A framework for handling uncertainty in a large-scale programme estimating the Global Burden of Animal Diseases
Helen E. Clough, Gemma L. Chaters, Arie H. Havelaar, K. Marie McIntyre, Thomas L. Marsh, Ellen C. Hughes, Wudu T. Jemberu, Deborah Stacey, Joao Sucena Afonso, William Gilbert, Kassy Raymond, Jonathan Rushton

TL;DR
This paper introduces a framework to manage and report uncertainty in estimating the global impact of animal diseases, helping improve decision-making for livestock health and human well-being.
Contribution
The paper presents a novel analytical framework for handling uncertainty in animal disease burden estimates, emphasizing transparency and stakeholder communication.
Findings
A structured framework for managing uncertainty in animal disease burden estimates is proposed.
The framework includes steps like ranking data quality and performing sensitivity analysis.
Uncertainty communication and iterative modeling are emphasized for robust decision-making.
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…
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Taxonomy
TopicsAnimal Disease Management and Epidemiology · Zoonotic diseases and public health · Agricultural risk and resilience
