I have a pandas data frame with a list of organism names and their antibiotic sensitivities. I wish to consolidate all organisms into one column, in the DataFrame below, based on the following rules.

If ORG1 == A, do nothing;

If ORG1 != A and ORG2 == A, move ORG2 values into ORG1 column

If ORG1 != A and ORG3 == A, move ORG3 values into ORG1 column

If condition 2 is met, as well as moving ORG2 value to ORG1 column, also move column values in AS20* into AS10*.

Similarly, if condition 3 is met, as well as moving ORG3 value to ORG1 column, also move column values in AS30* into AS10*.

I tried this myself by writing a function based on the rules above and had limited success based on the following:

```
If ORG2 == A:
return ORG1.map(ORG2)
```

I got lost when I tried to sequentially map AS201 -> AS101, AS202 -> AS102, AS203 -> AS103 etc. based on the condition.

The other issue I have is that the organism names are not single letters, neither are the pretty. A in the example is equivalent to `re.match('aureus')`

in my dataset.

Also, there are 20 AS columns for every ORG column and in excess of 150,000 records so I hope to make it generalizable for any number of antibiotic sensitivity results.

I am struggling a bit with it so a couple of shoves in the right direction would really help.

Thanks in advance.

Index ORG1 ORG2 ORG3 AB1 AS101 AS201 AS301 AB2 AS102 AS202 AS302 1 A NaN NaN pen S NaN NaN dfluc S NaN NaN 2 A B C pen R S S dfluc S R S 3 B A B pen S S R dfluc S S R 4 A NaN NaN pen R NaN NaN dfluc S NaN NaN 5 A NaN NaN pen R NaN NaN dfluc S NaN NaN 6 C A A pen S R R dfluc R S R 7 B NaN A pen R NaN S dfluc S NaN S 8 A B A pen R R R dfluc R R R 9 A NaN NaN pen R NaN NaN dfluc S NaN NaN