Hi,
I have got a 10X 3' scRNA-Seq dataset of two samples. I want to calculate the average expression for each gene from this scRNA-Seq data. Here, there are some challenges in calculating the average expression, which I'm not sure if I've done that correctly.
I started with some QC and removing outlier cells which includes removing cells with a high fraction of Mitochondria and also eliminating all the cells that do not express any genes.
Then for each gene in the gene-barcode matrix, I calculated average expression which I'm not sure if that is a right way to do that or not. Since I can calculate the expression of each gene by sum over all the counts across all the cells and then divided by the number of cells with non-zero counts for that specific gene.
I appreciate any comments in advance.
Thanks, Amir
Thanks for your comment. I need to measure the average expression for two different conditions which are not compared able in scRNA-Seq scale. Therefore, I need to calculate the DEG analysis in order to identify my enriched genes between two population.
I'm not sure imputation will help me for this purpose since it will scale the expression and for zero values before imputation, it will replace with a very small number which will not impact my average expression.
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Thats why I asked what is the goal. If you are looking between two conditions, you have to do differential expression and do a violin plot of the gene of interest.