I have a `data.table`

of measurements, each column has a lower detection limit, (and possibly an upper detection limit)

```
set.seed(1)
dt <- data.table(id=1:5, A=rnorm(5), B=rnorm(5, mean=2), C=rnorm(5,mean=-1))
setkey(dt, id)
# "randomly" disperse upper an lower limits to measurement columns
dt[3,A := -5]
dt[2,B := -3]
dt[5,B := 7]
dt[1,C := -10]
dt
id A B C
1: 1 -0.6264538 1.179532 -10.0000000
2: 2 0.1836433 -3.000000 -0.6101568
3: 3 -5.0000000 2.738325 -1.6212406
4: 4 1.5952808 2.575781 -3.2146999
5: 5 0.3295078 7.000000 0.1249309
```

I want to filter (set to `NA`

) out values in each column of `dt`

which exactly match the lower and upper measurement limits listed in another `data.table`

:

```
limits <- data.table(measurement=LETTERS[1:3], lower=c(-5,-3,-10),
upper=c(NA, 7, NA))
setkey(limits, measurement)
limits
measurement lower upper
1: A -5 NA
2: B -3 7
3: C -10 NA
```

My expected output is:

```
dt
id A B C
1: 1 -0.6264538 1.179532 NA
2: 2 0.1836433 NA -0.6101568
3: 3 NA 2.738325 -1.6212406
4: 4 1.5952808 2.575781 -3.2146999
5: 5 0.3295078 NA 0.1249309
```

I wasn't able to construct a nice solution to this, so at the moment I'm using a clungy for loop to get the job done:

```
for (i in 1:nrow(dt)) {
for (j in 2:ncol(dt)) {
if (is.na(dt[i, j, with=F])) {
next
} else if (dt[i, j, with=F] == limits[names(dt)[j]][, lower]) {
dt[i, j := NA_real_, with=F]
} else if (is.na(limits[names(dt)[j]][, upper])) {
next
} else if (dt[i, j, with=F] == limits[names(dt)[j]][, upper]) {
dt[i, j := NA_real_, with=F]
} else {
next
}
}
}
```

But there has to be something nicer and faster? I had a play around with `apply`

ing each column of the `limits`

`data.table`

to each row of `dt`

, but didn't have any success.