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Using exploratory data analysis to identify and predict patterns of human Lyme disease case clustering within a multistate region, 2010-2014

机译:利用探索性数据分析来识别和预测多态地区中人莱姆病案群的模式,2010-2014

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摘要

Lyme disease is the most commonly reported vectorborne disease in the United States. The objective of our study was to identify patterns of Lyme disease reporting after multistate inclusion to mitigate potential border effects. County-level human Lyme disease surveillance data were obtained from Kentucky, Maryland, Ohio, Pennsylvania, Virginia, and West Virginia state health departments. Rate smoothing and Local Moran's I was performed to identify clusters of reporting activity and identify spatial outliers. A logistic generalized estimating equation was performed to identify significant associations in disease clustering over time. Resulting analyses identified statistically significant (P = 0.05) clusters of high reporting activity and trends over time. High reporting activity aggregated near border counties in high incidence states, while low reporting aggregated near shared county borders in non-high incidence states. Findings highlight the need for exploratory surveillance approaches to describe the extent to which state level reporting affects accurate estimation of Lyme disease progression.
机译:莱姆病是美国最常见的载体载体疾病。我们研究的目的是鉴定多酯纳入潜在边界效应后识别莱姆病的模式。县级人莱姆病监测数据是从肯塔基,马里兰州,俄亥俄州,宾夕法尼亚州,弗吉尼亚州和西弗吉尼亚州立卫生部门获得的。率平滑和本地莫兰的我被执行了识别报告活动的集群并识别空间异常值。进行逻辑广义估计方程,以确定随时间疾病聚类的重要组合。结果分析鉴定了高报告活动的统计学意义(P = 0.05)簇随时间的推移。高报告活动在高发病率国的边境县附近汇总,而非高发病率的共享县边界附近的低报告汇总。调查结果强调了探索性监测方法的需求,描述州级报告影响准确估算莱姆病进展的程度。

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