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Applications of ecological niche modelling for mapping the risk of Rift Valley fever in Kenya 
P.N. Kiunga1,4, P.M. Kitala1, K.A. Kipronoh2, G. Mosomtai3 and B. Bett4 
Presented at the 9th biennial scientific conference and exhibition of the Faculty of Veterinary Medicine, University of Nairobi 3-5 September 2014 
1University of Nairobi, 2Kenya Agricultural and Livestock Research Organization (KALRO), 3icipe, 4International Livestock Research Institute (ILRI)
Introduction 
Rift Valley fever (RVF) is an acute febrile arthropod- borne zoonotic disease 
Aetiology: RVFV, family Bunyaviridae , genus Phlebovirus. 
RVF History in Kenya 
1912: first report of RVF-like disease in sheep 
1931: virus isolation and confirmation (Daurbney et al., 1931) 
2006/2007: last outbreak in Kenya
Disease Ecology 
El Niño/Southern Oscillation (ENSO) –causing flooding 
soil types- solonetz, solanchaks, planosols 
Elevation-less than 1100m asl 
 Natural Difference Vegetation Index (NDVI)- 0.1 units more than 3 months 
Vector- Aedes ,Culicine and others 
(Linthicum et al., 1999; Anyamba et al., 2009; Hightower et al., 2012; Bett et al., 2013)
Ecological niche model 
•studies done on RVF mapping 
Disease occurrence maps 
 statistical models which uses presence and absence data such as logistic regression method. 
 This study used Ecological Niche Modeling: 
• Uses presence data 
• Shows potential areas where RVF can occur
Methodology 
•Data on RVF outbreaks – Case – laboratory confirmed outbreak of RVF from Vet. Department was visited and geo-referenced 
• GIS datasets: 
– Land use and land cover maps 
– Precipitation 
– NDVI 
– Temperature 
– Elevation 
– Soil types
Methodology cont’ 
•By use of Genetic Algorithm for Rule set Production (GARP); an open modeller software creates ecological niche models for species 
•GARP uses a set of point localities where the species is known to occur and a set of geographic layers representing the environmental parameters that might limit the species' capabilities to survive 
•Uses rules of selection, evaluation, testing and incorporation or rejection in modeling
•Sample points were collected in the field that define the niche of the species using environmental variables. 
•GARP algorithm was used to map the actual and potential distribution of Rift Valley fever distribution in Kenya 
•The map below shows the distribution of RVF in Kenya from regions with high risk occurrence to regions with none. 
•Area Under Cover (AUC) of 0.82, ). A Partial receiver operating characteristic (ROC) analysis prediction with a value of 1.77.
Discussion 
•Results from jackknife analysis showed which variables had the highest influence on the models and the important variable . 
•Vegetation index for March 2007 had the highest influence on the model while the least influence was on December, 2006. 
•Temperature and rainfall data had relatively equal influence on the model for all the months.
jackknife analysis for the NDVI variables
jackknife analysis for rainfall and temperature variables 
0 
10 
20 
30 
40 
50 
60 
70 
80 
90 
100 
OCT 
NOV 
DEC 
JAN 
FEB 
MAR 
RAINFALL 
TEMPERATURE
This will help the Government of Kenya to know which areas to focus their attention and put plans in place when the outbreak occurs again.
Applications of ecological niche modelling for mapping the risk of Rift Valley fever in Kenya

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Applications of ecological niche modelling for mapping the risk of Rift Valley fever in Kenya

  • 1. Applications of ecological niche modelling for mapping the risk of Rift Valley fever in Kenya P.N. Kiunga1,4, P.M. Kitala1, K.A. Kipronoh2, G. Mosomtai3 and B. Bett4 Presented at the 9th biennial scientific conference and exhibition of the Faculty of Veterinary Medicine, University of Nairobi 3-5 September 2014 1University of Nairobi, 2Kenya Agricultural and Livestock Research Organization (KALRO), 3icipe, 4International Livestock Research Institute (ILRI)
  • 2. Introduction Rift Valley fever (RVF) is an acute febrile arthropod- borne zoonotic disease Aetiology: RVFV, family Bunyaviridae , genus Phlebovirus. RVF History in Kenya 1912: first report of RVF-like disease in sheep 1931: virus isolation and confirmation (Daurbney et al., 1931) 2006/2007: last outbreak in Kenya
  • 3. Disease Ecology El Niño/Southern Oscillation (ENSO) –causing flooding soil types- solonetz, solanchaks, planosols Elevation-less than 1100m asl  Natural Difference Vegetation Index (NDVI)- 0.1 units more than 3 months Vector- Aedes ,Culicine and others (Linthicum et al., 1999; Anyamba et al., 2009; Hightower et al., 2012; Bett et al., 2013)
  • 4. Ecological niche model •studies done on RVF mapping Disease occurrence maps  statistical models which uses presence and absence data such as logistic regression method.  This study used Ecological Niche Modeling: • Uses presence data • Shows potential areas where RVF can occur
  • 5. Methodology •Data on RVF outbreaks – Case – laboratory confirmed outbreak of RVF from Vet. Department was visited and geo-referenced • GIS datasets: – Land use and land cover maps – Precipitation – NDVI – Temperature – Elevation – Soil types
  • 6. Methodology cont’ •By use of Genetic Algorithm for Rule set Production (GARP); an open modeller software creates ecological niche models for species •GARP uses a set of point localities where the species is known to occur and a set of geographic layers representing the environmental parameters that might limit the species' capabilities to survive •Uses rules of selection, evaluation, testing and incorporation or rejection in modeling
  • 7. •Sample points were collected in the field that define the niche of the species using environmental variables. •GARP algorithm was used to map the actual and potential distribution of Rift Valley fever distribution in Kenya •The map below shows the distribution of RVF in Kenya from regions with high risk occurrence to regions with none. •Area Under Cover (AUC) of 0.82, ). A Partial receiver operating characteristic (ROC) analysis prediction with a value of 1.77.
  • 8.
  • 9. Discussion •Results from jackknife analysis showed which variables had the highest influence on the models and the important variable . •Vegetation index for March 2007 had the highest influence on the model while the least influence was on December, 2006. •Temperature and rainfall data had relatively equal influence on the model for all the months.
  • 10. jackknife analysis for the NDVI variables
  • 11. jackknife analysis for rainfall and temperature variables 0 10 20 30 40 50 60 70 80 90 100 OCT NOV DEC JAN FEB MAR RAINFALL TEMPERATURE
  • 12. This will help the Government of Kenya to know which areas to focus their attention and put plans in place when the outbreak occurs again.