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Andrey Alexeyenko M edical E pidemiology and B iostatistics Gene network approach in epidemiology
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Network is just a graph! The fact that we can draw a network does not yet make it a biological reality!..
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Why the network approach is an advancement compared to differential expression analysis? Functional context “Anchoring”, i.e. interdependence Biological interpretability Accounts for more statistical properties Data integration More data = flexibility!
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Gene network discovery: high-throughput experiments
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Bayesian inference: rps14 and rps8 functionally coupled rps14 and rps8 co- expressed P(C|E) = (P(C) * P(E|C)) / P(E) rps14 rps8 Gene network discovery: probabilistic data integration
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FunCoup is a data integration framework to discover functional coupling A Human B Human ? Find orthologs* Mouse Worm Fly Yeast High-throughput evidence
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Conversion “data pieces confidence” in a Bayesian framework
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Data components in FunCoup A
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FunCoup: on-line interactome resource Andrey Alexeyenko and Erik L.L. Sonnhammer (2009) Global networks of functional coupling in eukaryotes from comprehensive data integration. Genome Research. http://FunCoup.sbc.su.se
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Gene network discovery: getting rid of spurious links 0.7 0.5 0.4 Data processing inequality: “Direct links convey more information than indirect ones”
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Mutations: distinguishing drivers from passengers Functional coupling transcription transcription transcription methylation methylation methylation mutation methylation mutation transcription mutation mutation + mutated gene
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Network curation: cancer viewed by KEGG database curators
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Prostate cancer: recapitulated by FunCoup
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Network reconstruction: combination of methods
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Combination of methods: edges with different features A Alexeyenko, DM Wassenberg, EK Lobenhofer, J Yen, ELL Sonnhammer, E Linney, JN Meyer (2010) Transcriptional response to dioxin in the interactome of developing zebrafish. PLoS One.
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Verification of single gene lists Yellow diamonds : somatic mutations in prostate cancer Pink crosses: also mutated in glioblastome (TCGA)
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Subtyping cancer. Personalized medicine. Power of clinical trials AZD 2281 Salt Lake City, UT, June 19, 2007— Myriad Genetics, Inc. today announced the start of two Phase II trials for a new compound being tested to treat patients with BRCA1 & BRCA2 positive breast and ovarian cancer.
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Single molecular markers are often far from perfect. Combinations (signatures) should perform better. How to select optimal combinations? × Severity, Optimal treatment, Prognosis etc. Biomarker signatures in the network
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Candidate signature in the network Biomarker candidates
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Ready network-based signature RELAPSE = γ 1 EIF3S9 + γ 2 CRHR1 + γ 3 LYN + … + γ N KCNA5
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Identical genotypes can go different ontogenetic ways Disease Gene a Protein A
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Current gene expression results from inherited genotype, ontogenesis, and disease etiology Disease Physiological condition Birth Development Adult Gene a Gene Protein A
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Pathway cross-talk
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Analysis of cancer-specific wiring Pathway network of normal vs. tumor tissues Edges connect pathways given a higher ( N>9; p 0 0.5 ) between them (seen as edge labels). Known pathways (circles) are classified as: signaling, metabolic, cancer, other disease. Blue lines: evidence from mRNA co- expression under normal conditions + ALL human & mouse data. Red lines: evidence from mRNA co- expression in expO tumor samples + ALL human data + mouse PPI. Node s i z e : number of pathway members in the network. Edge opacity : p 0. Edge t hi ck ne ss : number of gene- gene links.
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Arrow of time: network prospective A Alexeyenko, DM Wassenberg, EK Lobenhofer, J Yen, ELL Sonnhammer, E Linney, JN Meyer (2010) Transcriptional response to dioxin in the interactome of developing zebrafish. PLoS One.
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Thanks to: Erik Sonnhammer Martin Klammer Sanjit Roopra Joel Meyer Thank you for listening! http://FunCoup.sbc.su.se
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Summary: Predicting gene networks is realistic. Proposed applications: – Genetic heterogeneity of cancer – Communication between different cells, tissues, processes etc. – Evaluation of candidate biomarkers – Expression signatures Ask concrete practical questions, not global ones!
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Prostate cancer a cancer regulatory network + proteomics (HPA) data Cyan: up-regulated in normal glandular cells Red/green: up/down-regulated in malignant cells Yellow&magenta: (potential) regulators of prostate cancer
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