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Building improved risk stratification models for patients post non ST-segment elevation acute coronary syndrome using ambulatory ECG data

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Academic year: 2021

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Table  1.  Baseline  characteristics  for the  patient  cohort.  CVD  is  cardiovascular  death;  MI is  myocardial  infarction;  TRS  is  TIMI  risk  score;  LVEF  is  left  ventricular  ejaculation fraction; BNP  is B-type  natriuretic  peptide;  IQR is
Table  2.  Performance  of 7Hx+5C0  model  in predicting  one-year  CVD.  Values  represent averages  over  1000  bootstrapped  trials  where  each  trial  yields  one  AUC,  one  Hazard Ratio  (highest  vs
Table  S1.  Paired  sample  t-test  results  between  the  performance  of 7Hx+5C0 performances  of  remaining  models  in  predicting  one-year  CVD  averaged bootstrapped  trials.
Figure  1.  Overview  of the  ST-segment  feature  extraction  process.  The  first  five  central moments  that  describe  the  distribution  of the  level  of ST-segment  (Ml,  M2,  M3,  M4, M5)  are  then  inputted  into  the  model  along  with  featur
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