Hi, All,
In the RNA sequencing on a small amount of tissue material, RNA amplification is inevitable step. Since RNA amplification is variably dependent on GC content, it is not absolutely linear. There is highly possibility that transcriptome data cannot reflect true transcript distribution in cell. Are bioinformatic normalization methods available to minimize such variabilities and bias?
One poster abstract shows that some amplification kits are better than others. http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3635348/ Why will there be such difference?
Thanks
I agree - RNA-Seq coverage is typically very uneven (even when working with high quantities of RNA). I think the only way to really do a good job of correcting this is through wet lab sample preparation.
Unfortunately, I haven't seen any data from any such preparations first-hand, but I have heard of developments like this. Hopefully, some of these links can be helpful:
Illumina FAQ (I think TruSeq helps provide more even coverage?): http://www.illumina.com/applications/sequencing/rna.ilmn
http://www.pnas.org/content/111/5/1891.full
Yeah, you can only rescue things to a certain extent with algorithms.