I'm using data.table 1.9.6 with R 3.2.1.
I have a data.table with a key called pid. There are multiple records with the same pid that differ in their level of completeness, the dates the samples were taken on and the type of test performed. I need to merge this data.table with another data.table on pid, however the second table only has one unique record for each pid.
Before merging, I therefore need to subset the first data.table so that it also contains only one unique record per pid. I could do this with unique() but this will give me the first record for each pid by order and that isn't necessarily the one I want. For each pid, I'm looking for the row that contains a particular test type (x), has the earliest sample date for that pid and if more than one with the earliest sample date, then of those the row with the most complete fields as a tie-breaker.
Simply ordering by sample date (min to max) and no. of complete fields (max to min) and then applying unique() gets me part of the way, but efficiently referencing the
test=="x" condition is where I'm getting stuck.
How can I efficiently de-duplicate the data.table and explicitly select the rows to keep based on them meeting certain logical conditions (which all rows for a given pid can be evaluated on)?
Here is some example data:
pid <- c("a1", "b1", "c1", "a1", "c1", "c1", "c1") sampledate <- c("2014-11-19", "2014-11-01", "2014-11-05", "2014-11-17", "2014-11-05", "2014-11-05", "2014-11-05") age <- c(10,43,2,10,2,NA,2) sex <- c("female","female","male","female","male",NA,"male") test <- c("x", "x", "e", "x", "d", "y", "x") dt <- data.table(cbind(pid,sampledate,age,sex,test)) dt[, sampledate := as.Date(sampledate)] dt[, completefields := rowSums(!is.na(dt))]
Here is the unique subset using setorder:
setkey(dt, pid) setorder(dt, pid, sampledate, -completefields, na.last=TRUE) dts=unique(dt) > dts pid sampledate age sex test completefields 1: a1 2014-11-17 10 female x 5 2: b1 2014-11-01 43 female x 5 3: c1 2014-11-05 2 male e 5
In the above output, for pid "c1" the record for test "e" is selected, whereas I am only interested in the records for test "x". Including test in the order list will not help me as the options are d,e,x and y with the value I want, "x" falling in the third (if ordered ascending) or second (if ordered descending) position, respectively.
If I add the results of a logical test to my data set I can include the "testisx" column in order and get what I want:
dt[, testisx := test=="x"] setkey(dt, pid) setorder(dt, pid, sampledate, -testisx, -completefields, na.last=TRUE) dts=unique(dt) > dts pid sampledate age sex test completefields testisx 1: a1 2014-11-17 10 female x 5 TRUE 2: b1 2014-11-01 43 female x 5 TRUE 3: c1 2014-11-05 2 male x 5 TRUE
This is fine for small data sets, but creating the extra column for much larger data sets would be computationally expensive.
Is there any way that I could select one row for each pid that meets the conditions as above without creating an extra column? I don't have to use unique(); I could construct a forloop but before I do that wanted to check if there were any more straightforward methods.