4.5 Article

Combining school-catchment area models with geostatistical models for analysing school survey data from low-resource settings: Inferential benefits and limitations

Journal

SPATIAL STATISTICS
Volume 51, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.spasta.2022.100679

Keywords

Catchment area models; Disease mapping; School survey; Missing locations; Model -based geostatistics; Prevalence

Funding

  1. Newton International Fellowship [NIF/R1/201418]
  2. Newton International Fellowship [NIF/R1/201418]
  3. Springboard grant of the Academy of Medical Sciences, UK [NIF/R1/201418]
  4. Wellcome Trust Principal Fellow [SBF004/1009]
  5. Commonwealth PhD scholarship from the UK's Department for International Development
  6. Department for International Development (DfID) , UK through the WHO Kenya Country Office
  7. Wellcome Trust UK [212176, 081829, 079080]
  8. [203077]

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This paper proposes a modeling framework to overcome the limitations of standard geostatistical methods in mapping disease prevalence. It takes into account the uncertainty in the residence location of students. The study shows that invalid assumptions on the modes of travel to school can affect the predictive performance of geostatistical models.
School-based sampling has been used to inform targeted responses for malaria and neglected tropical diseases. Standard geostatistical methods for mapping disease prevalence use the school location to model spatial correlation, which is questionable since exposure to the disease is more likely to occur in the residential location. In this paper, we propose to overcome the limitations of standard geostatistical methods by introducing a modelling framework that accounts for the uncertainty in the location of the residence of the students. By using cost distance and cost allocation models to define spatial accessibility and in absence of any information on the travel mode of students to school, we consider three school catchment area models that assume walking only, walking and bicycling and, walking and motorized transport. We illustrate the use of this approach using two case studies of malaria in Kenya and compare it with the standard approach that uses the school locations to build geostatistical models. We argue that the proposed modelling framework presents several inferential benefits, such as the ability to combine data from multiple surveys some of which may also record the residence location, and to deal with ecological bias when estimating the effects of malaria risk factors. However, our results show that invalid assumptions on the modes of travel to school can worsen the predictive performance of geostatistical models. Future research in this area should focus on collecting information on the modes of transportation to school which can then be used to better parametrize the catchment area models. (C) 2022 The Author(s). Published by Elsevier B.V.

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