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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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Normalization methods with RNA-Seq ERCC spike in?
Q: What are the possible normalization strategies? Can you briefly describe them? …