I am working on some data in R that consist of four-dimensional arrays composed of three spatial dimensions and a time dimension: x, y, z, t. For some of my analyses, I would like to obtain all of the data in the time dimension for a set of spatial coordinates x, y, z. Thus far, I have used the which function to obtain the indices of the spatial locations of interest. But when I go to obtain all relevant data in the time dimension corresponding to the spatial locations, I cannot find an elegant R solution and have resorted to using repmat, a ported MATLAB function.
a4d <- array(rnorm(10000), rep(10,4)) #x, y, z, t #arbitrary set of 3d spatial indices x, y, z (here, using high values at first timepoint) indices <- which(a4d[,,,1] > 2, arr.ind=TRUE) str(indices) # int [1:20, 1:3] 10 2 6 5 8 2 6 8 2 10 ... # - attr(*, "dimnames")=List of 2 # ..$ : NULL # ..$ : chr [1:3] "dim1" "dim2" "dim3" #Now, I would like to use these indices to get data x, y, z for all t #Intuitive, but invalid, syntax (also not clear what the structure of the data would be) #a4d[indices,] #Ugly, but working, syntax library(pracma) #number of timepoints nt <- dim(a4d) #create a 4d lookup matrix lookup <- cbind(repmat(indices, nt, 1), rep(1:nt, each=nrow(indices))) #obtain values at each timepoint for indices x, y, z result <- cbind(lookup, a4d[lookup])
This solution works okay for the stated purpose, but seems ugly conceptually. Ideally, I would like a 2-dimensional matrix at the end: index x time. So, in this case, with 20 x, y, z coordinates in the lookup, and 10 timepoints, a 20 x 10 matrix would be ideal where rows represent each row of indices (don't need to preserve the x, y, z, values necessarily) and each column is a timepoint.
Is there is a good way to do this in R? I have played around with do.call("[", list ... etc. and using outer and prod, but these haven't worked as I had hoped.
Thanks for any suggestions! Michael