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I have a data frame that follows the below long Pattern:

   Name          MedName
  Name1    atenolol 25mg
  Name1     aspirin 81mg
  Name1 sildenafil 100mg
  Name2    atenolol 50mg
  Name2   enalapril 20mg

And would like to get below (I do not care if I can get the columns to be named this way, just want the data in this format):

   Name   medication1    medication2      medication3
  Name1 atenolol 25mg   aspirin 81mg sildenafil 100mg
  Name2 atenolol 50mg enalapril 20mg             NA

Through this very site I have become familiarish with the reshape/reshape2 package, and have went through several attempts to try to get this to work but have thus far failed.

When I try dcast(dataframe, Name~MedName, value.var='MedName'):
I just get a bunch of columns that are flags of the medication names (values that get transposed are 1 or 0) example:
Name, atenolol 25mg, aspirin 81mg
Name1,1,1
Name2,0,0

I also tried a dcast(dataset, Name~variable) after I melted the dataset, however this just spits out the following (Just counts how many meds each person has):
Name,MedName
Name1,3
name2,2

Finally, I tried to melt the data and then reshape using idvar="Name" timevar="variable" (of which all just are Mednames), however this does not seem built for my issue since if there are multiple matches to the idvar, the reshape just takes the first MedName and ignores the rest.

Does anyone know how to do this using reshape or another R function? I realize that there probably is a way to do this in a more messy manner with some for loops and conditionals to basically split and re-paste the data, but I was hoping there was a more simple solution. Thank you so much!

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4 Answers 4

up vote 8 down vote accepted

Assuming your data is in the object dataset

library(plyr)
## Add a medication index
data_with_index <- ddply(dataset, .(Name), mutate, 
                         index = paste0('medication', 1:length(Name)))    
dcast(data_with_index, Name~ index, value.var = 'MedName')

##    Name   medication1    medication2      medication3
## 1 Name1 atenolol 25mg   aspirin 81mg sildenafil 100mg
## 2 Name2 atenolol 50mg enalapril 20mg             <NA>
share|improve this answer
    
This Worked!!! I will probably be using this code a lot, I really appreciate the help! –  Hotamd6 Jul 4 '12 at 14:43

You could always generate a unique timevar before using reshape.

test <- data.frame(
Name=c(rep("name1",3),rep("name2",2)),
MedName=c("atenolol 25mg","aspirin 81mg","sildenafil 100mg",
          "atenolol 50mg","enalapril 20mg")
)

test$uniqid <- with(test,ave(as.character(Name),Name,FUN=seq_along))
reshape(test,idvar="Name",timevar="uniqid",direction="wide")

Result:

   Name     MedName.1      MedName.2        MedName.3
1 name1 atenolol 25mg   aspirin 81mg sildenafil 100mg
4 name2 atenolol 50mg enalapril 20mg             <NA>
share|improve this answer
    
Thanks for the help, this worked. My one worry about the columns, is that in my actual dataset I have an ever changing number and names of medications, so declaring the MedName=c(All the names) would probably be a bit much, but I appreciate the help, and will probably use this method on other problems. –  Hotamd6 Jul 4 '12 at 14:44
    
@Hotamd6 - no need to manually specify all the names - you could just do a find and replace on the dataset names like gsub("MedName.","medication",names(reshapedtestdata),fixed=TRUE) to get the same result as @mnel above. –  thelatemail Jul 4 '12 at 23:32

This seems to actually be a fairly common problem, so I have included a function called getanID in my "splitstackshape" package.

Here's what it does:

library(splitstackshape)
getanID(test, "Name")
#     Name          MedName .id
# 1: name1    atenolol 25mg   1
# 2: name1     aspirin 81mg   2
# 3: name1 sildenafil 100mg   3
# 4: name2    atenolol 50mg   1
# 5: name2   enalapril 20mg   2

Since "data.table" is loaded along with "splitstackshape", you have access to dcast.data.table, so you can proceed as with @mnel's example.

dcast.data.table(getanID(test, "Name"), Name ~ .id, value.var = "MedName")
#     Name             1              2                3
# 1: name1 atenolol 25mg   aspirin 81mg sildenafil 100mg
# 2: name2 atenolol 50mg enalapril 20mg               NA

The function essentially implements a sequence(.N) by the groups identified to create the "time" column.

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@thelatemail's solution is similar to this one. when i generate the time variable, i use rle in case i'm not working interactively and the Name variable needs to be dynamic.

# start with your example data
x <- 
    data.frame(
        Name=c(rep("name1",3),rep("name2",2)),
        MedName=c("atenolol 25mg","aspirin 81mg","sildenafil 100mg",
            "atenolol 50mg","enalapril 20mg")
    )

# pick the id variable
id <- 'Name'

# sort the data.frame by that variable
x <- x[ order( x[ , id ] ) , ]

# construct a `time` variable on the fly
x$time <- unlist( lapply( rle( as.character( x[ , id ] ) )$lengths , seq_len ) )

# `reshape` uses that new `time` column by default
y <- reshape( x , idvar = id , direction = 'wide' )

# done
y
share|improve this answer
    
I'm not sure I understand your comment about using rle when the "Name" variable needs to be dynamic. Wouldn't @thelatemail's solution also allow such flexibility (and without having to sort the data first)? –  Ananda Mahto Dec 15 at 10:01
    
@AnandaMahto maybe you're right..i suppose you could use id <- 'Name' and then later as.character(get(id)) in that second line and then the rest is dynamic. –  Anthony Damico Dec 16 at 3:55

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