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Transcriptomics - practical 2012. Bioconductor in R with a expectation free dataset. Please close unnecessary programs. On http:// plantsci.arabidopsis.info/pg/2013/ Choose the ‘Introduction to R/ Bioconductor Practical 5’ link
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Transcriptomics - practical 2012 Bioconductor in R with a expectation free dataset
Please close unnecessary programs. • On http://plantsci.arabidopsis.info/pg/2013/ Choose the ‘Introduction to R/Bioconductor Practical 5’ link • 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 • Download the All Packages zip folder Unzip to your DESKTOP • openthepptx
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?
Installing R / bioconductor • This is easy from home, but can be a little tricky from UoN– WAIT FOR THE DEMONSTRATION • To save time we are using pre-installed RStart> All Program's> UoNsoftware> Statistical & Mathematical> R- At home – follow the notes below.
Expression Probes on a GeneChip 3’ 5’ Sequence Probes Perfect Match Mismatch Chip
Biotin-labeled transcripts B B B B B B B B Fragmented cRNA Procedures for Target Preparation Fragment (heat, Mg2+) IVT (Biotin-UTP Biotin-CTP) AAAA RNA Wash & Stain Scan cDNA Hybridise (16 hours)
Hybridized Array cRNA Target Ab detection GeneChip® Expression AnalysisHybridization and Staining Array
Installing Bioconductor / oneChannelGUI normally WAIT FOR THE DEMONSTRATION DON’T DO THIS NOW
Experimental design and RNA tables Biological replicates from separate tissue samples
PA PB PC PD PE PA PB PC PD PE Chip 1 Chip 1 Chip 1 Chip 1 1 2 3 4 5 1.33 2.33 3.33 4.66 7 1 2 4 3 5 1.33 2.33 4.66 3.33 7 Chip 2 Chip 2 Chip 2 Chip 2 1 2 3 5 7 7 2.33 4.66 3.33 1.33 7 2 5 3 1 1.33 2.33 3.33 4.66 7 Chip 3 Chip 3 Chip 3 Chip 3 4.66 2.33 3.33 1.33 7 1.33 2.33 3.33 4.66 7 2 3 4 5 9 5 3 4 2 9 Order by ranks Average the intensities at each rank Reorder by probe RMA uses Quantile normalisation at the probe level