4.7 Article

A Roadmap for Building Data Science Capacity for Health Discovery and Innovation in Africa

Journal

FRONTIERS IN PUBLIC HEALTH
Volume 9, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fpubh.2021.710961

Keywords

big data; health informatics; capacity building; knowledge discovery; data science; Africa; training; stakeholder

Funding

  1. Natural Sciences and Engineering Research Council (NSERC) of Canada [RGPIN-2009_293295]
  2. National Heart, Lung, and Blood Institute (NHLBI) [R01 HL132344]
  3. John D. Cameron Endowed Chair in the Genetic Determinants of Chronic Diseases, Department of Health Research, Methods, Evidence, and Impact, McMaster University

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Technological advances have made it possible to generate diverse data in various applications, with the health sciences seeing a record amount of data being produced. Utilizing data can accelerate scientific advances, but proper integration of methods and domain knowledge expertise is crucial to generate and analyze big data. The lack of well-trained data scientists, especially in resource-limited settings like Africa, highlights the importance of building capacity in health data science through activities like graduate-level training and stakeholder engagement.
Technological advances now make it possible to generate diverse, complex and varying sizes of data in a wide range of applications from business to engineering to medicine. In the health sciences, in particular, data are being produced at an unprecedented rate across the full spectrum of scientific inquiry spanning basic biology, clinical medicine, public health and health care systems. Leveraging these data can accelerate scientific advances, health discovery and innovations. However, data are just the raw material required to generate new knowledge, not knowledge on its own, as a pile of bricks would not be mistaken for a building. In order to solve complex scientific problems, appropriate methods, tools and technologies must be integrated with domain knowledge expertise to generate and analyze big data. This integrated interdisciplinary approach is what has become to be widely known as data science. Although the discipline of data science has been rapidly evolving over the past couple of decades in resource-rich countries, the situation is bleak in resource-limited settings such as most countries in Africa primarily due to lack of well-trained data scientists. In this paper, we highlight a roadmap for building capacity in health data science in Africa to help spur health discovery and innovation, and propose a sustainable potential solution consisting of three key activities: a graduate-level training, faculty development, and stakeholder engagement. We also outline potential challenges and mitigating strategies.

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