ecological niche modelling of potential rvf vector mosquito species and their geographical...
DESCRIPTION
In Kenya, RVF outbreaks have occurred cyclically in 1996 to 2007. Characterizing RVF vector habitat requirements allows for the identification of areas at risk of viral amplification and transmission. Ecological niche models were developed using records of potential RVF Kenyan vector mosquito species to predict their habitat suitability range and to investigate possible geographical associations with RVF outbreak occurrence in Kenya in 2006 -2007. The contribution of different environmental variables to the niche models was also assessed. Suitable habitats for Culex pipiens, Culex univittatus, Culex quinquefasciatus and Culex zambaensis were widely distributed in the county stretching from the western to the coastal strip while ; Aedes quasiunivittatus, Aedes aegypti were concentrated in Eastern Kenya with occupations in Rift Valley, Central and the coastal areas. High precipitation variables showed the highest predictive power for aedes while length of dry months determined the Culex distribution. It would be important to investigate the contributions of ruminant host population and landscape variables. RVF outbreaks had a significantly higher probability to occur in habitats suitable for both Aedes and Culex species, providing circumstantial evidence that the potential distribution of these two species coincides geographically with the observed distribution of the disease.TRANSCRIPT
Ecological Niche Modeling and Spatial Risk Analysis
for potential spread of Rift Valley Fever Vectors in Kenya
Presented at 3rd MVVR Conference at Hilton Hotel Nairobi, 16th October 2014
Nanyingi M,Bayoh N, Ogola E, Thumbi M,Mosmtai G,Gachie T, Muchemi G,
Kiama G , Munyua P, Sang R, Njenga K and Bett B
History, Etiology and Epidemiology
Montgomery , 1912, Daubney 1931, Davies 1975, Jost et al., 2010
RVF viral zoonosis of cyclic
occurrence(5-10yrs), described In
Kenya in 1912 isolated in 1931 in
sheep with hepatic necrosis and
fatal abortions.
RVFV is an OIE transboundary
high impact pathogen and CDC
category A select agent.
Etiology: Phlebovirus in
Bunyaviridae (Family).
Genome: tripartite RNA segments
designated large (L), medium (M),
and small (S) contained in a
spherical (80–120 nm in diameter)
lipid bilayer.
Risk factors:
Precipitation: > 600mm, flooding
Altitude: <1100masl
Vector +: Aedes, culicines spp?
NDVI: 0.1 units > 3 months
Soil : Solonetz, Solanchaks,
planosols
Historical Outbreaks
Epidemics in Africa and recently
Arabian Peninsula; in Egypt (1977),
Kenya (1997–1998, 2006-2007),
Saudi Arabia (2000–2001) and
Yemen (2000–2001), Sudan (2007)
and Mauritania (2010)
3
RVF Vector Emergence (Ecological and Climatic)
Precipitation: ENSO/Elnino above
average rainfall leading hydrographical
modifications/flooding
(“dambos”,dams,irrigation channels).
Vector Presence: 35/38 spp.
(interepidemic transovarial maintenance by
aedes 1º and culicine 2º (vectorial capacity/
competency)
Dense vegetation cover =Persistent
NDVI.(0.1 units > 3 months)
Soil types: Solonetz, Solanchaks,
planosols (drainage/moisture)
Elevation : altitude <1,100m asl
Linthicum et al., 1999; Anyamba et al., 2009;Sang et al ., 2010; Hightower et al., 2012
r
h
Culex
eggs
Aedes
eggs
t0Jan Dec
t20
h
Aedes
eggsr
Culex
eggs
t0
Jan Dec
Adult
Den
sity
A
dult
Den
sity
(Aedes- Culex complex) responsible for maintenance and amplification of the virus
Objectives and Approaches
To evaluate the correlation between mosquito distribution
and environmental-climatic attributes favoring emergence of
RVF.
(Statistical modeling the climatic, ecological and
environmental drivers of RVF outbreaks).
To develop a risk map for spatial prediction of RVF
outbreaks in Kenya based on potential vector distribution
(Spatial and temporal analysis and risk modelling by GIS
Analysis)
Study Design and Research Approach
Cross-sectional and purposive design
1. Randomization of 15 high and 15 low risk (Case & Control)
districts based on RVF occurrence data (2006-2007).
2. Seasonality based on precipitation : Wet and dry
3. Monthly multisite sampling: 40 points in 4 quadrants.
4. Population based: Livestock and household distribution.
5. Socioeconomic survey (SES) and health care access.
6. Spatiotemporal analysis and ENM for RVF risk prediction
(Maxent, GARP,BRT,RF) using R- Statistics,ArcGIS,QGIS
Geographical Distribution of Arthropod Vectors and Exploration of
Pathogens they Transmit in Kenya (Approved KEMRI ERC, SSC 1849)
Maximum Entropy (Maxent) Model
Culex species was highly influence by the number of dry months variable (dm),
mean annual rainfall (bio12), Aedes was influenced by rainfall derived variables
Boosted Regression Trees(BRT)
Number of dry months (dm), longest dry seasons (llds) and
rainfall of wettest month (bio 13), had the highest influence on
culex species distribution.
Comparative Random Forest(RF) Output
Aedes is highly influence by moisture index of moist quarter (mimq)
rainfall of driest quarter (bio 17), rainfall of wettest month (bio13).
What Next?? Regional Models = Model Validation
Multisite country level surveillance coupled with RVF
seroepidemiology profiles for hotspots is promising for
validation and genomic pathogen discovery.
Maxent
Geographically linked phylogenetic models?
11
Limitations of the study
Lack of data from “hotspots” may complicate conclusive
associations between the vector presence, epidemiological data and
ecological predictors.
Temporal and spatial distribution was not explicitly examined due to
insufficient vector presence data.
Lack of reliable climatic and ecological parameters from local
databases hence leading to risk generalization projected from the
regional- global databases.
Despite excellent model agreement in prediction of habitat suitability
for vectors, species taxonomic identification is underway for specific
niche modelling.
Overfitting due to clustered sampling can lead to misinterpretation of
geographical spread of vector( corrected by stratification and cross-
validation)
12
Conclusions and Recommendations
This is an empirical attempt to predict large-scale country
level spatial patterns of RVF occurrence using vector data
and ecological predictor variables.
The vector predictive risk maps will be useful to animal
and human health decision-makers for planning
surveillance and control in RVF known high-risk areas.
The forecasting and early detection of RVF outbreaks
using VSS contributes to comprehensive risk assessment
of pathogen diffusion to naive areas, hence essential in
disease control preparedness.
GIS tools and ENM can contribute to existing model
frameworks for mapping the areas at high risk of RVFV
and other vector borne diseases.
ACKNOWLEDGEMENTS
Data sources
AFRICLIM database
World Clim - Global Climate data, available at http://www.worldclim.org/
Collaborating Institutions
DVS, DDSR,DVBD,MOPH, ZDU,USAMRU
Individuals
IHAHP team, study participants, CHW, Local administrators
Contact : [email protected], [email protected]