Entering edit mode
9 weeks ago
R.L.
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0
47-b4d0-40ea-8289-6ba24c40
Hi I actually an noob in Spatial transcriptomics lol, just started my journey in ST. I am so confusing on the UMAP on my whole-mouse embryonic slice UMAP annotation. I just feel it's strange, where should I improve and how to interpreted this?
Thank you
Please ask specific questions. "Strange" is not helpful. What I see is that the UMAP shows a reasonable separation between celltypes, meaning, same predicitions group by proximity, that is good in my book. Of course the UMAP looks not like the embryo because it loses the spatial information and only uses the expression values or derived metrics.
Thank you very much for your reply! I should I have a positive control while saying something is negative "strange", appreciate your correction :)
What I was taught that the dimensional reductions results basically should look like this, with all clusters separated well. However, my results looked sticky and undivided.
You can achieve greater separation by changing the set of features you want to use for dimentionality reduction, but as said above, the UMAP you posted looks absolutely fine as a first pass. That's just what biological data will look like. You can annotate your UMAP clusters back onto the spatial map and see if the cluster assignments make sense.