linear regression on EPICmethylation data
1
0
Entering edit mode
7.3 years ago
catherine ▴ 250

Hi all, I have a 2*2 study design where each subject got measured pre-exposed and post-exposed for low-exposure and high-exposure group. so it is 10 patients x 2 groups x 2 (pre & post)= 40 samples of methylation data. and i want to run linear model to see the differential methylation associated with exposure levels (numeric values). I saw a same statistical model from section 3.5 of the edgeR vignettes: comparisons both between and within subjects.

My question is can this statistical model apply to methylation data as well, although its designed for RNA-seq? Or is there any suggested R package to model my study design? Thank you so much in advance, Catherine

methylation R edgeR • 1.7k views
ADD COMMENT
0
Entering edit mode
7.3 years ago
theobroma22 ★ 1.2k

Yes, a linear model is a linear model and can be used for any type of data like microarray, RNA-seq, methylation or other. The main issue is how to normalize your methylation data before putting it into a linear model. I'm not too keen on any bias or effects or the characteristics / properties of methylation data, so do you know if you can just mean center and scale it to the log scale as a normalization process if there isn't a different normalization method available?

Alternatively, and as a mere suggestion perhaps you could draw up your own null and full models, then compare them using ANOVA. Something in R would be like

null=lm(data ~ pre+post)
full=lm(data ~ pre+post+exposure)
aov(null, full)

This will tell you the effects of exposure.

ADD COMMENT

Login before adding your answer.

Traffic: 2020 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6