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A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases

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A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases. / Clough, Helen E.; Chaters, Gemma L.; Havelaar, Arie H. et al.
In: Frontiers in Veterinary Science, Vol. 12, 1459209, 07.03.2025.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Clough, HE, Chaters, GL, Havelaar, AH, McIntyre, KM, Marsh, TL, Hughes, EC, Jemberu, WT, Stacey, D, Afonso, JS, Gilbert, W, Raymond, K & Rushton, J 2025, 'A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases', Frontiers in Veterinary Science, vol. 12, 1459209. https://doi.org/10.3389/fvets.2025.1459209

APA

Clough, H. E., Chaters, G. L., Havelaar, A. H., McIntyre, K. M., Marsh, T. L., Hughes, E. C., Jemberu, W. T., Stacey, D., Afonso, J. S., Gilbert, W., Raymond, K., & Rushton, J. (2025). A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases. Frontiers in Veterinary Science, 12, Article 1459209. https://doi.org/10.3389/fvets.2025.1459209

Vancouver

Clough HE, Chaters GL, Havelaar AH, McIntyre KM, Marsh TL, Hughes EC et al. A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases. Frontiers in Veterinary Science. 2025 Mar 7;12:1459209. doi: 10.3389/fvets.2025.1459209

Author

Clough, Helen E. ; Chaters, Gemma L. ; Havelaar, Arie H. et al. / A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases. In: Frontiers in Veterinary Science. 2025 ; Vol. 12.

Bibtex

@article{1e288079b72942f38ba757fd6550993b,
title = "A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases",
abstract = "Livestock provide nutritional and socio-economic security for marginalized populations in low and middle-income countries. Poorly-informed decisions impact livestock husbandry outcomes, leading to poverty from livestock disease, with repercussions on human health and well-being. The Global Burden of Animal Diseases (GBADs) programme is working to understand the impacts of livestock disease upon human livelihoods and livestock health and welfare. This information can then be used by policy makers operating regionally, nationally and making global decisions. The burden of animal disease crosses many scales and estimating it is a complex task, with extensive requirements for data and subsequent data synthesis. Some of the information that livestock decision-makers require is represented by quantitative estimates derived from field data and models. Model outputs contain uncertainty, arising from many sources such as data quality and availability, or the user{\textquoteright}s understanding of models and production systems. Uncertainty in estimates needs to be recognized, accommodated, and accurately reported. This enables robust understanding of synthesized estimates, and associated uncertainty, providing rigor around values that will inform livestock management decision-making. Approaches to handling uncertainty in models and their outputs receive scant attention in animal health economics literature; indeed, uncertainty is sometimes perceived as an analytical weakness. However, knowledge of uncertainty is as important as generating point estimates. Motivated by the context of GBADs, this paper describes an analytical framework for handling uncertainty, emphasizing uncertainty management, and reporting to stakeholders and policy makers. This framework describes a hierarchy of evidence, guiding movement from worst to best-case sources of information, and suggests a stepwise approach to handling uncertainty in estimating the global burden of animal disease. The framework describes the following pillars: background preparation; models as simple as possible but no simpler; assumptions documented; data source quality ranked; commitment to moving up the evidence hierarchy; documentation and justification of modelling approaches, data, data flows and sources of modelling uncertainty; uncertainty and sensitivity analysis on model outputs; documentation and justification of approaches to handling uncertainty; an iterative, up-to-date process of modelling; accounting for accuracy of model inputs; communication of confidence in model outputs; and peer-review.",
keywords = "animal disease, disease burden, estimation, model, uncertainty, framework",
author = "Clough, {Helen E.} and Chaters, {Gemma L.} and Havelaar, {Arie H.} and McIntyre, {K. Marie} and Marsh, {Thomas L.} and Hughes, {Ellen C.} and Jemberu, {Wudu T.} and Deborah Stacey and Afonso, {Joao Sucena} and William Gilbert and Kassy Raymond and Jonathan Rushton",
year = "2025",
month = mar,
day = "7",
doi = "10.3389/fvets.2025.1459209",
language = "English",
volume = "12",
journal = "Frontiers in Veterinary Science",
issn = "2297-1769",
publisher = "Frontiers Media S.A.",

}

RIS

TY - JOUR

T1 - A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases

AU - Clough, Helen E.

AU - Chaters, Gemma L.

AU - Havelaar, Arie H.

AU - McIntyre, K. Marie

AU - Marsh, Thomas L.

AU - Hughes, Ellen C.

AU - Jemberu, Wudu T.

AU - Stacey, Deborah

AU - Afonso, Joao Sucena

AU - Gilbert, William

AU - Raymond, Kassy

AU - Rushton, Jonathan

PY - 2025/3/7

Y1 - 2025/3/7

N2 - Livestock provide nutritional and socio-economic security for marginalized populations in low and middle-income countries. Poorly-informed decisions impact livestock husbandry outcomes, leading to poverty from livestock disease, with repercussions on human health and well-being. The Global Burden of Animal Diseases (GBADs) programme is working to understand the impacts of livestock disease upon human livelihoods and livestock health and welfare. This information can then be used by policy makers operating regionally, nationally and making global decisions. The burden of animal disease crosses many scales and estimating it is a complex task, with extensive requirements for data and subsequent data synthesis. Some of the information that livestock decision-makers require is represented by quantitative estimates derived from field data and models. Model outputs contain uncertainty, arising from many sources such as data quality and availability, or the user’s understanding of models and production systems. Uncertainty in estimates needs to be recognized, accommodated, and accurately reported. This enables robust understanding of synthesized estimates, and associated uncertainty, providing rigor around values that will inform livestock management decision-making. Approaches to handling uncertainty in models and their outputs receive scant attention in animal health economics literature; indeed, uncertainty is sometimes perceived as an analytical weakness. However, knowledge of uncertainty is as important as generating point estimates. Motivated by the context of GBADs, this paper describes an analytical framework for handling uncertainty, emphasizing uncertainty management, and reporting to stakeholders and policy makers. This framework describes a hierarchy of evidence, guiding movement from worst to best-case sources of information, and suggests a stepwise approach to handling uncertainty in estimating the global burden of animal disease. The framework describes the following pillars: background preparation; models as simple as possible but no simpler; assumptions documented; data source quality ranked; commitment to moving up the evidence hierarchy; documentation and justification of modelling approaches, data, data flows and sources of modelling uncertainty; uncertainty and sensitivity analysis on model outputs; documentation and justification of approaches to handling uncertainty; an iterative, up-to-date process of modelling; accounting for accuracy of model inputs; communication of confidence in model outputs; and peer-review.

AB - Livestock provide nutritional and socio-economic security for marginalized populations in low and middle-income countries. Poorly-informed decisions impact livestock husbandry outcomes, leading to poverty from livestock disease, with repercussions on human health and well-being. The Global Burden of Animal Diseases (GBADs) programme is working to understand the impacts of livestock disease upon human livelihoods and livestock health and welfare. This information can then be used by policy makers operating regionally, nationally and making global decisions. The burden of animal disease crosses many scales and estimating it is a complex task, with extensive requirements for data and subsequent data synthesis. Some of the information that livestock decision-makers require is represented by quantitative estimates derived from field data and models. Model outputs contain uncertainty, arising from many sources such as data quality and availability, or the user’s understanding of models and production systems. Uncertainty in estimates needs to be recognized, accommodated, and accurately reported. This enables robust understanding of synthesized estimates, and associated uncertainty, providing rigor around values that will inform livestock management decision-making. Approaches to handling uncertainty in models and their outputs receive scant attention in animal health economics literature; indeed, uncertainty is sometimes perceived as an analytical weakness. However, knowledge of uncertainty is as important as generating point estimates. Motivated by the context of GBADs, this paper describes an analytical framework for handling uncertainty, emphasizing uncertainty management, and reporting to stakeholders and policy makers. This framework describes a hierarchy of evidence, guiding movement from worst to best-case sources of information, and suggests a stepwise approach to handling uncertainty in estimating the global burden of animal disease. The framework describes the following pillars: background preparation; models as simple as possible but no simpler; assumptions documented; data source quality ranked; commitment to moving up the evidence hierarchy; documentation and justification of modelling approaches, data, data flows and sources of modelling uncertainty; uncertainty and sensitivity analysis on model outputs; documentation and justification of approaches to handling uncertainty; an iterative, up-to-date process of modelling; accounting for accuracy of model inputs; communication of confidence in model outputs; and peer-review.

KW - animal disease

KW - disease burden

KW - estimation

KW - model

KW - uncertainty

KW - framework

U2 - 10.3389/fvets.2025.1459209

DO - 10.3389/fvets.2025.1459209

M3 - Journal article

VL - 12

JO - Frontiers in Veterinary Science

JF - Frontiers in Veterinary Science

SN - 2297-1769

M1 - 1459209

ER -