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Multiscale measurement error models for aggregated small area health data

机译:汇总的小范围健康数据的多尺度测量误差模型

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摘要

Spatial data are often aggregated from a finer (smaller) to a coarser (larger) geographical level. The process of data aggregation induces a scaling effect which smoothes the variation in the data. To address the scaling problem, multiscale models that link the convolution models at different scale levels via the shared random effect have been proposed. One of the main goals in aggregated health data is to investigate the relationship between predictors and an outcome at different geographical levels. In this paper, we extend multiscale models to examine whether a predictor effect at a finer level hold true at a coarser level. To adjust for predictor uncertainty due to aggregation, we applied measurement error models in the framework of multiscale approach. To assess the benefit of using multiscale measurement error models, we compare the performance of multiscale models with and without measurement error in both real and simulated data. We found that ignoring the measurement error in multiscale models underestimates the regression coefficient, while it overestimates the variance of the spatially structured random effect. On the other hand, accounting for the measurement error in multiscale models provides a better model fit and unbiased parameter estimates.
机译:空间数据通常是从较细(较小)到较粗(较大)的地理级别汇总的。数据聚合过程会产生缩放效果,从而可以平滑数据中的变化。为了解决缩放问题,已经提出了通过共享随机效应链接不同缩放级别的卷积模型的多缩放模型。汇总健康数据的主要目标之一是研究不同地理级别的预测变量与结果之间的关系。在本文中,我们扩展了多尺度模型,以检查更精细级别的预测器效果是否在更粗糙级别上成立。为了调整由于聚集导致的预测变量不确定性,我们在多尺度方法的框架中应用了测量误差模型。为了评估使用多尺度测量误差模型的好处,我们在真实数据和模拟数据中比较了有无测量误差的多尺度模型的性能。我们发现,忽略多尺度模型中的测量误差会低估回归系数,而会高估空间结构随机效应的方差。另一方面,考虑多尺度模型中的测量误差可提供更好的模型拟合和无偏参数估计。

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