatics Knowledge-Driven Bioinformatics Enhanced with ChemistryEnhanced with Chemistry
ToxTreeToxTree
An in silico toxicology prediction suiteAn in silico toxicology prediction suite Based on the CDK toolkitBased on the CDK toolkit Built on CMLBuilt on CML Released as OpenSource under the GPL Released as OpenSource under the GPL Standalone PC softwareStandalone PC software User Manual: User Manual: http://http://
ecb.jrc.it/DOCUMENTS/QSAR/TOXTREE/ecb.jrc.it/DOCUMENTS/QSAR/TOXTREE/toxTree_user_manual.pdftoxTree_user_manual.pdf
Tools for Genomic and Proteomic Tools for Genomic and Proteomic Scientists Scientists vis-à-visvis-à-vis Cell Biology Cell Biology
(Gagna et al.)(Gagna et al.) Tools to fully exploit the techniques in cellular Tools to fully exploit the techniques in cellular
biologybiology Light microscopy for high resolution imagesLight microscopy for high resolution images Fractionation of cells into basic components via Fractionation of cells into basic components via
ultracentrifugationultracentrifugation Analysis of individual cells through flow cytometryAnalysis of individual cells through flow cytometry LCM, normal and diseased TMAs (tissue LCM, normal and diseased TMAs (tissue
microarrays), quantitative computer image analysis, microarrays), quantitative computer image analysis, cell micromanipulation, and high-throughput cell micromanipulation, and high-throughput microscopymicroscopy
InChI Generation on the WebInChI Generation on the Web
The following websites provide the facility The following websites provide the facility to generate InChIs:to generate InChIs: www.acdlabs.com/download/chemsk.htmlwww.acdlabs.com/download/chemsk.html
ACD/Labs' freely available structure-drawing ACD/Labs' freely available structure-drawing program ChemSketch includes the facility to program ChemSketch includes the facility to generate InChIs from drawn structures.generate InChIs from drawn structures.
pubchem.ncbi.nlm.nih.govpubchem.ncbi.nlm.nih.gov/edit//edit/PubChem Server Side Structure Editor v1.8 PubChem Server Side Structure Editor v1.8 includes a facility for generating InChIs as you includes a facility for generating InChIs as you draw the structure.draw the structure.
Advances in Macromolcular Advances in Macromolcular Crystallography by CCGCrystallography by CCG
More protein structures available nowMore protein structures available now Use of 3D info in bioinformatics makes Use of 3D info in bioinformatics makes
functional inferences more dependablefunctional inferences more dependable• CCG Structural Family Database distributed with CCG Structural Family Database distributed with
MOEMOE Includes fold detection methodology to ID structurally Includes fold detection methodology to ID structurally
similar proteinssimilar proteins Simultaneous sequence and structural alignment of large Simultaneous sequence and structural alignment of large
collections of proteinscollections of proteins 3D structural family analysis for insight into conserved 3D structural family analysis for insight into conserved
geometry, water molecules, salt bridges, hydrogen geometry, water molecules, salt bridges, hydrogen bonds, hydrophobic contacts, and disulfide bondsbonds, hydrophobic contacts, and disulfide bonds
CCG’s Cheminformatics OfferingsCCG’s Cheminformatics Offerings
MOE Molecular DatabaseMOE Molecular Database MoMo lecular Descriptors calculated and lecular Descriptors calculated and
used for classification, clustering, filtering, used for classification, clustering, filtering, and predictive model constructionand predictive model construction
QSAR/QSPR Predictive ModelingQSAR/QSPR Predictive Modeling Diversity and Similarity SearchingDiversity and Similarity Searching High Throughput Conformational SearchHigh Throughput Conformational Search 3D Pharmacophore Search3D Pharmacophore Search
Components of the Semantic Web Components of the Semantic Web for Chemistryfor Chemistry
XML – eXtensible Markup LanguageXML – eXtensible Markup Language RDF – Resource Description FrameworkRDF – Resource Description Framework RSS – Rich Site SummaryRSS – Rich Site Summary Dublin Core – allows metadata-based Dublin Core – allows metadata-based
newsfeedsnewsfeeds OWL – for ontologiesOWL – for ontologies BPEL4WS – for workflow and web servicesBPEL4WS – for workflow and web services
Murray-Rust et al. Org. Biomol. Chem. 2004, 2, 3192-Murray-Rust et al. Org. Biomol. Chem. 2004, 2, 3192-3203. 3203.
Web Services Integration Projects: Web Services Integration Projects: BiosciencesBiosciences
myGridmyGrid http://http://www.mygrid.org.ukwww.mygrid.org.uk//
BIOPIPEBIOPIPE http://http://biopipe.orgbiopipe.org//
BioMOBYBioMOBY http://http://biomoby.orgbiomoby.org//
BIOT 2006BIOT 2006 Major themes, areas and suggested topics includeMajor themes, areas and suggested topics include
- Bio-molecular and Phylogenetic Databases- Bio-molecular and Phylogenetic Databases - Molecular Evolution and Phylogenetic analysis- Molecular Evolution and Phylogenetic analysis - Drug Delivery Systems- Drug Delivery Systems - Bio-Ontology and Data Mining- Bio-Ontology and Data Mining - Sequence Search and Alignment- Sequence Search and Alignment - Microarray Analysis- Microarray Analysis - System Biology- System Biology - Pathway analysis- Pathway analysis - Identification and Classification of Genes- Identification and Classification of Genes - Protein Structure Prediction and Molecular Simulation- Protein Structure Prediction and Molecular Simulation - Functional Genomics- Functional Genomics - Proteomics- Proteomics - Tertiary structure prediction- Tertiary structure prediction - Drug Docking- Drug Docking - Gene Expression Analysis- Gene Expression Analysis - Biomedical Imaging- Biomedical Imaging
Proteomics: What is it?Proteomics: What is it?
Proteomics is the study of protein expression, regulation, modification, and function in living systems for understanding how living systems use proteins. Using a variety of techniques, proteomics can be used to study how proteins interact within a system, or how proteins change due to applied stresses.
Requires advanced measurement techniques, especially separations and mass spectrometry
Proteomics Needs Informatics for:Proteomics Needs Informatics for:
Locating peaks in 2 or more dimensions MS/MS spectra interpretation Protein/Peptide quantification Peptide detectability Experimental data Biological
information enzyme or pathway regulation disease susceptibility drug efficacy