Artificial Intelligence and Cardiovascular Risk Prediction: All That Glitters is not Gold
- PMID: 36845218
- PMCID: PMC9947926
- DOI: 10.15420/ecr.2022.11
Artificial Intelligence and Cardiovascular Risk Prediction: All That Glitters is not Gold
Abstract
Artificial intelligence (AI) is a broad term referring to any automated systems that need 'intelligence' to carry out specific tasks. During the last decade, AI-based techniques have been gaining popularity in a vast range of biomedical fields, including the cardiovascular setting. Indeed, the dissemination of cardiovascular risk factors and the better prognosis of patients experiencing cardiovascular events resulted in an increase in the prevalence of cardiovascular disease (CVD), eliciting the need for precise identification of patients at increased risk for development and progression of CVD. AI-based predictive models may overcome some of the limitations that hinder the performance of classic regression models. Nonetheless, the successful application of AI in this field requires knowledge of the potential pitfalls of the AI techniques, to guarantee their safe and effective use in daily clinical practice. The aim of the present review is to summarise the pros and cons of different AI methods and their potential application in the cardiovascular field, with a focus on the development of predictive models and risk assessment tools.
Keywords: Artificial intelligence; cardiovascular disease; machine learning; risk prediction.
Copyright © 2022, Radcliffe Cardiology.
Conflict of interest statement
Disclosure: GS reports grants from Boston Scientific and consulting fees from Abbott Vascular, Boston Scientific and Pfizer/BMS. All other authors have no conflicts of interest to declare.
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