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Mapping malaria by sharing spatial information between incidence and prevalence data sets

Author

Listed:
  • Tim C. D. Lucas
  • Anita K. Nandi
  • Elisabeth G. Chestnutt
  • Katherine A. Twohig
  • Suzanne H. Keddie
  • Emma L. Collins
  • Rosalind E. Howes
  • Michele Nguyen
  • Susan F. Rumisha
  • Andre Python
  • Rohan Arambepola
  • Amelia Bertozzi‐Villa
  • Penelope Hancock
  • Punam Amratia
  • Katherine E. Battle
  • Ewan Cameron
  • Peter W. Gething
  • Daniel J. Weiss

Abstract

As malaria incidence decreases and more countries move towards elimination, maps of malaria risk in low‐prevalence areas are increasingly needed. For low‐burden areas, disaggregation regression models have been developed to estimate risk at high spatial resolution from routine surveillance reports aggregated by administrative unit polygons. However, in areas with both routine surveillance data and prevalence surveys, models that make use of the spatial information from prevalence point‐surveys might make more accurate predictions. Using case studies in Indonesia, Senegal and Madagascar, we compare the out‐of‐sample mean absolute error for two methods for incorporating point‐level, spatial information into disaggregation regression models. The first simply fits a binomial‐likelihood, logit‐link, Gaussian random field to prevalence point‐surveys to create a new covariate. The second is a multi‐likelihood model that is fitted jointly to prevalence point‐surveys and polygon incidence data. We find that in most cases there is no difference in mean absolute error between models. In only one case, did the new models perform the best. More generally, our results demonstrate that combining these types of data has the potential to reduce absolute error in estimates of malaria incidence but that simpler baseline models should always be fitted as a benchmark.

Suggested Citation

  • Tim C. D. Lucas & Anita K. Nandi & Elisabeth G. Chestnutt & Katherine A. Twohig & Suzanne H. Keddie & Emma L. Collins & Rosalind E. Howes & Michele Nguyen & Susan F. Rumisha & Andre Python & Rohan Ara, 2021. "Mapping malaria by sharing spatial information between incidence and prevalence data sets," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 70(3), pages 733-749, June.
  • Handle: RePEc:bla:jorssc:v:70:y:2021:i:3:p:733-749
    DOI: 10.1111/rssc.12484
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    References listed on IDEAS

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    1. Ewan Cameron & Katherine E. Battle & Samir Bhatt & Daniel J. Weiss & Donal Bisanzio & Bonnie Mappin & Ursula Dalrymple & Simon I. Hay & David L. Smith & Jamie T. Griffin & Edward A. Wenger & Philip A., 2015. "Defining the relationship between infection prevalence and clinical incidence of Plasmodium falciparum malaria," Nature Communications, Nature, vol. 6(1), pages 1-10, November.
    2. Benjamin M. Taylor & Ricardo Andrade‐Pacheco & Hugh J. W. Sturrock, 2018. "Continuous inference for aggregated point process data," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 181(4), pages 1125-1150, October.
    3. Kristensen, Kasper & Nielsen, Anders & Berg, Casper W. & Skaug, Hans & Bell, Bradley M., 2016. "TMB: Automatic Differentiation and Laplace Approximation," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 70(i05).
    4. S. Bhatt & D. J. Weiss & E. Cameron & D. Bisanzio & B. Mappin & U. Dalrymple & K. E. Battle & C. L. Moyes & A. Henry & P. A. Eckhoff & E. A. Wenger & O. Briët & M. A. Penny & T. A. Smith & A. Bennett , 2015. "The effect of malaria control on Plasmodium falciparum in Africa between 2000 and 2015," Nature, Nature, vol. 526(7572), pages 207-211, October.
    5. Lindgren, Finn & Rue, Håvard, 2015. "Bayesian Spatial Modelling with R-INLA," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 63(i19).
    6. Geir-Arne Fuglstad & Daniel Simpson & Finn Lindgren & Håvard Rue, 2019. "Constructing Priors that Penalize the Complexity of Gaussian Random Fields," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 114(525), pages 445-452, January.
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