A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb. 2006 GP3xCLI GenePix Post-Processing.

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A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb GP3xCLI GenePix Post-Processing By CSIRO Livestock Industries

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Introduction 1.Each microarray hybridisation generates a large amount of data resulting from the scanning of two images (one red, one green). 2.It is both tedious and prone to human error to visually assess the quality of each spot on the microarray. 3.GP3xCLI is an automated AWK-based script to assess the quality of raw microarray data captured using the GenePix optical scanner. 4.Executed from the prompt line, GP3xCLI incorporates tools such as: 1.A2PS  ASCII to Postscript translator 2.GNUPLOT  interactive plotting utility 3.PS2PDF  public domain postscript to PDF converter 5.On execution, GP3xCLI generates a 2-page PDF file. 6.Inspired by GP3 ( GP3xCLI is not intended to perform any real analysis (eg. Correction, filtering, normalisation). 7.Quality assessment is based on standard 1.Summary Statistics 2.Diagnostic plots GP3xCLI

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Summary Statistics 1.Total Number of Spots. 2.Number of Spots by Quality Flag (generated by the scanner). 3.For each channel (Red and Green), Number of Spots for which the foreground is less than the background intensity signal. 4.Optimality of Log-transformation  Amount of data left by each threshold of Mean to Median correlation. 5.Number of Repetitions by Genes 6.N, Mean, Std, Min and Max for Log-Ratio (Red/Green) and average (Red+Green) intensities GP3xCLI

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Summary Statistics GP3xCLI Valid Spots: - Foreground > Backgrond - Quality Flag = 0

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Diagnostic Plots GP3xCLI RED versus GREEN NB: Only for Valid Spot: - Foreground > Backgrond - Quality Flag = 0 Scatters:

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Diagnostic Plots RED and GREEN GP3xCLI NB: Only for Valid Spot: - Foreground > Backgrond - Quality Flag = 0 Densities:

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Diagnostic Plots RED to GREEN GP3xCLI NB: Only for Valid Spot: - Foreground > Backgrond - Quality Flag = 0 Ratios:

A Quantitative Overview to Gene Expression Profiling in Animal Genetics Armidale Animal Breeding Summer Course, UNE, Feb Application The Diets Experiment 3 Diets,10 Animals,14 Microarrays Available at: GP3xCLI