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野生动物剖检数据的无监督聚类用于综合征监测。

Unsupervised clustering of wildlife necropsy data for syndromic surveillance.

机构信息

Laboratory Environment and Prediction of Population Health, VetAgro Sup, Veterinary campus of Lyon, 1 avenue Bourgelat, BP 83, F-69280 Marcy-l'Etoile, France.

出版信息

BMC Vet Res. 2010 Dec 16;6:56. doi: 10.1186/1746-6148-6-56.

Abstract

BACKGROUND

The importance of wildlife disease surveillance is increasing, because wild animals are playing a growing role as sources of emerging infectious disease events in humans. Syndromic surveillance methods have been developed as a complement to traditional health data analyses, to allow the early detection of unusual health events. Early detection of these events in wildlife could help to protect the health of domestic animals or humans. This paper aims to define syndromes that could be used for the syndromic surveillance of wildlife health data. Wildlife disease monitoring in France, from 1986 onward, has allowed numerous diagnostic data to be collected from wild animals found dead. The authors wanted to identify distinct pathological profiles from these historical data by a global analysis of the registered necropsy descriptions, and discuss how these profiles can be used to define syndromes. In view of the multiplicity and heterogeneity of the available information, the authors suggest constructing syndromic classes by a multivariate statistical analysis and classification procedure grouping cases that share similar pathological characteristics.

RESULTS

A three-step procedure was applied: first, a multiple correspondence analysis was performed on necropsy data to reduce them to their principal components. Then hierarchical ascendant clustering was used to partition the data. Finally the k-means algorithm was applied to strengthen the partitioning. Nine clusters were identified: three were species- and disease-specific, three were suggestive of specific pathological conditions but not species-specific, two covered a broader pathological condition and one was miscellaneous. The clusters reflected the most distinct and most frequent disease entities on which the surveillance network focused. They could be used to define distinct syndromes characterised by specific post-mortem findings.

CONCLUSIONS

The chosen statistical clustering method was found to be a useful tool to retrospectively group cases from our database into distinct and meaningful pathological entities. Syndrome definition from post-mortem findings is potentially useful for early outbreak detection because it uses the earliest available information on disease in wildlife. Furthermore, the proposed typology allows each case to be attributed to a syndrome, thus enabling the exhaustive surveillance of health events through time series analyses.

摘要

背景

野生动物疾病监测的重要性日益增加,因为野生动物在人类新发传染病事件中作为传染源的作用越来越大。综合征监测方法已被开发出来作为传统健康数据分析的补充,以允许早期检测异常健康事件。早期检测野生动物中的这些事件有助于保护家畜或人类的健康。本文旨在定义可用于野生动物健康数据综合征监测的综合征。自 1986 年以来,法国一直在进行野生动物疾病监测,从发现死亡的野生动物中收集了大量诊断数据。作者希望通过对登记的剖检描述进行全面分析,从这些历史数据中确定独特的病理特征,并讨论如何使用这些特征来定义综合征。鉴于可用信息的多样性和异质性,作者建议通过多元统计分析和分类程序构建综合征类,将具有相似病理特征的病例分组。

结果

应用了三步程序:首先,对剖检数据进行多元对应分析,将其简化为主要成分。然后使用层次上升聚类对数据进行分区。最后应用 k-均值算法来加强分区。确定了九个聚类:三个是特定物种和疾病的,三个是特定病理条件的提示,但不是特定物种的,两个涵盖了更广泛的病理条件,一个是杂项。聚类反映了监测网络关注的最独特和最常见的疾病实体。它们可用于定义具有特定死后发现的独特综合征。

结论

所选的统计聚类方法被发现是一种有用的工具,可以将我们数据库中的病例回顾性地分组为不同的、有意义的病理实体。从死后发现定义综合征对于早期爆发检测可能是有用的,因为它使用了关于野生动物疾病的最早可用信息。此外,所提出的分类法允许将每个病例分配给一个综合征,从而通过时间序列分析对健康事件进行全面监测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8745/3018415/a530ad0f675e/1746-6148-6-56-1.jpg

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