Geospatial Modeled Analysis and Laboratory Based Technology for Determination of Malaria Risk and Burden in a Rural Community

Oluwasogo A. Olalubi *

Department of Public Health, School of Basic Medical Sciences, Kwara State University, Nigeria.

Gabriel Salako

School of Allied Health & Environmental Sciences, Kwara State University, Nigeria.

Oluwasegun T. Adetunde

Department of Geography & Environmental Management, University of Ilorin, Nigeria.

Henry O. Sawyerr

School of Allied Health & Environmental Sciences, Kwara State University, Nigeria.

M. Ajao

Department of Biosciences & Biotechnology, Zoology Unit, University of Ilorin, Nigeria.

Ernest Tambo

Department of Biosciences & Biotechnology, Zoology Unit, University of Ilorin, Nigeria and Department of Biochemistry, Higher Institute of Health Sciences, Universite des Montagnes, Bangangté, Cameroon.

*Author to whom correspondence should be addressed.


Abstract

Introduction: Geographical Information System (GIS) has proven to be very useful for large scale mapping of ecosystems, land use and cover, disease prevalence, risk mapping and forecasting. GIS establish relationship or link between vector borne diseases and associated environmental factors thereby providing explanation for spatial distribution pattern, possible causes of diseases outbreak and implications on the community.

Aims and Objectives: Our approach in this study was to define and identify areas and places that are exposed to Malaria risk through proximity analysis and to compare geospatial risk with laboratory diagnosed malaria epidemiology.

Methodology: Garmin GPS was used to capture the geographic coordinates of six (6) selected settlements and overlaid with georeferenced and processed satellite images in the study area. GIS modeling was performed on risk factors using weighted overlay technique to produce malaria risk map. A total of One hundred and thirty-five (135) vulnerable individuals were diagnosed for Malaria with light Olympus microscope and rapid diagnostic kit (RDT). Data were entered and analyzed using R-Package for Statistical Computing and Graphics.

Results: Proximity to malaria risk follows relatively the order Apodu > Central Malete > Elemere > KWASU Campus > Gbugudu. Apodu being the largest place with proximity to malaria risk, within 500 m radius. The risk index increases as one move away from the center of the settlement. The possible explanation for this high risk could be the presence of pond / lake in Apodu. This is a good breeding site for mosquito couple with dense vegetation as one move away from the centre of the settlements. Unlike Apodu, Gbugudu was at medium risk at 100 m buffer (60%) but the risk index decreases as one move away from the settlement centre. The absence of thick vegetation and presence of numerous open farms and partly cultivated farmlands on the eastern part could have been responsible for reduction in risk index. Dense vegetation and ponds were observed within Apodu, while Central Malete was built up with dense vegetation are possible reasons for the high-risk index, while settlements within 1 km radius around KWASU campus recorded lower risk index possibly due to low vegetation. The geospatial malaria risk analysis correlates with the laboratory-based test results. RDT kits and light microscopy results showed Apodu having the highest malaria prevalence with 46% and 58.7% followed by Elemere 41% and 30.3% respectively. When calculating prevalence by aggregating results across all communities, Apodu still had the highest malaria prevalence for the whole region. RDT and light microscopy results combined for all communities had Apodu with malaria prevalence of 21.48% and 27.4% followed by Elemere with 11.85% and 12.5% respectively. Gbugudu had the least malaria prevalence within the region with 3.7% and 7.4% respectively.

Discussion and Conclusion: Findings of this study showed dense vegetation and ponds within Apodu, Elemere and Central Malete served as good breeding site for mosquitoes and were responsible for the high-risk index at these areas. Settlements within 1 km radius around KWASU campus recorded lower index possibly due to low vegetation. Results from this study indicate that the degree of malaria parasitaemia in the three major settlements correlates directly with the remote sensing data.

Keywords: GIS, RDTs, risk mapping, giemsa light microscopy, malaria parasitaemia.


How to Cite

Olalubi, O. A., Salako, G., Adetunde, O. T., Sawyerr, H. O., Ajao, M., & Tambo, E. (2020). Geospatial Modeled Analysis and Laboratory Based Technology for Determination of Malaria Risk and Burden in a Rural Community. International Journal of TROPICAL DISEASE & Health, 41(8), 59–71. https://doi.org/10.9734/ijtdh/2020/v41i830312

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