Volume 5, Issue 2 (Suppl)
Occup Med Health Aff, an open access journal
ISSN: 2329-6879
Environmental Health 2017
September 7-8, 2017
Page 35
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September 7-8, 2017 | Paris, France
Environmental Health & Global Climate Change
2
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Abiodun Adeola, Occup Med Health Aff 2017, 5:2(Suppl)
DOI: 10.4172/2329-6879-C1-030
CLIMATIC VARIABLES AND THE RECENT SPIKE IN MALARIA MORBIDITY AND
MORTALITY IN MUTALE MUNICIPALITY, SOUTHAFRICA: AN 18-YEAR DATAANALYSIS
Statement of the Problem:
The malaria control program community of South Africa, received a seemly blow as an awakening
call on the reality of the country’s target of year 2018 to eliminate malaria. The north-eastern part of the country comprising
of Limpopo, Mpumalanga and KwaZulu-Natal have recorded a sudden rise in the number of malaria morbidity and mortality
in the current malaria season. This paper aims at retrospectively and prospectively exploring the impact of climate variability
among other factors driving the persistent transmission of malaria in Mutale, Limpopo Province of South Africa.
Methodology & Theoretical Orientation:
A time series and multivariate analysis was performed on monthly total rainfall,
monthly mean maximum and minimum temperature and monthly case data of malaria in Mutale municipality for the period
of 2000 to 2017. The Rossby centre regional atmospheric model, (RCA4 RCM) was used to perform climate analysis and
projections for rainfall and near-surface (2m) temperature.
Findings:
The time series analysis indicated that an average of 629.5mm of rainfall was received over the period of study. The
rainfall has an annual variation of about 0.46%. Both maximum and minimum temperature showed a positive increasing
trend in their mean. Spearman’s correlation analysis indicated that all climatic variables are positively correlated with malaria
morbidity. Further analysis revealed that total monthly rainfall and monthly minimum temperature, with one month lagged
effect were the most significant climatic variable influencing malaria transmission. More particularly, malaria morbidity
showed a strong relationship with episode of rainfall above 800 mm and above 5-year running mean of rainfall. Furthermore,
the RCA4 model indicated that, annual rainfall in the province will be 0% - 15% drier (below average) and seasonally, the
western part of the province will be 5% wetter in December – February (DJF) and 5% dryer in the eastern part in March – May
(MAM), June – August (JJA) and <20% dryer in September – November (SON). Near-surface temperature is projected to
increase between +1.5°C to +2.5°C in 29-year period.
Conclusion & Significance:
Adequate understanding of climatic variables dynamics retrospectively and prospectively is
imperative in seeking answers to malaria morbidity among other factors, particularly in the wake of the sudden spike of the
disease in the province.
Biography
Abiodun Adeola works as a lead scientist: climate change and variability in the research unit of South African Weather Service. His particular research interest is climate, climate
change and variability impacts on heath. He is proficient in the application of remote sensing and geographic information system in providing solutions to environmental health
problems through climate change analysis and modelling. He has a strong passion in improving the health and wellbeing. As part of his PhD research, he has developed a SARIMA
model using remotely derived environmental variables to predict malaria cases in South Africa. Article of the model is under review with Eco Health journal. He is currently a leading
member of a research collaboration group on Developing an integrated modeling and surveillance system based on climate, land use, and malaria transmission dynamics in the
eastern Limpopo river valley, South Africa.
abiodun.adeola@weathersa.co.zaAbiodun Adeola
South African weather service, South Africa