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PowerGraphs: from network quality to drug repositioning Michael Schroeder TU Dresden

NetBioSIG2013-KEYNOTE Michael Schroeder

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Keynote presentation for Network Biology SIG 2013 by Michael Schroeder, Director of Biotechnology Center at Technical University Dresden, Germany

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Page 1: NetBioSIG2013-KEYNOTE Michael Schroeder

PowerGraphs: from network quality to drug repositioning

Michael Schroeder TU Dresden

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Jeong et al. Nature, 20012

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Comprehension is compression

Gregory Chainitin

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How to compress a network?

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Network motifsHubs in networks

(stars)

Protein Complexes(cliques)

Domain and motif- based interactions

(bi-cliques)

Royer et al., PLoS Comp. Bio., 20085

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Power graph algorithm compresses networksExample: SWR1 & INO80 chromatin remodeling complexesBefore After

Modules in Networks

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Algorithm

• Identify cliquesand bi-cliques innetworks

• Greedy search

• Sub-quadratic runtime

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Power nodes are enriched in shared domains

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Power nodes are enriched in shared GO annotation

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Application:

Master regulators in stem cell differentiation

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Network for mesenchymal to neural stem cell conversion

Maisel et. al. Experimental Cell Research, 2010 11

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Network for mesenchymal to neural stem cell conversion

Maisel et. al. Experimental Cell Research, 2010 12

2010: miR-124 plays a role in neural stem cell conversion

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...repressing PTB via miR-124 is sufficient to induce trans-differentiation of fibroblasts into functional neurons (Cell, 2013)

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Network compressionas quality measure

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Relative compression rate

Original Random

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Validation

• Adding noise

• Gold standard data sets

• Confidence thresholds

• Correlation to – co-expression, – co-localisation and – functional annotation

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Implications?

• AP/MS vs. Y2H ?

• Experimental set-up ?

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rela

tive c

om

pre

ssio

n

rate

compression rate

Edge reduction from 30% to 70%Reduction relative to random up to 50%

Royer et. al. 2012, PLoS One

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rela

tive c

om

pre

ssio

n r

ate

compression rate

Y2H (binary interactions)

AP/MS (cooperative effects)

Y2H: Two phase pooling

AP/MS: His tag + cDNA

Royer et. al. 2012, PLoS One

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Royer et. al. 2012, PLoS One20

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Complete and accurate networks

• Protein interactions are incomplete and noisy

• How about complete and accurate networks?

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Complete and accurate networks

• Protein interactions are incomplete and noisy

• How about complete and accurate networks?– Class hierarchy of Cytoscape, – US Airports, – US corporate ownership, – Characters in Bible,– Power grid, – Internet routers, ...

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Royer et. al. 2012, PLoS One

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Incomplete bi-cliques• Power Graph are lossless

– A-B in G iff A-B in PG

• Idea: Accept small violations and– Increase compression by adding new edges– Completing incomplete bi-cliques

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Completing incomplete bi-cliques

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Algorithm

Find all edges e1 and e2 with n2 inside n1

Rank by score:

•Ratio total edges after (e3) to edges added (e4)•Weight by ratio e1 to e2

•s = (e3 / e4) x (e1 / e2)

e1

e4

e3

e2

n1

n2

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Drug repositioning

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Drug-Target-Disease Network

• 147 promiscuous drugs

• 553 targets from PDB

• 27 disease

• 17 pharmacological actions

• Total: – 744 nodes – 1351 edges– avg deg 3.6

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Completing bi-cliques

Completing bi-cliques increases shared binding sites in power nodes

Random addition

Disrupting bi-cliques

Random removal

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Daminell, et al. Intr. Bio., 2012

Niacinamide Benzylamine CID1746 Pentamidine Suramin

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Daminell, et al. Intr. Bio., 2012

Niacinamide Benzylamine CID1746 Pentamidine Suramin

?

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Daminell, et al. Intr. Bio., 2012

Niacinamide

Benzylamine

CID1746

Pentamidine

Suramin

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Daminell, et al. Intr. Bio., 2012

Binding sites are similar (SMAP p-value 10-5 – 10-12)

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Conclusions

• Power graphs find meaningful modules– enriched GO, PFAM, binding sites,...– pinpoint master regulators– can assess network quality

• Completing bi-cliques suitable for hypotheses in drug repositioning

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AcknowledgementJörg Heinrich,Joachim Haupt, Simone Daminelli

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Former: Matthias ReimannLoic Royer

Collaborators:Yixin Zhang, Aliz Emyei, BCUBEAlexander Storch, MedFakFrancis Stewart, BiotecChristian Pilarsky, MedFakRobert Grützmann, MedFakDresden Supercomputer Department

Sainitin Donakonda,Zerrin Isik,Janine Roy,Sebastian Salentin,George Tsatsaronis,Maria Kissa,Daniel Eisinger,Jan Mönnich,Alina Petrova

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Openings: groupleader, postdoc, [email protected]

Michael Schroeder TU DresdenSource pasch-net.de