Hello!
Thanks for your input. I realized the same regarding the usual transformations after I posted because I was dealing with presence/absence data. My concern is that I want to run a db-RDA, which I understand is based on the PCoA analysis. I am concerned that if the gradient is present it will influence the db-RDA? Any advice on how to proceed would be great. I have thought about using nmds instead, but not sure what I could use that would be similar to a db-RDA to follow? I am trying to determine what treatments are driving the changes in biofilm communities.
Dr. Bowers and I were working on this yesterday, and I found a new QIIME command - detrend.py in the latest version of QIIME that is suppose to address this. Does not appear to be in previous versions of QIIME. I think its based on the attached paper where they applied a quadratic function to the ordinations to try and remove them. Usually, you would address such issues with transformations on the original data set, so we were wondering what your opinion might be on their method? Also, Bob couldn't get the command to run in MacQIIME - we kept getting an error message that the data "were not iterable." We tried inputing the coordinates file, the distance matrix and the OTU table - just to see if we could get any of them to work. We also tried another dataset that he had with a similar PCoA and got the same error message.