Predicting malaria outbreaks using earth observation measurements and spatiotemporal deep learning modelling: a South Asian case study from 2000 to 2017.

Journal: The Lancet. Planetary health
Published Date:

Abstract

BACKGROUND: Malaria remains one the leading communicable causes of death. Approximately half of the world's population is considered at risk of infection, predominantly in African and South Asian countries. Although malaria is preventable, heterogeneity in sociodemographic and environmental risk factors over time and across diverse geographical and climatological regions make outbreak prediction challenging. Data-driven approaches accounting for spatiotemporal variability could offer potential for location-specific early warning tools for malaria.

Authors

  • Usman Nazir
    Lahore University of Management Sciences, Lahore, Pakistan.
  • Muhammad Talha Quddoos
    Lahore University of Management Sciences, Lahore, Pakistan.
  • Momin Uppal
    Center of Urban Informatics, Technology and Policy, Lahore University of Management Sciences, Lahore, Pakistan.
  • Sara Khalid
    Center for Statistics in Medicine, Botnar Research Center, University of Oxford, Oxford, UK. Electronic address: sara.khalid@ndorms.ox.ac.uk.