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The tricky art of scaling quantitative data across libraries, typically to account for differences in sequencing depth. This can also be about scaling for read source length, like transcript or gene length, in order to enable comparisons across genes.
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Normalizing microarray data for clustering heat map
I wanted to generate a clustering heat map for the microarray data. This is the first time I'm working on Microarray data. I read some tutorials but have few doubts.
I'm using microarray (Affymetrix …