dc.description.abstract |
Diabetes is a significant public health issue in developing countries, with an increasing burden on the
healthcare system. However, accurate reporting of diabetes cases is often hindered by under-reporting, particularly in
rural areas where access to healthcare is limited. When dealing with count data, both under-reported and over-reported
cases are encountered. If it is assumed that the count data obtained from the field is always true, then modeling it with
other count-data models will be erroneous. This study aimed to improve the existing Poisson-Binomial mixture model
by factoring in covariates to make it suitable to estimate the number of under-reported diabetes cases in each county
of Kenya and map the distribution of these cases. The covariates used in the model include the education level,
poverty index, and access to healthcare in respective counties, making the probability of reporting vary from one
county to another. The data was obtained from the Kenya Diabetes Management Information Centre and Kenya
National Bureau of Statistics. The results revealed that at least each of the 47 counties had under-reported the diabetes
data, with the probability of reporting ranging from 0.9002423 for Migori County and 0.7164098 for Mombasa
County. Nairobi and Mombasa counties reported the highest underreporting rate with 16,708 and 11,784 cases,
respectively underreported, while Lamu had 1269 underreported cases, the least in all the 47 counties. The Deviance
Information Criterion (DIC) was used to compare the original model and the improved model, whereby the improved
model was found to be efficient since it had a smaller DIC value. The computed actual cases of diabetes revealed that
Nairobi and Lamu had 179,604 and 7,038, respectively, representing the highest and lowest diabetes county in Kenya.
The resulting maps identified high-risk areas for under-reporting and the general distribution of diabetes in Kenya,
valuable information for policymakers and public health practitioners to target resources towards improving diabetes
prevention and management in Kenya.
Keywords: Spatial; Mapping; Deviance Information Criterion; Diabetes; Underreporting |
en_US |