1

I have a dataset:

Camp1    Ade2    Camp3    Ade4    
   dA       1       eB       2
   dB       4       uC       8
   gB       3       NA      NA

How do I subset this dataset where if a column name that has "Camp" in the name does not contain values "A" or "B" or NA, exclude those rows.

I know how do it for exact matches but not partial.

cols = grepl("Camp", names(df))
rows = rowSums(df[, cols] == "A" | 
df[, cols] == "B" |
is.na(df[, cols])) == sum(cols)
df<-df[rows, ]

How do I do the equivalent but with partial matches?

Expected Output:

Camp1    Ade2    Camp3    Ade4    
   dA       1       eB       2
   gB       3       NA      NA
5
  • Can you show the expected output?
    – markus
    Feb 11, 2019 at 19:30
  • sorry about that @markus, is this more clear?
    – nak5120
    Feb 11, 2019 at 19:32
  • But the second row contains a "B" in column Camp1
    – markus
    Feb 11, 2019 at 19:34
  • right but 2nd row for Camp3 does not contain A, B, or NA. Therefore that row needs to be excluded
    – nak5120
    Feb 11, 2019 at 19:36
  • 1
    Got it. Thanks for the clarification.
    – markus
    Feb 11, 2019 at 19:36

3 Answers 3

2

We can use filter_at from dplyr. Using the starts_with helper function, we apply the filter to every column that starts with 'Camp'. On those columns, we filter on rows where all_vars contain A or B or NA:

library(dplyr)

df %>%
  filter_at(vars(starts_with("Camp")), all_vars(grepl('A|B', .) | is.na(.)))

Output:

  Camp1 Ade2 Camp3 Ade4
1    dA    1    eB    2
2    gB    3  <NA>   NA

Data:

df <- structure(list(Camp1 = structure(1:3, .Label = c("dA", "dB", 
"gB"), class = "factor"), Ade2 = c(1L, 4L, 3L), Camp3 = structure(c(1L, 
2L, NA), .Label = c("eB", "uC"), class = "factor"), Ade4 = c(2L, 
8L, NA)), class = "data.frame", row.names = c(NA, -3L))
1

With base R you can try:

df_cols <- df[, grepl("Camp", names(df))]
df[apply(df_cols, 1, function(x) all(grepl("A|B", x) | is.na(x))), ]

  Camp1 Ade2 Camp3 Ade4
1    dA    1    eB    2
3    gB    3  <NA>   NA

In the first step it identifies the columns that contains "Camp" in their name and then subset the data based on the given condition.

1
  • all answers were great, this one gave the most flexible for my specific dataset. Appreciate the help!
    – nak5120
    Feb 11, 2019 at 22:53
1

Here is a tidyverse-style solution.

Using filter_at:

my_df %>%
    filter_at(vars(matches('Camp')), all_vars(is.na(.) | str_detect(., 'A|B')))

Here, vars(matches('Camp')) says to filter columns whose names contain the string Camp, and the all_vars(...) says to keep only the rows where all columns [that match 'Camp'] meet the specified criteria.

You will need to do require(tidyverse) and require(stringr) for this to work.

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