I have a pandas dataframe with hundreds of columns of antibiotic names. Each specific antibiotic is coded in the dataframe as ending in E, T, or P to indicate empirical, treatment, or prophylactic regimens.

An example excerpt from the column list is:

['MeropenemP', 'MeropenemE', 'MeropenemT', DoripenemP', 'DoripenemE', 'DoripenemT', ImipenemP', 'ImipenemE', 'ImipenemT', 'BiapenemP', 'BiapenemE', 'BiapenemT', 'PanipenemP', 'PanipenemE', 'PanipenemT','PipTazP', 'PipTazE', 'PipTazT','PiperacillinP', 'PiperacillinE', 'PiperacillinT']

A small sample of data is located here:

Sample antibiotic data

It is simple enough for me to separate out columns any type into separate dataframes with a regex, e.g. to select all the empirically prescribed antibiotics columns I use:

E_cols = master.filter(axis=1, regex=('[a-z]+E$'))

Each column has a binary value (0,1) for prescription of each antibiotic regimen type per person (row).

Question: How would I go about summing the rows of all columns (1's) for each type of regimen type and generating a new column for each result in the dataframe e.g. total_emperical, total_prophylactic, total_treatment.

The reason I want to add to the existing dataframe is that I wish to filter on other values for each regimen type.

  • 1
    You should be able to just do df['total_emperical'] = df[E_cols].sum() and repeat for the other types
    – EdChum
    Commented Jul 9, 2014 at 10:01
  • thanks @EdChum - I edited my question for clarity. I want to sum the rows for each regimen type and put them in a new column.
    – John
    Commented Jul 9, 2014 at 10:11
  • 1
    If you pass param axis=1 to sum it will will sum row-wise
    – EdChum
    Commented Jul 9, 2014 at 10:12
  • @EdChum sometimes the solution seems so easy it makes me want to kick myself for not thinking just a little harder.
    – John
    Commented Jul 9, 2014 at 10:15

1 Answer 1


Once you've generated the list of columns that match your reg exp then you can just create the new total columns like so:

df['total_emperical'] = df[E_cols].sum(axis=1)

and repeat for the other totals.

Passing axis=1 to sum will sum row-wise

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.