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Bioinformatics, 201 2 .11. 15 Gene Expression Profiling by Microarray

Bioinformatics, 201 2 .11. 15 Gene Expression Profiling by Microarray. Chun-Ju Chang, Ph.D. chunju@ntou.edu.tw Department of Food Science College of Life Sciences National Taiwan Ocean University. Griffin & Shockcor . Nature Reviews Cancer 2004, 4:551. High Throughput Gene Discovery.

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Bioinformatics, 201 2 .11. 15 Gene Expression Profiling by Microarray

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  1. Bioinformatics, 2012.11.15Gene Expression Profiling by Microarray Chun-Ju Chang, Ph.D. chunju@ntou.edu.tw Department of Food Science College of Life Sciences National Taiwan Ocean University

  2. Griffin & Shockcor . Nature Reviews Cancer 2004, 4:551.

  3. High Throughput Gene Discovery Sutliff J. Science 2001, 291:1224. Solution for genomics study

  4. Gene chip (DNA chip, DNA microarray) Nucleic Acids Res. 1992, 20:1679. Microarray technology evolved from Southern blotting, where fragmented DNA is attached to a substrate and then probed with a known gene or fragment.

  5. Estimation Functional enrichment Filtering Pathway analysis Clustering Data interpretation Biological verification Discrimination Schematic of microarray analysis Failed Quality measurement Pre-Processing Passed Analysis

  6. Outline • Microarray platforms • Experimental design • Sources of variability • Sample size and replication • Data acquisition and preprocessing • Normalization • Quality control • Data analysis • Partitional clustering • Functional annotation • Pathway analysis • Gene expression databases

  7. Microarray platforms 1

  8. Microarray platforms 2

  9. Affymetrix Miller & Tang. Microbiol Rev. 2009,22:611.

  10. Illumina 250,000probes/bead

  11. Experimental design 1 Sources of variation in a microarray experiment : • Manufacturing of arrays • Generation of biological sample • Genetic and environmental factors • Pooled or individual samples • Randomization • Technical variation • Preprocessing : RNA extraction, labeling, etc. • Protocolization of the processing steps • Processing of samples • Obtaining image • “Biological replicates”, “technical replicates”

  12. Experimental design 2 Sample size and replication: • 4 types of experimental designs • Completely randomized treatment-control design: each measurement is considered independent • Matched-pairs design • Multiple treatment design having an independent treatment effect • Randomized block design

  13. Data acquisition and preprocessing Common normalization strategies • Total intensity normalization • Normalization using regression techniques • Normalization using ratio statistics

  14. Data acquisition and preprocessing Quality control • From the Microarray Gene Expression Data (MGED) Society; presently named Functional Genomics Data (FGED) Society • MIAME (Minimum Information About a Microarray Experiment) standards for data reporting • Spotted cDNA and oligonucleotide arrays • Experimental design: number of replicates, samples used • Preparation and labeling • Hybridization procedures and parameters • Measurement data and specifications • Microarray Gene Expression Markup Language (MAGE-ML) • ArrayExpress microarray database • Universal data-presentation platform

  15. Functional Genomics Data (FGED) Society

  16. MicroArray Quality Control (MAQC) project Ji H & Davis RW. Nat Biotechnol 2006, 24:1112-3.

  17. Scatter plot Hierarchical Trees K-Means Venn diagram PiChart

  18. Partitional clustering by K-Means  cluster centers, prototypes 反覆疊代

  19. Functional annotationby GO(GeneOntology) 

  20. EMBL-EBI

  21. 30

  22. Hands-on Practice

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