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From ELMs to Function: Interaction Networks and Feature Spaces Lars Juhl Jensen EMBL Heidelberg
Function unknown for 40% of human proteins
1AOZ (129 aa) vs. 1PLC (99 aa) scoring matrix: BLOSUM50, gap penalties: -12/-2 15.5% identity; Global alignment score: -23   10  20  30  40  50  60 1AOZ  SQIRHYKWEVEYMFWAPNCNENIVMGINGQFPGPTIRANAGDSVVVELTNKLHTEGVVIH   .. .. :  ... .  . ..:  . :...: . .:  ...:.  1PLC ---------IDVLLGA---DDGSLAFVPSEFS-----ISPGEKIVFK-NNAGFPHNIVFD   10  20  30  40    70  80  90  100  110  120 1AOZ  WHGILQRGTPWADGTASISQCAINPGETFFYNFTVDNPGTFFYHGHLGMQRSAGLYGSLI   .:  :.  .  . :  .  ::::  ..  .  .:.  : :  ::. :..  1 PLC  EDSI-PSGVDASKISMSEEDLLNAKGETFEVALSNKGEYSFYCSPHQG----AGMVGKVT   50  60  70  80  90  1AOZ  VDPPQGKKE   :.  1PLC VN-------
Structural similarity can be deceiving: Two structures from the Cupredoxin superfamily Enzyme Non-enzyme
ProtFun: Prediction of protein function from post-translational modifications
Protein features determine function # 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
Feature-function correlations ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
ELMer hunting Bugs: “Heeeey, there's something awfly scwewy going on awound here” ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
And now for something completely different: Protein association networks Genomic Neighborhood Species Co-occurrence Gene Fusions Database Imports Exp. Interaction Data Co-expression Literature co-occurrence
Integrating physical interaction screens ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Mining microarray expression databases Re-normalize arrays by modern method to remove biases Build expression matrix Combine similar arrays by PCA Construct predictor by Gaussian kernel density estimation Calibrate against KEGG maps Transfer associations across species
Co-mentioning in the scientific literature Associate abstracts with species Identify gene names in title/abstract Count (co-)occurrences of genes Test significance of associations Calibrate against KEGG maps Transfer associations across species
Extracting transient interactions through data integration
Mining for ELM mediated interactions ,[object Object],[object Object],[object Object],[object Object]
Summary: Have ELMs – want function ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Acknowledgments ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Thank you!

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From ELMs to function: interaction networks and feature spaces

  • 1. From ELMs to Function: Interaction Networks and Feature Spaces Lars Juhl Jensen EMBL Heidelberg
  • 2. Function unknown for 40% of human proteins
  • 3. 1AOZ (129 aa) vs. 1PLC (99 aa) scoring matrix: BLOSUM50, gap penalties: -12/-2 15.5% identity; Global alignment score: -23 10 20 30 40 50 60 1AOZ SQIRHYKWEVEYMFWAPNCNENIVMGINGQFPGPTIRANAGDSVVVELTNKLHTEGVVIH .. .. : ... . . ..: . :...: . .: ...:. 1PLC ---------IDVLLGA---DDGSLAFVPSEFS-----ISPGEKIVFK-NNAGFPHNIVFD 10 20 30 40 70 80 90 100 110 120 1AOZ WHGILQRGTPWADGTASISQCAINPGETFFYNFTVDNPGTFFYHGHLGMQRSAGLYGSLI .: :. . . : . :::: .. . .:. : : ::. :.. 1 PLC EDSI-PSGVDASKISMSEEDLLNAKGETFEVALSNKGEYSFYCSPHQG----AGMVGKVT 50 60 70 80 90 1AOZ VDPPQGKKE :. 1PLC VN-------
  • 4. Structural similarity can be deceiving: Two structures from the Cupredoxin superfamily Enzyme Non-enzyme
  • 5. ProtFun: Prediction of protein function from post-translational modifications
  • 6. Protein features determine function # 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
  • 7.
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  • 9. And now for something completely different: Protein association networks Genomic Neighborhood Species Co-occurrence Gene Fusions Database Imports Exp. Interaction Data Co-expression Literature co-occurrence
  • 10.
  • 11. Mining microarray expression databases Re-normalize arrays by modern method to remove biases Build expression matrix Combine similar arrays by PCA Construct predictor by Gaussian kernel density estimation Calibrate against KEGG maps Transfer associations across species
  • 12. Co-mentioning in the scientific literature Associate abstracts with species Identify gene names in title/abstract Count (co-)occurrences of genes Test significance of associations Calibrate against KEGG maps Transfer associations across species
  • 13. Extracting transient interactions through data integration
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  • 16.