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M. Arede - Mapping the risk of spread of Peste des Petits Ruminants in the Black Sea basin - A knowledge-driven approach

  1. EuFMD OS22 Mapping the Risk of Spread of PPR in the Black Sea Basin a Knowledge-driven Approach Arede, Margarida1; Beltrán-Alcrudo, Daniel2; Benfield, Camilla3.; Casal, Jordi1; Njeumi, Felix3.; Allepuz, Alberto1 UAB, Barcelona, Spain FAO - Regional Office for Europe and Central Asia, Budapest, Hungary FAO, Rome, Italy
  2. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 Margarida Arede PPR Risk Mapping in the Black Sea  PPR virus (Small Ruminant Morbillivirus)  Affects domestic and wild small ruminants Main transmission route High morbidity and mortality (acute phase of the disease) Peste des petits Ruminants (PPR) 2 Threatens food security & sustainable livelihood of rural communities Next livestock disease to be eradicated Global Strategy for the control and eradication of PPR
  3. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 Margarida Arede PPR Risk Mapping in the Black Sea 3 To identify the areas at higher risk of spread of PPR in domestic small ruminants of the Black Sea Basin
  4. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 C 4 Margarida Arede PPR Risk Mapping in the Black Sea Sheep and goat density Proximity to PPR outbreaks (2016-2019) Smallholder farming Proximity to market Seasonal pastures Most relevant RFs for the region Availability of spatial data for all countries Extensive literature review of risk factors associated with PPR spread Consultation with 2 PPR experts Integrates available knowledge about PPR use of free spatial data Problem definition Data collection Weighting of risk factors elicitation Risk factor mapping Standardization of risk factor maps Suitability map Validation Sensitivity analysis Generation of risk factor weights Identification of risk factors GIS Multi-criteria decision analysis *GIS-MCDA*
  5. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 Margarida Arede PPR Risk Mapping in the Black Sea 2020-2021 5 9 consultants from Questionnaire Ruminant specific information Disease specific information Data collation Analysis & Visualization Problem definition Data collection Weighting of risk factors elicitation Risk factor mapping Standardization of risk factor maps Suitability map Validation Sensitivity analysis Generation of risk factor weights Identification of risk factors GIS-MCDA Study region Time frame Materials & Methods 9 countries of the study region
  6. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 C 6 Margarida Arede PPR Risk Mapping in the Black Sea Pair-wise comparison matrix Less important Equivalent More important Extremely Very Strongly Strongly Moderately Moderately Strongly Very strongly Extremely Expert opinion to assess the relative importance of each identified risk factor for the spread of PPR in the Black Sea Basin PARTICIPANTS  FAO project consultants  Country PPR focal points  PPR Secretariat  PPR-GREN (Global Research and Expertise Network)  PPR international experts Risk Factor Risk Factor Sheep and goat density Proximity to areas affected by PPR Smallholder farming Proximity to market Seasonal pastures Sheep and goat density Proximity to areas affected by PPR Smallholder farming Proximity to markets Seasonal pastures Problem definition Data collection Weighting of risk factors elicitation Risk factor mapping Standardization of risk factor maps Suitability map Validation Sensitivity analysis Generation of risk factor weights Identification of risk factors GIS-MCDA
  7. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 RF standardized map RF weight given by expert [1:21] (Example Expert 1) 0,47 0,20 0,15 0,11 0,06 7 Margarida Arede PPR Risk Mapping in the Black Sea SUM 21 Problem definition Data collection Weighting of risk factors elicitation Risk factor mapping Standardization of RF maps Suitability map Validation Sensitivity analysis Generation of RF weights Identification of risk factors GIS-MCDA
  8. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 8 Margarida Arede PPR Risk Mapping in the Black Sea Suitability map for PPR spread in the Black Sea basin
  9. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 9 Margarida Arede PPR Risk Mapping in the Black Sea Problem definition Data collection Weighting of risk factors elicitation Risk factor mapping Standardization of risk factor maps Suitability map Validation Sensitivity analysis Generation of risk factor weights Identification of risk factors Cases Pseudo-absences PPR cases for 2020 and 2021 (90 occurrences) Randomly generated in Turkey (90 points) Suitability map for PPR spread in the Black Sea basin GIS-MCDA
  10. #OS22 Digitalization and innovation applied to the prevention and control of foot-and-mouth and similar transboundary animal diseases (FAST) OS22 Discussion & conclusion Limitations  Quality of RF data ○ ≠ spatial resolutions for ≠ countries  Use of proxies for animal movements (non-available data)  Uncertainty of expert opinion 10 Margarida Arede PPR Risk Mapping in the Black Sea Our suitability map  has a reasonable predictive accuracy  may be used to inform authorities on further investigations for the implementation of risk-based surveillance and control activities
  11. Thank you !.. Margarida Arede margarida.decastro@uab.cat Within the project: Global Framework for the Progressive Control of Transboundary Animal Diseases  Anna Bgzdravkan (Bulgaria)  Andrii Pavlenko (Ukraine)  Dmitry Morozov (Belarus)  Ipek Keskin (Turkey)  Jeyhun Aliyev (Azerbaijan)  Mihai Ponea (Romania)  Nicolae Starciuc (Moldova)  Tengiz Chaligava (Georgia)  Tigran Markosyan (Armenia)  All experts who contributed to the risk factor weighting exercise Acknowledgements
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