SlideShare une entreprise Scribd logo
1  sur  23
TimeXNet: Identifying active
gene sub-networks using time-
course gene expression profiles
Ashwini Patil
Institute of Medical Science
University of Tokyo
NetBio SIG, ISMB 2014
Goal
• Comprehensive computational analysis of the innate
immune response
Mouse Interaction network
103218 protein-protein, protein-DNA,
post-translational modifications
Time-course gene expression
RNA-seq expression levels in dendritic
cells on LPS stimulus at 8 time points
Innate immune system
Kawai & Akira, Nat. Immunology, 2010
Method - TimeXNet
Partition differentially expressed
genes into 3 time-based groups
Identify most probable paths in the
network connecting the three groups
Patil et al., PLOS Comp. Biol., 2013
Minimum cost flow optimization
• ResponseNet
• Identifies paths between two groups of genes (genetic hits and differentially
expressed genes in yeast)
- Yeger-Lotem et l., Nat. Genetics, 2009
TimeXNet methodology
• Edge cost: inversely proportional to edge reliability
• Edge capacity: directly proportional to
• Fold change in expression of adjacent gene(s)
• Absolute tag counts of adjacent gene(s)
• Objective function
Minimize cost of flow through the network from T1 to
T3 genes
• Constraint
Flow must pass through intermediate nodes (T2 genes)
Most probable paths connecting T1->T2->T3 genes
2681 scored interactions among 1225 proteins
Candidate genes
Early genes
(0.5-1 hour)
Intermediate genes
(2-4 hours)
Late genes
(6-8 hours)
Genes with no change
in expression
Gene Flow Gene Flow Gene Flow Gene Flow
Jun 13.68 Socs3 85.85 Cxcl10 10.91 Stat1 8.74
Fos 10.34 Nfκb1 76.87 Ddx58 9.33 Mapk8 8.72
Il1b 9.86 Jak2 54.44 Stat2 8.65 Irf5 7.60
Tnf 9.36 Src 38.30 Atf3 8.29 Adcy5 7.43
Cxcl2 7.59 Pik3r5 27.86 Isg15 8.15 Mapk1 7.40
Il1a 7.40 Rela 23.35 Irf7 7.30 Sp1 7.37
Akt1 6.43 Stat5a 20.40 Nos2 6.91 Stat6 7.17
Atf4 5.49 Met 18.94 Ifnar2 5.20 Sp3 7.13
Candidate networks
Gm13305
Ifnar1
Il12rb1
Il13ra2
Ifngr2
Gm2002
Il13ra1
Il11ra1
Stat5b
Stat4
Irs3
Irs4
Lifr
Jak2
Cxcr4
Stat6
Il9r
Nck1
Il20ra
Il22ra11
Il22ra2
Il7r
Il2rg
Il4ra2
Il28raa Il2ra
Il6ra
Ifnar2
Il21r
Stat2
Il3ra
Crlf2
Ifngr1
Il15ra
Ddx58
Fos
Rela
Nfkb1
Stat5a
Bcl10
Il10rb
JunStat1
Sp3
CR974586.2
Socs3
Foxo3
CT868723.4 Csf2rb
Gfi1b
CT868723.4CT868723.4CT868723.4
Csf2rb2
Cntfr
bb Creb1
• Socs3
• Suppressor of cytokine signaling 3
• Induced by Nfkb and inhibits a large number of proteins, specifically the
interleukin receptors
Candidate networks
Method evaluation
• Comparison with experimentally identified regulators
• Amit et al., Science 2009: 49.6% previously unknown genes identified
• Chevrier et al., Cell 2011: 69.8% regulators (novel and known) and 54.9% TLR target
genes identified
• Overlap with KEGG pathways
• Directed paths of 3 to 7 edges identified in 13 KEGG pathways
• Jak-STAT signaling pathway, Chemokine signaling pathway, Toll-like receptor pathway,
MAPK signaling pathway
Noise in the interaction network
Comparison with other methods
Method
Experimentally confirmed
regulators (3 datasets)
KEGG Pathways
with predicted
paths (max length)
Execution
time (4 CPUs,
2.4Ghz, 12Gb
RAM)
Prior knowledge
required
Time-
course
data
TimeXNet 49.6%1 69.8%2 54.9%3 13 (7 edges) 3 min None Yes
ResponseNet* 39.2%1 53.5%2 39.2%3 0 (3 edges) 1 min None No
SDREM 12.0%1 32.6%2 11.8%3 2 (4 edges) ~10 days Initial genes Yes
1 Regulatory genes from Amit et al., Science, 2009
2 Regulatory genes from Chevrier et al., Cell, 2011
3 Target genes from Chevrier et al., Cell, 2011
*Local implementation using GLPK
Yeast osmotic stress response
• Time-course gene expression (min) in yeast on hyperosmotic stress
- Romero-Santacreu et al., RNA 2009
• Previously used to evaluate SDREM and ResponseNet
- Gitter et al., Genome Research 2013
• Genes with 1.5 fold change in expression
• Initial response genes: 2-4 min
• Intermediate regulators: 6-8 min
• Final effectors: 10-15 min
Predicted osmotic stress response network
• 2-4 min
• 6-8 min
• 10-15 min
• Predicted
Method
Gold
Standard* TFs* Hog1 Runtime
TimeXNet 19 5 Yes 5 sec
SDREM* 10 4 Yes -
ResponseNet* 3 2 No -*Taken from Gitter et al., Genome Research 2013
Circadian regulation of metabolism in mouse liver cells
- Unpublished
• Paths connecting genes showing rhythmic patterns of expression in 24 hours
• Network predicted by TimeXNet contains Sphk2, Pld1, Pld2, Glud1
TimeXNet Availability: http://timexnet.hgc.jp/
• Input
• 3 sets of genes with
scores
• Weighted interaction
network
• Parameters gamma1 and
2
• Location of glpsol
executable from the GLPK
• Directory where results
will be storedCytoscape
Running TimeXNet
• Standalone application
• Command line version
• Iterative command line version to
identify optimal parameters
Patil & Nakai, under review
Conclusion
• TimeXNet: A method to predict active gene sub-networks using time-
course gene expression profiles
• Advantages
• Accurate and fast
• Independent of biological system: Innate immune response, circadian regulation of
metabolism in mouse, yeast osmotic stress response
• Amenable to incorporation of other time-course data types: phosphorylation levels,
protein levels, epigenetic information
• Issues to be addressed
• Allowing path prediction between more than 3 groups of genes while maintaining
speed and accuracy
• Incorporating other forms of time-course information
• Enhancements: Automatic install of GLPK, allowing users to enter non-numeric gene
IDs
Patil et al., PLOS Comp. Biol., 2013
Acknowledgements
• Innate immune response
• Prof. Kenta Nakai - University of Tokyo
• Dr. Yutaro Kumagai – Osaka University
• Dr. Kuo-ching Liang – University of Tokyo
• Prof. Yutaka Suzuki – University of Tokyo
• Dr. Tomonao Inobe – Toyama University
• Yeast osmotic stress response
• Dr. Anthony Gitter – Microsoft Research
• Circadian regulation of metabolism
• Dr. Craig Jolley – RIKEN Center for
Developmental Biology, Kobe
• Funding
• Japan Society for the Promotion of
Science (JSPS) FIRST Program
• JSPS Grant-in-Aid for Young Scientists
• Takeda Science Foundation (with Dr.
Tomonao Inobe)
• Computational resources
• Supercomputer at the Human Genome
Center, Institute of Medical Science,
University of Tokyo
Edge Capacities
For edges between the auxiliary source, S, and the initial response genes GT1,
2 1log
/ /
imax i
Si T
imax ii i
fc e
C i G
fc N e N
   
 
(3)
For edges connected to the intermediate regulators GT2,
2 2 2log ,
/ /
imax i
ij T T
imax ii i
fc e
C i G j G
fc N e N
    
 
(4)
2 2
2
log log
/ // /
,
2
jmax jimax i
imax jmaxi ji ji j
ij T
fc efc e
fc N fc Ne N e N
C i j G
   
     
          
  
(5)
For edges between the late effectors, GT3, and the auxiliary sink T,
2 3log
/ /
imax i
iT T
imax ii i
fc e
C i G
fc N e N
   
 
(6)
2 2
2
log log
/ // /
,
2
jmax jimax i
imax jmaxi ji ji j
ij T
fc efc e
fc N fc Ne N e N
C i j G
   
     
          
  
(5
For edges between the late effectors, GT3, and the auxiliary sink T,
2 3log
/ /
imax i
iT T
imax ii i
fc e
C i G
fc N e N
   
 
(6
For edges between the auxiliary source, S, and the initial response genes GT1,
2 1log
/ /
imax i
Si T
imax ii i
fc e
C i G
fc N e N
   
 
(3)
For edges connected to the intermediate regulators GT2,
2 2 2log ,
/ /
imax i
ij T T
imax ii i
fc e
C i G j G
fc N e N
    
 
(4)
2 2
2
log log
/ // /
,
2
jmax jimax i
imax jmaxi ji ji j
ij T
fc efc e
fc N fc Ne N e N
C i j G
   
     
          
  
(5)
For edges between the late effectors, GT3, and the auxiliary sink T,
For edges connected to the intermediate regulators GT2,
• Graph G = (V, E) with E edges and V
nodes (containing S – auxiliary
source, T – auxiliary sink)
• fc = fold change
• 𝑒 = average expression level at all
time points
• N = number of genes with expression
values
• S = auxiliary source node
• T = auxiliary sink node
• GT1, GT2, GT3 = genes having
maximal fold change at times T1, T2
and T3
For all other edges, not connected to the intermediate regulators or the auxiliary source and s
21 ,ij TC i j S G T  
Edge costs
1Si Si Tw C i G   (8)
2ij ij Tw C i G   (9)
3iT iT Tw C i G   (10)
  2,ij ij Tw f s i j S G T   , as per equation (2)
The edge costs were calculated as:
Where ()f = scaling function
 likelihood ratio , HitPredictijs i j   ; 0.163 999ijs 
 999 , Innatedb, KEGGijs i j  
 , TRANSFACijs Transfacscore i j   ; 1 6ijs 
3iT iT Tw C i G  
  2,ij ij Tw f s i j S G T   , as per equation (2)
The edge costs were calculated as:
 10log ,ij ijA w i j E   
2ij ij Tw C i G  
3iT iT Tw C i G  
  2,ij ij Tw f s i j S G T   , as per equation (2)
The edge costs were calculated as:
 log ,A w i j E   
2ij ij Tw C i G  
3iT iT Tw C i G  
  2,ij ij Tw f s i j S G T   , as per equation (2)
The edge costs were calculated as:
 10log ,ij ijA w i j E   
Optimization problem

Contenu connexe

Tendances

protein-protein interaction
protein-protein  interactionprotein-protein  interaction
protein-protein interactionZeshan Haider
 
Protein protein interactions
Protein protein interactionsProtein protein interactions
Protein protein interactionsTasuduq Yaqoob
 
Metabolomics
MetabolomicsMetabolomics
Metabolomicspriya1111
 
Specificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction NetworksSpecificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction Networkspedrobeltrao
 
Proteomics and protein-protein interaction
Proteomics  and protein-protein interactionProteomics  and protein-protein interaction
Proteomics and protein-protein interactionSenthilkumarV25
 
Protein protein interaction
Protein protein interactionProtein protein interaction
Protein protein interactionsunil kaintura
 
Protein-Protein Interactions (PPIs)
Protein-Protein Interactions (PPIs)Protein-Protein Interactions (PPIs)
Protein-Protein Interactions (PPIs)Sai Ram
 
Microbial proteomics
Microbial proteomicsMicrobial proteomics
Microbial proteomicsAruna Sundar
 
Integrative omics approches
Integrative omics approches   Integrative omics approches
Integrative omics approches Sayali Magar
 
2013-09-03 Radboudumc NCMLS Technical Forum
2013-09-03 Radboudumc NCMLS Technical Forum2013-09-03 Radboudumc NCMLS Technical Forum
2013-09-03 Radboudumc NCMLS Technical ForumAlain van Gool
 
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...Lorenz Lo Sauer
 
Brief Introduction of Protein-Protein Interactions (PPIs)
Brief Introduction of Protein-Protein Interactions (PPIs)Brief Introduction of Protein-Protein Interactions (PPIs)
Brief Introduction of Protein-Protein Interactions (PPIs)Creative Proteomics
 

Tendances (20)

Proteomics
ProteomicsProteomics
Proteomics
 
protein-protein interaction
protein-protein  interactionprotein-protein  interaction
protein-protein interaction
 
Proteomic and metabolomic
Proteomic and metabolomicProteomic and metabolomic
Proteomic and metabolomic
 
Brief Introduction of SILAC
Brief Introduction of SILACBrief Introduction of SILAC
Brief Introduction of SILAC
 
Protein protein interactions
Protein protein interactionsProtein protein interactions
Protein protein interactions
 
Metabolomics
MetabolomicsMetabolomics
Metabolomics
 
Ppi
PpiPpi
Ppi
 
Specificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction NetworksSpecificity and Evolvability in Eukaryotic Protein Interaction Networks
Specificity and Evolvability in Eukaryotic Protein Interaction Networks
 
Proteomics ppt
Proteomics pptProteomics ppt
Proteomics ppt
 
Proteomics and protein-protein interaction
Proteomics  and protein-protein interactionProteomics  and protein-protein interaction
Proteomics and protein-protein interaction
 
Protein protein interaction
Protein protein interactionProtein protein interaction
Protein protein interaction
 
Protein-Protein Interactions (PPIs)
Protein-Protein Interactions (PPIs)Protein-Protein Interactions (PPIs)
Protein-Protein Interactions (PPIs)
 
Microbial proteomics
Microbial proteomicsMicrobial proteomics
Microbial proteomics
 
Integrative omics approches
Integrative omics approches   Integrative omics approches
Integrative omics approches
 
2013-09-03 Radboudumc NCMLS Technical Forum
2013-09-03 Radboudumc NCMLS Technical Forum2013-09-03 Radboudumc NCMLS Technical Forum
2013-09-03 Radboudumc NCMLS Technical Forum
 
Ionomics
IonomicsIonomics
Ionomics
 
Protein protein interaction
Protein protein interactionProtein protein interaction
Protein protein interaction
 
Bioinformatics ppt
Bioinformatics pptBioinformatics ppt
Bioinformatics ppt
 
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...
Protein Interaction Reporters : Protein-Protein Interactions (PPI) elucidated...
 
Brief Introduction of Protein-Protein Interactions (PPIs)
Brief Introduction of Protein-Protein Interactions (PPIs)Brief Introduction of Protein-Protein Interactions (PPIs)
Brief Introduction of Protein-Protein Interactions (PPIs)
 

Similaire à NetBioSIG2014-Talk by Ashwini Patil

The Search for Gravitational Waves
The Search for Gravitational WavesThe Search for Gravitational Waves
The Search for Gravitational Wavesinside-BigData.com
 
Traditional vs Nontraditional Methods for Network Analytics - Ernesto Estrada
Traditional vs Nontraditional Methods for Network Analytics - Ernesto EstradaTraditional vs Nontraditional Methods for Network Analytics - Ernesto Estrada
Traditional vs Nontraditional Methods for Network Analytics - Ernesto EstradaLake Como School of Advanced Studies
 
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...ecij
 
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...Design and Implementation of Multiplier using Advanced Booth Multiplier and R...
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...IRJET Journal
 
Quartz crystal microbalance based electronic nose system implemented on Field...
Quartz crystal microbalance based electronic nose system implemented on Field...Quartz crystal microbalance based electronic nose system implemented on Field...
Quartz crystal microbalance based electronic nose system implemented on Field...TELKOMNIKA JOURNAL
 
Low power test pattern generation for bist applications
Low power test pattern generation for bist applicationsLow power test pattern generation for bist applications
Low power test pattern generation for bist applicationseSAT Publishing House
 
Low power test pattern generation for bist applications
Low power test pattern generation for bist applicationsLow power test pattern generation for bist applications
Low power test pattern generation for bist applicationseSAT Journals
 
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...PID Controller Design for a Real Time Ball and Beam System – A Double Integra...
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...idescitation
 
Japan Lustre User Group 2014
Japan Lustre User Group 2014Japan Lustre User Group 2014
Japan Lustre User Group 2014Hitoshi Sato
 
Overview of Qiskit Ignis - Struggle with errors -
Overview of Qiskit Ignis   - Struggle with errors - Overview of Qiskit Ignis   - Struggle with errors -
Overview of Qiskit Ignis - Struggle with errors - Shin Nishio
 
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...IJERD Editor
 
Design and development of fpga based temperature measurement and control
Design and development of fpga based temperature measurement and controlDesign and development of fpga based temperature measurement and control
Design and development of fpga based temperature measurement and controlIAEME Publication
 
June 25-26, Workshop
 June 25-26,  Workshop June 25-26,  Workshop
June 25-26, WorkshopFahadahammed2
 
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...Thermo Fisher Scientific
 
Petri Nets: Properties, Analysis and Applications
Petri Nets: Properties, Analysis and ApplicationsPetri Nets: Properties, Analysis and Applications
Petri Nets: Properties, Analysis and ApplicationsDr. Mohamed Torky
 
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...ecij
 
The International Journal of Engineering and Science (The IJES)
The International Journal of Engineering and Science (The IJES)The International Journal of Engineering and Science (The IJES)
The International Journal of Engineering and Science (The IJES)theijes
 

Similaire à NetBioSIG2014-Talk by Ashwini Patil (20)

The Search for Gravitational Waves
The Search for Gravitational WavesThe Search for Gravitational Waves
The Search for Gravitational Waves
 
Traditional vs Nontraditional Methods for Network Analytics - Ernesto Estrada
Traditional vs Nontraditional Methods for Network Analytics - Ernesto EstradaTraditional vs Nontraditional Methods for Network Analytics - Ernesto Estrada
Traditional vs Nontraditional Methods for Network Analytics - Ernesto Estrada
 
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
 
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...Design and Implementation of Multiplier using Advanced Booth Multiplier and R...
Design and Implementation of Multiplier using Advanced Booth Multiplier and R...
 
Quartz crystal microbalance based electronic nose system implemented on Field...
Quartz crystal microbalance based electronic nose system implemented on Field...Quartz crystal microbalance based electronic nose system implemented on Field...
Quartz crystal microbalance based electronic nose system implemented on Field...
 
Low power test pattern generation for bist applications
Low power test pattern generation for bist applicationsLow power test pattern generation for bist applications
Low power test pattern generation for bist applications
 
Low power test pattern generation for bist applications
Low power test pattern generation for bist applicationsLow power test pattern generation for bist applications
Low power test pattern generation for bist applications
 
Paloma Pérez-Enfermedades raras de la piel
Paloma Pérez-Enfermedades raras de la pielPaloma Pérez-Enfermedades raras de la piel
Paloma Pérez-Enfermedades raras de la piel
 
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...PID Controller Design for a Real Time Ball and Beam System – A Double Integra...
PID Controller Design for a Real Time Ball and Beam System – A Double Integra...
 
Japan Lustre User Group 2014
Japan Lustre User Group 2014Japan Lustre User Group 2014
Japan Lustre User Group 2014
 
Overview of Qiskit Ignis - Struggle with errors -
Overview of Qiskit Ignis   - Struggle with errors - Overview of Qiskit Ignis   - Struggle with errors -
Overview of Qiskit Ignis - Struggle with errors -
 
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...
“MS-Extractor: An Innovative Approach to Extract Microsatellites on „Y‟ Chrom...
 
Design and development of fpga based temperature measurement and control
Design and development of fpga based temperature measurement and controlDesign and development of fpga based temperature measurement and control
Design and development of fpga based temperature measurement and control
 
Selection analysis using HyPhy
Selection analysis using HyPhySelection analysis using HyPhy
Selection analysis using HyPhy
 
June 25-26, Workshop
 June 25-26,  Workshop June 25-26,  Workshop
June 25-26, Workshop
 
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...
Resolving false positive CYP2D6 genotype results: CYP2D7 variation is the cul...
 
community detection
community detectioncommunity detection
community detection
 
Petri Nets: Properties, Analysis and Applications
Petri Nets: Properties, Analysis and ApplicationsPetri Nets: Properties, Analysis and Applications
Petri Nets: Properties, Analysis and Applications
 
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
HYDROTHERMAL COORDINATION FOR SHORT RANGE FIXED HEAD STATIONS USING FAST GENE...
 
The International Journal of Engineering and Science (The IJES)
The International Journal of Engineering and Science (The IJES)The International Journal of Engineering and Science (The IJES)
The International Journal of Engineering and Science (The IJES)
 

Plus de Alexander Pico

NRNB Annual Report 2018
NRNB Annual Report 2018NRNB Annual Report 2018
NRNB Annual Report 2018Alexander Pico
 
NRNB Annual Report 2017
NRNB Annual Report 2017NRNB Annual Report 2017
NRNB Annual Report 2017Alexander Pico
 
2016 Cytoscape 3.3 Tutorial
2016 Cytoscape 3.3 Tutorial2016 Cytoscape 3.3 Tutorial
2016 Cytoscape 3.3 TutorialAlexander Pico
 
NRNB Annual Report 2016: Overall
NRNB Annual Report 2016: OverallNRNB Annual Report 2016: Overall
NRNB Annual Report 2016: OverallAlexander Pico
 
Technology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsTechnology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsAlexander Pico
 
Technology R&D Theme 2: From Descriptive to Predictive Networks
Technology R&D Theme 2: From Descriptive to Predictive NetworksTechnology R&D Theme 2: From Descriptive to Predictive Networks
Technology R&D Theme 2: From Descriptive to Predictive NetworksAlexander Pico
 
Technology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksTechnology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksAlexander Pico
 
Overall Vision for NRNB: 2015-2020
Overall Vision for NRNB: 2015-2020Overall Vision for NRNB: 2015-2020
Overall Vision for NRNB: 2015-2020Alexander Pico
 
2015 Cytoscape 3.2 Tutorial
2015 Cytoscape 3.2 Tutorial2015 Cytoscape 3.2 Tutorial
2015 Cytoscape 3.2 TutorialAlexander Pico
 
NetBioSIG2014-FlashJournalClub by Frank Kramer
NetBioSIG2014-FlashJournalClub by Frank KramerNetBioSIG2014-FlashJournalClub by Frank Kramer
NetBioSIG2014-FlashJournalClub by Frank KramerAlexander Pico
 
NetBioSIG2014-Talk by Salvatore Loguercio
NetBioSIG2014-Talk by Salvatore LoguercioNetBioSIG2014-Talk by Salvatore Loguercio
NetBioSIG2014-Talk by Salvatore LoguercioAlexander Pico
 
NetBioSIG2014-Intro by Alex Pico
NetBioSIG2014-Intro by Alex PicoNetBioSIG2014-Intro by Alex Pico
NetBioSIG2014-Intro by Alex PicoAlexander Pico
 
NetBioSIG2014-Talk by Traver Hart
NetBioSIG2014-Talk by Traver HartNetBioSIG2014-Talk by Traver Hart
NetBioSIG2014-Talk by Traver HartAlexander Pico
 
NetBioSIG2014-Talk by Tijana Milenkovic
NetBioSIG2014-Talk by Tijana MilenkovicNetBioSIG2014-Talk by Tijana Milenkovic
NetBioSIG2014-Talk by Tijana MilenkovicAlexander Pico
 
NetBioSIG2014-Talk by Yu Xia
NetBioSIG2014-Talk by Yu XiaNetBioSIG2014-Talk by Yu Xia
NetBioSIG2014-Talk by Yu XiaAlexander Pico
 
NetBioSIG2014-Keynote by Marian Walhout
NetBioSIG2014-Keynote by Marian WalhoutNetBioSIG2014-Keynote by Marian Walhout
NetBioSIG2014-Keynote by Marian WalhoutAlexander Pico
 
NetBioSIG2014-Talk by David Amar
NetBioSIG2014-Talk by David AmarNetBioSIG2014-Talk by David Amar
NetBioSIG2014-Talk by David AmarAlexander Pico
 
NetBioSIG2014-Talk by Hyunghoon Cho
NetBioSIG2014-Talk by Hyunghoon ChoNetBioSIG2014-Talk by Hyunghoon Cho
NetBioSIG2014-Talk by Hyunghoon ChoAlexander Pico
 
Visualization and Analysis of Dynamic Networks
Visualization and Analysis of Dynamic Networks Visualization and Analysis of Dynamic Networks
Visualization and Analysis of Dynamic Networks Alexander Pico
 
NRNB Annual Report 2013
NRNB Annual Report 2013NRNB Annual Report 2013
NRNB Annual Report 2013Alexander Pico
 

Plus de Alexander Pico (20)

NRNB Annual Report 2018
NRNB Annual Report 2018NRNB Annual Report 2018
NRNB Annual Report 2018
 
NRNB Annual Report 2017
NRNB Annual Report 2017NRNB Annual Report 2017
NRNB Annual Report 2017
 
2016 Cytoscape 3.3 Tutorial
2016 Cytoscape 3.3 Tutorial2016 Cytoscape 3.3 Tutorial
2016 Cytoscape 3.3 Tutorial
 
NRNB Annual Report 2016: Overall
NRNB Annual Report 2016: OverallNRNB Annual Report 2016: Overall
NRNB Annual Report 2016: Overall
 
Technology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsTechnology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network Representations
 
Technology R&D Theme 2: From Descriptive to Predictive Networks
Technology R&D Theme 2: From Descriptive to Predictive NetworksTechnology R&D Theme 2: From Descriptive to Predictive Networks
Technology R&D Theme 2: From Descriptive to Predictive Networks
 
Technology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksTechnology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential Networks
 
Overall Vision for NRNB: 2015-2020
Overall Vision for NRNB: 2015-2020Overall Vision for NRNB: 2015-2020
Overall Vision for NRNB: 2015-2020
 
2015 Cytoscape 3.2 Tutorial
2015 Cytoscape 3.2 Tutorial2015 Cytoscape 3.2 Tutorial
2015 Cytoscape 3.2 Tutorial
 
NetBioSIG2014-FlashJournalClub by Frank Kramer
NetBioSIG2014-FlashJournalClub by Frank KramerNetBioSIG2014-FlashJournalClub by Frank Kramer
NetBioSIG2014-FlashJournalClub by Frank Kramer
 
NetBioSIG2014-Talk by Salvatore Loguercio
NetBioSIG2014-Talk by Salvatore LoguercioNetBioSIG2014-Talk by Salvatore Loguercio
NetBioSIG2014-Talk by Salvatore Loguercio
 
NetBioSIG2014-Intro by Alex Pico
NetBioSIG2014-Intro by Alex PicoNetBioSIG2014-Intro by Alex Pico
NetBioSIG2014-Intro by Alex Pico
 
NetBioSIG2014-Talk by Traver Hart
NetBioSIG2014-Talk by Traver HartNetBioSIG2014-Talk by Traver Hart
NetBioSIG2014-Talk by Traver Hart
 
NetBioSIG2014-Talk by Tijana Milenkovic
NetBioSIG2014-Talk by Tijana MilenkovicNetBioSIG2014-Talk by Tijana Milenkovic
NetBioSIG2014-Talk by Tijana Milenkovic
 
NetBioSIG2014-Talk by Yu Xia
NetBioSIG2014-Talk by Yu XiaNetBioSIG2014-Talk by Yu Xia
NetBioSIG2014-Talk by Yu Xia
 
NetBioSIG2014-Keynote by Marian Walhout
NetBioSIG2014-Keynote by Marian WalhoutNetBioSIG2014-Keynote by Marian Walhout
NetBioSIG2014-Keynote by Marian Walhout
 
NetBioSIG2014-Talk by David Amar
NetBioSIG2014-Talk by David AmarNetBioSIG2014-Talk by David Amar
NetBioSIG2014-Talk by David Amar
 
NetBioSIG2014-Talk by Hyunghoon Cho
NetBioSIG2014-Talk by Hyunghoon ChoNetBioSIG2014-Talk by Hyunghoon Cho
NetBioSIG2014-Talk by Hyunghoon Cho
 
Visualization and Analysis of Dynamic Networks
Visualization and Analysis of Dynamic Networks Visualization and Analysis of Dynamic Networks
Visualization and Analysis of Dynamic Networks
 
NRNB Annual Report 2013
NRNB Annual Report 2013NRNB Annual Report 2013
NRNB Annual Report 2013
 

Dernier

❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.Nitya salvi
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsSérgio Sacani
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Silpa
 
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verifiedConnaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verifiedDelhi Call girls
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPirithiRaju
 
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Service
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts ServiceJustdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Service
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Servicemonikaservice1
 
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Alandi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance Bookingroncy bisnoi
 
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...ssifa0344
 
Forensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdfForensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdfrohankumarsinghrore1
 
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Servicenishacall1
 
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptx
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptxSCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptx
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptxRizalinePalanog2
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Sérgio Sacani
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfSumit Kumar yadav
 
Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .Poonam Aher Patil
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfSumit Kumar yadav
 
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencyHire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencySheetal Arora
 
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICESAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICEayushi9330
 

Dernier (20)

❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
❤Jammu Kashmir Call Girls 8617697112 Personal Whatsapp Number 💦✅.
 
CELL -Structural and Functional unit of life.pdf
CELL -Structural and Functional unit of life.pdfCELL -Structural and Functional unit of life.pdf
CELL -Structural and Functional unit of life.pdf
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.
 
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verifiedConnaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
Connaught Place, Delhi Call girls :8448380779 Model Escorts | 100% verified
 
Clean In Place(CIP).pptx .
Clean In Place(CIP).pptx                 .Clean In Place(CIP).pptx                 .
Clean In Place(CIP).pptx .
 
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdfPests of cotton_Sucking_Pests_Dr.UPR.pdf
Pests of cotton_Sucking_Pests_Dr.UPR.pdf
 
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Service
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts ServiceJustdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Service
Justdial Call Girls In Indirapuram, Ghaziabad, 8800357707 Escorts Service
 
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Alandi Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Alandi Call Me 7737669865 Budget Friendly No Advance Booking
 
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
TEST BANK For Radiologic Science for Technologists, 12th Edition by Stewart C...
 
Forensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdfForensic Biology & Its biological significance.pdf
Forensic Biology & Its biological significance.pdf
 
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
9999266834 Call Girls In Noida Sector 22 (Delhi) Call Girl Service
 
Site Acceptance Test .
Site Acceptance Test                    .Site Acceptance Test                    .
Site Acceptance Test .
 
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptx
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptxSCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptx
SCIENCE-4-QUARTER4-WEEK-4-PPT-1 (1).pptx
 
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
Discovery of an Accretion Streamer and a Slow Wide-angle Outflow around FUOri...
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdf
 
Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdf
 
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls AgencyHire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
Hire 💕 9907093804 Hooghly Call Girls Service Call Girls Agency
 
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICESAMASTIPUR CALL GIRL 7857803690  LOW PRICE  ESCORT SERVICE
SAMASTIPUR CALL GIRL 7857803690 LOW PRICE ESCORT SERVICE
 

NetBioSIG2014-Talk by Ashwini Patil

  • 1. TimeXNet: Identifying active gene sub-networks using time- course gene expression profiles Ashwini Patil Institute of Medical Science University of Tokyo NetBio SIG, ISMB 2014
  • 2. Goal • Comprehensive computational analysis of the innate immune response Mouse Interaction network 103218 protein-protein, protein-DNA, post-translational modifications Time-course gene expression RNA-seq expression levels in dendritic cells on LPS stimulus at 8 time points
  • 3. Innate immune system Kawai & Akira, Nat. Immunology, 2010
  • 4. Method - TimeXNet Partition differentially expressed genes into 3 time-based groups Identify most probable paths in the network connecting the three groups Patil et al., PLOS Comp. Biol., 2013
  • 5. Minimum cost flow optimization • ResponseNet • Identifies paths between two groups of genes (genetic hits and differentially expressed genes in yeast) - Yeger-Lotem et l., Nat. Genetics, 2009
  • 6. TimeXNet methodology • Edge cost: inversely proportional to edge reliability • Edge capacity: directly proportional to • Fold change in expression of adjacent gene(s) • Absolute tag counts of adjacent gene(s) • Objective function Minimize cost of flow through the network from T1 to T3 genes • Constraint Flow must pass through intermediate nodes (T2 genes) Most probable paths connecting T1->T2->T3 genes 2681 scored interactions among 1225 proteins
  • 7. Candidate genes Early genes (0.5-1 hour) Intermediate genes (2-4 hours) Late genes (6-8 hours) Genes with no change in expression Gene Flow Gene Flow Gene Flow Gene Flow Jun 13.68 Socs3 85.85 Cxcl10 10.91 Stat1 8.74 Fos 10.34 Nfκb1 76.87 Ddx58 9.33 Mapk8 8.72 Il1b 9.86 Jak2 54.44 Stat2 8.65 Irf5 7.60 Tnf 9.36 Src 38.30 Atf3 8.29 Adcy5 7.43 Cxcl2 7.59 Pik3r5 27.86 Isg15 8.15 Mapk1 7.40 Il1a 7.40 Rela 23.35 Irf7 7.30 Sp1 7.37 Akt1 6.43 Stat5a 20.40 Nos2 6.91 Stat6 7.17 Atf4 5.49 Met 18.94 Ifnar2 5.20 Sp3 7.13
  • 10. Method evaluation • Comparison with experimentally identified regulators • Amit et al., Science 2009: 49.6% previously unknown genes identified • Chevrier et al., Cell 2011: 69.8% regulators (novel and known) and 54.9% TLR target genes identified • Overlap with KEGG pathways • Directed paths of 3 to 7 edges identified in 13 KEGG pathways • Jak-STAT signaling pathway, Chemokine signaling pathway, Toll-like receptor pathway, MAPK signaling pathway
  • 11. Noise in the interaction network
  • 12. Comparison with other methods Method Experimentally confirmed regulators (3 datasets) KEGG Pathways with predicted paths (max length) Execution time (4 CPUs, 2.4Ghz, 12Gb RAM) Prior knowledge required Time- course data TimeXNet 49.6%1 69.8%2 54.9%3 13 (7 edges) 3 min None Yes ResponseNet* 39.2%1 53.5%2 39.2%3 0 (3 edges) 1 min None No SDREM 12.0%1 32.6%2 11.8%3 2 (4 edges) ~10 days Initial genes Yes 1 Regulatory genes from Amit et al., Science, 2009 2 Regulatory genes from Chevrier et al., Cell, 2011 3 Target genes from Chevrier et al., Cell, 2011 *Local implementation using GLPK
  • 13. Yeast osmotic stress response • Time-course gene expression (min) in yeast on hyperosmotic stress - Romero-Santacreu et al., RNA 2009 • Previously used to evaluate SDREM and ResponseNet - Gitter et al., Genome Research 2013 • Genes with 1.5 fold change in expression • Initial response genes: 2-4 min • Intermediate regulators: 6-8 min • Final effectors: 10-15 min
  • 14. Predicted osmotic stress response network • 2-4 min • 6-8 min • 10-15 min • Predicted Method Gold Standard* TFs* Hog1 Runtime TimeXNet 19 5 Yes 5 sec SDREM* 10 4 Yes - ResponseNet* 3 2 No -*Taken from Gitter et al., Genome Research 2013
  • 15. Circadian regulation of metabolism in mouse liver cells - Unpublished • Paths connecting genes showing rhythmic patterns of expression in 24 hours • Network predicted by TimeXNet contains Sphk2, Pld1, Pld2, Glud1
  • 17. • Input • 3 sets of genes with scores • Weighted interaction network • Parameters gamma1 and 2 • Location of glpsol executable from the GLPK • Directory where results will be storedCytoscape Running TimeXNet • Standalone application • Command line version • Iterative command line version to identify optimal parameters Patil & Nakai, under review
  • 18. Conclusion • TimeXNet: A method to predict active gene sub-networks using time- course gene expression profiles • Advantages • Accurate and fast • Independent of biological system: Innate immune response, circadian regulation of metabolism in mouse, yeast osmotic stress response • Amenable to incorporation of other time-course data types: phosphorylation levels, protein levels, epigenetic information • Issues to be addressed • Allowing path prediction between more than 3 groups of genes while maintaining speed and accuracy • Incorporating other forms of time-course information • Enhancements: Automatic install of GLPK, allowing users to enter non-numeric gene IDs Patil et al., PLOS Comp. Biol., 2013
  • 19. Acknowledgements • Innate immune response • Prof. Kenta Nakai - University of Tokyo • Dr. Yutaro Kumagai – Osaka University • Dr. Kuo-ching Liang – University of Tokyo • Prof. Yutaka Suzuki – University of Tokyo • Dr. Tomonao Inobe – Toyama University • Yeast osmotic stress response • Dr. Anthony Gitter – Microsoft Research • Circadian regulation of metabolism • Dr. Craig Jolley – RIKEN Center for Developmental Biology, Kobe • Funding • Japan Society for the Promotion of Science (JSPS) FIRST Program • JSPS Grant-in-Aid for Young Scientists • Takeda Science Foundation (with Dr. Tomonao Inobe) • Computational resources • Supercomputer at the Human Genome Center, Institute of Medical Science, University of Tokyo
  • 20.
  • 21. Edge Capacities For edges between the auxiliary source, S, and the initial response genes GT1, 2 1log / / imax i Si T imax ii i fc e C i G fc N e N       (3) For edges connected to the intermediate regulators GT2, 2 2 2log , / / imax i ij T T imax ii i fc e C i G j G fc N e N        (4) 2 2 2 log log / // / , 2 jmax jimax i imax jmaxi ji ji j ij T fc efc e fc N fc Ne N e N C i j G                         (5) For edges between the late effectors, GT3, and the auxiliary sink T, 2 3log / / imax i iT T imax ii i fc e C i G fc N e N       (6) 2 2 2 log log / // / , 2 jmax jimax i imax jmaxi ji ji j ij T fc efc e fc N fc Ne N e N C i j G                         (5 For edges between the late effectors, GT3, and the auxiliary sink T, 2 3log / / imax i iT T imax ii i fc e C i G fc N e N       (6 For edges between the auxiliary source, S, and the initial response genes GT1, 2 1log / / imax i Si T imax ii i fc e C i G fc N e N       (3) For edges connected to the intermediate regulators GT2, 2 2 2log , / / imax i ij T T imax ii i fc e C i G j G fc N e N        (4) 2 2 2 log log / // / , 2 jmax jimax i imax jmaxi ji ji j ij T fc efc e fc N fc Ne N e N C i j G                         (5) For edges between the late effectors, GT3, and the auxiliary sink T, For edges connected to the intermediate regulators GT2, • Graph G = (V, E) with E edges and V nodes (containing S – auxiliary source, T – auxiliary sink) • fc = fold change • 𝑒 = average expression level at all time points • N = number of genes with expression values • S = auxiliary source node • T = auxiliary sink node • GT1, GT2, GT3 = genes having maximal fold change at times T1, T2 and T3 For all other edges, not connected to the intermediate regulators or the auxiliary source and s 21 ,ij TC i j S G T  
  • 22. Edge costs 1Si Si Tw C i G   (8) 2ij ij Tw C i G   (9) 3iT iT Tw C i G   (10)   2,ij ij Tw f s i j S G T   , as per equation (2) The edge costs were calculated as: Where ()f = scaling function  likelihood ratio , HitPredictijs i j   ; 0.163 999ijs   999 , Innatedb, KEGGijs i j    , TRANSFACijs Transfacscore i j   ; 1 6ijs  3iT iT Tw C i G     2,ij ij Tw f s i j S G T   , as per equation (2) The edge costs were calculated as:  10log ,ij ijA w i j E    2ij ij Tw C i G   3iT iT Tw C i G     2,ij ij Tw f s i j S G T   , as per equation (2) The edge costs were calculated as:  log ,A w i j E    2ij ij Tw C i G   3iT iT Tw C i G     2,ij ij Tw f s i j S G T   , as per equation (2) The edge costs were calculated as:  10log ,ij ijA w i j E   

Notes de l'éditeur

  1. Using a large molecular interaction and regulatory network Using time-course gene expression profiles on activation Identify novel candidate genes and their time-dependent sub-networks
  2. Primary host response to invading pathogens Characterized by pattern-recognition receptors (PRRs) eg. Toll-like receptors Tlr1, Tlr2 … Tlr10 PRRs recognize specific microbial components – pathogen associated patterns (PAMPs) PAMPs bind to PRRs and trigger downstream signaling cascades, resulting in expression of pro-inflammatory cytokines and systemic inflammation MyD88 dependent pathway early response expression of proinflammatory cytokines TRIF dependent pathway late response Expression of interferons (IFNs) and IFN-inducible genes
  3. Comparatively small network of high confidence interactions connecting genes showing large changes in expression over time 2681 interactions among 1225 proteins Each edge and node is assigned a flow – indicative of its connectivity (importance?) in the network Genes showing no significant change in expression form a substantial part of the network
  4. Jun, Fos, Chemokines, kinases, Stats, Sp3
  5. Akt serine threonine kinases Dual specificity phosphatases – responsible for dephosphorylating the Map kinases to repress the immune response Xiap – anti-apoptotic inhibitor Ppp2ca- Protein phosphatase 2a catalytic subunit alpha Important role in regulation of endotoxin tolerance through the regulation of MyD88 activity (Xie et al., Cell Reports 2013) Dephosphorylates 20S proteasome subunit Affects ability of the proteasome to degrade substrates in concert with Protein Kinase A (Zong et la., Circulation Res 2006) Network suggests a similar regulation of the immunoproteasome by ppp2ca
  6. GO term enrichment: immune response, regulation of programmed cell death KEGG pathways enriched: TLR signaling pathway, Jak-STAT signaling pathway, pathways in cancer, chemokine signaling pathway