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BABY STEPS IN ARTIFICIAL INTELLIGENCE: DEVELOPMENT OF A JOS CARDIOVASCULAR DISEASE RISK APP TO IMPROVE SCREENING FOR CARDIOVASCULAR DISEASES.
0
Zitationen
4
Autoren
2024
Jahr
Abstract
We found that with sub-clinical atherosclerosis indexed by carotid intima-media thickness as standard, our new Jos App as well as the Framingham Risk score correlated positively and significantly. However, interestingly the level of correlation was higher with our new risk estimation App. We have input this into smart devices for pilot clinical studies.
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