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Overview . Role of Bioinformatics/Computational Biology in Proteomics ResearchGenomicsFunctional Annotation of ProteinsClassification of ProteinsBioinformatics Databases and Analytical Tools: Dr. Mazumder and Dr. Hu Sequence function. . Functional Genomics and Proteomics.
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1. From Protein Sequence to Function: Functional Analysis of Protein Sequences and Protein Classification
Anastasia Nikolskaya
Assistant Professor (Research)
Protein Information Resource
Department of Biochemistry and Molecular Biology
Georgetown University Medical Center
2. Overview Role of Bioinformatics/Computational Biology in Proteomics Research
Genomics
Functional Annotation of Proteins
Classification of Proteins
Bioinformatics Databases and Analytical Tools:
Dr. Mazumder and Dr. Hu
Sequence function
3. Functional Genomics and Proteomics Proteomics studies biological systems based on global knowledge of protein sets (proteomes).
Functional genomics studies biological functions of proteins, complexes, pathways based on the analysis of genome sequences. Includes functional assignments for protein sequences.
4. Proteomics
Data: Gene Expression Profiling
- Genome-Wide Analyses of Gene Expression
Data: Structural Genomics
- Determine 3D Structures of All Protein Families
Data: Genome Projects (Sequencing)
- Functional genomics
- Knowing complete genome sequences of a number of organisms is the basis of the proteomics research
5. Bioinformatics and Genomics/Proteomics
7. Most new proteins come from genome sequencing projects Mycoplasma genitalium - 484 proteins
Escherichia coli - 4,288 proteins
S. cerevisiae (yeast) - 5,932 proteins
C. elegans (worm) ~ 19,000 proteins
Homo sapiens ~ 40,000 proteins
8. Advantages of knowing the complete genome sequence All encoded proteins can be predicted and identified
The missing functions can be identified and analyzed
Peculiarities and novelties in each organism can be studied
Predictions can be made and verified
9. The changing face of protein science 20th century
Few well-studied proteins
Mostly globular with enzymatic activity
Biased protein set 21st century
Many “hypotheti- cal” proteins
Various, often with no enzymatic activity
Natural protein set
10. Properties of the natural protein set Unexpected diversity of even common enzymes (analogous, paralogous, xenologous, enzymes)
Conservation of the reaction chemistry, but not the substrate specificity
Functional diversity in closely related proteins
Abundance of new structures
13. Experimentally characterized
Up-to-date information, manually annotated (curated database!)
“Knowns” = Characterized by similarity (closely related to experimentally characterized)
Make sure the assignment is plausible
Function can be predicted
Extract maximum possible information
Avoid errors and overpredictions
Fill the gaps in metabolic pathways
“Unknowns” (conserved or unique)
Rank by importance
14. Problems in functional assignments for “knowns” Previous low quality annotations
16. Problems in functional assignments for “knowns”
18. Experimentally characterized
“Knowns” = Characterized by similarity (closely related to experimentally characterized)
Make sure the assignment is plausible
Function can be predicted
Extract maximum possible information
Avoid errors and overpredictions
Fill the gaps in metabolic pathways
“Unknowns” (conserved or unique)
Rank by importance
19. Dealing with “hypothetical” proteins Computational analysis
Sequence analysis of the new ORFs
Structural analysis
Determination of the 3D structure
Mutational analysis
Functional analysis
Expression profiling
Tracking of cellular localization
20. Cluster analysis of protein families (family databases)
Use of sophisticated database searches (PSI-BLAST, HMM)
Detailed manual analysis of sequence similarities
Functional prediction: comutational analysis
21. Those amino acids that are conserved in divergent proteins (archaeal and bacterial, hyperthermophilic and mesophilic) are likely to be important for catalytic activity.
Comparative analysis allows us to find subtle sequence similarities in proteins that would not have been noticed otherwise
Prediction of the 3D fold and general biochemical function is much easier than prediction of exact biological (or biochemical) function.
22. Reaction chemistry often remains conserved even when sequence diverges almost beyond recognition
Sequence database searches that use exotic or highly divergent query sequences often reveal more subtle relationships than those using queries from humans or standard model organisms (E. coli, yeast, worm, fly).
Sequence analysis complements structural comparisons and can greatly benefit from them
23. Poorly characterized protein families Enzyme activity can be predicted, the substrate remains unknown (ATPases, GTPases, oxidoreductases, methyltransferases, acetyltransferases)
Helix-turn-helix motif proteins (predicted transcriptional regulators)
Membrane transporters
24. Phylogenetic distribution
Wide - most likely essential
Narrow - probably clade-specific
Patchy - most intriguing, niche-specific
Domain association – Rosetta Stone
(for multidomain proteins)
Gene neighborhood (operon organization) Functional prediction: computational analysis
26. Functional Prediction:Role of Structural Genomics Protein Structure Initiative: Determine 3D Structures of All Proteins
Family Classification:
Organize Protein Sequences into Families, collect families without known structures
Target Selection:
Select Family Representatives as Targets
Structure Determination:
X-Ray Crystallography or NMR Spectroscopy
Homology Modeling:
Build Models for Other Proteins by Homology
Functional prediction based on structure Structural genomics is the systematic determination of 3-dimensional structures of proteins representative of the range of protein structure and function found in nature. The aim, ultimately, is to build a body of structural information that will facilitate prediction of a reasonable structure and potential function for almost any protein from knowledge of its coding sequence. Such information will be essential for understanding the functioning of the human proteome, the ensemble of tens of thousands of proteins specified by the human genome. Structural genomics is the systematic determination of 3-dimensional structures of proteins representative of the range of protein structure and function found in nature. The aim, ultimately, is to build a body of structural information that will facilitate prediction of a reasonable structure and potential function for almost any protein from knowledge of its coding sequence. Such information will be essential for understanding the functioning of the human proteome, the ensemble of tens of thousands of proteins specified by the human genome.
27. Structural Genomics: Structure-Based Functional Assignments
Structural genomics is the systematic determination of 3-dimensional structures of proteins representative of the range of protein structure and function found in nature. The aim, ultimately, is to build a body of structural information that will facilitate prediction of a reasonable structure and potential function for almost any protein from knowledge of its coding sequence. Such information will be essential for understanding the functioning of the human proteome, the ensemble of tens of thousands of proteins specified by the human genome. Structural genomics is the systematic determination of 3-dimensional structures of proteins representative of the range of protein structure and function found in nature. The aim, ultimately, is to build a body of structural information that will facilitate prediction of a reasonable structure and potential function for almost any protein from knowledge of its coding sequence. Such information will be essential for understanding the functioning of the human proteome, the ensemble of tens of thousands of proteins specified by the human genome.
29. Functional prediction: problem areas Identification of protein-coding regions
Delineation of potential function(s) for distant paralogs
Identification of domains in the absense of close homologs
Analysis of proteins with low sequence complexity
30. Experimentally characterized
Up-to-date information, manually annotated
“Knowns” = Characterized by similarity (closely related to experimentally characterized)
Make sure the assignment is plausible
Function can be predicted
Extract maximum possible information
Avoid errors and overpredictions
Fill the gaps in metabolic pathways
“Unknowns” (conserved or unique)
Rank by importance
31. “Unknown unknowns” Phylogenetic distribution
Wide - most likely essential
Narrow - probably clade-specific
Patchy - most intriguing, niche-specific
32. To deal with the ocean of new sequences, need “natural” protein classification Protein families are real and reflect evolutionary relationships
Function often follows along the family lines
Protein classification systems can be used to:
Improve sensitivity of protein identification, simplify detection of non-obvious relationships
Provide accurate automatic annotation for new sequences
Detect and correct genome annotation errors systematically
Drive other annotations (actve site etc)
Provide basis for evolutionary and comparative research
33. The ideal system would be: Comprehensive, with each sequence classified either as a member of a family or as an “orphan” sequence
Hierarchical and based on evolution, with families united into superfamilies on the basis of distant homology
Allow for simultaneous use of the whole protein and domain information (domains mapped onto proteins)
Allow for automatic classification/annotation of new sequences
Expertly curated (family name, function, evidence attribution (experimental vs predicted), background etc). This is the only way to avoid annotation errors and prevent error propagation
34. Protein Evolution Tree of Life & Evolution of Protein Families (Dayhoff, 1978)
Can build a tree representing evolution of a protein family, based on sequences
Othologus Gene Family: Organismal and Sequence Trees Match Well
35. Protein Evolution Homolog
Common Ancestors
Common 3D Structure
Usually at least some sequence similarity (sequence motifs or more close similarity)
Ortholog
Derived from Speciation
Paralog
Derived from Duplication Homology: Similarity in DNA or protein sequences between individuals of the same species or among different species.
Evolutionary approaches, including cross species sequence comparisons and studies on features of genome organization, evolution and conserved synteny are critical.
Homology: Similarity in DNA or protein sequences between individuals of the same species or among different species.
Evolutionary approaches, including cross species sequence comparisons and studies on features of genome organization, evolution and conserved synteny are critical.
36. Orthologs and Paralogs
37. Orthologs and Paralogs
38. Levels of Protein Classification
39. Protein Family-Domain-Motif Domain: Evolutionary/Functional/Structural Unit
Domain = structurally compact, independently folding unit that forms a stable three-dimentional structure and shows a certain level of evolutionary conservation. Usually, corresponds to an evolutionary unit.
A protein can consist of a single domain or multiple domains. Proteins have modular structure.
Motif: Conserved Functional/Structural Site Here, for example, are diagrammatic representations of 5 superfamilies containing the calcineurin-like phosphoesterase domain, in several cases in association with other known types of domains.Here, for example, are diagrammatic representations of 5 superfamilies containing the calcineurin-like phosphoesterase domain, in several cases in association with other known types of domains.
40. Protein Evolution:Sequence Change vs. Domain Shuffling
41. Recent Domain Shuffling
42. Practical classification of proteins:setting realistic goals
43. Complementary approaches Classify domains
Allows to build a hierarchy and trace evolution all the way to the deepest possible level, the last point of traceable homology and common origin
Can usually annotate only generic biochemical function
Classify whole proteins
Does not allow to build a hierarchy deep along the evolutionary tree because of domain shuffling
Can usually annotate specific biological function (value for the user and for the automatic individual protein annotation)
44. Protein Family Databases to be discussed PIRSF:
Proteins in PIRPSD: 283,289
Proteins classified: 187,871
2/3 of the PIR proteins
InterPro
COGs/KOGs
~ 70% of each microbial genome
~ 50% of each Eukaryotic genome in 3-clade KOG
~ 20% ? of each Eukaryotic genome in LSEs
45. PIR Web Site (http://pir.georgetown.edu)
46. PIRSF protein classification system
47. Whole protein functional annotation
[NiFe]-hydrogenase maturation factor,
carbamoyl phosphate-converting enzyme SF006256
Acylphosphatase – Znf x2 – YrdC -
On the basis of domain composition alone:
can not tell that this is a hydrogenase maturation factor
various speculations for exact role: RNA-binding translation factor, maturation protease ….
Recent data: carbamoyl phosphate-converting enzyme
48. PIRSF classification is based on evolution Sequence similarity, domain architecture and phyletic pattern guide PIRSF creation/curation
PIRSF Families range from ancient conserved proteins to unique lineage specific expansions
PIRSF Families are monophyletic (with some exceptions)
Members are homologs (may be orthologs or paralogs)
49. Levels of protein classification
50. PIRSF curation and annotation Preliminary clusters
Computationally generated, not curated
Curated Families (preliminary curation, first-tier annotation)
Membership, with no reclustering
Regular members: seed, representative
Associate members
Signature domains & HMM thresholds
Fully curated Families (second-tier annotation)
Membership
Family name
Description, bibliography (optional)
Integrated into InterPro Recently, the curation interface has been enhanced.Recently, the curation interface has been enhanced.
51. iProClass PIRSF report
52. Systematic correction of annotation errors:Chorismate mutase Chorismate Mutase (CM), AroQ class
PIRSF001501 – CM (Prokaryotic type) [PF01817]
PIRSF001499 – TyrA bifunctional enzyme (Prok) [PF01817-PF02153]
PIRSF001500 – PheA bifunctional enzyme (Prok) [PF01817-PF00800]
PIRSF017318 – CM (Eukaryotic type) [Regulatory Dom-PF01817]
Chorismate Mutase, AroH class
PIRSF005965 – CM [PF01817] CSM: Class: All alpha proteins
Fold: Chorismate mutase II multihelical; core: 6 helices, bundle
1DBF: Class: Alpha and beta proteins (a+b) Mainly antiparallel beta sheets (segregated alpha and beta regions)
Fold: Bacillus chorismate mutase-like core: beta-alpha-beta-alpha-beta(2); mixed beta-sheet: order: 1423, strand 4 is antiparallel to the rest
CSM: Class: All alpha proteins
Fold: Chorismate mutase II multihelical; core: 6 helices, bundle
1DBF: Class: Alpha and beta proteins (a+b) Mainly antiparallel beta sheets (segregated alpha and beta regions)
Fold: Bacillus chorismate mutase-like core: beta-alpha-beta-alpha-beta(2); mixed beta-sheet: order: 1423, strand 4 is antiparallel to the rest
53. Chorismate Mutase Convergent Evolution – EC 5.4.99.5 (Non-Orthologous Gene Displacement)
Two Distinct Sequence/Structure Types
AroQ Class: SCOP (all a), core: 6 helices, bundle
AroH Class: SCOP (a+b), core: beta-alpha-beta-alpha-beta(2)
Pfam Domain: PF01817 CSM: Class: All alpha proteins
Fold: Chorismate mutase II multihelical; core: 6 helices, bundle
1DBF: Class: Alpha and beta proteins (a+b) Mainly antiparallel beta sheets (segregated alpha and beta regions)
Fold: Bacillus chorismate mutase-like core: beta-alpha-beta-alpha-beta(2); mixed beta-sheet: order: 1423, strand 4 is antiparallel to the rest
CSM: Class: All alpha proteins
Fold: Chorismate mutase II multihelical; core: 6 helices, bundle
1DBF: Class: Alpha and beta proteins (a+b) Mainly antiparallel beta sheets (segregated alpha and beta regions)
Fold: Bacillus chorismate mutase-like core: beta-alpha-beta-alpha-beta(2); mixed beta-sheet: order: 1423, strand 4 is antiparallel to the rest
54. Systematic correction of annotation errors:IMPDH
55. Propagation of protein annotationwithin UniProt (under development) Homeomorphic family level is the primary PIRSF curation and annotation level, most invested with biological meaning
Reliable automatic assignment of new family members
Systematic detection of annotation errors (curator looks at every protein annotation in the family)
PIRSF Family/Subfamily name
- can be applied to every member
- make possible the automatic transfer of name from PIRSF to every unnamed/unannotated member in UniProt
Preventing error propagation: evidence attribution
experimental (validated and tentative) and predicted
56. InterPro(at EBI)
57. InterPro Entry
58. PIR Superfamilies are being integrated into InterPro
59. COGs (Clusters of Orthologous Groups)(at NCBI) Complete genomes
Reciprocal best hits
No score cutoffs
Comparative genomics – a
branch of computational
biology that uses complete
genome sequences
61. Construction of COGs:
63. Construction of COGs:Add all homologs
69. What to do with a new porotein sequence I. Basic:
- Domain analysis (SMART = recommended;
PFAM, CDD is included in BLAST output)
BLAST
Curated protein family databases (PIRSF, InterPro, COGs)
II. If not sufficient:
Literature (PubMed) from links from individual entries on the BLAST output (look for SwissProt entries first)
Refined PubMed search using gene/protein names, synomims, function and other terms you found
III. Advanced:
- Multiple sequence alignments
- Phylogenetic tree reconstruction
71. Examples for analysis: 1. Retrieve one of the following protein sequences:
PIR: C69086 D64376 GenBank GI:15679635. Using analysis tools available on the web, check if the functional annotation is correct, and provide correct annotation without looking at internal PIR or COG annotations (Run BLAST with CDsearch and SMART to start with). When you are done, look at the PIR curated SF annotation, and at COG annotations. What caused the wrong annotations? In BLAST outputs for these sequences, do you see other wrongly annotated proteins (same and different type errors)?
Next, analyze the C-terminal domain of these proteins by PSI-BLAST (and alignment analysis) and suggest any speculations as to its function (homework).
72. Examples for analysis: 2.
Retrieve the following sequence: GI:7019521
Take a look at the associated publication (reference).
Analyze the sequence to see if any additional information can be obtained (run PSI-BLAST, and (as a homework) construct multiple alignment).
Take a look at taxonomy report: what does it tell you?
Find experimental paper associated with one of the sequences found by PSI-BLAST. What annotation is appropriate for this sequence and for the entire family?
73. Examples for analysis: 3.
Predict the function of the following proteins:
GenBank: GI: 27716853
E. coli YjeE protein
Verify and/or correct the following functional annotations. Can you explain why the erroneous annotations were made?
PIR: H87387
GenBank: GI:15606003 GI:15807219
PIR: F70338
74. Examples for analysis: 4. Homework: an exercise in transitive relationships:Start with>gi|20093648|ref|NP_613495.1| Uncharacterized membrane protein, conserved in Archaea [Methanopyrus kandleri AV19](this is a short membrane protein); run PSI-BLAST, make sure you have filtering, complexity and CD-search off. There are no good hits but a bunch of sub-threshold ones. Collect "suspect" relations, use them as queries and expand the net. You will be able to come up with two proteins:>gi|21227474|ref|NP_633396.1| hypothetical protein [Methanosarcina mazei Goe1] and>gi|14324537|dbj|BAB59464.1| hypothetical protein [Thermoplasma volcanium]When used as a PSI-BLAST query, the first will tie the Methanopyrus protein into a group, while the second will tie this group to the Sec61 subunit of preprotein translocase.Then, of course, you can obtain the same result with CD-search in a single step ?.