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Spatial-temporal analysis of the
     risk of Rift Valley fever in Kenya
         B. Bett, A. Omolo, A. Notenbaert and S. Kemp

Presented at the 13th conference of the International Society of Veterinary Epidemiology and
                Economics, Maastricht, the Netherlands, 20-24 August 2012
Introduction
• RVF – a zoonotic disease caused by a mosquito-borne
  RNA virus
• The virus: 3 genome segments, fairly stable
• Reported about 1912 but was first described in 1931
  in Kenya
• Mainly affects sheep, goats, cattle, cattle with
  significant economic impacts
• 80% of human cases – mild flu-like syndrome, others
  severe
• In East Africa, it occurs as epidemics, mainly in arid
  and semi-arid areas after extensive flooding
Published work
• History of epizootics in Kenya (Murithi et al. 2010)
• Risk factors that have been identified (Hightower et
  al., 2012; Anyamba et al., 2009; Archie et al., 2007)
       Excessive rainfall (El Nino years, except 1989)
       NDVI
       Altitude (areas <1,100 m above sea level)
       Soil types (solonetz, calcisols, solanchaks, planosols)
On-going work on RVF risk analysis




  Source: Department of Veterinary Services   Centers for Disease Control



Current focus: Refine the risk maps and identify factors
that influence the incidence of RVF outbreaks verses
those that promote persistence
Methodology
• Data on RVF outbreaks
   – Case – laboratory confirmed outbreak of RVF (RT-PCR) by
     division/month from Vet. Department

• GIS datasets:
   –   Land use and land cover maps
   –   Precipitation
   –   NDVI
   –   Human population
   –   Elevation
   –   Soil types
   –   Wet lands
   –   Parks
GIS data - predictors
Variable                   Source                 Description
Livelihood zones           FEWSNET                Livelihood practices as at 2006

Land cover                 FAO on-line            Global land cover data, 2000
                           database
Precipitation              ECMWF                  Monthly minimum, maximum and
                                                  average for the period: 1979 - 2010
NDVI                       Spot Vegetation        Monthly average, minimum,
                                                  maximum values from: 1999 - 2010
Human population           Kenya National         Human and household census for
                           Bureau of Statistics   1960, 1970, 1980, 1990, 1999
Elevation                  CSI SRTM
Soil types                 FAO                    FAO’s Harmonized World Soil
                                                  Database (HWSD), 2009
Wetlands (area as % of     ILRI GIS Unit
total)
Parks/reserves (area as %) ILRI GIS Unit
Data analysis
• Descriptive analyses
• Regression models:
   – Generalized Linear Mixed models
      Poisson model for incidence   Restricted iterative generalized
                                     least squares estimation
      Logit models for prevalence
  – MCMC/spatial multiple membership model
     To account for spatial autocorrelation
Results                                                       Temporal distribution of RVF outbreaks: 1979 -
                                                                                 2010
Divisions that have had RVF outbreaks                                      18%
                                                                            8%                                                0.18
in Kenya between Jan 1912 and Dec                                          16%
                                                                            7%                                                0.16
2010




                                        Proportion of divisions affected
                                                                           14%                                                0.14
                                                                            6%
                                                                                                                              0.12
                                                                           5%
                                                                                                                              0.1
                                                                           4%
                                                                                                                              0.08
                                                                           3%
                                                                                                                              0.06
                                                                           2%
                                                                                                                              0.04

                                                                           1%                                                 0.02

                                                                           0%                                                 0




                                                                                                     Month

                                                                                  505 divisions -1999 population census

                                                                                  20.2 % (n = 102) of the divisions have had
                                                                                   an outbreak at least once

                                                                                  Mean outbreak interval : 5.4 (4.4 – 6.4)
                                                                                   years
Analyzing human population data – predictor?
                • Human population
              Human population trends 1960 - 1999                                  GLM model fitted to the human population data
                                                                                   Variable                Level         β            SE(β)           P>|Z|
                                                                                   Time                                      0.034            0.001      0.000
                                                                                   Level of growth         Very low          0.280            0.068      0.000
Pop density




                                                                                                           Low               0.000                -           -
                                                                                                           Medium            0.037            0.022      0.097
                                                                                                           High              0.218            0.063      0.001
                                                                                   Growth x Time           Very low          -0.036           0.006      0.000
                                                                                                           Low               0.000                -           -
                                                                                                           Medium            0.004            0.002      0.033
                                                                                                           High              0.009            0.003      0.002
                                                                                   Ln(starting pop)                          1.017            0.013      0.000
                                                                                   Ln(starting pop)_sq                       -0.006           0.002      0.013
                                                                                   Constant                                  0.005            0.016      0.757
                                                        Year
                                                                                    Log pseudo-likelihood = -746.67; AIC = 0.62; BIC = -18830.-5
               Deviance residuals verses fitted values
                                                                               •       Gives good prediction for human population
                                   3




                                                                               •       Outliers – mainly with the 1999 population:
              Deviance residuals
                                   2




                                                                                        – 3 divisions in NE Kenya, one with a
                                                                                           refugee camp
                                   1




                                                                                        – one division near Mau Forest
                                   0
                                   -1




                                                                               •       Population density is significant in the crude
                                                                                       RVF regression model
                                   -2




                                        -5         0             5        10
                                             Predicted mean ln(Pop den)
Association between altitude and RVF occurrence?
• Elevation
 Elevation map of Kenya                     Scatter plot of the number of RVF cases
                                            by altitude
                                                                        Running mean smoother




                                                         40
                                                         30
                                   Number of RVF cases
                                                         20
                                                         10
                                                         0
                                                              0   500       1000            1500   2000   2500

                                                                           Elevation in m




• Altitude is a factor; cases observed up to 2,300 m above sea level
• Similar observations made in Madagascar where RVF occurred in
  a mountainous region of >1,500m (Chevalier et al., 2011)
• Soil texturebetween soil type and RVF occurrence?
    Association and type
 Soil texture   Status     Frequency    Number positive     %              Chi (P)
 Clay           Yes                 345                  80           23.2    5.6 (0.02)
                No                  157                  22           14.0
 Loamy          Yes                  70                  11           15.7    1.1 (0.30)
                No                  432                  91           21.1
 Sandy          Yes                  25                   2            8.0    2.5 (0.12)
                No                  477                 100           21.0
 Very clayey    Yes                  53                   8           15.1    0.1 (0.32)
                No                  440                  94           20.9

Relative distribution of soil types and divisions with RVF in Kenya

                                                         • Soil types associated
                                                           with RVF include:
                                                            – Solonetz
                                                            – Luvisols
                                                            – Vertisols
                                                            – Lixisols
Regression model: factors that affect the incidence of RVF with
  months-at-risk as an offset
                                     Multi-level Poisson   MCMC/Bayesian     Multiple –membership
                                     model                 model             model
Variable                  Level            β        SE        β       SE        β      SE
Fixed effects
Constant                                 -16.73    0.22      -17.15   0.25    -17.03   0.34
Precipitation                              0.30    0.01        0.29   0.02      0.29   0.02
Elevation                 < 2300 m        0.000       -        0.00      -      0.00      -
                          > 2300 m        -0.58    0.54       -0.59   0.49     -0.82   0.52
No. previous infections   0                0.00       -        0.00             0.00      -
                          1-6              5.86    0.24        5.94   0.21      5.72   0.21
                          >6               7.26    0.27        7.37   0.25      6.96   0.24
Random effects
Livelihood zones                           1.72    0.38        0.95   0.27      0.71 0.46
Division                                   0.00    0.00        0.01   0.01      1.70 0.55
Deviance                                                    4139.29          4140.91
Models for the persistence of outbreaks
                           Multi-level Poisson model   MCMC/Bayesian model

Variable           Level              β        SE       β       SE
Fixed effects
Constant                              -3.74    0.69     -6.18   0.92
Precipitation                          0.11    0.03      0.16   0.04
NDVI                                   2.68    0.80      3.29   0.83
Soil types         Solonetz            1.34    0.49      1.64   0.62
                   Luvisols            1.24    0.45      1.80   0.59
Elevation          < 2300 m            0.00       -      0.00      -
                   > 2300 m           -2.99    0.64     -3.79   0.95
Random effects
Livelihood zones                      3.16     0.61      9.37 3.02
Deviance                                               841.57
Discussion
• RVF appears to be conquering new areas
  though hot spots experience outbreaks more
  frequently
• Intense precipitation more important for RVF
  incidence (3 months cumulative) but soil type
  (e.g. solonetz and luvisols) supports
  persistence of outbreaks
• Elevation – consistent with previous findings
  but the range is wider (over 1,100m)
• Potential for using these results to map hot
  spots in the Horn of Africa
Acknowledgements
• GIS Unit ILRI
• EU FP7 Funding – QWeCI Project

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Spatial-temporal analysis of the risk of Rift Valley fever in Kenya

  • 1. Spatial-temporal analysis of the risk of Rift Valley fever in Kenya B. Bett, A. Omolo, A. Notenbaert and S. Kemp Presented at the 13th conference of the International Society of Veterinary Epidemiology and Economics, Maastricht, the Netherlands, 20-24 August 2012
  • 2. Introduction • RVF – a zoonotic disease caused by a mosquito-borne RNA virus • The virus: 3 genome segments, fairly stable • Reported about 1912 but was first described in 1931 in Kenya • Mainly affects sheep, goats, cattle, cattle with significant economic impacts • 80% of human cases – mild flu-like syndrome, others severe • In East Africa, it occurs as epidemics, mainly in arid and semi-arid areas after extensive flooding
  • 3. Published work • History of epizootics in Kenya (Murithi et al. 2010) • Risk factors that have been identified (Hightower et al., 2012; Anyamba et al., 2009; Archie et al., 2007)  Excessive rainfall (El Nino years, except 1989)  NDVI  Altitude (areas <1,100 m above sea level)  Soil types (solonetz, calcisols, solanchaks, planosols)
  • 4. On-going work on RVF risk analysis Source: Department of Veterinary Services Centers for Disease Control Current focus: Refine the risk maps and identify factors that influence the incidence of RVF outbreaks verses those that promote persistence
  • 5. Methodology • Data on RVF outbreaks – Case – laboratory confirmed outbreak of RVF (RT-PCR) by division/month from Vet. Department • GIS datasets: – Land use and land cover maps – Precipitation – NDVI – Human population – Elevation – Soil types – Wet lands – Parks
  • 6. GIS data - predictors Variable Source Description Livelihood zones FEWSNET Livelihood practices as at 2006 Land cover FAO on-line Global land cover data, 2000 database Precipitation ECMWF Monthly minimum, maximum and average for the period: 1979 - 2010 NDVI Spot Vegetation Monthly average, minimum, maximum values from: 1999 - 2010 Human population Kenya National Human and household census for Bureau of Statistics 1960, 1970, 1980, 1990, 1999 Elevation CSI SRTM Soil types FAO FAO’s Harmonized World Soil Database (HWSD), 2009 Wetlands (area as % of ILRI GIS Unit total) Parks/reserves (area as %) ILRI GIS Unit
  • 7. Data analysis • Descriptive analyses • Regression models: – Generalized Linear Mixed models  Poisson model for incidence Restricted iterative generalized least squares estimation  Logit models for prevalence – MCMC/spatial multiple membership model  To account for spatial autocorrelation
  • 8. Results Temporal distribution of RVF outbreaks: 1979 - 2010 Divisions that have had RVF outbreaks 18% 8% 0.18 in Kenya between Jan 1912 and Dec 16% 7% 0.16 2010 Proportion of divisions affected 14% 0.14 6% 0.12 5% 0.1 4% 0.08 3% 0.06 2% 0.04 1% 0.02 0% 0 Month  505 divisions -1999 population census  20.2 % (n = 102) of the divisions have had an outbreak at least once  Mean outbreak interval : 5.4 (4.4 – 6.4) years
  • 9. Analyzing human population data – predictor? • Human population Human population trends 1960 - 1999 GLM model fitted to the human population data Variable Level β SE(β) P>|Z| Time 0.034 0.001 0.000 Level of growth Very low 0.280 0.068 0.000 Pop density Low 0.000 - - Medium 0.037 0.022 0.097 High 0.218 0.063 0.001 Growth x Time Very low -0.036 0.006 0.000 Low 0.000 - - Medium 0.004 0.002 0.033 High 0.009 0.003 0.002 Ln(starting pop) 1.017 0.013 0.000 Ln(starting pop)_sq -0.006 0.002 0.013 Constant 0.005 0.016 0.757 Year Log pseudo-likelihood = -746.67; AIC = 0.62; BIC = -18830.-5 Deviance residuals verses fitted values • Gives good prediction for human population 3 • Outliers – mainly with the 1999 population: Deviance residuals 2 – 3 divisions in NE Kenya, one with a refugee camp 1 – one division near Mau Forest 0 -1 • Population density is significant in the crude RVF regression model -2 -5 0 5 10 Predicted mean ln(Pop den)
  • 10. Association between altitude and RVF occurrence? • Elevation Elevation map of Kenya Scatter plot of the number of RVF cases by altitude Running mean smoother 40 30 Number of RVF cases 20 10 0 0 500 1000 1500 2000 2500 Elevation in m • Altitude is a factor; cases observed up to 2,300 m above sea level • Similar observations made in Madagascar where RVF occurred in a mountainous region of >1,500m (Chevalier et al., 2011)
  • 11. • Soil texturebetween soil type and RVF occurrence? Association and type Soil texture Status Frequency Number positive % Chi (P) Clay Yes 345 80 23.2 5.6 (0.02) No 157 22 14.0 Loamy Yes 70 11 15.7 1.1 (0.30) No 432 91 21.1 Sandy Yes 25 2 8.0 2.5 (0.12) No 477 100 21.0 Very clayey Yes 53 8 15.1 0.1 (0.32) No 440 94 20.9 Relative distribution of soil types and divisions with RVF in Kenya • Soil types associated with RVF include: – Solonetz – Luvisols – Vertisols – Lixisols
  • 12. Regression model: factors that affect the incidence of RVF with months-at-risk as an offset Multi-level Poisson MCMC/Bayesian Multiple –membership model model model Variable Level β SE β SE β SE Fixed effects Constant -16.73 0.22 -17.15 0.25 -17.03 0.34 Precipitation 0.30 0.01 0.29 0.02 0.29 0.02 Elevation < 2300 m 0.000 - 0.00 - 0.00 - > 2300 m -0.58 0.54 -0.59 0.49 -0.82 0.52 No. previous infections 0 0.00 - 0.00 0.00 - 1-6 5.86 0.24 5.94 0.21 5.72 0.21 >6 7.26 0.27 7.37 0.25 6.96 0.24 Random effects Livelihood zones 1.72 0.38 0.95 0.27 0.71 0.46 Division 0.00 0.00 0.01 0.01 1.70 0.55 Deviance 4139.29 4140.91
  • 13. Models for the persistence of outbreaks Multi-level Poisson model MCMC/Bayesian model Variable Level β SE β SE Fixed effects Constant -3.74 0.69 -6.18 0.92 Precipitation 0.11 0.03 0.16 0.04 NDVI 2.68 0.80 3.29 0.83 Soil types Solonetz 1.34 0.49 1.64 0.62 Luvisols 1.24 0.45 1.80 0.59 Elevation < 2300 m 0.00 - 0.00 - > 2300 m -2.99 0.64 -3.79 0.95 Random effects Livelihood zones 3.16 0.61 9.37 3.02 Deviance 841.57
  • 14. Discussion • RVF appears to be conquering new areas though hot spots experience outbreaks more frequently • Intense precipitation more important for RVF incidence (3 months cumulative) but soil type (e.g. solonetz and luvisols) supports persistence of outbreaks • Elevation – consistent with previous findings but the range is wider (over 1,100m) • Potential for using these results to map hot spots in the Horn of Africa
  • 15. Acknowledgements • GIS Unit ILRI • EU FP7 Funding – QWeCI Project