Hey everybody
I have a question regarding the dba.plotPCA
function and I hope some of you might help me. I am performing differential binding analysis for my ChIP-seq dataset and I am trying to interpret in a comprehensive way the PCA plot I get out of the function mentioned above.
Specifically, I am wondering how can I know what specific variables account for each principal component (PC1, PC2, ..). In this way, I aim to understand which variable in my dataset makes some samples cluster together and which other variable separates them in the plot.
I hope my question was clear enough and thanks in advance to anybody who will try to give me an answer.
you can extract the object where you will have individual component and then you can use them to rank to find what component is making the difference