Leveraging data science to understand and address multimorbidity in sub- Saharan Africa: the MADIVA protocol
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BMJ Health Care Inform
Abstract
Introduction Multimorbidity (MM), defined as two
or more chronic diseases in an individual, is linked to
adverse outcomes. MM is increasing in sub- Saharan
Africa due to rapidly advancing epidemiological and social
transitions. The Multimorbidity in Africa: Digital Innovation,
Visualisation and Application Research Hub (MADIVA)
aims to address MM by developing data science solutions
informed by stakeholder engagement.
Methods and analysis MADIVA uses complex,
individual- level datasets from research centres in rural
Bushbuckridge, South Africa and urban Nairobi, Kenya.
These datasets will be harmonised, linked and curated,
and then used to develop MM risk prediction models,
novel data science methods and interactive dashboards
for research and clinical use. Pilot projects and mentorship
programmes will support data science capacity
development.
Ethics and dissemination Ethics approval has been
granted. Dissemination will occur through scientific
meetings and publications. MADIVA is committed to
making data FAIR: findable, accessible, interoperable and
reusable.
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Research Article
