I am trying to extract some matches using regular expression in Python.

Here is an example of a list I have

x = ['PF13833.6', 'EF-hand_8', 'EF-hand domain pair', '34-72', 'E:1.6e-05`PF00036.32', 'EF-hand_1', 'EF hand', '48-73', 'E:1.6e-06`PF13202.6', 'EF-hand_5', 'EF hand', '49-71', 'E:0.004`PF13499.6', 'EF-hand_7', 'EF-hand domain pair', '86-148', 'E:9.6e-16`PF13405.6', 'EF-hand_6', 'EF-hand domain', '87-115', 'E:1.9e-06`PF13833.6', 'EF-hand_8', 'EF-hand domain pair', '100-148', 'E:5.2e-11`PF00036.32', 'EF-hand_1', 'EF hand', '123-149', 'E:5.5e-08`PF13202.6', 'EF-hand_5', 'EF hand', '129-148', 'E:0.00047']

And here is the regular expression I tried which worked to extract the PF id's

re.findall(r'PF\d+\.\d+', str(x), re.MULTILINE|re.IGNORECASE)
['PF13833.6', 'PF00036.32', 'PF13202.6', 'PF13499.6', 'PF13405.6', 'PF13833.6', 'PF00036.32', 'PF13202.6']

But I want to extract the next word after the match. For example

['PF13833.6', 'EF-hand_8', 'PF00036.32', ''EF-hand_1'' and son on..]

How can I modify my pattern to achieve the requisite output?


You can use regular expressions and Boolean indexing with Pandas:

import pandas as pd

# put your data in a Pandas Series
x = pd.Series(['PF13833.6', 'EF-hand_8', 'EF-hand domain pair', '34-72', 'E:1.6e-05`PF00036.32', 
               'EF-hand_1', 'EF hand', '48-73', 'E:1.6e-06`PF13202.6', 'EF-hand_5', 'EF hand', 
               '49-71', 'E:0.004`PF13499.6', 'EF-hand_7', 'EF-hand domain pair', '86-148', 
               'E:9.6e-16`PF13405.6', 'EF-hand_6', 'EF-hand domain', '87-115', 
               'E:1.9e-06`PF13833.6', 'EF-hand_8', 'EF-hand domain pair', '100-148', 
               'E:5.2e-11`PF00036.32', 'EF-hand_1', 'EF hand', '123-149', 'E:5.5e-08`PF13202.6', 
               'EF-hand_5', 'EF hand', '129-148', 'E:0.00047'])

# your regular expression for the PF ids 
PF_re = r'PF\d+\.\d+'

# find the PF ids
PF_ids = x.str.findall(PF_re)
# get rid of the lists in the result
PF_ids = PF_ids.str[0]

# create a Boolean Series to use as an index for those elements of x that contain a PF id
PF_index = x.str.contains(PF_re)
# shift this index to get an index for the next words
next_index = PF_index.shift()
# replace the resulting missing value in the first entry
next_index[0] = False

# put the results in a DataFrame and show them
results = pd.DataFrame({'PF id': list(PF_ids[PF_index]), 
                        'next word': list(x[next_index])})


    PF id       next word
0   PF13833.6   EF-hand_8
1   PF00036.32  EF-hand_1
2   PF13202.6   EF-hand_5
3   PF13499.6   EF-hand_7
4   PF13405.6   EF-hand_6
5   PF13833.6   EF-hand_8
6   PF00036.32  EF-hand_1
7   PF13202.6   EF-hand_5

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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