DECIDE-CV Using AI
Type 2 DiabetesThe purpose of this study is to identify digital biomarkers associated with type 2 diabetes mellitus (T2DM) by combining sensor data from a wrist-worn wearable and clinical data. This will be done by recruiting patients with and without diabetes within the cardio-metabolic clinics a the MUHC. Consented patients will be provided with a HOP Technologies (HOP) watch in this project across two observation periods. The Watch-HOP platform facilitates the development of predictive algorithms built with data collected in a clinical setting or at home in a passive (sensors) and active (self-assessments) way. Data from the Watch-Hop will be analyzed using machine learning strategies to determine associations with clinical measures of T2DM.
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Participation Requirements
-
Sex:
ALL -
Eligible Ages:
18 and up
Participation Criteria
Inclusion Criteria:
1. Age \> 18 years
2. Able to follow-up with study protocol schedule
3. Life expectancy \> 1 year
4. Case group only a. HbA1c \>= 6.5% or is diagnosed with T2DM
Exclusion Criteria:
1. Age \> 18 years
2. Able to follow-up with study protocol schedule
3. Life expectancy \> 1 year
4. Case group only a. HbA1c \>= 6.5% or is diagnosed with T2DM
Study Location
McGill University health Center
McGill University health CenterMontreal, Quebec
Canada
Contact Study Team
- Study Sponsored By
- McGill University Health Centre/Research Institute of the McGill University Health Centre
- Participants Required
- More Information
- Study ID:
NCT05482958