首页> 外文期刊>Occupational and environmental medicine >Small area estimation of incidence of cancer around a known source of exposure with fine resolution data.
【24h】

Small area estimation of incidence of cancer around a known source of exposure with fine resolution data.

机译:使用精细分辨率数据在已知暴露源周围进行小面积癌症发生率估算。

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

OBJECTIVES: To describe the small area system developed in Finland. To illustrate the use of the system with analyses of incidence of lung cancer around an asbestos mine. To compare the performance of different spatial statistical models when applied to sparse data. METHODS: In the small area system, cancer and population data are available by sex, age, and socioeconomic status in adjacent "pixels", squares of size 0.5 km x 0.5 km. The study area was partitioned into sub-areas based on estimated exposure. The original data at the pixel level were used in a spatial random field model. For comparison, standardised incidence ratios were estimated, and full bayesian and empirical bayesian models were fitted to aggregated data. Incidence of lung cancer around a former asbestos mine was used as an illustration. RESULTS: The spatial random field model, which has been used in former small area studies, did not converge with present fine resolution data. The number of neighbouring pixels used in smoothing had to be enlarged, and informative distributions for hyperparameters were used to stabilise the unobserved random field. The ordered spatial random field model gave lower estimates than the Poisson model. When one of the three effects of area were fixed, the model gave similar estimates with a narrower interval than the Poisson model. CONCLUSIONS: The use of fine resolution data and socioeconomic status as a means of controlling for confounding related to lifestyle is useful when estimating risk of cancer around point sources. However, better statistical methods are needed for spatial modelling of fine resolution data.
机译:目的:描述芬兰开发的小区域系统。为了说明该系统在石棉矿周围肺癌发生率分析中的使用。比较当应用于稀疏数据时不同空间统计模型的性能。方法:在小区域系统中,可以按性别,年龄和社会经济状况在相邻的“像素”(大小为0.5 km x 0.5 km的正方形)中获得癌症和人口数据。根据估计的暴露程度将研究区域划分为子区域。像素级别的原始数据用于空间随机场模型。为了进行比较,估计了标准化的发生率,并对完整的贝叶斯模型和经验贝叶斯模型进行了拟合。前石棉矿周围的肺癌发病率被用作例证。结果:在以前的小区域研究中使用的空间随机场模型不能与当前的高分辨率数据融合。用于平滑处理的相邻像素数必须增加,并且使用超参数的信息分布来稳定未观察到的随机场。有序空间随机场模型给出的估计值低于泊松模型。当面积的三个影响之一固定时,该模型给出的估计值与Poisson模型的估计值之间的间隔较窄。结论:在评估点源周围的癌症风险时,使用高分辨率数据和社会经济状况作为控制与生活方式相关的混淆的手段非常有用。但是,对于精细分辨率数据的空间建模,需要更好的统计方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号