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构建一幅图景:使用多准则决策分析对澳大利亚养猪业的外来疾病进行优先排序。

Building a picture: Prioritisation of exotic diseases for the pig industry in Australia using multi-criteria decision analysis.

机构信息

Faculty of Veterinary Science, University of Sydney, Camden, NSW, Australia.

出版信息

Prev Vet Med. 2014 Jan 1;113(1):103-17. doi: 10.1016/j.prevetmed.2013.10.014. Epub 2013 Oct 22.

Abstract

Diseases that are exotic to the pig industry in Australia were prioritised using a multi-criteria decision analysis framework that incorporated weights of importance for a range of criteria important to industry stakeholders. Measurements were collected for each disease for nine criteria that described potential disease impacts. A total score was calculated for each disease using a weighted sum value function that aggregated the nine disease criterion measurements and weights of importance for the criteria that were previously elicited from two groups of industry stakeholders. One stakeholder group placed most value on the impacts of disease on livestock, and one group placed more value on the zoonotic impacts of diseases. Prioritisation lists ordered by disease score were produced for both of these groups. Vesicular diseases were found to have the highest priority for the group valuing disease impacts on livestock, followed by acute forms of African and classical swine fever, then highly pathogenic porcine reproductive and respiratory syndrome. The group who valued zoonotic disease impacts prioritised rabies, followed by Japanese encephalitis, Eastern equine encephalitis and Nipah virus, interspersed with vesicular diseases. The multi-criteria framework used in this study systematically prioritised diseases using a multi-attribute theory based technique that provided transparency and repeatability in the process. Flexibility of the framework was demonstrated by aggregating the criterion weights from more than one stakeholder group with the disease measurements for the criteria. This technique allowed industry stakeholders to be active in resource allocation for their industry without the need to be disease experts. We believe it is the first prioritisation of livestock diseases using values provided by industry stakeholders. The prioritisation lists will be used by industry stakeholders to identify diseases for further risk analysis and disease spread modelling to understand biosecurity risks to this industry.

摘要

优先考虑澳大利亚养猪业中罕见的疾病,使用多标准决策分析框架,该框架纳入了对行业利益相关者重要的一系列标准的重要性权重。为描述潜在疾病影响的九个标准收集了每种疾病的测量值。使用加权和值函数为每种疾病计算总得分,该函数汇总了九个疾病标准测量值以及先前从两组行业利益相关者中得出的标准的重要性权重。这两组利益相关者对疾病对牲畜的影响的重视程度不同。为这两组利益相关者分别生成了按疾病得分排序的优先排序清单。对重视疾病对牲畜影响的群体而言,水疱病被认为具有最高优先级,其次是急性非洲猪瘟和古典猪瘟,然后是高致病性猪繁殖与呼吸综合征。对重视人畜共患病影响的群体而言,狂犬病排在首位,其次是日本脑炎、东部马脑炎和尼帕病毒,其间穿插着水疱病。本研究中使用的多标准框架使用基于多属性理论的技术对疾病进行系统优先排序,该技术为该过程提供了透明度和可重复性。该框架的灵活性通过将来自多个利益相关者群体的标准权重与标准的疾病测量值进行汇总来证明。该技术使行业利益相关者无需成为疾病专家即可积极参与其行业的资源分配。我们相信这是首次使用行业利益相关者提供的价值对牲畜疾病进行优先排序。优先排序清单将由行业利益相关者用于识别疾病,以进一步进行风险分析和疾病传播建模,从而了解该行业的生物安全风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1320/7114181/5b3793471d8c/gr1.jpg

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