Coupling Spatiotemporal Disease Modeling with Diagnosis

Authors

  • Martin Mubangizi Makerere University
  • Caterine Ikae Makerere University
  • Athina Spiliopoulou University of Edinburgh
  • John Quinn Makerere University

DOI:

https://doi.org/10.1609/aaai.v26i1.8180

Keywords:

Computational Sustainability and AI::Natural resources and ecosystems ** Machine Learning::Time-series/Data Streams

Abstract

Modelling the density of an infectious disease in space and time is a task generally carried out separately from the diagnosis of that disease in individuals. These two inference problems are complementary, however: diagnosis of disease can be done more accurately if prior information from a spatial risk model is employed, and in turn a disease density model can benefit from the incorporation of rich symptomatic information rather than simple counts of presumed cases of infection. We propose a unifying framework for both of these tasks, and illustrate it with the case of malaria. To do this we first introduce a state space model of malaria spread, and secondly a computer vision based system for detecting plasmodium in microscopical blood smear images, which can be run on location-aware mobile devices. We demonstrate the tractability of combining both elements and the improvement in accuracy this brings about.

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Published

2021-09-20

How to Cite

Mubangizi, M., Ikae, C., Spiliopoulou, A., & Quinn, J. (2021). Coupling Spatiotemporal Disease Modeling with Diagnosis. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 342-348. https://doi.org/10.1609/aaai.v26i1.8180

Issue

Section

AAAI Technical Track: Computational Sustainability