# COUNTIF in pandas python over multiple columns with multiple conditions

I have a dataset wherein I am trying to determine the number of risk factors per person. So I have the following data:

``````Person_ID  Age  Smoker  Diabetes
001   30       Y         N
002   45       N         N
003   27       N         Y
004   18       Y         Y
005   55       Y         Y
``````

Each attribute (Age, Smoker, Diabetes) has its own condition to determine whether it is a risk factor. So if Age >= 45, it's a risk factor. Smoker and Diabetes are risk factors if they are "Y". What I would like is to add a column that adds up the number of risk factors for each person based on those conditions. So the data would look like this:

``````Person_ID  Age  Smoker  Diabetes  Risk_Factors
001   30       Y         N             1
002   25       N         N             0
003   27       N         Y             1
004   18       Y         Y             2
005   55       Y         Y             3
``````

I have a sample dataset that I was fooling around with in Excel, and the way I did it there was to use the COUNTIF formula like so:

`=COUNTIF(B2,">45") + COUNTIF(C2,"=Y") + COUNTIF(D2,"=Y")`

However, the actual dataset that I will be using is way too large for Excel, so I'm learning pandas for python. I wish I could provide examples of what I've already tried, but frankly I don't even know where to start. I looked at this question, but it doesn't really address what to do about applying it to an entire new column using different conditions from multiple columns. Any suggestions?

If you want to stick with pandas. You can use the following...

## Solution

``````isY = lambda x:int(x=='Y')
countRiskFactors = lambda row: isY(row['Smoker']) + isY(row['Diabetes']) + int(row["Age"]>45)

df['Risk_Factors'] = df.apply(countRiskFactors,axis=1)
``````

How it works

isY - is a stored lambda function that checks if the value of a cell is Y returns 1 if it is otherwise 0 countRiskFactors - adds up the risk factors

the final line uses the apply method, with the paramater key set to 1, which applies the method -first parameter - row wise along the DataFrame and Returns a Series which is appended to the DataFrame.

output of print df

``````   Person_ID  Age Smoker Diabetes  Risk_Factors
0          1   30      Y        N             1
1          2   45      N        N             0
2          3   27      N        Y             1
3          4   18      Y        Y             2
4          5   55      Y        Y             3
``````
• Shouldn't risk_factors on person 5 be 3? – exp1orer Jul 17 '14 at 20:18
• In general, you missed condition 1, which is that age>45 – exp1orer Jul 17 '14 at 20:18
• Edited to include risk factor age>45 – ZJS Jul 17 '14 at 20:29

I would do this the following way.

1. For each column, create a new boolean series using the column's condition

(Note that this is simpler if your Smoker and Diabetes column is already boolean (True/False) instead of in strings.)

It might look like this:

``````df = pd.DataFrame({'Age': [30,45,27,18,55],
'Smoker':['Y','N','N','Y','Y'],
'Diabetes': ['N','N','Y','Y','Y']})

Age Diabetes Smoker
0   30        N      Y
1   45        N      N
2   27        Y      N
3   18        Y      Y
4   55        Y      Y

#Step 1
risk1 = df.Age > 45
risk2 = df.Smoker == "Y"
risk3 = df.Diabetes == "Y"
risk_df = pd.concat([risk1,risk2,risk3],axis=1)

Age Smoker Diabetes
0  False   True    False
1  False  False    False
2  False  False     True
3  False   True     True
4   True   True     True

df['Risk_Factors'] = risk_df.sum(axis=1)

Age Diabetes Smoker  Risk_Factors
0   30        N      Y             1
1   45        N      N             0
2   27        Y      N             1
3   18        Y      Y             2
4   55        Y      Y             3
``````

If you are starting from excel and want to go to the next evolution then I would recommend MS access. It will be a lot easier then learning Panda for python. You should just replace the CountIf() with:

Risk Factor: IIF(Age>45, 1, 0) + IIF(Smoker="Y", 1, 0) + IIF(Diabetes="Y", 1, 0)

• Looks like this works but if OP wants to use pandas... – exp1orer Jul 17 '14 at 20:19