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AI-driven tools for the prediction of obesity-related vascular diseases: stakeholder perspectives and challenges
0
Zitationen
4
Autoren
2025
Jahr
Abstract
While stakeholders acknowledged the promise of the AI-POD tools for advancing personalized cardiovascular risk prediction in individuals living with obesity, they also identified critical challenges related to equitable access, sustained user engagement, and effective integration into clinical practice. Addressing these challenges will be essential for the successful implementation, adoption, and uptake of the tools envisioned within the AI-POD project.
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