| import pandas as pd |
| import pickle |
| import numpy as np |
| import torch |
|
|
|
|
| def create_vocab(file,task): |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| condVocab = pickle.load(fp) |
| condVocabDict={} |
| condVocabDict[0]=0 |
| for val in range(len(condVocab)): |
| condVocabDict[condVocab[val]]= val+1 |
|
|
| return condVocabDict |
|
|
| def gender_vocab(): |
| genderVocabDict={} |
| genderVocabDict['<PAD>']=0 |
| genderVocabDict['M']=1 |
| genderVocabDict['F']=2 |
|
|
| return genderVocabDict |
|
|
| def vocab(task,diag_flag,proc_flag,out_flag,chart_flag,med_flag,lab_flag): |
| condVocabDict={} |
| procVocabDict={} |
| medVocabDict={} |
| outVocabDict={} |
| chartVocabDict={} |
| labVocabDict={} |
| ethVocabDict={} |
| ageVocabDict={} |
| genderVocabDict={} |
| insVocabDict={} |
| |
| ethVocabDict=create_vocab('ethVocab',task) |
| with open('./data/dict/'+task+'/ethVocabDict', 'wb') as fp: |
| pickle.dump(ethVocabDict, fp) |
| |
| ageVocabDict=create_vocab('ageVocab',task) |
| with open('./data/dict/'+task+'/ageVocabDict', 'wb') as fp: |
| pickle.dump(ageVocabDict, fp) |
| |
| genderVocabDict=gender_vocab() |
| with open('./data/dict/'+task+'/genderVocabDict', 'wb') as fp: |
| pickle.dump(genderVocabDict, fp) |
| |
| insVocabDict=create_vocab('insVocab',task) |
| with open('./data/dict/'+task+'/insVocabDict', 'wb') as fp: |
| pickle.dump(insVocabDict, fp) |
| |
| if diag_flag: |
| file='condVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| condVocabDict = pickle.load(fp) |
| if proc_flag: |
| file='procVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| procVocabDict = pickle.load(fp) |
| if med_flag: |
| file='medVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| medVocabDict = pickle.load(fp) |
| if out_flag: |
| file='outVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| outVocabDict = pickle.load(fp) |
| if chart_flag: |
| file='chartVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| chartVocabDict = pickle.load(fp) |
| if lab_flag: |
| file='labsVocab' |
| with open ('./data/dict/'+task+'/'+file, 'rb') as fp: |
| labVocabDict = pickle.load(fp) |
| |
| return len(condVocabDict),len(procVocabDict),len(medVocabDict),len(outVocabDict),len(chartVocabDict),len(labVocabDict),ethVocabDict,genderVocabDict,ageVocabDict,insVocabDict |
|
|
| def concat_data(data,task,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab): |
| meds=data['Med'] |
| proc = data['Proc'] |
| out = data['Out'] |
| chart = data['Chart'] |
| cond= data['Cond']['fids'] |
|
|
| cond_df=pd.DataFrame() |
| proc_df=pd.DataFrame() |
| out_df=pd.DataFrame() |
| chart_df=pd.DataFrame() |
| meds_df=pd.DataFrame() |
|
|
| |
| demo=pd.DataFrame(columns=['Age','gender','ethnicity','label','insurance']) |
| new_row = {'Age': data['age'], 'gender': data['gender'], 'ethnicity': data['ethnicity'], 'label': data['label'], 'insurance': data['insurance']} |
| demo = demo.append(new_row, ignore_index=True) |
|
|
| |
| if (feat_cond): |
| |
| with open("./data/dict/"+task+"/condVocab", 'rb') as fp: |
| conDict = pickle.load(fp) |
| conds=pd.DataFrame(conDict,columns=['COND']) |
| features=pd.DataFrame(np.zeros([1,len(conds)]),columns=conds['COND']) |
|
|
| |
| if(cond ==[]): |
| cond_df=pd.DataFrame(np.zeros([1,len(features)]),columns=features['COND']) |
| cond_df=cond_df.fillna(0) |
| else: |
| cond_df=pd.DataFrame(cond,columns=['COND']) |
| cond_df['val']=1 |
| cond_df=(cond_df.drop_duplicates()).pivot(columns='COND',values='val').reset_index(drop=True) |
| cond_df=cond_df.fillna(0) |
| oneh = cond_df.sum().to_frame().T |
| combined_df = pd.concat([features,oneh],ignore_index=True).fillna(0) |
| combined_oneh=combined_df.sum().to_frame().T |
| cond_df=combined_oneh |
|
|
| |
| if (feat_proc): |
| with open("./data/dict/"+task+"/procVocab", 'rb') as fp: |
| procDic = pickle.load(fp) |
|
|
| if proc : |
| feat=proc.keys() |
| proc_val=[proc[key] for key in feat] |
| procedures=pd.DataFrame(procDic,columns=['PROC']) |
| features=pd.DataFrame(np.zeros([1,len(procedures)]),columns=procedures['PROC']) |
| features.columns=pd.MultiIndex.from_product([["PROC"], features.columns]) |
| procs=pd.DataFrame(columns=feat) |
| for p,v in zip(feat,proc_val): |
| procs[p]=v |
| procs.columns=pd.MultiIndex.from_product([["PROC"], procs.columns]) |
| proc_df = pd.concat([features,procs],ignore_index=True).fillna(0) |
| else: |
| procedures=pd.DataFrame(procDic,columns=['PROC']) |
| features=pd.DataFrame(np.zeros([1,len(procedures)]),columns=procedures['PROC']) |
| features.columns=pd.MultiIndex.from_product([["PROC"], features.columns]) |
| proc_df=features.fillna(0) |
|
|
| |
| if (feat_out): |
| with open("./data/dict/"+task+"/outVocab", 'rb') as fp: |
| outDic = pickle.load(fp) |
|
|
| if out : |
| feat=out.keys() |
| out_val=[out[key] for key in feat] |
| outputs=pd.DataFrame(outDic,columns=['OUT']) |
| features=pd.DataFrame(np.zeros([1,len(outputs)]),columns=outputs['OUT']) |
| features.columns=pd.MultiIndex.from_product([["OUT"], features.columns]) |
| outs=pd.DataFrame(columns=feat) |
| for o,v in zip(feat,out_val): |
| outs[o]=v |
| outs.columns=pd.MultiIndex.from_product([["OUT"], outs.columns]) |
| out_df = pd.concat([features,outs],ignore_index=True).fillna(0) |
| else: |
| outputs=pd.DataFrame(outDic,columns=['OUT']) |
| features=pd.DataFrame(np.zeros([1,len(outputs)]),columns=outputs['OUT']) |
| features.columns=pd.MultiIndex.from_product([["OUT"], features.columns]) |
| out_df=features.fillna(0) |
|
|
| |
| if (feat_chart): |
| with open("./data/dict/"+task+"/chartVocab", 'rb') as fp: |
| chartDic = pickle.load(fp) |
|
|
| if chart: |
| charts=chart['val'] |
| feat=charts.keys() |
| chart_val=[charts[key] for key in feat] |
| charts=pd.DataFrame(chartDic,columns=['CHART']) |
| features=pd.DataFrame(np.zeros([1,len(charts)]),columns=charts['CHART']) |
| features.columns=pd.MultiIndex.from_product([["CHART"], features.columns]) |
| |
| chart=pd.DataFrame(columns=feat) |
| for c,v in zip(feat,chart_val): |
| chart[c]=v |
| chart.columns=pd.MultiIndex.from_product([["CHART"], chart.columns]) |
| chart_df = pd.concat([features,chart],ignore_index=True).fillna(0) |
| else: |
| charts=pd.DataFrame(chartDic,columns=['CHART']) |
| features=pd.DataFrame(np.zeros([1,len(charts)]),columns=charts['CHART']) |
| features.columns=pd.MultiIndex.from_product([["CHART"], features.columns]) |
| chart_df=features.fillna(0) |
| |
| |
| if (feat_lab): |
| with open("./data/dict/"+task+"/labsVocab", 'rb') as fp: |
| chartDic = pickle.load(fp) |
|
|
| if chart: |
| charts=chart['val'] |
| feat=charts.keys() |
| chart_val=[charts[key] for key in feat] |
| charts=pd.DataFrame(chartDic,columns=['LAB']) |
| features=pd.DataFrame(np.zeros([1,len(charts)]),columns=charts['LAB']) |
| features.columns=pd.MultiIndex.from_product([["LAB"], features.columns]) |
| |
| chart=pd.DataFrame(columns=feat) |
| for c,v in zip(feat,chart_val): |
| chart[c]=v |
| chart.columns=pd.MultiIndex.from_product([["LAB"], chart.columns]) |
| chart_df = pd.concat([features,chart],ignore_index=True).fillna(0) |
| else: |
| charts=pd.DataFrame(chartDic,columns=['LAB']) |
| features=pd.DataFrame(np.zeros([1,len(charts)]),columns=charts['LAB']) |
| features.columns=pd.MultiIndex.from_product([["LAB"], features.columns]) |
| chart_df=features.fillna(0) |
| |
| |
| if (feat_meds): |
| with open("./data/dict/"+task+"/medVocab", 'rb') as fp: |
| medDic = pickle.load(fp) |
|
|
| if meds: |
| feat=meds['signal'].keys() |
| med_val=[meds['amount'][key] for key in feat] |
| meds=pd.DataFrame(medDic,columns=['MEDS']) |
| features=pd.DataFrame(np.zeros([1,len(meds)]),columns=meds['MEDS']) |
| features.columns=pd.MultiIndex.from_product([["MEDS"], features.columns]) |
| |
| med=pd.DataFrame(columns=feat) |
| for m,v in zip(feat,med_val): |
| med[m]=v |
| med.columns=pd.MultiIndex.from_product([["MEDS"], med.columns]) |
| meds_df = pd.concat([features,med],ignore_index=True).fillna(0) |
| else: |
| meds=pd.DataFrame(medDic,columns=['MEDS']) |
| features=pd.DataFrame(np.zeros([1,len(meds)]),columns=meds['MEDS']) |
| features.columns=pd.MultiIndex.from_product([["MEDS"], features.columns]) |
| meds_df=features.fillna(0) |
|
|
| dyn_df = pd.concat([meds_df,proc_df,out_df,chart_df], axis=1) |
| return dyn_df,cond_df,demo |
|
|
|
|
|
|
| def generate_deep(data,task,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab): |
| stat_df = torch.zeros(size=(1,0)) |
| demo_df = torch.zeros(size=(1,0)) |
| meds = torch.zeros(size=(0,0)) |
| charts = torch.zeros(size=(0,0)) |
| proc = torch.zeros(size=(0,0)) |
| out = torch.zeros(size=(0,0)) |
| lab = torch.zeros(size=(0,0)) |
| stat_df = torch.zeros(size=(1,0)) |
| demo_df = torch.zeros(size=(1,0)) |
| |
| size_cond, size_proc, size_meds, size_out, size_chart, size_lab, eth_vocab,gender_vocab,age_vocab,ins_vocab=vocab(task.replace(" ","_"),feat_cond,feat_proc,feat_out,feat_chart,feat_meds,False) |
| dyn,cond_df,demo=concat_data(data,task.replace(" ","_"),feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab) |
| if feat_chart: |
| charts = dyn['CHART'] |
| charts=charts.to_numpy() |
| charts = torch.tensor(charts, dtype=torch.long) |
| charts = charts.tolist() |
| |
| if feat_meds: |
| meds = dyn['MEDS'] |
| meds=meds.to_numpy() |
| meds = torch.tensor(meds, dtype=torch.long) |
| meds = meds.tolist() |
|
|
| if feat_proc: |
| proc = dyn['PROC'] |
| proc=proc.to_numpy() |
| proc = torch.tensor(proc, dtype=torch.long) |
| proc = proc.tolist() |
|
|
| if feat_out: |
| out = dyn['OUT'] |
| out=out.to_numpy() |
| out = torch.tensor(out, dtype=torch.long) |
| out = out.tolist() |
|
|
| if feat_lab: |
| lab = dyn['LAB'] |
| lab=lab.to_numpy() |
| lab = torch.tensor(lab, dtype=torch.long) |
| lab = lab.tolist() |
| |
| stat=cond_df |
| stat = stat.to_numpy() |
| stat = torch.tensor(stat) |
| if stat_df[0].nelement(): |
| stat_df = torch.cat((stat_df,stat),0) |
| else: |
| stat_df = stat |
|
|
| y = int(demo['label']) |
| demo["gender"].replace(gender_vocab, inplace=True) |
| demo["ethnicity"].replace(eth_vocab, inplace=True) |
| demo["insurance"].replace(ins_vocab, inplace=True) |
| demo["Age"].replace(age_vocab, inplace=True) |
| demo=demo[["gender","ethnicity","insurance","Age"]] |
| demo = demo.values |
| demo = torch.tensor(demo) |
| if demo_df[0].nelement(): |
| demo_df = torch.cat((demo_df,demo),0) |
| else: |
| demo_df = demo |
| stat_df = torch.tensor(stat_df) |
| stat_df = stat_df.type(torch.LongTensor) |
| stat_df = stat_df.squeeze() |
| demo_df = torch.tensor(demo_df) |
| demo_df = demo_df.type(torch.LongTensor) |
| demo_df=demo_df.squeeze() |
| y_df = torch.tensor(y) |
| y_df = y_df.type(torch.LongTensor) |
|
|
| return stat_df, demo_df, meds, charts, out, proc, lab, y |
|
|
|
|
| def generate_ml(dyn,stat,demo,concat_cols,concat): |
| X_df=pd.DataFrame() |
| if concat: |
| dyna=dyn.copy() |
| dyna.columns=dyna.columns.droplevel(0) |
| dyna=dyna.to_numpy() |
| dyna=np.nan_to_num(dyna, copy=False) |
| dyna=dyna.reshape(1,-1) |
| dyn_df=pd.DataFrame(data=dyna,columns=concat_cols) |
| else: |
| dyn_df=pd.DataFrame() |
| for key in dyn.columns.levels[0]: |
| dyn_temp=dyn[key] |
| if ((key=="CHART") or (key=="MEDS")): |
| agg=dyn_temp.aggregate("mean") |
| agg=agg.reset_index() |
| else: |
| agg=dyn_temp.aggregate("max") |
| agg=agg.reset_index() |
|
|
| if dyn_df.empty: |
| dyn_df=agg |
| else: |
| dyn_df=pd.concat([dyn_df,agg],axis=0) |
| dyn_df=dyn_df.T |
| dyn_df.columns = dyn_df.iloc[0] |
| dyn_df=dyn_df.iloc[1:,:] |
| |
| X_df=pd.concat([dyn_df,stat],axis=1) |
| X_df=pd.concat([X_df,demo],axis=1) |
| return X_df |