# Delete columns/rows with more than x% missing

I want to delete all columns or rows with more than 50% `NA`s in a data frame.

This is my solution:

``````# delete columns with more than 50% missings
miss <- c()
for(i in 1:ncol(data)) {
if(length(which(is.na(data[,i]))) > 0.5*nrow(data)) miss <- append(miss,i)
}
data2 <- data[,-miss]

# delete rows with more than 50% percent missing
miss2 <- c()
for(i in 1:nrow(data)) {
if(length(which(is.na(data[i,]))) > 0.5*ncol(data)) miss2 <- append(miss2,i)
}
data <- data[-miss,]
``````

but I'm looking for a nicer/faster solution.

I would also appreciate a `dplyr` solution

• @Ricky I added my row solution, which is pretty much the same Aug 6, 2015 at 6:30
• To confirm my understanding for the additional row solution: So if row X initially has more than 50% NA, but after column 3 is removed than column X has fewer than 50% NA, row X should not be removed? Aug 6, 2015 at 6:31

To remove columns with some amount of NA, you can use `colMeans(is.na(...))`

``````## Some sample data
set.seed(0)
dat <- matrix(1:100, 10, 10)
dat[sample(1:100, 50)] <- NA
dat <- data.frame(dat)

## Remove columns with more than 50% NA
dat[, which(colMeans(!is.na(dat)) > 0.5)]

## Remove rows with more than 50% NA
dat[which(rowMeans(!is.na(dat)) > 0.5), ]

## Remove columns and rows with more than 50% NA
dat[which(rowMeans(!is.na(dat)) > 0.5), which(colMeans(!is.na(dat)) > 0.5)]
``````
• so it's `dat[-which(rowMeans(is.na(dat)) > 0.5), ]` for rows. thanks! Aug 6, 2015 at 6:41
• @spore234 HTH @PierreLafortune after a quick test it seems to be about 3x as fast as an equivalent `sapply` solution Aug 6, 2015 at 6:54

A `tidyverse` solution that removes columns with an x% of `NA`s(50%) here:

``````test_data <- data.frame(A=c(rep(NA,12),
520,233,522),
B = c(rep(10,12),
520,233,522))
# Remove all with %NA >= 50
# can just use >50

test_data %>%
``````

Result:

``````     B
1   10
2   10
3   10
4   10
5   10
6   10
7   10
8   10
9   10
10  10
11  10
12  10
13 520
14 233
15 522
``````
• Would it be possible to use this method to drop any group in a grouped data.frame with more than 50% missing values for one column? Feb 26, 2021 at 17:41
• Without actual data, it's hard to test but you can do something like: `df %>% group_by(grouping_col) %>% filter(!mean(is.na(target_column)) >= 0.5)`. Do you want to drop all columns or a single column based on grouping? The latter might be less obvious. Feb 27, 2021 at 6:40

A dplyr solution

For `select`ing columns based on a logical condition, we can use the selection helper `where()`, as in:

``````library(dplyr)

threshold <- 0.5 #for a 50% cut-off

df %>% select(where(~mean(is.na(.)) < threshold))
``````

For `filter`ing rows, `dplyr`s `if_any()` and `if_all()` will handle cases of 100 or 0% cutoffs, as in `df %>% filter(if_any(everything(), ~is.na(.x)))`. For solutions with other threshold values, you can use `rowMeans`:

``````library(dplyr)

df %>% filter(rowMeans(is.na(.)) < threshold)
``````

Here is another tips ro filter df which has 50 NaNs in columns:

``````## Remove columns with more than 50% NA
rawdf.prep1 <- rawdf[, sapply(rawdf, function(x) sum(is.na(x)))/nrow(rawdf)*100 <= 50]
``````

This will result a df with only NaN in columns not greater to 50%.

Suppose we need to keep the sample data `NHANES` and columns with missing values less than or equal to 3%:

``````library(NHANES)
library(naniar)
library(dplyr)

select_cols <- naniar::miss_var_summary(NHANES) %>%
filter(pct_miss <= 3) %>%
pull(variable)
names.use <- names(NHANES)[(names(NHANES) %in% select_cols)]
NHANES %>%
select(c(names.use))
# NHANES[, c(names.use)]
``````

Out: 