| import pandas as pd |
| from utils.common import read_data |
|
|
|
|
| steroid_codes = ['0603020T0AAACAC', '0603020T0AABKBK', '0603020T0AAAXAX', |
| '0603020T0AAAGAG', '0603020T0AABHBH', '0603020T0AAACAC', |
| '0603020T0AABKBK', '0603020T0AABNBN', '0603020T0AAAGAG', |
| '0603020T0AABHBH'] |
|
|
| antib_codes = ['0501013B0AAAAAA', '0501013B0AAABAB', '0501030I0AAABAB', |
| '0501030I0AAAAAA', '0501050B0AAAAAA', '0501050B0AAADAD', |
| '0501013K0AAAJAJ'] |
|
|
| exac_meds = steroid_codes + antib_codes |
|
|
|
|
| def initialize_presc_data(presc_file): |
| """ |
| Load in prescribing dataset to correct format |
| -------- |
| :param presc_file: prescribing data file name |
| :return: prescribing dataframe with correct column names and types |
| """ |
| print('Loading prescribing data') |
|
|
| |
| presc_cols = ['SafeHavenID', 'PRESC_DATE', 'PI_Approved_Name', |
| 'PI_BNF_Item_Code'] |
| presc_types = ['int', 'object', 'str', 'str'] |
| df = read_data(presc_file, presc_cols, presc_types) |
|
|
| |
| df = df.dropna() |
| df = df.drop_duplicates() |
| |
| |
| df['PRESC_DATE'] = pd.to_datetime(df.PRESC_DATE) |
|
|
| return df |
|
|
|
|
| def track_medication(df): |
| """ |
| Track salbutamol and rescue med prescriptions |
| https://openprescribing.net/bnf/ |
| -------- |
| :param df: dataframe |
| :return: dataframe with tracked meds |
| """ |
| print('Tracking medication') |
|
|
| |
| df['code'] = df.PI_BNF_Item_Code.apply(lambda x: x[0:9]) |
|
|
| |
| df['SALBUTAMOL'] = (df.code == '0301011R0').astype(int) |
|
|
| |
| df['rescue_meds'] = df.PI_BNF_Item_Code.str.contains( |
| '|'.join(exac_meds)).astype(int) |
|
|
| |
| ad_bnf = ('040102', '0403', '0204000R0', '0408010AE') |
| ad_events = df.PI_BNF_Item_Code.str.startswith(ad_bnf).fillna(False) |
| drop_dummy = (df.PI_Approved_Name != 'DUMMY') & (df.PI_Approved_Name != 'DUMMY REJECTED') |
| df['anxiety_depression_presc'] = (drop_dummy & ad_events).astype(int) |
|
|
| return df |