# Get the first non-null value from selected cells in a row

Good afternoon, friends!

I'm currently performing some calculations in R (df is displayed below). My goal is to display in a new column the first non-null value from selected cells for each row.

My df is:

``````MD <- c(100, 200, 300, 400, 500)
liv <- c(0, 0, 1, 3, 4)
liv2 <- c(6, 2, 0, 4, 5)
liv3 <- c(1, 1, 1, 1, 1)
liv4 <- c(1, 0, 0, 3, 5)
liv5 <- c(0, 2, 7, 9, 10)
``````
``````df <- data.frame(MD, liv, liv2, liv3, liv4, liv5)
``````

I want to display (in a column called "liv6") the first non-null value from 5 cells (given the data, liv1 = 0, liv2 = 6 , liv3 = 1, liv 4 = 1 and liv5 = 1). The result should be 6. And this calculation should be repeated fro each row in my dataframe..

I do know how to do this in Python, but not in R..

Any help is highly appreciated!

One option with `dplyr` could be:

``````df %>%
rowwise() %>%
mutate(liv6 = with(rle(c_across(liv:liv5)), values[which.max(values != 0)]))

MD   liv  liv2  liv3  liv4  liv5  liv6
<dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
1   100     0     6     1     1     0     6
2   200     0     2     1     0     2     2
3   300     1     0     1     0     7     1
4   400     3     4     1     3     9     3
5   500     4     5     1     5    10     4
``````

A Base R solution:

``````df\$liv6 <- apply(df[-1], 1, function(x) x[min(which(x != 0))])
``````

output

``````df
MD liv liv2 liv3 liv4 liv5 liv6
1 100   0    6    1    1    0    2
2 200   0    2    1    0    2    2
3 300   1    0    1    0    7    1
4 400   3    4    1    3    9    1
5 500   4    5    1    5   10    1
``````

A simple base R option is to apply across relevant columns (I exclude `MD` here, you can use any data frame subsetting style you want), then just take the first value of the non-zero values of that row.

``````df\$liv6 <- apply(df[-1], 1, \(x) head(x[x > 0], 1))
df
#>    MD liv liv2 liv3 liv4 liv5 liv6
#> 1 100   0    6    1    1    0    6
#> 2 200   0    2    1    0    2    2
#> 3 300   1    0    1    0    7    1
#> 4 400   3    4    1    3    9    3
#> 5 500   4    5    1    5   10    4
``````

One approach is to use `purrr::detect` to detect the first non-zero element of each row.

We define a function which takes a numeric vector (row) and returns a boolean indicating whether each element is non-zero:

``````is_nonzero <- function(x) x != 0
``````

We use this function to detect the first non-zero element in each row via `purrr:detect`

``````first_nonzero <- apply(df %>% dplyr::select(liv:liv5), 1, function(x) {
purrr::detect(x, is_nonzero, .dir = "forward")
})
``````

We finally create the new column:

``````df\$liv6 <- first_nonzero
``````

As a result, we have

``````> df
MD liv liv2 liv3 liv4 liv5 liv6
100   0    6    1    1    0    6
200   0    2    1    0    2    2
300   1    0    1    0    7    1
400   3    4    1    3    9    3
500   4    5    1    5   10    4
``````

Another straightforward solution is:

``````Reduce(function(x, y) ifelse(!x, y, x), df[, -1])
#[1] 6 2 1 3 4
``````

This way should be very efficient, since we "scan" by column, as, presumably, the data have much fewer columns than rows.

The `Reduce` approach is a more functional form of a simple, old-school, loop:

``````ans = df[, 2]
for(j in 3:ncol(df)) {
i = !ans
ans[i] = df[i, j]
}
ans
#[1] 6 2 1 3 4
``````