A framework of 12 critical questions was proposed to assist cardiovascular health professionals in critically appraising the development, validation, and clinical utility of AI prediction models.
Cardiovascular disease
Artificial intelligence-based prediction models
The medical field has seen a rapid increase in the development of artificial intelligence (AI)-based prediction models. With the introduction of such AI-based prediction model tools and software in cardiovascular patient care, the cardiovascular researcher and healthcare professional are challenged to understand the opportunities as well as the limitations of the AI-based predictions. In this article, we present 12 critical questions for cardiovascular health professionals to ask when confronted with an AI-based prediction model. We aim to support medical professionals to distinguish the AI-based prediction models that can add value to patient care from the AI that does not.
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Maarten van Smeden
Georg Heinze
Ben Van Calster
European Heart Journal
University College London
KU Leuven
Utrecht University
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Smeden et al. (Wed,) conducted a review in Cardiovascular disease. Artificial intelligence-based prediction models was evaluated. A framework of 12 critical questions was proposed to assist cardiovascular health professionals in critically appraising the development, validation, and clinical utility of AI prediction models.
www.synapsesocial.com/papers/69edd8854475e13dead9d592 — DOI: https://doi.org/10.1093/eurheartj/ehac238
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