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Published byBarry Ray Modified over 9 years ago
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Campylobacter Risk Assessment in Poultry Helle Sommer, Bjarke Christensen, Hanne Rosenquist, Niels Nielsen and Birgit Nørrung
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P r e v a l e n s C o n c e n t r a t i o n SLAUGHTERHOUSERETAILCONSUMERRISK P farmh. C a.bleeding Probability of Infection Probability of Exposure
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Data examinations – distributions Process model building – explicit equations Explicit equations/ simulations Cross contamination What-if-simulations Slaughter house modules
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Data examinations Data for 3 different purposes - prevalence distribution -> slaughterhouse program - concentration distribution - model building, before and after a process From mean values to a distribution Lognormal/ normal –> illustrations Same or different distributions –> variance analysis
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From mean values to a distribution 17 log mean values from different flocks and from 2 different studies
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From mean values to a distribution 17 distributions -> one common distribution
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Log-normal or normal distribution ? ”True” data structure = simulated data (sim.=) Assumed distribution (dist.=) Published data = means of 4 samples,6 means from one study sim.= lognormal(6.9,2.3) dist.= normal or lognormal
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Real data set Normal scale
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New Danish data
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Slaughterhouse process Building mathematical models
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Why new mathematical process models ?
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Explicit mathematical process model
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In normal scale μ y = μ x / Δ μ 100 = 10000 / 100 In log scale μ logy = μ logx – Δ μ 2 = 4 - 2
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Explicit mathematical process model In normal scale μ y = μ x / Δ μ 100 = 10000 / 100 In log scale μ y = μ x – Δ μ 2 = 4 - 2 σ y 2 = β 2 · σ x 2 Transformation line y = + β·x
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Explicit mathematical process model Overall model μ y = μ x - Δμ σ y 2 = β 2 · σ x 2 Local model Y = + β·x Calculation of = (1-β)· μ x - Δμ
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Explicit mathematical process model In normal scale μ y / μ x = 158 In log scale μ y = μ x - 2.2
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Explicit mathematical process model In normal scale y = x + z z Є N (μ, σ)
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Summing up Explicit equations for modelling slaughterhouse processes + Monte Carlo simulations, modelling each chicken with a given status of infection, concentration level, order in slaughtering, etc. New data of concentration (input distribution) -> different or same distribution ? (mean and shape) Data + knowledge/logical assumptions of the process -> multiplicativ or additive process
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Advantage with explicit equations Accounts for homogenization within flocks More information along the slaughter line does not give rise to more uncertainty on the output distribution. Faster than simulations/Bootstrap/Jackknifing
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