I've some a list of protein Ids derived by proteomics experiment and for two samples, Normal and Cancer cells. However NO quantitative data,relative or absolute is available.
Can I upload these Ids to some functional enrichment analysis tool like GO term over representation analyzer to have a ROUGH Idea of what functional categories are enriched /non-enriched in cancer cell lines compared to Normal. Say, the p-value of cell-division process is 0.05 for normal tissue data and that of cancer is 0.0001, so I can tell that Cell-division proteins are enriched in cancer cells.
How bad theoretically is this method when I don't have any list of differentially expressed proteins both up and down regulated?
What does your proteomics experiment experiment test for or do? Or what is the design of your experiment? What are you looking for? Just identifying proteins? or looking for specific post-translational modifications between samples? etc...
The experiment was mainly done for identifying proteins and for optimization of upstream methods, I wonder if functional enrichment analysis can be done with it.
I think you have more chances of not finding any. 1) your gene set is not very specific 2) there is no testable hypothesis from which your "candidate genes" are derived 3) It is not actually enrichment you're looking for. You are basically looking if there are genes that are totally not expressed in one condition than the other and they may be too small an event to show a pattern of enrichment and might hide in the background.
Actually I am not sure if you find any enrichment, whether they can be misleading (as I mentioned before). They are from proteomic experiments and if you do find an enrichment, they could give you a rough idea... (even though you consider more of a binary pattern of gene expression).