...
首页> 外文期刊>International Journal of Health Geographics >Missing in space: an evaluation of imputation methods for missing data in spatial analysis of risk factors for type II diabetes
【24h】

Missing in space: an evaluation of imputation methods for missing data in spatial analysis of risk factors for type II diabetes

机译:空间缺失:II型糖尿病危险因素空间分析中缺失数据的估算方法评估

获取原文
           

摘要

Background Spatial analysis is increasingly important for identifying modifiable geographic risk factors for disease. However, spatial health data from surveys are often incomplete, ranging from missing data for only a few variables, to missing data for many variables. For spatial analyses of health outcomes, selection of an appropriate imputation method is critical in order to produce the most accurate inferences. Methods We present a cross-validation approach to select between three imputation methods for health survey data with correlated lifestyle covariates, using as a case study, type II diabetes mellitus (DM II) risk across 71 Queensland Local Government Areas (LGAs). We compare the accuracy of mean imputation to imputation using multivariate normal and conditional autoregressive prior distributions. Results Choice of imputation method depends upon the application and is not necessarily the most complex method. Mean imputation was selected as the most accurate method in this application. Conclusions Selecting an appropriate imputation method for health survey data, after accounting for spatial correlation and correlation between covariates, allows more complete analysis of geographic risk factors for disease with more confidence in the results to inform public policy decision-making.
机译:背景技术空间分析对于识别疾病的可修改地理风险因素越来越重要。但是,调查的空间健康数据通常不完整,范围从仅几个变量的缺失数据到许多变量的缺失数据。对于健康结果的空间分析,选择适当的插补方法对于产生最准确的推断至关重要。方法我们采用交叉验证的方法,在三种生活方式相关的健康调查数据的插补方法之间进行选择,以昆士兰州71个昆士兰州政府区域(LGA)的II型糖尿病(DM II)风险为例。我们使用多元正态和条件自回归先验分布比较均值插补与插补的准确性。结果插补方法的选择取决于应用场合,并不一定是最复杂的方法。平均插补被选择为该应用程序中最准确的方法。结论在考虑了空间相关性和协变量之间的相关性之后,为健康调查数据选择适当的估算方法,可以更全面地分析疾病的地理风险因素,并对结果更有信心,从而为公共政策决策提供依据。

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