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A Model-Based Scan Statistics for Detecting Geographical Clustering of Disease

机译:基于模型的扫描统计数据,用于检测疾病的地理聚类

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The classical likelihood ratio spatial scan statistics has been widely used in spatial epidemiology for disease cluster detection. The question is whether the geographic incidence pattern is due to random fluctuations or the map reflects true underlying geographical variation due to etiologic risk factors. The hypothesis underlying the classic scan statistics assume that disease counts in different locations have independent Poisson distribution; unfortunately, outcomes in spatial units are often not independent of each other. Risk estimates of areas that are close to each other will tend to be positively correlated as they share a number of spatially varying characteristics. Ignoring the overdispersion caused by spatial autocorrelation leads to incorrect results. To overcome this difficulty, we propose a model-based approach adjusting for area-specific fixed-effects measuring potential effect modifiers, and for large-scale geographical variation of etiologic factors that vary continuously in space and are not expressly present within the model. We apply our methodology to the spatial distribution of lung cancer male mortality occurred in the province of Lecce, Italy, during the period 1992-2001.
机译:经典似然比空间扫描统计数据已广泛用于空间流行病学中的疾病簇检测。问题是地理发生率模式是由于随机波动还是由于病因风险因素导致地图反映了真实的潜在地理变化。经典扫描统计的基础假设是,不同位置的疾病计数具有独立的泊松分布;不幸的是,空间单位的结果往往不是彼此独立的。彼此接近的区域的风险估计将趋于正相关,因为它们具有许多空间变化的特征。忽略由空间自相关引起的过度分散会导致错误的结果。为了克服这一困难,我们提出了一种基于模型的方法,该方法适用于针对特定区域的固定效应测量潜在效应修饰符,以及针对空间连续变化且模型中未明确存在的病因的大规模地理变化。我们将我们的方法应用于1992年至2001年意大利莱切省发生的肺癌男性死亡率的空间分布。

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