Hoopes Megan J, Taualii Maile, Weiser Thomas M, Brucker Rachel, Becker Thomas M
Northwest Tribal Epidemiology Center, Northwest Portland Area Indian Health Board, Portland, OR 97201, USA.
J Registry Manag. 2010 Summer;37(2):43-8.
American Indians and Alaska Natives (AI/AN) are frequently misclassified as another race in cancer surveillance systems, resulting in underestimated morbidity and mortality. Linkage methods with administrative records have been used to correct AI/AN misclassification, but AI/AN populations living in urban areas, and those who self-identify as AI/AN race, continue to be under-ascertained. The aim of this study was to evaluate racial misclassification in two cancer registries in Washington State using an urban AI/AN patient roster linked with a list of Indian Health Service (IHS) enrollees.
We conducted probabilistic record linkages to identify racial misclassification using a combined demographic dataset of self-identified AI/AN patients of a large, urban Indian health center, and administratively-identified AI/AN enrolled with the IHS. Age-adjusted incidence rates were calculated for 3 linkage populations: AI/ AN originally coded in each cancer registry, post-linkage AI/AN identified through the IHS roster alone, and post-linkage AI/AN identified through either the urban or IHS file.
In the state and regional cancer registries, 11% and 18%, respectively, of matched cases were originally coded as a race other than AI/AN; approximately 35% of these were identified by the urban file alone. Incidence rate estimates increased after linkage with the IHS file, and further increased with the addition of urban records. Matches identified by the urban patient file resulted in the largest relative incidence change being demonstrated for King County (which includes Seattle); the all-site invasive cancer rate increased 8.8%, from 443 to 482 per 100,000.
Inclusion of urban and self-identified AI/AN records can increase case ascertainment in cancer surveillance systems beyond linkage methods using only administrative sources.
在美国癌症监测系统中,美洲印第安人和阿拉斯加原住民(AI/AN)常被错误归类为其他种族,导致发病率和死亡率被低估。行政记录的关联方法已被用于纠正AI/AN的错误分类,但居住在城市地区的AI/AN人群以及自我认定为AI/AN种族的人群仍然未得到充分确认。本研究的目的是利用与印第安卫生服务局(IHS)登记者名单相链接的城市AI/AN患者名册,评估华盛顿州两个癌症登记处的种族错误分类情况。
我们进行了概率性记录关联,以使用一个大型城市印第安健康中心自我认定为AI/AN的患者的综合人口统计数据集以及IHS行政认定的AI/AN来识别种族错误分类。计算了3个关联人群的年龄调整发病率:每个癌症登记处最初编码为AI/AN的人群、仅通过IHS名册识别的关联后AI/AN人群以及通过城市或IHS文件识别的关联后AI/AN人群。
在州和地区癌症登记处,分别有11%和18%的匹配病例最初被编码为非AI/AN种族;其中约35%仅由城市文件识别。与IHS文件关联后发病率估计值增加,加入城市记录后进一步增加。城市患者文件识别的匹配病例导致金县(包括西雅图)的相对发病率变化最大;所有部位浸润性癌症发病率从每10万443例增加到482例,增幅为8.8%。
纳入城市和自我认定的AI/AN记录可以增加癌症监测系统中的病例确认,这超出了仅使用行政来源的关联方法。