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首页> 外文期刊>International Journal of Health Geographics >Accounting for regional background and population size in the detection of spatial clusters and outliers using geostatistical filtering and spatial neutral models: the case of lung cancer in Long Island, New York
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Accounting for regional background and population size in the detection of spatial clusters and outliers using geostatistical filtering and spatial neutral models: the case of lung cancer in Long Island, New York

机译:使用地统计过滤和空间中性模型在检测空间群和异常值时考虑区域背景和人口规模:纽约长岛的肺癌病例

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Background Complete Spatial Randomness (CSR) is the null hypothesis employed by many statistical tests for spatial pattern, such as local cluster or boundary analysis. CSR is however not a relevant null hypothesis for highly complex and organized systems such as those encountered in the environmental and health sciences in which underlying spatial pattern is present. This paper presents a geostatistical approach to filter the noise caused by spatially varying population size and to generate spatially correlated neutral models that account for regional background obtained by geostatistical smoothing of observed mortality rates. These neutral models were used in conjunction with the local Moran statistics to identify spatial clusters and outliers in the geographical distribution of male and female lung cancer in Nassau, Queens, and Suffolk counties, New York, USA. Results We developed a typology of neutral models that progressively relaxes the assumptions of null hypotheses, allowing for the presence of spatial autocorrelation, non-uniform risk, and incorporation of spatially heterogeneous population sizes. Incorporation of spatial autocorrelation led to fewer significant ZIP codes than found in previous studies, confirming earlier claims that CSR can lead to over-identification of the number of significant spatial clusters or outliers. Accounting for population size through geostatistical filtering increased the size of clusters while removing most of the spatial outliers. Integration of regional background into the neutral models yielded substantially different spatial clusters and outliers, leading to the identification of ZIP codes where SMR values significantly depart from their regional background. Conclusion The approach presented in this paper enables researchers to assess geographic relationships using appropriate null hypotheses that account for the background variation extant in real-world systems. In particular, this new methodology allows one to identify geographic pattern above and beyond background variation. The implementation of this approach in spatial statistical software will facilitate the detection of spatial disparities in mortality rates, establishing the rationale for targeted cancer control interventions, including consideration of health services needs, and resource allocation for screening and diagnostic testing. It will allow researchers to systematically evaluate how sensitive their results are to assumptions implicit under alternative null hypotheses.
机译:背景完全空间随机性(CSR)是许多针对空间模式的统计检验(例如局部聚类或边界分析)所采用的零假设。但是,对于高度复杂和组织化的系统(例如在存在基础空间模式的环境和健康科学中遇到的系统),CSR并不是相关的零假设。本文提出了一种地统计方法,以过滤由于人口数量空间变化而引起的噪声,并生成空间相关的中性模型,该模型说明了通过对观察到的死亡率进行地统计学平滑处理而获得的区域背景。这些中性模型与当地的Moran统计数据结合使用,以识别美国纽约州皇后区拿骚县和萨福克县的男性和女性肺癌的地理分布中的空间群和异常值。结果我们开发了一种中性模型的类型学,该模型逐渐放宽了零假设的假设,从而允许存在空间自相关,非均匀风险以及合并空间异类的人口规模。与以前的研究相比,空间自相关的引入导致更少的有效邮政编码,这证实了先前的说法,即企业社会责任可能导致对重要空间簇或离群点数量的过度识别。通过地统计过滤来考虑人口规模会增加聚类的大小,同时会消除大多数空间异常值。将区域背景整合到中性模型中会产生实质上不同的空间聚类和离群值,从而导致识别邮政编码为SMR值明显偏离其区域背景的邮政编码。结论本文介绍的方法使研究人员能够使用适当的零假设评估地理关系,该零假设解释了现实世界系统中存在的背景变化。特别是,这种新方法可以识别超出背景变化的地理格局。这种方法在空间统计软件中的实施将有助于检测死亡率的空间差异,为针对性的癌症控制干预措施(包括考虑卫生服务需求)以及筛查和诊断测试的资源分配建立原理。这将使研究人员能够系统地评估其结果对替代零假设下隐含假设的敏感性。

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