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I have a dataset of genes and drugs all in 1 column, looks like this:

Molecules
3-nitrotyrosine
4-phenylbutyric acid
5-fluorouracil/leucovorin/oxaliplatin
5-hydroxytryptamine
ABCB4
ABCC8
ABCC9
ABCF2
ABHD4

The disperasal of genes and drugs in the column is random, so there is no precise partitioning I can do. I am looking to remove the genes and put them into a new column, I am wondering if I can use isupper() to select the genes and move them into a new column, although I know this only works with strings. Is there some way to select the rows with uppercase letters to put into a new column? Any guidance would be appreciated.

Expected Output:
  Column 1                                Column 2
3-nitrotyrosine                           ABCB4
4-phenylbutyric acid                      ABCC8
5-fluorouracil/leucovorin/oxaliplatin     ABCC9
5-hydroxytryptamine                       ABCF2
  • 3
    Show expected output – Alderven Feb 12 at 16:01
  • You want to separate these into 'columns' what tabular structure are you using? How are 3-nitrotyrosine and ABCB4 related? – Alex Feb 12 at 16:13
  • How are the rows supposed to match up? Getting the uppercase words is simple but the logic of the rows being matched is unclear. – Idlehands Feb 12 at 16:23
  • What library are you using for the "dataset"? Please add a tag for it to your question. – martineau Feb 12 at 16:38
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Read your file in to a list:

with open('test.txt', 'r') as f:
    lines = [line.strip() for line in f]

Strip out all uppercase as so:

mols = [x for x in lines if x.upper() != x]
genes = [x for x in lines if x.upper() == x]

Result:

mols
['3-nitrotyrosine', '4-phenylbutyric acid', 
 '5-fluorouracil/leucovorin/oxaliplatin', '5-hydroxytryptamine']
genes
['ABCB4', 'ABCC8', 'ABCC9', 'ABCF2', 'ABHD4']
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As mentioned, separating the upper case is simple:

df.loc[df['Molecules'].str.isupper()]

  Molecules
5     ABCB4
6     ABCC8
7     ABCC9
8     ABCF2
9     ABHD4

df.loc[df['Molecules'].str.isupper() == False]

                               Molecules
0                        3-nitrotyrosine
1                        4-phenylbutyric
2                                   acid
3  5-fluorouracil/leucovorin/oxaliplatin
4                    5-hydroxytryptamine

However how you want to match up the rows are unclear until you are able to provide additional details.

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