Additional Programs to Install
- Compression - for those using Windows, install 7-Zip. MacOS and Linux natively support most compression formats that we will need.
We start by getting into the following dataset - https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE85331
On your own computer, download https://www.ncbi.nlm.nih.gov/geo/download/?acc=GSE85331&format=file&file=GSE85331%5Fall%2Egene%2EFPKM%2Eoutput%2Ereplicates%2Etxt%2Egz and extract (uncompress) the file (on MacOS or Linux just double click it, on Windows use 7-Zip or something similar).
After extracting you can open the file in Excel, Sheets, or LibreOffice. Note that it is a tsv file. If you double click, your OS may not know what program to use to open it. So start your spreadsheet program and then open the file. Some things are not too painful to do in your spreadsheet program. For example, you should verify that the following are all correct...
- Genes with highest H1_day0_0 values: SNORD97, SNHG25, EEF1A1, RPL38, RPS27.
- Genes with highest H1_CM_0 values: H19, MYL7, RPL31, SNORD9, RPS27.
- Number of genes (#rows - 1): 26257
- Median value for H1_day0_0: 0.539942
- Median value for H1_CM_0: 1.246015
- Average value for H1_day0_0: 15.86772859
- Average value for H1_CM_0: 16.4574767
It seems that this dataset might be normalized so that the average values for each column (sample) are similar.
And that is about all we want to do in the spreadsheet right now. You can save it as an xlsx or import into Google Sheets in case we want to do anything else manually with it.
R and R Studio
Let's see what we can do with the same file in R and R Studio. First you should install R and R Studio on your computer. See links above.