0

I have df: while disease is binary column ( 0 or 1)

diagnosis_date    id  disease
2013-05-03         1     0
2013-05-08         1     0
2013-06-08         1     1
2013-01-01         2     0 
.....

and I have range of dates- 2013-01-01 until 2013-12-31:

date_index=pd.date_range(start='1/1/2013', end='31/12/2013')
dates=pd.DataFrame(date_index,columns=['date'])

I want for each id in df, to set the date range as date_index, and if the date is the same as diagnosis date, to set the value like it in the disease column, otherwise the value will be set to zero. the desire df:

date    id    disease
01-01    1       0
02-01     1      0
03-01     1      0
...
05-03     1      0
05-04     1      0
...
06-08    1      1
 ....
12-31     1      0
01-01     2      1
01-02     2      0 
...  

Thanks

5
  • date 05-03 has disease as 0 in original df and 1 in desired df? Is that expected? Jul 21 at 1:15
  • my bad, I fix it
    – nay
    Jul 21 at 1:25
  • how many different id do you have?
    – Ben.T
    Jul 21 at 1:27
  • Do you want to match on ID and date or just date between the dfs and populate disease? Jul 21 at 1:38
  • I have 74 different id. I want to match according to id and date. for each id first set all the dates range (all days in 2013), and when the date meet 'diagnosis_date', set the value according to the 'disease' column in df
    – nay
    Jul 21 at 1:41
1

Try this..

df = pd.read_clipboard() #read in your dataframe from clipboard

dfp = df.pivot('diagnosis_date', 'id', 'disease') #reshape dataframe
dfp.index = pd.to_datetime(dfp.index) #cast index to datetime

dfp.reindex(pd.date_range('1/1/2013','12/31/2013'))\  #add rows with reindex and pd.date_range
   .rename_axis('date').fillna(0)\  #fill with zeroes
   .stack().rename('disease')\  #Reshape back to original shape
   .reset_index()\
   .sort_values(['id', 'date'])  #and sort

Output:

          date  id  disease
0   2013-01-01   1      0.0
2   2013-01-02   1      0.0
4   2013-01-03   1      0.0
6   2013-01-04   1      0.0
8   2013-01-05   1      0.0
..         ...  ..      ...
721 2013-12-27   2      0.0
723 2013-12-28   2      0.0
725 2013-12-29   2      0.0
727 2013-12-30   2      0.0
729 2013-12-31   2      0.0
2
  • 1
    Yeah... but, I wanted to fill those existing NaN with zeroes too. Hence, I used fillna after the reindex to catch all NaNs. Jul 21 at 2:21
  • right because other Nan comes from the pivot, my bad
    – Ben.T
    Jul 21 at 2:22
0

Here you go:

date_index=pd.date_range(start='1/1/2013', end='31/12/2013')
dates = pd.DataFrame()
for i in df.id.unique():
    dates=pd.concat([dates,pd.DataFrame({'date':date_index, 'id' : np.full(len(date_index),i)})])
df.diagnosis_date = pd.to_datetime(df['diagnosis_date'])
df1 = pd.merge(dates,df, left_on=['id','date'], right_on=['id','diagnosis_date'], how='left')[['date','id','disease']].fillna(0)
df1['disease'] = df1.disease.astype(int)

Tested and prints correctly.

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