Hello,
Sorry everybody, but I am a complete beginner here. Our lab recently performed an RNA-seq experiment to try to understand the phenotype of a particular mutant in Drosophila. I now have a list of up and down-regulated genes (analysis performed by our genomics facility). I have been staring at this list for a while now, trying to put together groups of genes that might account for the phenotype. Being a fly geneticist, with a long history of working on individual genes with 100% penetrant visible phenotypes, I have been just looking at the list an trying to find trends, then checking those trends using immunostaining, or whatever other method is appropriate. This is tedious and has led to only minor breakthroughs. Is there a way I am supposed to go about this? Of course I have read hundreds of papers where the authors have displayed Venn diagrams of GO analysis, but I do not know how to do it. I mean I can get GO Venn diagrams using Panther or other programs, but I am never sure how to tell if these are meaningful or represent just a random set of genes. Also, Panther does not seem to look at the level of misregulation. Is there a better program to use?
In any case, I am hoping somebody here can point me in the right direction as to where I should start. Some good references and programs?
Thanks,
Rob
GO analysis sure helps but personally I do not think this is going to be the "meat" of your pipeline. In your shoes, I would somehow define a list of differentially expressed genes (say, the best 50) and perform histology (ISH/immunostaining) on them (both on mutant and wild-type). This will define a narrow subset of genes with remarkable/remarkably changed expression patterns. On this subset I would perform functional studies (namely, mutants for each selected gene, resque experiments etc.). You will end up, aside from the wide set of differentially expressed genes provided by the RNA Seq, with a few robust connections between your mutated locus and some effectors. By the way, did you perform RNA Seq both in a loss-of-function and gain-of-function mutants? This would have improved the quality of you initial "top-50" list, making the tedious downstream wet lab work more valuable.