I would like to average values across some rows and columns conditional on values in other columns using pandas. The dataframe contains the following information:

- columns indicating accuracy (abbreviated 'acc')
- 0 = no response
- 1 = incorrect
- 2 = correct

- columns indicating reaction times (abbreviated 'rt')

Here is an excerpt of the information in the dataframe:

```
a1_acc a1_rt a2_acc a2_rt a3_acc a3_rt b_acc b_rt
2 780 2 830 2 690 2 950
1 630 2 750 0 0 2 890
2 710 2 810 1 740 1 820
```

What I would like to do is to combine all 'a' (but not 'b') reaction times if they are from correct responses. That is, I would like a numpy array (or other suitable data structure) containing the following reaction times:

```
780, 830, 690, 750, 710, 810
```

Based on this information, I would then like to compute mean reaction times (after rejecting reaction times deviating more than 3 standard deviations from the mean).

Any help would be very much appreciated.

Thomas