Blog: Mapping HIV Risk

 

Our partners at the ONS FCDO Data Science Hub have been exploring if machine learning methods and publicly available spatial datasets can be used to map and understand HIV risk in Côte d'Ivoire, West Africa for our HIV project.

Read more from Data Scientist Joseph Crispell, one of the collaborative partners working on the project, about the preliminary analysis conducted using historical HIV testing data and the difficulties associated with accurately mapping HIV risk in space.

 
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