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Comparing trends in cancer rates across overlapping regions.

机译:比较重叠区域的癌症发生率趋势。

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摘要

Monitoring and comparing trends in cancer rates across geographic regions or over different time periods have been major tasks of the National Cancer Institute's (NCI) Surveillance, Epidemiology, and End Results (SEER) Program as it profiles healthcare quality as well as decides healthcare resource allocations within a spatial-temporal framework. A fundamental difficulty, however, arises when such comparisons have to be made for regions or time intervals that overlap, for example, comparing the change in trends of mortality rates in a local area (e.g., the mortality rate of breast cancer in California) with a more global level (i.e., the national mortality rate of breast cancer). In view of sparsity of available methodologies, this article develops a simple corrected Z-test that accounts for such overlapping. The performance of the proposed test over the two-sample "pooled"t-test that assumes independence across comparison groups is assessed via the Pitman asymptotic relative efficiency as well as Monte Carlo simulations and applications to the SEER cancer data. The proposed test will be important for the SEER * STAT software, maintained by the NCI, for the analysis of the SEER data.
机译:监视和比较跨地理区域或不同时间段内癌症发生率的趋势一直是美国国家癌症研究所(NCI)监测,流行病学和最终结果(SEER)计划的主要任务,因为该计划概述了医疗质量并决定了医疗资源分配在时空框架内。但是,当必须对重叠的区域或时间间隔进行此类比较时,就会出现一个根本的困难,例如,将局部地区的死亡率趋势变化(例如,加利福尼亚州的乳腺癌死亡率)与更高的全球水平(即全国乳腺癌死亡率)。考虑到可用方法的稀疏性,本文开发了一种解决了这种重叠的简单校正Z检验。通过Pitman渐近相对效率以及蒙特卡罗模拟和对SEER癌症数据的应用,评估了假设为比较组之间独立性的两样本“合并” t检验的拟议测试的性能。提议的测试对于NCI维护的SEER * STAT软件对于SEER数据的分析非常重要。

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