You need `mask`

:

```
sample['PR'] = sample['PR'].mask(sample['PR'] < 90, np.nan)
```

Another solution with `loc`

and `boolean indexing`

:

```
sample.loc[sample['PR'] < 90, 'PR'] = np.nan
```

Sample:

```
import pandas as pd
import numpy as np
sample = pd.DataFrame({'PR':[10,100,40] })
print (sample)
PR
0 10
1 100
2 40
sample['PR'] = sample['PR'].mask(sample['PR'] < 90, np.nan)
print (sample)
PR
0 NaN
1 100.0
2 NaN
```

```
sample.loc[sample['PR'] < 90, 'PR'] = np.nan
print (sample)
PR
0 NaN
1 100.0
2 NaN
```

EDIT:

Solution with `apply`

:

```
sample['PR'] = sample['PR'].apply(lambda x: np.nan if x < 90 else x)
```

**Timings** `len(df)=300k`

:

```
sample = pd.concat([sample]*100000).reset_index(drop=True)
In [853]: %timeit sample['PR'].apply(lambda x: np.nan if x < 90 else x)
10 loops, best of 3: 102 ms per loop
In [854]: %timeit sample['PR'].mask(sample['PR'] < 90, np.nan)
The slowest run took 4.28 times longer than the fastest. This could mean that an intermediate result is being cached.
100 loops, best of 3: 3.71 ms per loop
```

`apply`

is not needed at all. Please use vectorized operations instead. See here and here for more info.