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Computer-Interpreted Electrocardiograms: Impact on Cardiology Practice
Gupta, Shyla; Kashou, Anthony H.; Herman, Robert; Smith, Stephen; May, Adam; Echeverri, Ana G. Múnera; Del Sueldo, Mildren; Berni, Ana C.; Farina, Juan; Garcia-Zamora, Sebastian; Baranchuk, Adrian.
Afiliação
  • Gupta, Shyla; University of Ottawa. Faculty of Medicine. Department of Medicine. Ottawa. CA
  • Kashou, Anthony H.; Mayo Clinic. Department of Cardiovascular Medicine. Rochester. US
  • Herman, Robert; University of Naples Federico II. Department of Advanced Biomedical Sciences. Naples. IT
  • Smith, Stephen; University of Minnesota. School of Medicine. Minneapolis. US
  • May, Adam; Washington University in St Louis. Department of Medicine. St Louis. US
  • Echeverri, Ana G. Múnera; Rosario Clinic Tesoro. Cardioestudio. Department of Cardiology. Medellin. CO
  • Del Sueldo, Mildren; Specialty Clinic. Division of Cardiology. Cordoba. AR
  • Berni, Ana C.; Hospital Ángeles Pedregal. Department of Cardiology. Mexico City. MX
  • Farina, Juan; Mayo Clinic. Department of Cardiovascular Medicine. Rochester. US
  • Garcia-Zamora, Sebastian; Delta Clinic. Department of Cardiology. Rosario. AR
  • Baranchuk, Adrian; Queens University. Kingston. CA
Int. j. cardiovasc. sci. (Impr.) ; 37: e20240079, 2024. graf
Article em En | LILACS-Express | LILACS | ID: biblio-1564590
Biblioteca responsável: BR1.1
Localização: 2359-5647-ijcs-37-e20240079.xml
ABSTRACT
Abstract In the realm of modern cardiology, the integration of computer-interpreted electrocardiograms (CI-ECGs) has marked the beginning of a new era of diagnostic precision and efficiency. Contemporary electrocardiogram (ECG) integration systems, applying algorithms and artificial intelligence, have modernized the interpretation of heart rhythms and cardiac morphology. Due to their ability to rapidly analyze and interpret ECG recordings CI-ECGs have already profoundly impacted clinical practice. This review explores the evolution of computer interpreted ECG technology, evaluates the pros and cons of current automatic reporting systems, analyzes the growing role of artificial intelligence on ECG interpretation technologies, and discusses emerging applications that may have transformative effects on patient outcomes. Emphasis is placed on the role of ECGs in the automatic diagnosis of occlusion myocardial infarctions (OMI). AI models enhance accuracy and efficiency in ECG interpretation, offering insights into cardiac function and aiding timely detection of concerning patterns for accurate clinical diagnoses. The shift to AI-driven diagnostics has emphasized the importance of data in the realm of cardiology by improving patient care. The integration of novel AI models in ECG analysis has created a promising future for ECG diagnostics through a synergistic fusion of feature-based machine learning models, deep learning approaches, and clinical acumen. Overall, CI-ECGs have transformed cardiology practice, offering rapid, accurate, and standardized analyses. These systems reduce interpretation time significantly, allowing for quick identification of abnormalities. However, sole reliance on automated interpretations may overlook nuanced findings, risking diagnostic errors. Therefore, a balanced approach in integrating automated analysis with clinical judgment is necessary.
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Texto completo: 1 Base de dados: LILACS Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: LILACS Idioma: En Ano de publicação: 2024 Tipo de documento: Article