Abstract

BackgroundMaking inferences about measles distribution patterns at small area level is vital for more focal targeted intervention. However, in statistical literature, the analysis of originally collected data on one resolution with the purpose to make inferences on a different level of spatial resolution is referred to as the misalignment problem. In Namibia the measles data were available in aggregated format at regional level for the period 2005 to 2014. This leads to a spatial misalignment problem if the purpose is to make decisions at constituency level. Moreover, although data on risk covariates of measles could be obtained at constituency level, they were not available each year between 2005 and 2014. Thus, assuming that covariates were constant through the study period would induce measurement errors which might have effects on the analysis results. This paper presents a spatio-temporal model through a multi-step approach in order to deal with misalignment and measurement error.MethodsFor the period 2005–2014, measles data from the Ministry of Health and Social Services (MoHSS) were analysed in two steps. First, a multi-step approach was applied to correct spatial misalignment in the data. Second, a classical measurement error model was fitted to account for measurement errors. The time effects were specified using a nonparametric formulation for the linear trend through first order random walk. An interaction between area and time was modelled through type I and type II interaction structures.ResultsThe study showed that there was high variation in measles risk across constituencies and as well as over the study period (2005–2014). Furthermore, the risk of measles was found to be associated with (i) the number of people aged between 0 and 24 years, (ii) the percentages of women aged 15–49 with an educational level more than secondary, (iii) the percentages of children age 12–23 months who received measles vaccine, (iv) the percentages of malnourished children under 5 years, and (vi) the measles cases for each previous year.ConclusionThe study showed some of the determinants of measles risk and revealed areas at high risk through disease mapping. Additionally, the study showed a non-linear temporal distribution of measles risk over the study period. Finally, it was shown that ignoring the measurement errors may yield misleading results. It was recommended that group and geographically targeted intervention, prevention and control strategies can be tailored on the basis these findings.

Highlights

  • Measles is among the most transmissible of human infections, caused by a virus which is a member of genus Morbillivirus of the family of Paramyxoviridae [1] and it is known to infect any persons, via airborne droplet, who have not previously had the disease or been successfully immunized [2]

  • The covariates used in this study, which include percentage of women aged 15–49 years with an educational level more than secondary, vaccination coverage, percentage of children aged under 5 years classified as malnourished, employment rates, and number of people aged between 0 and 24 years were only available from 2013 Namibia Demographic Health Survey (NDHS) and 2011 Namibia population and housing census (NPHC)

  • Regional aggregated data were used to build a spatio-temporal model that is useful for constituency level inferences through a multi-step approach, while accounting for measurement errors in covariates

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Summary

Introduction

Measles is among the most transmissible of human infections, caused by a virus which is a member of genus Morbillivirus of the family of Paramyxoviridae [1] and it is known to infect any persons, via airborne droplet, who have not previously had the disease or been successfully immunized [2]. Maps resulting from spatio-temporal analysis of variations in measles incidences are often used to identify changes over time and areas of a region or a country with most disease occurrences in order to plan for a proper intervention and targeted distribution of aid to most affected areas [7]. They are regarded as useful tools for geographically targeted interventions, monitoring, and evaluation of infectious diseases such as measles. In Namibia the measles data were available in aggregated format at regional level for the period 2005 to 2014 This leads to a spatial misalignment problem if the purpose is to make decisions at constituency level. This paper presents a spatio-temporal model through a multi-step approach in order to deal with misalignment and measurement error

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