1 / 18

Tools to analyze protein characteristics

3-D fold model. Identification of conserved regions. Evolutionary relationship (Phylogeny). -Family member -Multiple alignments. Protein sequence. Protein sorting and sub-cellular localization. Anchoring into the membrane. Signal sequence (tags).

donoma
Download Presentation

Tools to analyze protein characteristics

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. 3-D fold model Identification of conserved regions Evolutionary relationship (Phylogeny) -Family member -Multiple alignments Protein sequence Protein sorting and sub-cellular localization Anchoring into the membrane Signal sequence (tags) Some nascent proteins contain a specific signal, or targeting sequence that directs them to the correct organelle. (ER, mitochondrial, chloroplast, lysosome, vacuoles, Golgi, or cytosol) Tools to analyze protein characteristics

  2. Learning algorithms are good for solving problems in pattern recognition because they can be trained on a sample data set. Classes of learning algorithms: -Artificial neural networks (ANNs) -Hidden Markov Models (HMM) Questions Can we train the computers: To detect signal sequences and predict protein destination? To identify conserved domains (or a pattern)in proteins? To predict the membrane-anchoring type of a protein? (Transmembrane domain, GPI anchor…) To predict the 3D structure of a protein?

  3. Artificial neural networks (ANN) Machine learning algorithms that mimicthe brain. Real brains, however, are orders of magnitude more complex than any ANN. ANN is composed of a large number of highly interconnectedprocessing elements (neurons) working simultaneously to solve specific problems. ANNs, like people, learn by example. ANNs cannot be programmed to perform a specific task. The first artificial neuron was developed in 1943 by the neurophysiologist Warren McCulloch and the logician Walter Pits.

  4. Hidden Markov Models (HMM) Used to answer questions like: What is the probability of obtaining a particular outcome? What is the best model from many combinations? HMM is a probabilisticprocess over a set of states, in which the states are “hidden”. It is only the outcome that visible to the observer. Hence, the name Hidden Markov Model. • HMM has many uses in genomics: • Gene prediction (GENSCAN) • SignalP • Finding periodic patterns

  5. The ExPASy (Expert Protein Analysis System) Expasy server (http://au.expasy.org) is dedicated to the analysis of protein sequences and structures. Sequence analysis tools include: DNA -> Protein [Translate] Patternand profile searches Post-translational modification and topology prediction Primary structure analysis Structure prediction (2D and 3D) Alignment

  6. PredictProtein:A service for sequence analysis, and structure prediction http://www.predictprotein.org/newwebsite/submit.html TMpred: http://www.ch.embnet.org/software/TMPRED_form.html TMHMM: Predicts transmembrane helices in proteins (CBS; Denmark) http://www.cbs.dtu.dk/services/TMHMM-2.0/ big-PI : Predicts GPI-anchor site:http://mendel.imp.univie.ac.at/sat/gpi/gpi_server.html DGPI: Predicts GPI-anchor site: http://129.194.185.165/dgpi/index_en.html SignalP: Predicts signal peptide: http://www.cbs.dtu.dk/services/SignalP/ PSORT: Predicts sub-cellular localization:http://www.psort.org/ TargetP: Predicts sub-cellular localization:http://www.cbs.dtu.dk/services/TargetP/ NetNGlyc: Predicts N-glycosylation sites:http://www.cbs.dtu.dk/services/NetNGlyc/ PTS1: Predicts peroxisomal targeting sequences http://mendel.imp.univie.ac.at/mendeljsp/sat/pts1/PTS1predictor.jsp MITOPROT: Predicts of mitochondrial targeting sequences http://ihg.gsf.de/ihg/mitoprot.html Hydrophobicity: http://www.vivo.colostate.edu/molkit/hydropathy/index.html

  7. Multiple alignment • Used to do phylogenetic analysis: • Same protein from different species • Evolutionary relationship: history • Used to find conserved regions • Local multiple alignment reveals conserved regions • Conserved regions usually are key functional regions • These regions are prime targets fordrug developments • Protein domains are often conserved across many species Algorithm for search of conserved regions: Block maker: http://blocks.fhcrc.org/blocks/make_blocks.html

  8. Multiple alignment tools Free programs: Phylip and PAUP: http://evolution.genetics.washington.edu/phylip.html Phyml: http://atgc.lirmm.fr/phyml/ The most used websites : http://align.genome.jp/ http://prodes.toulouse.inra.fr/multalin/multalin.html http://www.ch.embnet.org/index.html(T-COFFEE and ClustalW) ClustalW: Standard popular software Italigns 2 and keep on adding a new sequence to the alignment Problem: It is simply a heuristics. Motif discovery: use your own motif to search databases: PatternFind: http://myhits.isb-sib.ch/cgi-bin/pattern_search http://meme.nbcr.net/meme4_6_0/intro.html

  9. Phylogenetic analysis • Phylogenetic trees • Describe evolutionary relationships between sequences Major modes that drive the evolution: Point mutations modify existing sequences Duplications (re-use existing sequence) Rearrangement • Two most common methods • Maximum parsimony • Maximum likelihood The most useful software: http://www.megasoftware.net/mega4/m_con_select.html

  10. Parsimony vs Maximum likelihood Parsimony is the most popular method in which the simplest answer is always the preferred one. It involvesstatistical evaluationof the number of mutations need to explain the observed data. The best tree is the one that requires thefewestnumber of evolutionary changes. In contrast,maximum likelihood does not necessarily satisfy any optimality criterion. It attempts to answer the question: Whatparameters of evolutionary events was likely to produce the current data set? This is computationally difficult to do. This is the slowest of all methods. Likelihood generally performs better than parsimony

  11. Definitions Homologous:Have a common ancestor. Homology cannot be measured. Orthologous:The same gene in different species . It is the result of speciation (common ancestral) Paralogous: Related genes (already diverged) in the same species. It is the result of genomic rearrangements or duplication

  12. Determining protein structure • Direct measurement of structure • X-ray crystallography • NMR spectroscopy Site-directed mutagenesis • Computer modeling • Prediction of structure • Comparative protein-structure modeling

  13. Comparative protein-structure modeling Goal:Construct 3-D model of a protein of unknown structure (target), based on similarity of sequence to proteins of known structure (templates) • Procedure: • Template selection • Template–target alignment • Model building • Model evaluation Blue: predicted model by PROSPECT Red: NMR structure

  14. The Protein 3-D Database The Protein DataBase (PDB) contains 3-D structural data for proteins Founded in 1971 with a dozen structures As of June 2004, there were 25,760 structures in the database. All structures are reviewed for accuracy and data uniformity. • 80% come from X-ray crystallography • 16% come from NMR • 2% come from theoretical modeling Structural data from the PDB can be freely accessed at http://www.rcsb.org/pdb/

  15. High-throughput methods

  16. Most used websites for 3-D structure prediction Protein Homology/analogY Recognition Engine (Phyre) at http://www.sbg.bio.ic.ac.uk/phyre/html/index.html PredictProtein at http://www.predictprotein.org/newwebsite/submit.html UCLA Fold Recognition at http://www.doe-mbi.ucla.edu/Services/FOLD/

  17. Commercial bioinformatics softwares CLC Genomics Workbench Genomics: 454, Illumina Genome Analyzer and SOLiD sequencing data; De novo assembly of genomes of any size; Advanced visualization, scrolling, and zooming tools; SNP detection using advanced quality filtering; Transcriptomics: RNA-seq including paired data and transcript-level expression; Small RNA analysis; Expression profiling by tags; Epigenetics: Chromatin immunoprecipitation sequencing (ChIP-seq) analysis; Peak finding and peak refinement; Graph and table of background distribution; false discovery rate; Peak table and annotations; VectorNTI: Sequence analysis and illustration; restriction mapping; recombinant molecule design and cloning; in silico gel electrophoresis; synthetic biology workflows AlignX: BioAnnotator: ContigExpress: GenomBench

  18. The bioinformatics not covered in this class Comparative genomics and Genome browser: http://genome.lbl.gov/vista/index.shtml http://www.sanger.ac.uk/resources/software/artemis/ Genome annotation: http://linux1.softberry.com/berry.phtml http:// rast.nmpdr.org/ Metagenomics: http://metagenomics.anl.gov/ System biology tools.

More Related