Artificial intelligence-augmented ECG (AI-ECG) algorithms demonstrate the potential to risk stratify, diagnose, and interpret ECGs, addressing current limitations in clinician ECG literacy.
ECG interpretation
Artificial intelligence-augmented ECG (AI-ECG)
Since its inception, the electrocardiogram (ECG) has been an essential tool in medicine. The ECG is more than a mere tracing of cardiac electrical activity; it can detect and diagnose various pathologies including arrhythmias, pericardial and myocardial disease, electrolyte disturbances, and pulmonary disease. The ECG is a simple, non-invasive, rapid, and cost-effective diagnostic tool in medicine; however, its clinical utility relies on the accuracy of its interpretation. Computer ECG analysis has become so widespread and relied upon that ECG literacy among clinicians is waning. With recent technological advances, the application of artificial intelligence-augmented ECG (AI-ECG) algorithms has demonstrated the potential to risk stratify, diagnose, and even interpret ECGs—all of which can have a tremendous impact on patient care and clinical workflow. In this review, we examine (i) the utility and importance of the ECG in clinical practice, (ii) the accuracy and limitations of current ECG interpretation methods, (iii) existing challenges in ECG education, and (iv) the potential use of AI-ECG algorithms for comprehensive ECG interpretation.
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Nikita Rafie
Mayo Clinic in Arizona
Anthony H. Kashou
Mayo Clinic
Peter A. Noseworthy
Electrophysiology
Hearts
Mayo Clinic
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Rafie et al. (Tue,) conducted a review in ECG interpretation. Artificial intelligence-augmented ECG (AI-ECG) was evaluated. Artificial intelligence-augmented ECG (AI-ECG) algorithms demonstrate the potential to risk stratify, diagnose, and interpret ECGs, addressing current limitations in clinician ECG literacy.
synapsesocial.com/papers/6a09098f29af591ab7017407 — DOI: https://doi.org/10.3390/hearts2040039