Dear all,
I want to use deconvolution methods to estimate the proportions of different cell types in my RNA-Seq samples. In this post (Differential gene expession analysis in cell populations of mixed tumor and normal cells), it's mentioned that "signals from different cell-types/tissues will sum more linearly in microarrays than RNAseq, where the sum is highly non-linear" and "Any paper talking about signal separation will likely mention that the signals need to be independent for optimal performance, which they self-evidently aren't in RNAseq." Could someone please explain to me why in RNA-Seq samples the signals from different cell-types/tissues are not independent, or why the signals don't sum linearly?
Also, if I do decide to go ahead with using deconvolution methods, should I apply the deconvolution methods to raw RNA-Seq counts, log(CPM) transformed data, or voom transformed data?
Thanks.
Paul
Someone in our group just gave a journal club talk on "CIBERSORT". They at least claim that it can be used for RNAseq data and might be useful for you if you just want to know something like, "what percentage of each sample is composed of one of a number of cell types". I'm still a bit dubious about the method, but in theory it or something like it could possibly work.
Agreeing with Devon, I recently used this software for RNAseq data,and it seems to give results on RNAseq as well,in terms of percentages of different cell types https://cibersort.stanford.edu
CIBERSORT is designed for immune cell types. If you aren't specifically looking a mixture of immune cells, you might want to use a more generalized deconvolution strategy.
If you are looking at bulk tumor expression, I would typically expect some sort of percent tumor value from the pathologist, which you could use in your differential expression model (if that's available for your samples, that might be a good alternative / positive control option).
Does anyone know of other cell type signatures besides LM22 from CIBERSORT which has only 22 cell types?
Also,are there any other tools for RNAseq besides CIBERSORT and DeconRNAseq?
Dvir Aran from Atul Butte's lab at UCSF has recently come out with a new tool, xCell, for RNAseq-based deconvolution that might be worth looking into (it is very easy to use): http://xcell.ucsf.edu
If you can wait, I will have a new cell deconvolution method coming out in a publication. This was tailoured for detecting immune cell populations from RNA-seq.
Hi Kevin
Just curious if this has been published yet? Looking into a variety of deconvolution methods for RNA-seq, and would be very interested in the method you've developed.
Hi Alex, that work is continued by my now former colleagues, as I moved over to USA in 2016. I am still in touch, however, and I understand that they are still trying to publish the work. Note that the deconvolution part is only one part of a manuscript that is heavily focused on molecular biology. Have no other programs yet been released in this area?