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Published byShannon Porter Modified over 9 years ago
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Dahlia Nielsen North Carolina State University Bioinformatics Research Center
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Microarray Animation http://www.bio.davidson.edu/Courses/ genomics/chip/chip.html
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Importing data into JMP/Genomics Need two (paired) tables Data: expression intensities Experimental design Data probably originally exists in separate files: one file per sample/microarray first create experimental design file
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Experimental Design File Required Columns columnname file Array (can be “made up” values) intensity if using text file input dye (or channel) if two-color platform cy3 vs cy5
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Experimental Design File Required Columns Other columns information about samples treatment class phenotype …
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Data Analysis Steps QC distribution analysis correlation plots Normalization more QC same as above Analysis Results visualization
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Data Analysis Steps QC distribution analysis correlation plots Normalization more QC same as above Analysis Results visualization JMP/Genomics creates a script for each of these can run script to re- create results (without re-doing analyses)
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QC Distribution analysis visualization of how consistent your data/samples are useful for detecting problem arrays Correlation plots also a measure of array consistency
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Normalization Lots of choices Lots of discussion No right / wrong Depends in part on your goals Different degrees very “light” (mixed model) intermediate (loess) more “heavy-handed” (quantile)
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More QC Indication of success of normalization procedure as before … consistency between arrays/samples detect problem arrays
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Analysis Generally performed one gene at a time Hypothesis-testing framework ANOVA (test for changes in expression levels across treatment groups) multiple-testing adjustment necessary Exploratory procedures pca cluster analysis
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Volcano plots Visualization tool to display results plot of effect size (x-axis) vs. significance level (y-axis) Some genes may display large differences between treatment groups, but also high variance (less significance) Some genes might display smaller effect sizes, but expression values very consistent (low var.) … smaller p-values
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Final results Probably should consider not only pvalues, but also magnitude of effect small changes (in spite of small pvalues) might not be replicable inherent accuracy of microarrays tendency of performing experiments with small sample sizes
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Final check on results Once identify genes with significant results e.g. expression levels significantly different between treatment groups Examine data Is the change identified (above) readily apparent? Normalized data … And raw data
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