why there is only one result for one tissue-specific-GEM? #831
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Hi @Joyjoyjoyc, the original implementation of tINIT (Agren et al. 2014) calculated gene scores for a tissue by comparing gene expression values in that tissue to the mean expression of those genes across several tissues, and therefore required gene expression data for multiple tissues to be provided. However, the updated version of tINIT (Robinson et al. 2020) allowed the specification of an expression threshold, to which gene expression values could be compared instead of to average values across several tissues. This therefore allows you to create a tissue-specific GEM without requiring expression data for multiple tissues - you only need the expression data for the tissue(s) for which you wish to generate a context-specific GEM. The most recent version of the algorithm is ftINIT (Gustafsson et al. 2023), which improves, among many other things, the speed and robustness of the model generation process. This is the version that we currently recommend, and the user guide can be found here. |
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Ah my mistake, I misunderstood different "samples" in your original question to mean different "tissues". Yes, for our analysis we simply took the average expression value (TPM) of all samples for a tissue to use as input for generating its tissue-specific GEM. This of course does not capture the expression heterogeneity within the tissue, since it will be an average profile. One could instead generate a sample-specific GEM for every sample, which would give a bit more insight into how the within-tissue sample expression differences impact the resulting GEMs. This was something we did in the ftINIT paper (see e.g. Fig. 2), where we looked at structural and functional variation among GEMs generated from different samples of the same tissue (or different groups ["pools"] of single cells from the same cell type). |
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Hi, everyone!
I followed the tutorial of Human-GEM and use my own bulk RNA-seq data to extract the personalized GEM, but I wonder how to build a tissue-specific GEM model with only one result? which I mean as I can see that in the example file 'tINIT_GTEx_outputs.mat', there are 30 tissue-specific-GEM, but does one tissue should be compound of many samples, so why does it only contain only one GEM for one tissue? or maybe they only choose one sample's expression data as a representative of the tissue? so I'd like to know how to exactly generate a tissue-specifc GEM and compare with others?
Thanks!
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