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Visual tools to assess the plausibility of algorithm-identified infectious disease clusters: an application to mumps data from the Netherlands dating from January 2009 to June 2016

机译:视觉工具,以评估算法确定的传染病群的合理性:2009年1月至2016年6月来自荷兰的腮腺炎数据应用

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Introduction With growing amounts of data available, identification of clusters of persons linked to each other by transmission of an infectious disease increasingly relies on automated algorithms. We propose cluster finding to be a two-step process: first, possible transmission clusters are identified using a cluster algorithm, second, the plausibility that the identified clusters represent genuine transmission clusters is evaluated. Aim To introduce visual tools to assess automatically identified clusters. Methods We developed tools to visualise: (i) clusters found in dimensions of time, geographical location and genetic data; (ii) nested sub-clusters within identified clusters; (iii) intra-cluster pairwise dissimilarities per dimension; (iv) intra-cluster correlation between dimensions. We applied our tools to notified mumps cases in the Netherlands with available disease onset date (January 2009 – June 2016), geographical information (location of residence), and pathogen sequence data (n?=?112). We compared identified clusters to clusters reported by the Netherlands Early Warning Committee (NEWC). Results We identified five mumps clusters. Three clusters were considered plausible. One was questionable because, in phylogenetic analysis, genetic sequences related to it segregated in two groups. One was implausible with no smaller nested clusters, high intra-cluster dissimilarities on all dimensions, and low intra-cluster correlation between dimensions. The NEWC reports concurred with our findings: the plausible/questionable clusters corresponded to reported outbreaks; the implausible cluster did not. Conclusion Our tools for assessing automatically identified clusters allow outbreak investigators to rapidly spot plausible transmission clusters for mumps and other human-to-human transmissible diseases. This fast information processing potentially reduces workload.
机译:引言随着可用数据量的增加,通过传染病传播相互联系的人群的识别越来越依赖于自动算法。我们建议将群集查找分为两个步骤:首先,使用群集算法识别可能的传输群集,其次,评估所识别的群集代表真实传输群集的合理性。目的引入可视化工具来评估自动识别的群集。方法我们开发了可视化工具:(i)在时间,地理位置和遗传数据维度中发现的聚类; (ii)在已识别的集群中嵌套子集群; (iii)每个维度的集群内成对差异; (iv)维度之间的集群内相关性。我们将工具应用于荷兰的流行性腮腺炎病例中,这些病例的发病时间为2009年1月至2016年6月,地理信息(居住地点)和病原体序列数据为n = 112。我们将识别出的星团与荷兰预警委员会(NEWC)报告的星团进行了比较。结果我们确定了五个腮腺炎集群。三个簇被认为是合理的。一个是有问题的,因为在系统发育分析中,与之相关的遗传序列分为两组。一个令人难以置信的是,它没有较小的嵌套集群,在所有维度上的集群内部差异很大,并且维度之间的集群内部相关性较低。 NEWC的报告与我们的发现一致:合理/可疑的集群对应于已报告的暴发;令人难以置信的集群没有。结论我们的评估工具可以自动识别出群集,从而使暴发调查人员能够迅速发现流行性腮腺炎和其他人传人传染病的可能传播群。这种快速的信息处理可以减少工作量。

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