Dear all, I'm a rookie in the field of bioinformatics. We recently started to work with Methylation EPIC array data from Illumina.
For our last 4 chips we received weird (skewed) beta distribution densities even after within-array normalization using the ChAMP package. Has anyone ever seen something similiar and have an advice?
Your help is very much appreciated!
Kind regards, Erwin
Cross-posted: https://support.bioconductor.org/p/127944/
I'd expect some peak in the middle for humans - these are imprinted genes. Or the question is about something else?
I imagine the question is "why is the normalization making the signals vastly less comparable?", which I have no good answer to. Honestly, the before-normalization curves look more reasonable that what the normalization produced.
Just a guess - may be these samples were fundamentally different? Different cell type or cancer? Author mentioned nothing if there are such differences...
That could be, though the post-normalization beta distributions look nothing like either normal or diseased mammalian samples.
Then I'd advise to author to normalize with alternative method (eg rnbeads, it is impossible to make a mistake there) and compare results - I agree, these plots does not look all right