It is well known that cardiometabolic diseases (CMD) such as myocardial infarction,
stroke and diabetes are associated with excess mortality and morbidity, and it is
broadly accepted that an individual's lifestyle and activity levels are major risk
factors.
1
This is particularly true for patients who are largely sedentary, have limited mobility,
or who find it difficult to maintain adequate levels of physical activity much less
achieve the recommended moderate-to-vigorous physical levels for cardiometabolic health.
Accordingly, an important challenge for rehabilitation professionals is supporting
patients into becoming more active and choosing a healthier lifestyle.
2
Keywords
List of abbreviations:
AI (artificial intelligence), CMD (cardiometabolic diseases)To read this article in full you will need to make a payment
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Article info
Publication history
Published online: April 27, 2022
Accepted:
March 11,
2022
Received in revised form:
March 9,
2022
Received:
January 24,
2022
Footnotes
Disclosures: none.
List of abbreviations: AI, artificial intelligence; CMD, cardiometabolic diseases.
Identification
Copyright
© 2022 by the American Congress of Rehabilitation Medicine.