mln presesntation very final
TRANSCRIPT
Maize Lethal Necrosis Disease Threat in Africa: Current and Future Risk Analysis Using Ecological
Nichie Models
Rwomushana I1, Isabirye B.E1*, Masiga C. W1., Zziwa E1, Opio F1
1Association for Strengthening Agricultural Research in Eastern and Central Africa (ASARECA), P.O.Box 765, Entebbe, Uganda
Introduction • Most important cereal crop: Staple food (>1.2 billion) & 34% global cereal production
• Africa grows 29 M ha & consumes 30% global
maize produce. E.A average per capi ta consumption is 100 kg/ year
• Due to several constraints, Africa does not exploit
her over 80M Ha potential land for maize production, hence imports 28% to fill the consumption deficit.
• Maize Lethal Necrosis Disease (MLND), caused by synergistic effect of maize chlorotic mottle virus (MCMV) and any potyvirus: MDMV, SCMV, WSMV has been causing maize losses lately!
• Maize production to drop by >15% by 2020 in much of sub-Saharan Africa. Estimated loss to Africa at $2 billion a year. Prices increase by 35% for maize
MLND Prevalence • Incidence dates back to 1973 in Peru,
and in Kansas, 1976 (Castillo & Hebert, 1974; Niblett & Claflin, 1978).
• China in 2010, and by 2011 in Argentina & Mexico (Nelson et al., 2011)
• In Africa: in Kenya in 2011 Bomet County (Wangai, 2012), Tanzania (Miano et al. 2013), and Uganda (CABI, 2013), Rwanda (RAB, 2013).
• Losses range btn 30-100% (FAO, 2012;
CABI, 2013). Over 15,732 ha of maize infected, affecting over 300,000 farmers in Kenya by mid 2012 (FSNWG, 2012).
4
Climate Change Impact on Agriculture
• Variable and uncertain weather - the greatest challenges to small-scale farmers whose livelihoods we aim to transform in ECA
• New technologies and knowledge
- hardier crops and better ways to manage resources
• Need to address both mitigation
of and adaptation to climate change.
The Study: Current and future Risk Analysis • The spatiotemporal variation of MLN suitability and emergence
remains poorly understood, making it difficult to design responsive mitigation and adaptation measures.
§ Describe the geographic distribution and ecological niche (Grinnell, 1917) of MLN in Africa to identify potential risk areas using a landscape epidemiology approach.
• Important first attempt in identifying the geographic areas in Africa
having the ecological conditions suitable for MLND in the environment.
• Premise: Knowing the suitable environmental conditions for specific
vectors, hosts and pathogens in nature, one can use the landscape to identify the spatial and temporal distribution of disease risk (Meade & Earickson 2000; NASA 2006).
Landscape epidemiology with ENM • In many cases, the details of ecologic
parameters associated with occurrences of diseases may be unclear because of small sample sizes, biased reporting, or simply lack of detailed geographic or ecologic analysis.
• ENM has a suite of tools that relate known occurrences of these phenomena to raster geographic information system layers that summarize variation in several environmental dimensions.
• The result is an objective, quantitative picture of how what is known about a species or phenomenon relates to environmental variation across a landscape.
Disease ENM: Proof of Concept Characterization of ecologic features of
outbreaks of hemorrhagic fever caused by Ebola and Marburg viruses
Current range prediction
Geographic Space Ecological Space
occurrence points on current distribution
ecological niche modeling
Projection back onto geography
Future range prediction
temperature
Model of niche in ecological dimensions
prec
ipita
tion
Methods for ENM of MLND
Current Variable Variable type Bio1 Annual mean temperature Bio2 Mean diurnal range: mean of monthly) Bio3 Isothermality: (P2/P7) × 100 Bio4 Temperature seasonality (SD × 100) Bio5 Maximum temperature of warmest month Bio6 Minimum temperature of coldest month Bio7 Temperature annual range (P5 – P6) Bio8 Mean temperature of wettest quarter Bio9 Mean temperature of driest quarter Bio10 Mean temperature of warmest quarter Bio11 Mean temperature of coldest quarter Bio12 Annual precipitation Bio13 Precipitation of wettest month Bio14 Precipitation of driest month Bio15 Precipitation seasonality Bio16 Precipitation of wettest quarter Bio17 Precipitation of driest quarter Bio18 Precipitation of warmest quarter Bio19 Precipitation of coldest quarter !
Methods for ENM of MLND… 1. Extensive Survey by Several Partners and laboratory confirmation with PCR, FERA-UK
2. Literature review for reported detections in region 3. GARP: Genetic algorithm that uses a set of phenomena point localities and a set of geographic layers representing the limiting environmental parameters. 4. Both current (1950-2000) and future (2020 and 2050) Scenarios were used (IPCC).
Results 1. Current Risk: Potential distribution and Hotspots
MLN Records in Africa Current Potential Risk Areas Hot Spots distribution
Eastern and Central Africa, and Southern and Mid-West Africa show suitability of MLN, with majority of hotspots located in the humid and sub-humid central and eastern Africa
Results… 2. Future Risk: 2020 Potential distribution & Hotspots
2020 Period Potential Risk Areas 2020 Hotspots distribution
Shrinkages in MLN suitability predicted, with much of West Africa, Madagascar and Southern Africa becoming less suitable, but Eastern Africa will remain hotspots.
Results… 3. Future Risk: 2050 Potential distribution & Hotspots
2050 Period Potential Risk Areas 2050 Hotspots distribution
Shrinkages in MLN suitability predicted, with much of West Africa, Madagascar and Southern Africa becoming less suitable, but Eastern Africa will remain hotspots.
Results…Limiting Factors
Temperature (isothermality, annual range and mean temperature of coldest quarter) and precipitation (precipitation of the wettest month and quarter) had the greatest effect on the models
Conclusions
• MLND Risk in Africa is high! Predictive tests based on independent distributional data indicate that model predictions are robust (ROC and Kappa values ranging between 85 and 99%), while field observations confirm relationships between incidence and model predictions.
• There is need for better allocation of resources in the management of MLN, with special emphasis in the Eastern and Central African region which will remain a hotspot up to 2050.
• Landscape based epidemiology can resolve spatial resolution of geographic risk for current and emerging diseases. Propose inclusion in regional and national Early Warning Initiatives.
WORKSHOP TO DEVELOP A STRATEGIC PLAN FOR MAIZE LETHAL NECROSIS DISEASE FOR ECA, JACARANDA HOTEL, NAIROBI, KENYA, 21-23 AUGUST 2013.
Thanks!!!