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Quantitative approaches for early detection surveillance of invading pests and diseases Parnell S1, Mastin A1, Cunniffe NJ2, Gottwald TR3, Gilligan CA2, van den Bosch F4 1University of Salford, Manchester, UK 2University of Cambridge, Depn. Plant Sciences, UK 3USDA Agricultural Research Service, Ft. Pierce, Florida 4Rothamsted Research, Harpenden, UK Early detection surveillance… (finding the needle in the haystack) Importance of early-detection for successful pest/disease eradication or management. But… 1. 2. What will a surveillance program/network tell us? How can we can best target our surveillance to detect as early as possible? Use of epidemiological modelling to quantify probability of detection, informed by the epidemiology. Surveillance in the wider environment Applications: regulatory survey Acute Oak Decline P. ramorum Ash dieback Citrus canker Citrus greening Cassava brown streak Stem rust Ug99 Plum pox virus Xylella fastidiosa Quantifying prevalence at first detection When an invader is discovered for the first time, what prevalence will it have reached? Relating survey effort and epidemiology to quantify ‘detection-prevalence’ Mean prevalence on first detection “rule of thumb” E(q*): 𝑬 𝒒∗ = 𝒓 𝑵/∆ = 𝒆𝒑𝒊𝒅𝒆𝒎𝒊𝒄 𝒈𝒓𝒐𝒘𝒕𝒉 𝒓𝒂𝒕𝒆 𝒔𝒂𝒎𝒑𝒍𝒊𝒏𝒈 𝒓𝒂𝒕𝒆 But does this rule of thumb work? Testing on Citrus greening spatial & temporal data (also tested on other systems) Rule of thumb (CIs) Observed (random sampling) Observed (systematic sampling) HLB epidemic data, Southern Gardens Citrus. Mike Irey and Tim Gast. Application to the current PPV survey program in New York State The USDA-APHIS PPV Survey: • Current sampling effort and test sensitivity o 56,415 commercial samples & 5,235 residential trees o ELISA test sensitivity 71% o Survey conducted annually • Estimates of the epidemic growth rate o Epidemic increases at rate of 0.0015 per day (proportion of the total population) Too much survey effort? Application of basic ideas to Oriental chestnut gall wasp: (situation in June 2015) Preliminary result: Based on an estimation of volunteer survey effort, what prevalence had it reached when first discovered? (Nb heavy caveats…!) Risk-based surveys for invading pests and diseases Smarter surveillance strategies: Determining maps of epidemiological risk and using to target survey efforts. Risk-based surveys for invading pests and diseases Citrus greening example locations to sample probability of infection X hazard (planting age & size) = Used in Florida since 2006 to search for multiple pathogens to maximise new finds (Multi-Pest Survey) Risk-based sample Risk-based surveys for invading pests and diseases Chalara example Hazard X Distance to known positives = Sampling riskweighting Nb Optimal course of action is not as simple as choosing N highest risk locations Volunteer survey effort Potential of modelling methods to help understand and target volunteer survey efforts. Quantitative approaches can help to answer: – How many volunteers are enough and what will they tell us? – Where should volunteer effort be targeted? – Do we invest in more volunteers or training existing ones better? (coverage vs efficiency) – How can regulatory surveys best compliment volunteer efforts? But some challenges… – How do we measure volunteer survey effort (e.g. when there are no “absence data”)? – How do we measure volunteer detection-efficiency? Acknowledgements Co-authors: Dr Frank van den Bosch Dr Tim Gottwald Dr Alex Mastin Dr Nik Cunniffe Prof Chris Gilligan Rothamsted Research US Department of Agriculture, ARS University of Salford University of Cambridge University of Cambridge