Abstract:
Malaria plagues in Nigeria more than the rest of the world, maybe due to increased malaria
vectors exacerbated by anthropogenic climate change and socio-ecological factors. Information
on spatial distribution of malaria vector species is needed to improve malaria control efforts.
This study aimed to develop a GIS-based model to map current and future suitable
environments and distribution of malaria vector species with respect to climate change, having
carried out a historical assessment of malaria cases and mortality in Nigeria for a period of
sixty one years, with result showing that malaria prevalence increased with warmer climates.
Maximum Entropy Model (MaxEnt) was used to estimate suitable environments and potential
distribution of eight Anopheles species found in Nigeria: An. gambiae sensu lato, An. funestus
complex, An. gambiae sensu stricto, An. arabiensis, An. funestus sensu stricto, An. leesoni, An.
nili and An. moucheti. Species occurrence data between 1900 and 2010 obtained from Nigeria
Anopheles database was used alongside landuse and terrain variables, and 19 bioclimatic
variables from WorldClim - Global Climate Data for current and future climate scenarios of
2050s and 2070s, based on Representative Concentration Pathways (RCPs) 2.6 and 8.5. Results
show that dominant species: An. gambiae sensu lato, An. funestus complex, An. gambiae sensu
stricto, and An. arabiensis are currently widespread across all ecological zones of Nigeria, and
will experience large shift in potential range and population under RCP2.6, and larger under
RCP8.5. Also widespread are An. funestus sensu stricto, An. nili and the rare species, An.
leesoni, which are projected to reduce in potential range under future warmer climates. An. nili
shows strong occurrence capacity within highlands and Mid Altitude zone just as An. leesoni
along Sudano-Sahelian belt. Temperature fluctuation from mean diurnal temperature range,
extreme temperature and precipitation conditions, high humidity in dry season from
precipitation during warm months, and land use and land cover dynamics have the greatest
influence on the current seasonal distribution and the future potential range of these malaria
vector species. MaxEnt performed statistically significantly better than random with area under
the receiver operating characteristic curve (AUC) approximately 0.7 for estimation of the
Anopheles species environmental suitability, distribution and variable importance. Hence this
study provides information on suitable environments and spatial distribution of malaria vector
species in all spatial locations across topographic relief, ecological and regional zones in
Nigeria; stating the contribution of climate and ecological variables used to indicate exact
positions of the suitable environments. This model result can contribute to surveillance efforts
and control strategies for malaria eradication.