I'm trying to select from a DataFrame with multi boolean criteria keeping the original size of DataFrame.

Suppose that i have the follwing DataFrame :

```
>>> import pandas as pd
>>> from random import randint
>>> df = pd.DataFrame({'A': [randint(1, 9) for x in xrange(10)],
'B': [randint(1, 9)*10 for x in xrange(10)],
'C': [randint(1, 9)*100 for x in xrange(10)]})
>>> df
A B C
0 3 40 100
1 6 30 200
2 7 70 800
3 3 50 200
4 7 50 400
5 4 10 400
6 3 70 500
7 8 30 200
8 3 40 800
9 6 60 200
```

I want to select the values where 10 < B < 70 and C = 200 without changing the DataFrame size. I've tried the query function:

```
df.query('10 < B < 70 and C == 200')
```

and I'm getting this:

```
A B C
1 6 30 200
3 3 50 200
7 8 30 200
9 6 60 200
```

but I want this:

```
A B C
0 3 40 NaN
1 6 30 200
2 7 NaN NaN
3 3 50 200
4 7 50 NaN
5 4 NaN NaN
6 3 NaN NaN
7 8 30 200
8 3 40 NaN
9 6 60 200
```

I'm aware of df.where function but apparently it's not possible to apply for columns, it works just for all DataFrame.

Thanks in advance.