I have two data.tables
: samples, resources
resources
is connected with samples
via primary
and secondary
ids.
I want to combine the information from the resources with the sample-table first via the primary id, and only if this produces NA, then I want to resort to the secondary resources from the same table (within one data.table command chain).
# resources:
primary secondary info
1: 17 42 "I"
2: 18 NA "J"
3: 19 43 "K"
# samples:
name primary secondary
1: "a" 17 55
2: "b" 0 42
3 "c" 18 42
The desired result would be:
# joined tables:
name info # primary secondary
1: "a" "I"
2: "b" "I"
3: "c" "J"
The first join via primary
is easy, it produces
# Update:
samples <- data.table(name = letters[1:3],
primary = c(17, 0, 18),
secondary = c(55, 42, 42))
resources <- data.table(primary = 17:19,
secondary = c(42, NA, 43),
info = LETTERS[9:11])
# first join:
setkey(samples, primary)
setkey(resources, primary)
samples[resources]
name info # primary secondary
1: "a" "I"
2: "b" NA
3: "c" "J"
But then? I need to re-key samples with setkey(samples, secondary)
, right? And then subset to only those rows that produces NAs. But all this is not really possible within one command chain (and imagine there were more than two criteria...). How can I achieve this more succinctly?
... updated with code for the data.tables.
samples
andresources
?data.table
friendly but just in case it is helpful: stackoverflow.com/questions/11369837/…