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Proteomics. Proteomics. Proteomics directly detects expression of proteins. . Proteome research permits the discovery of new protein markers for diagnostic purposes and of novel molecular targets for drug discovery. 1. SWISS-2DPAGE database.
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Proteomics • Proteomics directly detects expression of proteins. • Proteome research permits the discovery of new protein markers for diagnostic purposes and of novel molecular targets for drug discovery.
1. SWISS-2DPAGE database • SWISS-2DPAGE is an annotated two-dimensional polyacrylamide gel electrophoresis (2-D PAGE) database established in 1993. • The SWISS-2DPAGE database is maintained by the Swiss Institute of Bioinformatics, in collaboration with the Central Clinical Chemistry Laboratory of the Geneva University Hospital.
View entry in original SWISS-2DPAGE format Entry name: VSP2_ARATH Primary accession number:82122 Entered in SWISS-2DPAGE inRelease 13, December 2000 Last modified inRelease 14, October 2001 Name and origin of the protein: DescriptionVegetative storage protein 2. Gene name(s)VSP2 OR AT5G24770FromArabidopsis thaliana (Mouse-ear cress). [TaxID: 3702] TaxonomyEukaryota; Viridiplantae; Streptophyta; Embryophyta; Tracheophyta; Spermatophyta; Magnoliophyta; eudicotyledons; core eudicots; Rosidae; eurosids II; Brassicales; Brassicaceae; Arabidopsis. References[1] MAPPING ON GEL. Sarazin B., Tonella L., Marques K., Paesano S., Chane-Favre L., Sanchez J.-C., Hochstrasser D.F., Thiellement H.; Submitted (OCT-2000) to the SWISS-2DPAGE database. 2D PAGE maps for identified proteinsCompute the theoretical pI/MwHow to interpret a protein map Arabidopsis thalianaMAP LOCATIONS: SPOT 2D-001KKV: pI=6.47, Mw=29849 *** the clicked spot *** MAPPING: MASS SPECTROMETRY [1].
2. PeptIdent • PeptIdent is a tool that allows the identification of proteins using pI, MW and peptide mass fingerprinting data. Experimentally measured, user-specified peptide masses are compared with the theoretical peptides calculated for all proteins in the SWISS-PROT/TrEMBL databases.
3. Mascot • Mascot is a powerful search engine that uses mass spectrometry data to identify proteins from primary sequence databases.
Concise Protein Summary Report • Switch to full Protein Summary Report • To create a bookmark for this report, right click this link: Concise Summary Report (../data/20020713/FATeiic.dat) • P82691Mass: 1011 Total score: 25 Peptides matched: 1 Pyrokinin-1 (Pea-PK-1) (FXPRL-amide) • P82041 Mass: 1736 Total score: 24 Peptides matched: 1 Uperin 3.4 1. 3. • P36396Mass: 2069 Total score: 23 Peptides matched: 1 Sex-determining region Y protein (Testis-determining factor) (Fragment)
4. FindMod • This tool examines peptide mass fingerprinting data for mass differences between empirical and theoretical peptides. Where mass differences correspond to a post-translational modification (PTM).
Post-translational modifications Mass values used in FindMod • Modifications Abbreviation Monoisotopic Average __ • Acetylation ACET 42.0106 42.0373 • Amidation AMID -0.9840 -0.9847 • Beta-methylthiolation BMTH 45.9877118 46.08688 • Biotin BIOT 226.0776 226.2934 • Carbamylation CAM 43.00581 43.02502 • Citrullination CITR 0.9840276 0.98476 • C-Mannosylation CMAN 162.052823 162.1424 • Deamidation DEAM 0.9840 0.9847 • N-acyl diglyceride • cysteine (tripalmitate) DIAC 788.7258 789.3202 • Dimethylation DIMETH 28.0314 28.0538 • FAD FAD 783.1415 783.542 • Farnesylation FARN 204.1878 204.3556 • Formylation FORM 27.9949 28.0104 • Geranyl-geranyl GERA 272.2504 272.4741 • Gamma-carboxyglutamic acid GGLU 43.98983 44.0098 • O-GlcNAc GLCN 203.0794 203.1950 • Glucosylation (Glycation) GLUC 162.0528 162.1424 • Hydroxylation HYDR 15.9949 15.9994 • Lipoyl LIPY 188.033 188.3027 • Methylation METH 14.0157 14.0269 • Myristoylation MYRI 210.1984 210.3598 • Palmitoylation PALM 238.2297 238.4136 • Phosphorylation PHOS 79.9663 79.9799 • Pyridoxal phosphate PLP 229.014 229.129 • Phosphopantetheine PPAN 339.078 339.3234 • Pyrrolidone carboxylic acid PYRR -17.0266 -17.0306 • Sulfation SULF 79.9568 80.0642 • Trimethylation TRIMETH 42.0471 42.0807
Biochemical Pathway Databases • Linking the biochemical pathways together and integration with the genomic data are the great tasks of biochemical pathway databases.
Where do we go? “Deconstruction of biological processes into their molecular components”.
DNA (Genomics) RNA (Transcriptomics) Protein (Proteomics) Metabolites (Metabolomics)
From: Gene, genome, cell, organism, population,… towardSystem Biology
Fact:Individual research units would not work any more! Recommendation: Team up! Go beyond your own, your institute, and your country boundaries.
Fact:Genomic data are suppose to reduce time and efforts for preparation of reagents, resources and information. Recommendation: Think big! • Search and use data intelligently. • Turn attention to complex biology from various angles, i.e. have all needed specialty in your team.
Fact:A mass of data is available freely! Recommendation: Learn how to use! Make use of them to develop technologies.
Fact:Biology world is rapidly changing! Recommendation: Keep up with changes! • Re-establish systems with more flexibility and more freedom. • Loose regulations for funding, employment, etc. • Re-design your research project.
Cautions: • One protein with different roles: • Alpha-enolase in liver • T-crystallin in eye lens • One structure in proteins with diverse functions: • TIM barrels in isomerases, oxidoreductase and hydrolases. • 30% error in automated annotations.