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Spatial event cluster detection using an approximate normal distribution

机译:使用近似正态分布的空间事件聚类检测

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摘要

BackgroundIn geographic surveillance of disease, areas with large numbers of disease cases are to be identified so that investigations of the causes of high disease rates can be pursued. Areas with high rates are called disease clusters and statistical cluster detection tests are used to identify geographic areas with higher disease rates than expected by chance alone. Typically cluster detection tests are applied to incident or prevalent cases of disease, but surveillance of disease-related events, where an individual may have multiple events, may also be of interest. Previously, a compound Poisson approach that detects clusters of events by testing individual areas that may be combined with their neighbours has been proposed. However, the relevant probabilities from the compound Poisson distribution are obtained from a recursion relation that can be cumbersome if the number of events are large or analyses by strata are performed. We propose a simpler approach that uses an approximate normal distribution. This method is very easy to implement and is applicable to situations where the population sizes are large and the population distribution by important strata may differ by area. We demonstrate the approach on pediatric self-inflicted injury presentations to emergency departments and compare the results for probabilities based on the recursion and the normal approach. We also implement a Monte Carlo simulation to study the performance of the proposed approach.
机译:背景技术在疾病的地理监视中,应确定具有大量疾病病例的区域,以便可以对高疾病发生率的原因进行调查。高发病率的地区被称为疾病聚类,而统计聚类检测测试则被用于识别疾病发生率高于偶然偶然发现的地理区域。通常,将群集检测测试应用于突发事件或流行的疾病,但是监视与疾病相关的事件(个人可能有多个事件)也可能是令人感兴趣的。以前,已经提出了一种复合Poisson方法,该方法通过测试可能与邻域组合在一起的各个区域来检测事件簇。但是,从复合泊松分布获得的相关概率是从递归关系中获得的,如果事件数量很大或执行了按层分析,则该递归关系可能很麻烦。我们提出了一种使用近似正态分布的简单方法。该方法易于实施,适用于人口规模较大且重要地层的人口分布可能因地区而异的情况。我们向小儿急诊科演示了小儿自残伤害的演示方法,并基于递归和常规方法比较了概率结果。我们还实现了蒙特卡洛模拟,以研究所提出方法的性能。

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