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Hi guys I asked a similar question about this here previously and I got some really awesome answers. But it turns out I have more data I need to work with sadly. So I have sample data in this format which is generated using head(data). So I have 3 specimens with their own Time and speed data....I'm not exactly using speed for my actual data

Time Speed Time.1 Speed.1 Time.2 Speed.2

Error in unique.default(x) : unique() applies only to vectors

Would it be possible for you guys to tell me what to do? I can do this in excel with a formula but I have so much data that excel crashes so I really need 'R' but have very minimal knowledge about it...thanks guys....

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Have you run exactly the code I wrote on this data with three specimens? It is supposed to work for any amount of specimens. That is why we take every other column and run using lapply. It works fine for me. Perhaps you should show us the output you want..? –  Arun Feb 22 '13 at 7:14
    
And please accept answers if they answer your question. –  Arun Feb 22 '13 at 7:19
    
Also here: please read the FAQ on how to ask a question: giving it a meaningful title is something to start with. –  Joris Meys Feb 25 '13 at 12:38

1 Answer 1

up vote 0 down vote accepted

Run the same code. Why are you editing by=3? You want to create idx = 1, 3, 5 .... by=3, will create 1, 4, 7.... Your data, as long as it is in the format Time, data, Time, data, Time, data, ..., ..., you can use the same code

require(IRanges)
# by equals 2 because we want to get the `Time` column index every time
idx <- seq(1, ncol(data), by=2)
# idx is now 1, 3, 5. It will be passed one value at a time to `i`.
# that is, `i` will take values 1 first, then 3 and then 5 and each time
# the code within is executed.
o <- lapply(idx, function(i) {  
    ir1 <- IRanges(start=seq(0, max(data[[i]]), by=401), width=401)
    ir2 <- IRanges(start=data[[i]], width=1)
    t <- findOverlaps(ir1, ir2)
    d <- data.frame(mean=tapply(data[[i+1]], queryHits(t), mean))
    cbind(as.data.frame(ir1), d)
})

gives me for this data:

# > o
# [[1]]
#   start end width mean
# 1     0 400   401 1.05
# 
# [[2]]
#   start end width mean
# 1     0 400   401  1.1
# 
# [[3]]
#   start end width     mean
# 1     0 400   401 1.383333
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it was my fault I didnt type in something right...thanks again –  Marco De Niro Feb 22 '13 at 14:56

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