Network integration and function prediction: Putting it all together Slides courtesy of Curtis Huttenhower 04-13-11 Harvard School of Public Health Department.

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Presentation transcript:

Network integration and function prediction: Putting it all together Slides courtesy of Curtis Huttenhower Harvard School of Public Health Department of Biostatistics

A computational definition of functional genomics 2 Genomic data Prior knowledge Data ↓ Function ↓ Function Gene ↓ Gene ↓ Function

A framework for functional genomics 3 High Similarity Low Similarity High Correlation Low Correlation G1 G2 + G4 G9 + … G3 G6 - G7 G8 - … G2 G5 ? …0.10.2…0.8 +-…--…+ 0.5… …0.6 High Correlation Low Correlation Frequency Coloc.Not coloc. Frequency SimilarDissim. Frequency P(G2-G5|Data) = Ms gene pairs → ← 1Ks datasets + =

MEFIT: A Framework for Functional Genomics 4 Golub 1999 Butte 2000 Whitfield 2002 Hansen 1998 Functional Relationship Biological Context Functional area Tissue Disease …

Functional network prediction and analysis 5 Global interaction network Metabolism networkSignaling networkGut community network Currently includes data from 30,000 human experimental results, 15,000 expression conditions + 15,000 diverse others, analyzed for 200 biological functions and 150 diseases HEFalMp

HEFalMp: Predicting human gene function 6 HEFalMp

HEFalMp: Predicting human genetic interactions 7 HEFalMp

HEFalMp: Analyzing human genomic data 8 HEFalMp

HEFalMp: Understanding human disease 9 HEFalMp