Using Clinical Prediction Models to Improve Treatment for Patients With Chronic Obstructive Pulmonary Disease (COPD)
Chronic Obstructive Pulmonary DiseaseChronic Obstructive Pulmonary Disease (COPD) is a chronic disease of the lungs that affects more than 2.5 million Canadians. Patients with COPD experience episodes of lung attacks (or exacerbations). During these attacks, patients experience an intense increase in symptoms, such as breathlessness and cough. It is challenging to decide which patients should be put on treatments that would reduce the risk of such lung attacks. The digitization of health records in many clinics and hospitals means complex risk prediction algorithms can be used to predict the risk of lung attacks to enable personalized care. In this study, our team will implement a risk prediction tool (called ACCEPT) into the electronic health records in two teaching hospitals in Vancouver, British Columbia (BC), Canada. A clinical study will be conducted to evaluate if the use of this tool results in patients with COPD receiving better care with better outcomes, and if they are more satisfied with the care they are receiving.
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Participation Requirements
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Sex:
ALL -
Eligible Ages:
35 and up
Participation Criteria
Inclusion Criteria:
* Are a legal Canadian resident
* Aged 35 years and older
* Can speak English
* Have a diagnosis of COPD
Exclusion Criteria:
• Are under 35 years of age
Study Location
St Paul's Hospital, Heart and Lung Centre
St Paul's Hospital, Heart and Lung CentreVancouver, British Columbia
Canada
Contact Study Team
The Lung Centre, Vancouver General Hospital
The Lung Centre, Vancouver General HospitalVancouver, British Columbia
Canada
Contact Study Team
- Study Sponsored By
- University of British Columbia
- Participants Required
- More Information
- Study ID:
NCT05309356