Machine learning-based prediction of acute coronary syndrome using only the pre-hospital 12-lead electrocardiogram.
Salah S Al-ZaitiLucas BesomiZeineb BouzidZiad FaramandStephanie FrischChristian Martin-GillRichard GreggSamir SabaClifton CallawayErvin SejdićPublished in: Nature communications (2020)
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.
Keyphrases
- acute coronary syndrome
- machine learning
- clinical decision support
- heart rate variability
- heart rate
- clinical practice
- case report
- percutaneous coronary intervention
- antiplatelet therapy
- healthcare
- artificial intelligence
- public health
- electronic health record
- liver failure
- emergency department
- big data
- palliative care
- left ventricular
- resistance training
- drug induced
- high speed
- deep learning
- data analysis
- bioinformatics analysis
- aortic dissection
- acute care