thbndi commited on
Commit
d529b42
1 Parent(s): 809e7f8

Update dataset_utils.py

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Files changed (1) hide show
  1. dataset_utils.py +4 -37
dataset_utils.py CHANGED
@@ -75,39 +75,8 @@ def vocab(task,diag_flag,proc_flag,out_flag,chart_flag,med_flag,lab_flag):
75
  with open ('./data/dict/'+task+'/'+file, 'rb') as fp:
76
  labVocabDict = pickle.load(fp)
77
 
78
- return len(condVocabDict),len(procVocabDict),len(medVocabDict),len(outVocabDict),len(chartVocabDict),len(labVocabDict),ethVocabDict,genderVocabDict,ageVocabDict,insVocabDict
79
-
80
- def open_dict(task,cond, proc, out, chart, lab, med):
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- if cond:
82
- with open("./data/dict/"+task+"/condVocab", 'rb') as fp:
83
- condDict = pickle.load(fp)
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- else:
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- condDict = None
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- if proc:
87
- with open("./data/dict/"+task+"/procVocab", 'rb') as fp:
88
- procDict = pickle.load(fp)
89
- else:
90
- procDict = None
91
- if out:
92
- with open("./data/dict/"+task+"/outVocab", 'rb') as fp:
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- outDict = pickle.load(fp)
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- else:
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- outDict = None
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- if chart:
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- with open("./data/dict/"+task+"/chartVocab", 'rb') as fp:
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- chartDict = pickle.load(fp)
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- elif lab:
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- with open("./data/dict/"+task+"/labsVocab", 'rb') as fp:
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- chartDict = pickle.load(fp)
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- else:
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- chartDict = None
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- if med:
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- with open("./data/dict/"+task+"/medVocab", 'rb') as fp:
106
- medDict = pickle.load(fp)
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- else:
108
- medDict = None
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-
110
- return condDict, procDict, outDict, chartDict, medDict
111
 
112
  def concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict):
113
  meds=data['Med']
@@ -136,11 +105,11 @@ def concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,
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  for p,v in zip(feat,proc_val):
137
  proc_df[p]=v
138
  proc_df.columns=pd.MultiIndex.from_product([["PROC"], proc_df.columns])
139
- print(proc_df)
140
  else:
141
  procedures=pd.DataFrame(procDict,columns=['PROC'])
142
  features=pd.DataFrame(np.zeros([interval,len(procedures)]),columns=procedures['PROC'])
143
  features.columns=pd.MultiIndex.from_product([["PROC"], features.columns])
 
144
 
145
  ##########OUT#########
146
  if (feat_out):
@@ -207,7 +176,7 @@ def concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,
207
 
208
 
209
 
210
- def generate_deep(data,interval,task,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict):
211
  meds = []
212
  charts = []
213
  proc = []
@@ -215,8 +184,6 @@ def generate_deep(data,interval,task,feat_cond,feat_proc,feat_out,feat_chart,fea
215
  lab = []
216
  stat = []
217
  demo = []
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-
219
- 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)
220
  dyn,cond_df,demo=concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict)
221
  if feat_chart:
222
  charts = dyn['CHART'].fillna(0).values
 
75
  with open ('./data/dict/'+task+'/'+file, 'rb') as fp:
76
  labVocabDict = pickle.load(fp)
77
 
78
+ return (len(condVocabDict),len(procVocabDict),len(medVocabDict),len(outVocabDict),len(chartVocabDict),len(labVocabDict),
79
+ ethVocabDict,genderVocabDict,ageVocabDict,insVocabDict,condVocabDict,procVocabDict,medVocabDict,outVocabDict,chartVocabDict,labVocabDict)
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
80
 
81
  def concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict):
82
  meds=data['Med']
 
105
  for p,v in zip(feat,proc_val):
106
  proc_df[p]=v
107
  proc_df.columns=pd.MultiIndex.from_product([["PROC"], proc_df.columns])
 
108
  else:
109
  procedures=pd.DataFrame(procDict,columns=['PROC'])
110
  features=pd.DataFrame(np.zeros([interval,len(procedures)]),columns=procedures['PROC'])
111
  features.columns=pd.MultiIndex.from_product([["PROC"], features.columns])
112
+ proc_df=features.fillna(0)
113
 
114
  ##########OUT#########
115
  if (feat_out):
 
176
 
177
 
178
 
179
+ def generate_deep(data,interval,task,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict, eth_vocab,gender_vocab,age_vocab,ins_vocab):
180
  meds = []
181
  charts = []
182
  proc = []
 
184
  lab = []
185
  stat = []
186
  demo = []
 
 
187
  dyn,cond_df,demo=concat_data(data,interval,feat_cond,feat_proc,feat_out,feat_chart,feat_meds,feat_lab,condDict, procDict, outDict, chartDict, medDict)
188
  if feat_chart:
189
  charts = dyn['CHART'].fillna(0).values