Hi all,
I am interested in analyzing timecourse data but would like some advice as to the experimental design in DESeq2. The experimental data include 4 ramets of a single sapling (tree) clone collected on Day 0 (before treatment) and 4 treated ramets every day for 14 days. We did not do controls every day due to sequencing expenses, but we do have controls for Day 7 and Day 14. We included spike ins in the library prep and found factors of unwanted variation (W_1) using RUVseq.
Because of the design, I am limited to running: Model 1: LRT where the full model = ~W_1 + time and reduced = ~W_1, where I can pool all my controls across days into Time 0 (individually testing control days yields very few DEGs), and I would miss any treatment:time interaction.
However, other studies repeat their control data for each time point so I could also run: Model 2. LRT where the full model = ~W_1 + Treatment + Time + Treatment:Time and reduced = W_1 + Treatment + Time. Although here I would appreciate any advice on the set up/pooling for the controls.
We are interested in DEGs between the time points and between the treatment groups, and DEG patterns/clusters throughout the time course. What model or combinations of models would you suggest can answer these questions provided my experimental data?
Thanks for any advice!