Finding constitutive exons using expression data
Hi, I'm trying to find over the entire human genome, for each gene, which exons are the most constitutively expressed. To do this, I'd like to combine expression data (RNA-seq or Microarray) and exons data (UCSC track). Then, for each gene, I'd like to pick the 1 or 2 exons with the highest levels of expression (my proxy for constitutiveness). An additional nicety would be to somehow work in a preference for 5' exons. For example, let's say a gene has 3 exons and, with the expression data, all 3 exons are equally expressed. I'd like to selectively get the first 2 exons. I've started learning Galaxy and was able to import BED files for UCSC exons (as in the Galaxy 101 tutorial) and a BED file for Affy microarray expression data. (I tried also importing the Burge RNA-seq track as BED but couldn't get it to work). I did an inner join on genomic sequences to join the expression data with the exons and sorted them from most expressed to least. But how do I sort within genes? That is, how do I get the top 2 exons per gene (highest expressing exons per gene) and, if there are more than 2 with equally high expression, how do I preferentially get the 5` exons? I'm also open to ways to do this without using Galaxy, etc. I want to do this for an entire genome, so I figured it would be good to have a Galaxy workflow, which I could then apply to other genomes as needed. Thanks for any help
participants (1)
-
7plusorminus 3