Abstract
Disease mapping has important applications in public health because it enables the
identication of areas which are at high risk of particular health problems. It helps
visualising the spatial pattern of the disease distribution, which is of interest to
the health sector as it enables the sector to plan, evaluate and redesign prevention
and control strategies, and also make important policy decisions particularly for
geographically targeted intervention in resource poor settings. Analyses of spatial
disease patterns are generally based on data of a single disease and they are often
fraught with challenges that include lack of a representative sample, often incomplete
and most of which may have measurement errors, and may be spatially and
temporally misaligned. This thesis focused on the development and extension of
statistical models with particular interest to dealing with misalignment, measurement
errors and jointly modeling of data from multiple sources.
The rst objective was to estimate and map the risk of measles at a sub-region level
(i.e. constituency level) in Namibia using data obtained at the regional level. Direct
inferences at constituency level made on basis of the original level of aggregation
may lead to an inferential problem known as a misalignment in the statistical literature.
Using measles data from Namibia for the period 2005-2014, both multi-step
and direct approaches were applied to correct the misalignment. The multi-step
approach model provided a relatively better model.
The second objective was to t a spatio-temporal model while dealing with misalignment
and measurement error, again applied to measles data aggregated at regional
level over the period 2005 to 2014. Again this leads to a spatial misalignment problem
if the purpose is to make decisions at constituency level. Moreover, data on
risk factors of measles 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 eects on the analysis results. The multi-step
approach was further extended to include temporal eects and account for measurement
errors. Consequently, spatio-temporal models, which included Bernardinelli
and Knorr-Held approaches, and classical measurement error models were adopted.
Comparison of the results obtained from the nave method (i.e. modelling that
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ignored errors in covariates) and those from the approach that accounts for measurement
errors showed that the latter modelling approach performed better than
the former. The study showed a spatio-temporal variation of the measles risk over
the 2009-2014 period.
The third objective of this study was to develop a joint spatial model for HIV prevalence,
using two sources (i.e. 2014 National HIV Sentinel survey (NHSS) among
pregnant women aged 15-49 years attending antenatal care (ANC) and the 2013
Namibia Demographic and Health Surveys (NDHS)), which would enable the estimation
at any location of the constituency or district level while dealing with misalignment
in data. The shared component modelling approach was adopted through
the use of stochastic partial dierential equations (SPDE). The bivariate modelling
approach developed allowed to combine two data sources that are available at different
spatial levels in a single model and it catered for a specication of dierent
spatial processes through the link function. Findings revealed that health districts
and constituencies in the northern part of Namibia were highly associated with HIV
infection. Also, the study showed that the place of residence, gender, gravida, marital
status, number of kids dead, wealth index, education, and condom use were
signicantly associated with HIV infection in Namibia. Finally, it was shown that
the prediction of HIV prevalence using the NDHS data source can be enhanced by
jointly modelling other HIV data such as NHSS data.
In conclusion, results showed that the multi-step approach may be used to deal with
misalignment. Moreover, introducing the error model proved to be a useful approach
to correct for measurement errors in data and improve inferences in situations where
mismeasured values in covariates are encountered instead of nave analyses that
ignore the presence of errors in measurements. Lastly, the thesis showed that the
prediction of HIV prevalence using the NDHS data source can be enhanced by jointly
modelling other HIV data such as NHSS data.
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NTIRAMPEBA, D (2021). Modelling Spatio-Temporal Patterns Of Disease Risk For Data With Misalignment And Measurement Errors: An Application On Measles And Hiv Prevalence Data In Namibia. Afribary. Retrieved from https://afribary.com/works/modelling-spatio-temporal-patterns-of-disease-risk-for-data-with-misalignment-and-measurement-errors-an-application-on-measles-and-hiv-prevalence-data-in-namibia
NTIRAMPEBA, DISMAS "Modelling Spatio-Temporal Patterns Of Disease Risk For Data With Misalignment And Measurement Errors: An Application On Measles And Hiv Prevalence Data In Namibia" Afribary. Afribary, 27 Apr. 2021, https://afribary.com/works/modelling-spatio-temporal-patterns-of-disease-risk-for-data-with-misalignment-and-measurement-errors-an-application-on-measles-and-hiv-prevalence-data-in-namibia. Accessed 23 Nov. 2024.
NTIRAMPEBA, DISMAS . "Modelling Spatio-Temporal Patterns Of Disease Risk For Data With Misalignment And Measurement Errors: An Application On Measles And Hiv Prevalence Data In Namibia". Afribary, Afribary, 27 Apr. 2021. Web. 23 Nov. 2024. < https://afribary.com/works/modelling-spatio-temporal-patterns-of-disease-risk-for-data-with-misalignment-and-measurement-errors-an-application-on-measles-and-hiv-prevalence-data-in-namibia >.
NTIRAMPEBA, DISMAS . "Modelling Spatio-Temporal Patterns Of Disease Risk For Data With Misalignment And Measurement Errors: An Application On Measles And Hiv Prevalence Data In Namibia" Afribary (2021). Accessed November 23, 2024. https://afribary.com/works/modelling-spatio-temporal-patterns-of-disease-risk-for-data-with-misalignment-and-measurement-errors-an-application-on-measles-and-hiv-prevalence-data-in-namibia