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Enabling digital multifactorial risk assessment in primary care: an umbrella review and recommendations for design and implementation
0
Zitationen
5
Autoren
2026
Jahr
Abstract
We have developed recommendations detailing 14 key characteristics for a digital risk prediction model to be successfully used in primary care settings. This profile should be used to guide development of new risk prediction tools and is also applicable more widely to other digital health innovations within primary care. Future research should work to resolve the identified system-level barriers to implementation.
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