Login / Signup

A multi-criteria framework for disease surveillance site selection: case study for Plasmodium knowlesi malaria in Indonesia.

Lucinda E HarrisonJennifer A FleggRuarai J TobinInke N D LubisRintis NoviyantiMatthew J GriggFreya M ShearerDavid J Price
Published in: Royal Society open science (2024)
Disease surveillance aims to collect data at different times or locations, to assist public health authorities to respond appropriately. Surveillance of the simian malaria parasite, Plasmodium knowlesi , is sparse in some endemic areas and the spatial extent of transmission is uncertain. Zoonotic transmission of Plasmodium knowlesi has been demonstrated throughout Southeast Asia and represents a major hurdle to regional malaria elimination efforts. Given an arbitrary spatial prediction of relative disease risk, we develop a flexible framework for surveillance site selection, drawing on principles from multi-criteria decision-making. To demonstrate the utility of our framework, we apply it to the case study of Plasmodium knowlesi malaria surveillance site selection in western Indonesia. We demonstrate how statistical predictions of relative disease risk can be quantitatively incorporated into public health decision-making, with specific application to active human surveillance of zoonotic malaria. This approach can be used in other contexts to extend the utility of modelling outputs.
Keyphrases
  • plasmodium falciparum
  • public health
  • decision making
  • global health
  • south africa
  • machine learning
  • big data
  • artificial intelligence
  • data analysis
  • induced pluripotent stem cells
  • pluripotent stem cells