Feng Cindy
Department of Community Health and Epidemiology, Faculty of Medicine, Dalhousie University, Halifax, Nova Scotia, Canada, B3H 1V7.
Spat Stat. 2022 Jun;49:100526. doi: 10.1016/j.spasta.2021.100526. Epub 2021 Jul 6.
This article presents a spatial-temporal generalized additive model for modeling geo-referenced COVID-19 mortality data in Toronto, Canada. A range of factors and spatial-temporal terms are incorporated into the model. The non-linear and interactive effects of the neighborhood-level factors, i.e., population density and average of income, are modeled as a two-dimensional spline smoother. The change of spatial pattern over time is modeled as a three-dimensional tensor product smoother. By fitting this model, the space-time effect can uncover the underlying spatial-temporal pattern that is not explained by the covariates. The performance of the modeling method based on the individual data is also compared to the modeling methods based on the aggregated data in terms of in-sample and out-of-sample predictive checking. The results suggest that the individual-level based analysis provided a better overall model fit and higher predictive accuracy for detecting epidemic peaks in this application as compared to the analysis based on the aggregated data.
本文提出了一种时空广义相加模型,用于对加拿大多伦多地区具有地理参考的新冠肺炎死亡率数据进行建模。一系列因素和时空项被纳入该模型。邻里层面的因素,即人口密度和平均收入的非线性和交互作用,被建模为二维样条平滑器。随时间变化的空间模式被建模为三维张量积平滑器。通过拟合该模型,时空效应可以揭示协变量无法解释的潜在时空模式。在样本内和样本外预测检验方面,还将基于个体数据的建模方法的性能与基于汇总数据的建模方法进行了比较。结果表明,与基于汇总数据的分析相比,基于个体层面的分析在该应用中为检测疫情高峰提供了更好的整体模型拟合和更高的预测准确性。