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Accounting for rate instability and spatial patterns in the boundary analysis of cancer mortality maps

机译:在癌症死亡率图的边界分析中考虑速率不稳定性和空间模式

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Boundary analysis of cancer maps may highlight areas where causative exposures change through geographic space, the presence of local populations with distinct cancer incidences, or the impact of different cancer control methods. Too often, such analysis ignores the spatial pattern of incidence or mortality rates and overlooks the fact that rates computed from sparsely populated geographic entities can be very unreliable. This paper proposes a new methodology that accounts for the uncertainty and spatial correlation of rate data in the detection of significant edges between adjacent entities or polygons. Poisson kriging is first used to estimate the risk value and the associated standard error within each polygon, accounting for the population size and the risk semivariogram computed from raw rates. The boundary statistic is then defined as half the absolute difference between kriged risks. Its reference distribution, under the null hypothesis of no boundary, is derived through the generation of multiple realizations of the spatial distribution of cancer risk values. This paper presents three types of neutral models generated using methods of increasing complexity: the common random shuffle of estimated risk values, a spatial re-ordering of these risks, or p-field simulation that accounts for the population size within each polygon. The approach is illustrated using age-adjusted pancreatic cancer mortality rates for white females in 295 US counties of the Northeast (1970-1994). Simulation studies demonstrate that Poisson kriging yields more accurate estimates of the cancer risk and how its value changes between polygons (i.e., boundary statistic), relatively to the use of raw rates or local empirical Bayes smoother. When used in conjunction with spatial neutral models generated by p-field simulation, the boundary analysis based on Poisson kriging estimates minimizes the proportion of type I errors (i.e., edges wrongly declared significant) while the frequency of these errors is predicted well by the p-value of the statistical test.
机译:癌症图的边界分析可能会突出显示因果关系会因地理空间而变化,存在具有不同癌症发生率的本地人群或不同癌症控制方法的影响而发生变化的区域。通常,这种分析忽略了发病率或死亡率的空间格局,而忽略了从人口稀少的地理实体计算出的比率可能非常不可靠的事实。本文提出了一种新方法,该方法在检测相邻实体或多边形之间的重要边缘时考虑了速率数据的不确定性和空间相关性。首先使用泊松克里金法估算每个多边形内的风险值和相关的标准误差,其中考虑了人口规模和根据原始汇率计算出的风险半变异函数。然后将边界统计量定义为克里格特风险之间绝对差额的一半。在无边界零假设的情况下,其参考分布是通过生成癌症风险值的空间分布的多种实现而得出的。本文介绍了使用增加复杂性的方法生成的三种类型的中立模型:估计风险值的常见随机混洗,这些风险的空间重新排序或解释每个多边形内人口规模的p场模拟。使用美国东北部295个县(1970-1994年)中白人女性的年龄调整后的胰腺癌死亡率来说明该方法。仿真研究表明,相对于使用原始费率或更平滑的局部经验贝叶斯而言,泊松克里金法可以更准确地估计癌症风险及其值在多边形之间的变化(即边界统计)。当与通过p场模拟生成的空间中性模型结合使用时,基于Poisson克里格估计的边界分析将I型错误(即错误地声明为重要边的边)的比例降至最低,而p可以很好地预测这些错误的频率-统计检验的值。

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