I have a data frame with `n`

rows and `m`

columns where `m > 30`

.

My first column is an `age`

variable and the rest are medical conditions that are either on or off (binary).

Now I would like to compute the number of observations where none of the medical conditions is switched on i.e. the number of healthy patients. I thought I could use the `rowSums`

function to count observations wherever the row sum is zero (of course excluding the age variable) but I tried some functions and did not succeed.

Here is an example how it could work but always involving a lot of AND / OR statements which is not practical. I was looking for a non-loop solution.

```
example <- as.data.frame(matrix(data=c(40,1,1,1,36,1,0,1,56,0,0,1,43,0,0,0), nrow=4, ncol=4,
byrow=T, dimnames <- list(c("row1","row2","row3", "row4"),c("Age","x","y","z"))))
```

Two impractical alternatives to arrive at desired outcome:

```
nrow(subset(example, x==0 & y==0 & z==0))
table(example$x==0 & example$y==0 & example$z==0)
```

What I actually wanted is sth like this:

```
nrow(example[rowSums(example[,2:ncol(example)])==0])
```

`rowSums`

is fine for this:`rowSums(example[, -1])`

gives the number of "medical conditions" per row, and`sum(rowSums(example[, -1])==0)`

gives the number of rows where all medical conditions are`0`

. Use`na.rm=TRUE`

within`rowSums`

if there might be NA values in some cells. – jbaums Apr 11 '14 at 9:32`nrow(example[rowSums(example[, 2:ncol(example)])==0])`

, you could try (1)`example[, 2:ncol(example)]`

, (2)`rowSums(example[, 2:ncol(example)])`

, (3)`rowSums(example[,2:ncol(example)])==0`

, (4)`example[rowSums(example[,2:ncol(example)])==0]`

and finally (5)`nrow(example[rowSums(example[,2:ncol(example)])==0])`

. You would discover that step 4 returns a 4-row data frame, and you're only interested in those rows for which the value is 1.`nrow`

is insufficient. – jbaums Apr 11 '14 at 9:39