Date post: | 21-Nov-2014 |
Category: |
Business |
Upload: | lars-juhl-jensen |
View: | 1,111 times |
Download: | 1 times |
ProteomicsAnalysis and integration of large-scale data sets
Lars Juhl JensenEMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Overview
• Methods for predicting protein-protein interactions Cross-species inference Genomic context methods Prediction from expression data Automated extraction from text
• Quality control of high-throughput interaction data Types of data sets available Network representations of
interaction data sets Topology-based quality scores Benchmarking of data sets Filtering strategies
• Prediction of protein features and function Linear motifs in proteins Relation to interaction networks Motif prediction from sequence From features to function
• Qualitative modeling of the yeast cell cycle Modeling the cell cycle through
large-scale data integration What does the model tell us? A neural network approach to
predicting cell cycle proteins The cell cycle in feature space
Part 1Methods for predicting protein-protein interactions
Lars Juhl JensenEMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Overview
• Methods for predicting protein-protein interactions Cross-species inference Genomic context methods Prediction from expression data Automated extraction from text
• Quality control of high-throughput interaction data Types of data sets available Network representations of
interaction data sets Topology-based quality scores Benchmarking of data sets Filtering strategies
• Prediction of protein features and function Linear motifs in proteins Relation to interaction networks Motif prediction from sequence From features to function
• Qualitative modeling of the yeast cell cycle Modeling the cell cycle through
large-scale data integration What does the model tell us? A neural network approach to
predicting cell cycle proteins The cell cycle in feature space
Lars Juhl Jensen, EMBL Heidelberg
Cross-species integration of diverse data
• Challenges and promises of large-scale data integration Explosive increase in both the amounts and different types of
high-throughput data sets that are being produced These data are highly heterogeneous and lack standardization Most data sets are error-prone and suffer from systematic biases Experiments should be integrated across model organisms
• STRING is a web resource that integrates and transfers diverse large-scale data across 100+ species, but it is not a primary repository for experimental data a curated database of complexes or pathways a substitute for expert annotation
Lars Juhl Jensen, EMBL Heidelberg
What is STRING?
Genomic neighborhood
Species co-occurrence
Gene fusions
Database imports
Exp. interaction data
Microarray expression data
Literature co-mentioning
Lars Juhl Jensen, EMBL Heidelberg
Genomic context methods
© Nature Biotechnology, 2004
Lars Juhl Jensen, EMBL Heidelberg
Inferring functional modules fromgene presence/absence patterns
Lars Juhl Jensen, EMBL Heidelberg
Inferring functional modules fromgene presence/absence patterns
Lars Juhl Jensen, EMBL Heidelberg
Inferring functional modules fromgene presence/absence patterns
Lars Juhl Jensen, EMBL Heidelberg
Inferring functional modules fromgene presence/absence patterns
Restingprotuberances
Protractedprotuberance
Cellulose
© Trends Microbiol, 1999
CellCell wall
Anchoring proteins
Cellulosomes
Cellulose
The “Cellulosome”
Lars Juhl Jensen, EMBL Heidelberg
Formalizing the phylogenetic profile method
Align all proteins against allAlign all proteins against all
Calculate best-hit profileCalculate best-hit profile
Join similar species by PCAJoin similar species by PCA
Calculate PC profile distancesCalculate PC profile distances
Calibrate against KEGG mapsCalibrate against KEGG maps
Lars Juhl Jensen, EMBL Heidelberg
Inferring functional associations from evolutionarily conserved operons
Identify runs of adjacent geneswith the same direction
Identify runs of adjacent geneswith the same direction
Score each gene pair based onintergenic distances
Score each gene pair based onintergenic distances
Calibrate against KEGG mapsCalibrate against KEGG maps
Infer associationsin other species
Infer associationsin other species
Lars Juhl Jensen, EMBL Heidelberg
Predicting functional and physical interactions from gene fusion/fission events
Find in A genes that matcha the same gene in B
Find in A genes that matcha the same gene in B
Exclude overlappingalignments
Exclude overlappingalignments
Calibrate againstKEGG maps
Calibrate againstKEGG maps
Calculate all-against-allpairwise alignments
Calculate all-against-allpairwise alignments
Lars Juhl Jensen, EMBL Heidelberg
Integrating physical interaction screens
Make binaryrepresentationof complexes
Make binaryrepresentationof complexes
Yeast two-hybriddata sets are
inherently binary
Yeast two-hybriddata sets are
inherently binary
Calculate scorefrom number of
(co-)occurrences
Calculate scorefrom number of
(co-)occurrences
Calculate scorefrom non-shared
partners
Calculate scorefrom non-shared
partners
Calibrate against KEGG mapsCalibrate against KEGG maps
Infer associations in other speciesInfer associations in other species
Combine evidence from experimentsCombine evidence from experiments
Lars Juhl Jensen, EMBL Heidelberg
Mining microarray expression databases
Re-normalize arraysby modern methodto remove biases
Re-normalize arraysby modern methodto remove biases
Buildexpression
matrix
Buildexpression
matrix
Combinesimilar arrays
by PCA
Combinesimilar arrays
by PCA
Construct predictorby Gaussian kerneldensity estimation
Construct predictorby Gaussian kerneldensity estimation
Calibrateagainst
KEGG maps
Calibrateagainst
KEGG maps
Inferassociations inother species
Inferassociations inother species
Lars Juhl Jensen, EMBL Heidelberg
The Qspline method for non-linear intensity normalization of expression data
• From the empirical distribution, a number of quantiles are calculated for each of the channels to be normalized (one channel shown in red) and for the reference distribution (shown in black)
• A QQ-plot is made and a normalization curve is constructed by fitting a cubic spline function
• As reference one can either use an artificial “median array” for a set of arrays or use a log-normal distribution, which is a good approximation
Lars Juhl Jensen, EMBL Heidelberg
Non-linear normalization of intensities and correction for spatial effects
DownloadedSMD data
After intensitynormalization
Spatial biasestimate
After spatialnormalization
Lars Juhl Jensen, EMBL Heidelberg
Co-mentioning in the scientific literature
Associate abstracts with speciesAssociate abstracts with species
Identify gene names in title/abstractIdentify gene names in title/abstract
Count (co-)occurrences of genesCount (co-)occurrences of genes
Test significance of associationsTest significance of associations
Calibrate against KEGG mapsCalibrate against KEGG maps
Infer associations in other speciesInfer associations in other species
Lars Juhl Jensen, EMBL Heidelberg
?
Source species
Target species
Evidence transfer based on “fuzzy orthology”
• Orthology transfer is tricky Correct assignment of orthology
is difficult for distant species Functional equivalence cannot
be guaranteed for in-paralogs
• These problems are addressed by our “fuzzy orthology” scheme Confidence scores for functional
equivalence are calculated from all-against-all alignment
Evidence is distributed across possible pairs according to confidence scores in the case of many-to-many relationships
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
The power of cross-species transferand evidence integration
Lars Juhl Jensen, EMBL Heidelberg
Conclusions
• Many types of data can be used for interaction prediction
• To make the best of these data they must each be benchmarked integrated across species
• The STRING web resource does just this
Questions?
Part 2Quality control of high-throughput interaction data
Lars Juhl JensenEMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Overview
• Methods for predicting protein-protein interactions Cross-species inference Genomic context methods Prediction from expression data Automated extraction from text
• Quality control of high-throughput interaction data Types of data sets available Network representations of
interaction data sets Topology-based quality scores Benchmarking of data sets Filtering strategies
• Prediction of protein features and function Linear motifs in proteins Relation to interaction networks Motif prediction from sequence From features to function
• Qualitative modeling of the yeast cell cycle Modeling the cell cycle through
large-scale data integration What does the model tell us? A neural network approach to
predicting cell cycle proteins The cell cycle in feature space
Lars Juhl Jensen, EMBL Heidelberg
Protein interaction data sets
• Many high-throughput data sets published the past 5 years S. cerevisiae is by far the best
covered organism Recently, large data sets were
made for two metazoans
• Two fundamentally different techniques have been used Affinity purification/MS The yeast two-hybrid assay
• Interaction databases IntAct, BIND, DIP, MINT Species specific databases © Current Opinions in Structural Biology, 2004
Lars Juhl Jensen, EMBL Heidelberg
The topology of protein interaction networks
• A multitude of publications exist on protein network topology
• Global measures of topology Degree distribution Mean path length Clustering coefficient
• Theoretical models of networks Random Scale-free Hierarchical
• Local topology, network motifs
Lars Juhl Jensen, EMBL Heidelberg
What is an interaction?
• Physical protein interactions Proteins that physically touch each other within a complex Members of the same stable complex Transient interactions, e.g. a protein kinase with its substrate
• More broadly defined “functional interactions” Direct neighbors in metabolic networks Members of the same pathway
• The pragmatic definition – whatever the assays detect Affinity purification tends to find members of stable complexes Yeast two-hybrid assays also detects more transient interactions
Lars Juhl Jensen, EMBL Heidelberg
Binary representations of purification data
© Drug Discovery Today: TARGETS, 2004
Lars Juhl Jensen, EMBL Heidelberg
Topology based quality scores
• Scoring scheme for yeast two-hybrid data: S1 = -log((N1+1)·(N2+1))
N1 and N2 are the numbers of non-shared interaction partners
Similar scoring schemes have been published by Saito et al.
• Scoring scheme for complex pull-down data: S2 = log[(N12·N)/((N1+1)·(N2+1))]
N12 is the number of purifications containing both proteins
N1 is the number containing protein 1, N2 is defined similarly
N is the total number of purifications
• Both schemes aim at identifying ubiquitous interactors
Lars Juhl Jensen, EMBL Heidelberg
Calibration of quality scores andcombination of evidence
• Different pieces of evidence are not directly comparable A different raw quality score is
used for each evidence type Quality differences exist among
data sets of the same type
• Solved by calibrating all scores against a common reference The accuracy relative to a “gold
standard” is calculated within score intervals
The resulting points are approximated by a sigmoid
Lars Juhl Jensen, EMBL Heidelberg
Benchmarks for protein interaction sets
• To benchmark interaction sets, one needs a reference set
• Several options exist Directly compare with a curated
set of protein complexes from e.g. MIPS
Check consistency with metabolic pathways from e.g. KEGG
Check consistency with GO biological process or cellular component categories
Look for co-expression of genes within complexes
© Current Opinions in Structural Biology, 2004
Lars Juhl Jensen, EMBL Heidelberg
Benchmark of published interaction sets against the MIPS curated yeast complexes
• Data sets were filtered to remove the most obvious biases by removing ribosomal proteins and interactions obtained from MIPS
• High specificity is often obtained at the price of low coverage
Lars Juhl Jensen, EMBL Heidelberg
Filtering by subcellular localization
• Proteins cannot interact if they are not in the same place Large-scale subcellular localization screens have been made in yeast A matrix can be constructed that described the compartments between
which interactions should be allowed Two proteins cannot interact if no combination of observed subcellular
compartments allow for interaction
Lars Juhl Jensen, EMBL Heidelberg
Restricting the network to a “system”
• Why do large-scale interaction data have high error rates? In a systematic screen we test the hypotheses that any protein in
interacts with any other protein in the cell The vast majority of these possible interaction do not take place By subsequently limiting the “interaction search space” to only the
system of interest, the error rate can be reduced to that of small scale experiments!
• A simple strategy for making a network of a “system” Define an initial parts list of proteins that should be in the system Use “high confidence” interactions to pull in additional proteins Show all “medium confidence” interactions within the system
Lars Juhl Jensen, EMBL Heidelberg
Can the type of interaction be predictedby combining different evidence types?
• Different types of experiment evidence tell us something different
• Correct Y2H interactions that are missed by complex purification methods generally correspond to transient interactions
Lars Juhl Jensen, EMBL Heidelberg
Conclusions
• When dealing with high-throughput experimental data, it is crucial to do proper benchmarking
• Globally, the error rates are generally very high
• A very large part of the errors can be filtered away by computational methods, allowing high confidence data sets to be constructed
Questions?
Part 3Prediction protein features and function
Lars Juhl JensenEMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Overview
• Methods for predicting protein-protein interactions Cross-species inference Genomic context methods Prediction from expression data Automated extraction from text
• Quality control of high-throughput interaction data Types of data sets available Network representations of
interaction data sets Topology-based quality scores Benchmarking of data sets Filtering strategies
• Prediction of protein features and function Linear motifs in proteins Relation to interaction networks Motif prediction from sequence From features to function
• Qualitative modeling of the yeast cell cycle Modeling the cell cycle through
large-scale data integration What does the model tell us? A neural network approach to
predicting cell cycle proteins The cell cycle in feature space
Lars Juhl Jensen, EMBL Heidelberg
Proteins – more than just globular domains
• Eukaryotic linear motifs (ELMs) Ligand peptides Modification sites Targeting signals
• Disordered regions
• Transmembrane helices
Toby Gibson, EMBL Heidelberg
Insulin ReceptorSubstrate 1
Lars Juhl Jensen, EMBL Heidelberg
L . C . E RB interaction
[RK] .{0,1} V . F PP1 interaction
R . L .{0,1} [FLIMVP] Cyclin binding motif
SP . [KR] CDK phosphorylation
L . . LL NR Box
P . L . PMYND finger interaction
F . . . W . . [LIV] MDM2-binding
RGD Integrin-binding
SKL$ Peroxisome targeting
[RK][RK] . [ST] PKA phosphorylation
Most ELMs are “information poor”
• Weak/short consensus sequences for ELMs The typical ELM only has
three conserved residues Some variance is often
allowed even for these
• ELMs are very hard to predict from sequence Consensus sequences
simply match everywhere The information is not in
the local sequence Most ELMs can only be
predicted using context
Toby Gibson, EMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
KnownDomains
OrderPreference
DisorderPreference
Prediction of protein disorder/globularity
• Using known domains SMART Pfam Interpro
• Ab initio from sequence GlobPlot DisEMBL PONDR
Toby Gibson, EMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Prediction of signal peptides from sequence
• Signal peptides play different roles They mediate transport of proteins
to the ER in eukaryotes They target proteins for secretion
in prokaryotes
• The architecture of signal peptides Positively charged N-terminus Hydrophobic core Short, more polar region Cleavage site with small amino
acids at positions -3 and -1
• Signal peptides can be accurately predicted by several methods
Henrik Nielsen, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
Function prediction from post translational modifications
• Proteins with similar function may not be related in sequence
• Still they must perform their function in the context of the same cellular machinery
• Similarities in features such like PTMs and physical/chemical properties could be expected for proteinswith similar function
Henrik Nielsen, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
The concept of ProtFun
• Predict as many biologically relevant features as we can from the sequence
• Train artificial neural networks for each category, also optimizing the feature combinations
• Assign a probability for each category from the NN outputs
© Journal of Molecular Biology, 2002
Lars Juhl Jensen, EMBL Heidelberg
Training of neural networks
• Human protein protein sequences from SWISS-PROT were assigned to functional classes based on their keywords by using the EUCLID dictionary
• The set of sequences was divided into a test and a training set with no significant sequence similarity between the two sets
• Neural networks were first trained for single features and subsequently for combinations of the best performing features
Lars Juhl Jensen, EMBL Heidelberg
Prediction performance on cellular role categories
© Journal of Molecular Biology, 2002
Lars Juhl Jensen, EMBL Heidelberg © Journal of Molecular Biology, 2002
Lars Juhl Jensen, EMBL Heidelberg
An example – 1AOZ vs. 1PLC
scoring matrix: BLOSUM50, gap penalties: -12/-215.5% identity; Global alignment score: -23
10 20 30 40 50 601AOZ SQIRHYKWEVEYMFWAPNCNENIVMGINGQFPGPTIRANAGDSVVVELTNKLHTEGVVIH .. .. : ... . . ..: . :...: . .: ...:. 1PLC ---------IDVLLGA---DDGSLAFVPSEFS-----ISPGEKIVFK-NNAGFPHNIVFD 10 20 30 40
70 80 90 100 110 1201AOZ WHGILQRGTPWADGTASISQCAINPGETFFYNFTVDNPGTFFYHGHLGMQRSAGLYGSLI .: :. . . : . :::: .. . .:. : : ::. :.. 1PLC EDSI-PSGVDASKISMSEEDLLNAKGETFEVALSNKGEYSFYCSPHQG----AGMVGKVT 50 60 70 80 90
1AOZ VDPPQGKKE :. 1PLC VN-------
Lars Juhl Jensen, EMBL Heidelberg
An enzyme and a non-enzyme from the Cupredoxin superfamily
Lars Juhl Jensen, EMBL Heidelberg
# Functional category 1AOZ 1PLC Amino_acid_biosynthesis 0.126 0.070 Biosynthesis_of_cofactors 0.100 0.075 Cell_envelope 0.429 0.032 Cellular_processes 0.057 0.059 Central_intermediary_metabolism 0.063 0.041 Energy_metabolism 0.126 0.268 Fatty_acid_metabolism 0.027 0.072 Purines_and_pyrimidines 0.439 0.088 Regulatory_functions 0.102 0.019 Replication_and_transcription 0.052 0.089 Translation 0.079 0.150 Transport_and_binding 0.032 0.052
# Enzyme/nonenzyme Enzyme 0.773 0.310 Nonenzyme 0.227 0.690
# Enzyme class Oxidoreductase (EC 1.-.-.-) 0.077 0.077 Transferase (EC 2.-.-.-) 0.260 0.099 Hydrolase (EC 3.-.-.-) 0.114 0.071 Lyase (EC 4.-.-.-) 0.025 0.020 Isomerase (EC 5.-.-.-) 0.010 0.068 Ligase (EC 6.-.-.-) 0.017 0.017
Similar structure different functions
• Many examples exist of structurally similar proteins which have different functions
• Two PDB structures from the Cupredoxin superfamily were shown 1AOZ is an enzyme 1PLC is not an enzyme
• Despite their structural similarity, our method predicts both correctly
Lars Juhl Jensen, EMBL Heidelberg
Conclusions
• Short linear motifs are likely equally important for protein function as the large well studied domains
• The features are generally very hard to predict from sequence, however, some can be predicted
• Many functional classes of proteins can be predicted from sequence alone by non-homology based methods
Questions?
Part 4Qualitative modeling of the of the yeast cell cycle
Lars Juhl JensenEMBL Heidelberg
Lars Juhl Jensen, EMBL Heidelberg
Overview
• Methods for predicting protein-protein interactions Cross-species inference Genomic context methods Prediction from expression data Automated extraction from text
• Quality control of high-throughput interaction data Types of data sets available Network representations of
interaction data sets Topology-based quality scores Benchmarking of data sets Filtering strategies
• Prediction of protein features and function Linear motifs in proteins Relation to interaction networks Motif prediction from sequence From features to function
• Qualitative modeling of the yeast cell cycle Modeling the cell cycle through
large-scale data integration What does the model tell us? A neural network approach to
predicting cell cycle proteins The cell cycle in feature space
Lars Juhl Jensen, EMBL Heidelberg
Qualitative versus quantitative modeling
• Our aim: a qualitative model of the yeast cell cycle that is accurate event at the level
individual interactions provides a global overview of
temporal complex formation
© Chen et al., Mol. Biol. Cell, 2004Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
Model Generation
A Parts List
• Literature
• Microarray data
Dynamic data
• Microarray data
• Proteomics data
• PPI data
• TF-target data
Connections
YER001WYBR088CYOL007CYPL127CYNR009WYDR224CYDL003WYBL003CYDR225WYBR010WYKR013W…
YDR097CYBR089WYBR054WYMR215WYBR071WYBL002WYGR189CYNL031CYNL030WYNL283CYGR152C…
Model generation through data integration
Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
Cho et al. & Spellman et al.
yeast culture Microarrays Gene expression Expression profile
600 periodically expressed genes (with associated peak times) that encode “dynamic
proteins”
The Parts listNew Analysis
Getting the parts list
Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
Observation: For two thirds of the dynamic proteins, no interactions were foundWhy?
• Some may be missed components of the complexes and modules already in the network
• Some may not participate in protein-protein interactions
• But, the majority probably participate in transient interactions that are not so well captured by current interaction assays
The temporal interaction network
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Observation: Interacting dynamic proteins typically expressed close in time
Interactions are close in time
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Observation: Static (scaffold) proteins comprise about a third of the network and participate in interactions throughout the entire cycle
Static proteins play a major role
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Observation: The dynamic proteins are generally expressed just before they are needed to carry out their function, generally referred to as just-in-time synthesis
But, the general design principle seems to be that only some key components of each module/complex are dynamic
This suggests a mechanism of just-in-time assembly or partial just-in-time synthesis
Just-in-time synthesis? yes and no!
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Observation: The network places 30+ uncharacterized proteins in a temporal interaction context.
The network thus generates detailed hypothesis about their function.
Observation: The network contains entire novel modules and complexes.
Network as a discovery tools
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Network Hubs: “Party” versus “Date”
“Date” Hub: the hub protein interacts with different proteins at different times.
“Party” Hub: the hub protein and its interactors are expressed close in time.
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
Transcription is linked to phosphorylation
Observation: 332 putative targets of the cyclin-dependent kinase Cdc28 have been determined experimentally (Übersax et al.). We find that:
• 6% of all yeast proteins are putative Cdk targets
• 8% of the static proteins (white) are putative Cdk targets
• 27% of the dynamic proteins (colored) are putative Cdk targets
• Conclusion: this reveals a hitherto undescribed link between the levels of transcriptional and post-translation control of the cell cycle
Ulrik de Lichtenberg, CBS, DTU Lyngby © Science, 2005
Lars Juhl Jensen, EMBL Heidelberg
A neural network strategy for predictionof cell cycle related proteins
Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
Prediction of cell cycle related proteinsfrom sequence derived features
Ulrik de Lichtenberg, CBS, DTU Lyngby © Journal of Molecular Biology, 2003
Lars Juhl Jensen, EMBL Heidelberg
0.0 0.2 0.4 0.6 0.8 1.0Sensitivity
0.0
0.2
0.4
0.6
0.8
1.0R
ate of false positives
0 .0
0.2
0.4
0.6
0.8
1.0M
atth
ews
corr
elat
ion
coef
ficie
nt
Network ANetwork BNetwork CNetwork DNetwork EEnsem bleCorrelation Coeffic ient
Evaluating the performance
Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
ORF ANN F-score Intensity Protein functionYIL169C 0,98 2,8 176 Protein of unknown functionYNL322C 0,98 1,7 870 Cell wall protein needed for cell wall beta-1,6-glucan assemblyYJL078C 0,98 5,5 86 Protein that may have a role in mating efficiencyYDL038C 0,98 5,3 165 Protein of unknown functionYOL155C 0,97 3,0 391 Protein with similarity to glucan 1,4-alpha-glucosidaseYJR151C 0,97 1,3 251 Member of the seripauperin (PAU) familyYLR286C 0,97 9,3 520 EndochitinaseYOL030W 0,97 4,1 817 Protein with similarity to Gas1pYOR220W 0,97 2,5 340 Protein of unknown functionYNR044W 0,97 6,5 172 Anchor subunit of a-agglutininYGR023W 0,97 1,8 129 Signal transduction of cell wall stress during morphorgenesisYDL016C 0,97 0,8 338 Protein of unknown functionYDL152W 0,97 1,0 156 Protein of unknown functionYPR136C 0,97 1,1 76 Protein of unknown functionYGR115C 0,97 1,0 71 Protein of unknown function, questionable ORFYMR317W 0,97 2,1 260 Protein of unknown functionYCR089W 0,97 3,4 104 Protein involved in mating inductionYLR194C 0,96 5,4 1870 Protein of unknown functionYIL011W 0,96 2,6 565 Member of the seripauperin (PAU) familyYGR161C 0,96 2,4 190 Protein of unknown functionYBR067C 0,96 5,9 825 Cold- and heat-shock induced mannoprotein of the cell wallYNL228W 0,96 1,9 250 Protein of unknown function; questionable ORFYNL327W 0,96 8,7 1320 Cell-cycle regulation protein involved in cell separationYLR332W 0,96 1,5 642 Putative sensor for cell wall integrity signaling during growthYNR067C 0,96 6,3 222 Protein with similarity to endo-1,3-beta-glucanase
Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
The yeast cell cycle in feature space
© Journal of Molecular Biology, 2003Ulrik de Lichtenberg, CBS, DTU Lyngby
Lars Juhl Jensen, EMBL Heidelberg
S phase feature snapshot
• S phase
• 40% into the cell cycle we see High isoelectric point Many nuclear proteins Short proteins Low N-glycosylation potential Low potential for Ser/Thr-
phosphorylation Few PEST regions Low aliphatic index
Ulrik de Lichtenberg, CBS, DTU Lyngby © Journal of Molecular Biology, 2003
Lars Juhl Jensen, EMBL Heidelberg
G1/S phase feature snapshot
• G1/S transition
• 25% into the cell cycle we see Low isoelectric point Many extracellular proteins Many PEST regions Very high Tyr-phosphorylation
potential Higher glycosylation potential Higher potential for Ser/Thr-
phosphorylation
Ulrik de Lichtenberg, CBS, DTU Lyngby © Journal of Molecular Biology, 2003
Lars Juhl Jensen, EMBL Heidelberg
Conclusions
• Accurate models can be constructed by careful integration of several types of high-throughput experimental data
• We have constructed a model of the yeast cell cycle that reveals global trends that were not previously known
• The same strategies are applicable to other systems The integrative approach is applicable to any process for which
both interaction data and time series are available Most broad classes of proteins can be predicted using neural
networks with sequence derived features as input.
Questions?
Lars Juhl Jensen, EMBL Heidelberg
Summary
• The many types of high-throughput data should to be Better standardization and quality control is crucial Scoring schemes and filtering schemes can reduce the error rate
of high-throughput data drastically Integration of many evidence types allows high-confidence
predictions of functional relationships New biological discoveries can be made through data integration
• There is more to proteins than just globular domains Proteins contain many short linear motifs (ELMs) Most of these are very difficult to predict from sequence Sequence derived features can give hints about protein function
Lars Juhl Jensen, EMBL Heidelberg
Acknowledgments
• STRING and ArrayProspector Peer Bork Christian von Mering Jan Korbel Berend Snel Martijn Huynen Daniel Jaeggi Steffen Schmidt Sean Hooper Mathilde Foglierini Julien Lagarde Chris Workman
• ELMs – linear motifs Rune Linding Toby Gibson Rob Russell
• Protein feature/function prediction Søren Brunak Alfonso Valencia Ramneek Gupta Can Kesmir Kristoffer Rapacki Hans-Henrik Stærfeldt Henrik Nielsen Nikolaj Blom Claus A.F. Andersen Anders Krogh Steen Knudsen Chris Workman Damien Devos Javier Tamames
• Analysis of the yeast cell cycle Ulrik de Lichtenberg Thomas Skøt Anders Fausbøll Søren Brunak
Thank you!