Anna Węgrzyn-Witek, Monika Przewlocka-Kosmala, Wojciech Kosmala, Thomas H Marwick
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Use of artificial intelligence for detecting left ventricular dysfunction and predicting incident heart failure risk.
Effective medications are available for the prevention of heart failure (HF). While their use is indicated in patients with risk factors, engagement and adherence among 'at risk' individuals is challenging, as it is with atherosclerotic heart disease prevention. The detection of patients with subclinical cardiac dysfunction could provide a subgroup at heightened risk, warranting more intensive disease management programmes. The process of screening the aging population is a huge task that could be facilitated using artificial intelligence (AI) to identify clinical risk, select 'at risk' individuals by using AI to enhance the value of electocardiography, and facilitate the non-expert acquisition and interpretation of echocardiography. This review, informed by a search of the recent literature, explored how such an AI-informed pathway could permit HF screening to occur in the community-maximizing access and minimizing cost.
期刊介绍:
ESC Heart Failure is the open access journal of the Heart Failure Association of the European Society of Cardiology dedicated to the advancement of knowledge in the field of heart failure. The journal aims to improve the understanding, prevention, investigation and treatment of heart failure. Molecular and cellular biology, pathology, physiology, electrophysiology, pharmacology, as well as the clinical, social and population sciences all form part of the discipline that is heart failure. Accordingly, submission of manuscripts on basic, translational, clinical and population sciences is invited. Original contributions on nursing, care of the elderly, primary care, health economics and other specialist fields related to heart failure are also welcome, as are case reports that highlight interesting aspects of heart failure care and treatment.