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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])
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2  
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 at 9:32
    
I knew it was trivial. Did not think about the sum of rowSums. Thanks a lot! –  Triam Apr 11 at 9:36
    
By the way, if nested code isn't working as you'd expect, try evaluating it bit by bit, from the inside out. For example, for your 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 at 9:39
    
Thanks for that! I still have to get used to breaking down my thoughts for debugging. –  Triam Apr 11 at 9:57

2 Answers 2

up vote 2 down vote accepted

You can use

apply(example[, -1], MARGIN = 1, FUN = function(x) all(x == 0))
##  row1  row2  row3  row4 
## FALSE FALSE FALSE  TRUE 

Here you are applying FUN on every row of the example[,-1]. It gives you logical vector indicating which rows satisfy the condition that all of the variables in that row are equal to 0. You get this by using all function inside your FUN argument function.

You can use this result to get rows containing all healthy patients or those containing atleast 1 non healthy patient.

example[apply(example[, -1], MARGIN = 1, FUN = function(x) all(x == 0)), ]
##      Age x y z
## row4  43 0 0 0

example[!apply(example[, -1], MARGIN = 1, FUN = function(x) all(x == 0)), ]
##      Age x y z
## row1  40 1 1 1
## row2  36 1 0 1
## row3  56 0 0 1

And you can get number of healthy rows or otherwise as below

# healthy rows
sum(apply(example[, -1], MARGIN = 1, FUN = function(x) all(x == 0)))
## [1] 1


# rows with atleast one unhealthy condition
sum(!apply(example[, -1], MARGIN = 1, FUN = function(x) all(x == 0)))
## [1] 3
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Note that this is much slower than rowSums for large matrices. For a 100000 x 10 matrix, microbenchmark suggests 286 ms versus 3 ms. –  jbaums Apr 11 at 9:43
1  
@jbaums : I agree it might be slower, my intention is to provide more generic solution for the problem. –  Chinmay Patil Apr 11 at 9:46
    
Point taken, and +1 for the clear and detailed answer. –  jbaums Apr 11 at 9:48
    
Wow, that is powerful. Although kind of looping through every row I like the flexibility of it. Of course will be much slower in my data frame :-) –  Triam Apr 11 at 9:55

You just want the total numbers of observations/rows that satisfy this condition right? Then you can use -

nrow(example[example$x==0 & example$y==0 & example$z==0,])

Else, if you want to use rowSums, this will work -

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