I’ve never done scRNAseq so I don’t know about if there are any pitfalls that can derail or prevent this analysis from being successful for this specific application but our lab does a lot of metabolic engineering in rare microbes. We transform genes from biosynthetic pathways into the organisms and try to get the organisms to express valuable biosynthetic compounds that we then extract and purify. One thing is that after the transformation of certain genes, we get unexpected results or lack of expression that we expect and we have trouble finding out why. Our lab is trying to incorporate more bioinformatics approaches to get a more holistic view of what’s happening in these organisms and one of the approaches we’re considering is scRNAseq to see how expression of our genes of interest and all the cells other genes are affected by our transformations. I’m wondering if this is a good approach. From what I can tell, a lot of use cases for for scRNAseq are biased towards human and mouse research in order to differentiate expression profiles in different tissues. This isn’t as relevant for our purposes since we’re working with microbes and I’m thinking the main difference in “cell types” in our sample might be the cell cycle of the individual cells. Additionally, our cells have very little external resources out there (e.g. lack of good gene models, RNAseq data, biological pathway information, etc), so if there’s steps that require good reference data to really perform a good differential gene expression analysis using scRNAseq it would be good to know that ahead to time to know if this approach should be avoided. If scRNAseq doesn’t seem like the right tool for the job, can anyone tell me the reasons why and if possible what approach they would recommend instead? Thank you!
Thank you that's a very good answer