Early diagnosis of acute myocardial infarction using clinical and electrocardiographic data at presentation: derivation and evaluation of logistic regression models.

@article{Kennedy1996EarlyDO,
  title={Early diagnosis of acute myocardial infarction using clinical and electrocardiographic data at presentation: derivation and evaluation of logistic regression models.},
  author={Rex Lynn Kennedy and Allison Burton and Henry Stuart Fraser and L. N. McStay and R. F. Harrison},
  journal={European heart journal},
  year={1996},
  volume={17 8},
  pages={
          1181-91
        }
}
The aim of this study was to determine which, and how many, data items are required to construct a decision support algorithm for early diagnosis of acute myocardial infarction using clinical and electrocardiographic data available at presentation. Logistic regression models were derived using data items from 600 consecutive patients at one centre (Edinburgh), then tested prospectively on 510 cases from the same centre and 662 consecutive cases from another centre (Sheffield). Although… CONTINUE READING

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