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A 24-year exploratory spatial data analysis of Lyme disease incidence rate in Connecticut, USA

机译:美国康涅狄格州莱姆病发病率的24年探索性空间数据分析

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Despite efforts to control Lyme disease in Connecticut, USA, it remains endemic in many towns, posing a heavy burden. We examined changes in the spatial distribution of significant spatial clusters of Lyme disease incidence rates at the town level from 1991 to 2014 as an approach for targeted interventions. Lyme disease data were grouped into four discrete time periods and incidence rates were smoothed with Empirical Bayes estimation in GeoDa. Local clustering was measured using a local indicator of spatial autocorrelation (LISA). Elliptic spatial scan statistics (SSS) in different shapes and directions were also performed in SaTScan. The accuracy of these two cluster detection methods was assessed and compared for sensitivity, specificity, and overall accuracy. There was significant clustering during each period and significant clusters persisted predominantly in western and eastern parts of the state. Generally, the SSS method was more sensitive, while LISA was more specific with higher overall accuracy in identifying clusters. Even though the location of clusters changed over time, some towns were persistently (across all four periods) identified as clusters in LISA and their neighbouring towns (three of four periods) in SSS suggesting these regions should be prioritized for targeted interventions.
机译:尽管在美国康涅狄格州努力控制莱姆病,但它在许多城镇仍是地方性流行病,负担沉重。我们研究了1991年至2014年在城镇一级莱姆病发病率的重要空间群的空间分布变化,以此作为有针对性的干预措施。莱姆病数据分为四个离散的时间段,并通过GeoDa中的经验贝叶斯估计对发病率进行了平滑处理。使用空间自相关的本地指标(LISA)测量本地聚类。在SaTScan中还执行了不同形状和方向的椭圆空间扫描统计(SSS)。评估了这两种簇检测方法的准确性,并比较了敏感性,特异性和整体准确性。每个时期都有明显的聚类,并且该州的西部和东部主要存在着明显的聚类。通常,SSS方法更灵敏,而LISA更具体,以更高的总体准确性识别聚类。即使集群的位置随时间发生了变化,但在LISA中,一些城镇被永久性地(在所有四个时期内)标识为集群,而在SSS中其邻近城镇(四个时期中的三个)被认为是优先针对性的。

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