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Machine learning-based prediction of acute coronary syndrome using only the pre-hospital 12-lead electrocardiogram

Author

Listed:
  • Salah Al-Zaiti

    (University of Pittsburgh
    University of Pittsburgh
    University of Pittsburgh)

  • Lucas Besomi

    (University of Pittsburgh)

  • Zeineb Bouzid

    (University of Pittsburgh)

  • Ziad Faramand

    (University of Pittsburgh)

  • Stephanie Frisch

    (University of Pittsburgh)

  • Christian Martin-Gill

    (University of Pittsburgh
    University of Pittsburgh Medical Center (UPMC))

  • Richard Gregg

    (Philips Healthcare)

  • Samir Saba

    (University of Pittsburgh
    University of Pittsburgh Medical Center (UPMC))

  • Clifton Callaway

    (University of Pittsburgh
    University of Pittsburgh Medical Center (UPMC))

  • Ervin Sejdić

    (University of Pittsburgh
    University of Pittsburgh
    University of Pittsburgh)

Abstract

Prompt identification of acute coronary syndrome is a challenge in clinical practice. The 12-lead electrocardiogram (ECG) is readily available during initial patient evaluation, but current rule-based interpretation approaches lack sufficient accuracy. Here we report machine learning-based methods for the prediction of underlying acute myocardial ischemia in patients with chest pain. Using 554 temporal-spatial features of the 12-lead ECG, we train and test multiple classifiers on two independent prospective patient cohorts (n = 1244). While maintaining higher negative predictive value, our final fusion model achieves 52% gain in sensitivity compared to commercial interpretation software and 37% gain in sensitivity compared to experienced clinicians. Such an ultra-early, ECG-based clinical decision support tool, when combined with the judgment of trained emergency personnel, would help to improve clinical outcomes and reduce unnecessary costs in patients with chest pain.

Suggested Citation

  • Salah Al-Zaiti & Lucas Besomi & Zeineb Bouzid & Ziad Faramand & Stephanie Frisch & Christian Martin-Gill & Richard Gregg & Samir Saba & Clifton Callaway & Ervin Sejdić, 2020. "Machine learning-based prediction of acute coronary syndrome using only the pre-hospital 12-lead electrocardiogram," Nature Communications, Nature, vol. 11(1), pages 1-10, December.
  • Handle: RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-17804-2
    DOI: 10.1038/s41467-020-17804-2
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