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A modelling framework for the prediction of the herd-level probability of infection from longitudinal data

View ORCID ProfileAurélien Madouasse, Mathilde Mercat, Annika van Roon, David Graham, Maria Guelbenzu, Inge Santman Berends, View ORCID ProfileGerdien van Schaik, Mirjam Nielen, Jenny Frössling, Estelle Ågren, Roger W. Humphry, View ORCID ProfileJude Eze, George J. Gunn, Madeleine K. Henry, Jörn Gethmann, Simon J. More, View ORCID ProfileNils Toft, View ORCID ProfileChristine Fourichon
doi: https://doi.org/10.1101/2020.07.10.197426
Aurélien Madouasse
1BIOEPAR, INRAE, Oniris, La Chantrerie, Nantes 44300, France
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  • For correspondence: aurelien.madouasse@oniris-nantes.fr
Mathilde Mercat
1BIOEPAR, INRAE, Oniris, La Chantrerie, Nantes 44300, France
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Annika van Roon
2Department of Population Health Sciences, Unit Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, PO Box 80151, 3508, TD Utrecht, the Netherlands
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David Graham
3Animal Health Ireland, Unit 4/5, The Archways, Bridge St., Carrick-on-Shannon, Co. Leitrim N41 WN27, Ireland
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Maria Guelbenzu
3Animal Health Ireland, Unit 4/5, The Archways, Bridge St., Carrick-on-Shannon, Co. Leitrim N41 WN27, Ireland
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Inge Santman Berends
2Department of Population Health Sciences, Unit Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, PO Box 80151, 3508, TD Utrecht, the Netherlands
4GD Animal Health, PO Box 9, 7400 AA, Deventer, the Netherlands
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Gerdien van Schaik
2Department of Population Health Sciences, Unit Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, PO Box 80151, 3508, TD Utrecht, the Netherlands
4GD Animal Health, PO Box 9, 7400 AA, Deventer, the Netherlands
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Mirjam Nielen
2Department of Population Health Sciences, Unit Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, PO Box 80151, 3508, TD Utrecht, the Netherlands
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Jenny Frössling
5Department of Disease Control and Epidemiology, National Veterinary Institute (SVA), 751 89 Uppsala, Sweden
6Department of Animal Environment and Health, Swedish University of Agricultural Sciences, PO Box 234, 532 23 Skara, Sweden
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Estelle Ågren
5Department of Disease Control and Epidemiology, National Veterinary Institute (SVA), 751 89 Uppsala, Sweden
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Roger W. Humphry
7Scotland’s Rural College, Kings Buildings, West Mains Road, Edinburgh, EH9 3JG, United Kingdom
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Jude Eze
7Scotland’s Rural College, Kings Buildings, West Mains Road, Edinburgh, EH9 3JG, United Kingdom
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George J. Gunn
7Scotland’s Rural College, Kings Buildings, West Mains Road, Edinburgh, EH9 3JG, United Kingdom
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Madeleine K. Henry
7Scotland’s Rural College, Kings Buildings, West Mains Road, Edinburgh, EH9 3JG, United Kingdom
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Jörn Gethmann
8Friedrich-Loeffler-Institut – Federal Research Institute for Animal Health (FLI), Institute of Epidemiology, Südufer 10, 17493 Greifswald - Insel Riems, Germany
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Simon J. More
9Centre for Veterinary Epidemiology and Risk Analysis, UCD School of Veterinary Medicine, University College Dublin, Belfield, Dublin D04 W6F6, Ireland
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Nils Toft
10IQinAbox ApS, Lejrvej 29, 3500 Værløse, Denmark
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Christine Fourichon
1BIOEPAR, INRAE, Oniris, La Chantrerie, Nantes 44300, France
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  • ORCID record for Christine Fourichon
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Abstract

For many infectious diseases of farm animals, there are existing collective control programmes (CPs) that rely on the application of diagnostic testing at regular time intervals for the identification of infected animals or herds. The diversity of these CPs complicates the trade of animals between regions or countries because the definition of freedom from infection differs from one CP to another. In this paper, we describe a statistical model for the prediction of herd-level probabilities of infection from longitudinal data collected as part of CPs against infectious diseases of cattle. The model was applied to data collected as part of a CP against bovine viral diarrhoea virus (BVDV) infection in Loire-Atlantique, France. The model represents infection as a herd latent status with a monthly dynamics. This latent status determines test results through test sensitivity and test specificity. The probability of becoming status positive between consecutive months is modelled as a function of risk factors (when available) using logistic regression. Modelling is performed in a Bayesian framework, using either Stan or JAGS. Prior distributions need to be provided for the sensitivities and specificities of the different tests used, for the probability of remaining status positive between months as well as for the probability of becoming positive between months. When risk factors are available, prior distributions need to be provided for the coefficients of the logistic regression, replacing the prior for the probability of becoming positive. From these prior distributions and from the longitudinal data, the model returns posterior probability distributions for being status positive for all herds on the current month. Data from the previous months are used for parameter estimation. The impact of using different prior distributions and model implementations on parameter estimation was evaluated. The main advantage of this model is its ability to predict a probability of being status positive in a month from inputs that can vary in terms of nature of test, frequency of testing and risk factor availability/presence. The main challenge in applying the model to the BVDV CP data was in identifying prior distributions, especially for test characteristics, that corresponded to the latent status of interest, i.e. herds with at least one persistently infected (PI) animal. The model is available on Github as an R package (https://github.com/AurMad/STOCfree) and can be used to carry out output-based evaluation of disease CPs.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://github.com/AurMad/STOCfree

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted April 14, 2021.
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A modelling framework for the prediction of the herd-level probability of infection from longitudinal data
Aurélien Madouasse, Mathilde Mercat, Annika van Roon, David Graham, Maria Guelbenzu, Inge Santman Berends, Gerdien van Schaik, Mirjam Nielen, Jenny Frössling, Estelle Ågren, Roger W. Humphry, Jude Eze, George J. Gunn, Madeleine K. Henry, Jörn Gethmann, Simon J. More, Nils Toft, Christine Fourichon
bioRxiv 2020.07.10.197426; doi: https://doi.org/10.1101/2020.07.10.197426
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A modelling framework for the prediction of the herd-level probability of infection from longitudinal data
Aurélien Madouasse, Mathilde Mercat, Annika van Roon, David Graham, Maria Guelbenzu, Inge Santman Berends, Gerdien van Schaik, Mirjam Nielen, Jenny Frössling, Estelle Ågren, Roger W. Humphry, Jude Eze, George J. Gunn, Madeleine K. Henry, Jörn Gethmann, Simon J. More, Nils Toft, Christine Fourichon
bioRxiv 2020.07.10.197426; doi: https://doi.org/10.1101/2020.07.10.197426

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