Themed Challenges to Solve Data Scarcity in Africa: A Proposition for Increasing Local Data Collection and Integration
Mubaraq Yakubu, Udunna Anazodo, Maruf Adewole, Theodore Barfoot, Tiarna Lee, Tom Vercauteren, Jonathan Shapey, Andrew King, Alexander Hammers

TL;DR
This paper proposes a framework using themed challenges to increase local medical data collection and sharing in Africa, aiming to improve AI healthcare tools tailored to regional needs.
Contribution
It introduces a novel challenge-based approach to address data scarcity by encouraging local data creation and integration in African healthcare.
Findings
Promotes local data collection through themed challenges.
Encourages collaboration among African healthcare providers.
Aims to enhance AI tools with region-specific datasets.
Abstract
In Africa, the scarcity of computational resources and medical datasets remains a major hurdle to the development and deployment of artificial intelligence (AI) tools in clinical settings, further contributing to global bias. These limitations hinder the full realization of AI's potential and present serious challenges to advancing healthcare across the region. This paper proposes a framework aimed at addressing data scarcity in African healthcare. The framework presents a comprehensive strategy to encourage healthcare providers across the continent to create, curate, and share locally sourced medical imaging datasets. By organizing themed challenges that promote participation, accurate and relevant datasets can be generated within the African healthcare community. This approach seeks to overcome existing dataset limitations, paving the way for a more inclusive and impactful AI…
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Taxonomy
TopicsGlobal Health and Surgery · Artificial Intelligence in Healthcare and Education · COVID-19 diagnosis using AI
