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Bioconductor in R with a expectation free dataset Transcriptomics - practical 2014.

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Presentation on theme: "Bioconductor in R with a expectation free dataset Transcriptomics - practical 2014."— Presentation transcript:

1 Bioconductor in R with a expectation free dataset Transcriptomics - practical 2014

2 Please close unnecessary programs. On http://ukaffy.com/pg/2014 please go to practical 5. Analysing Transcriptome Data. Open the Free Transcriptomic Practical link and download the pptx to your DESKTOP **we will fill out this pptx TOGETHER** Download the data files zip folder Unzip to your DESKTOP open the pptx

3 Experimental setup Equivalency? - fair representatives? (G/E) Replicates? - ease, cost Suitability of samples? -which tissue? Degradation? - is the tissue normal? - how has it been stored? All determine the TYPE of experiment you are doing While you are doing this analysis – think.. What am I finding out? Why?

4 Installing R / bioconductor This is easy from home or anywhere. – WAIT FOR THE DEMONSTRATION We will show you how to install as if you are in your own lab / house / coffee shop. All you need is a network connection

5 Expression Probes on a GeneChip Probes Sequence Perfect Match Mismatch Chip 5’ 3’

6 Procedures for Target Preparation cDNA Wash & Stain Scan Hybridise (16 hours) RNA AAAA BBBB Biotin-labeled transcripts Fragment (heat, Mg 2+ ) Fragmented cRNA B B B B IVT (Biotin-UTP Biotin-CTP)

7 GeneChip ® Expression Analysis Hybridization and Staining Array cRNA Target Hybridized Array Ab detection

8 Experimental design and RNA tables Biological replicates from separate tissue samples

9 Box plots & normalisation

10 RMA uses Quantile normalisation at the probe level Chip 1 Chip 2 Chip 3 1 2 3 4 5 1 2 3 5 7 2 3 4 5 9 Order by ranks PA PB PC PD PE Chip 1 Chip 2 Chip 3 1 2 4 3 5 7 2 5 3 1 5 3 4 2 9 Average the intensities at each rank Chip 1 Chip 2 Chip 3 1.33 2.33 3.33 4.66 7 PA PB PC PD PE Chip 1 Chip 2 Chip 3 1.33 2.33 4.66 3.33 7 7 2.33 4.66 3.33 1.33 4.66 2.33 3.33 1.33 7 Reorder by probe

11 PCA – does my data look good in that?

12 Contrasts, top tables & differentials

13 If time permits: Venn diagrams


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