Department of Mathematics & Statistics, University of Otago, Dunedin, New Zealand.
Institute of Fundamental Sciences, Massey University, Palmerston North, New Zealand.
Stat Med. 2018 Mar 30;37(7):1191-1221. doi: 10.1002/sim.7577. Epub 2017 Dec 11.
Kernel smoothing is a highly flexible and popular approach for estimation of probability density and intensity functions of continuous spatial data. In this role, it also forms an integral part of estimation of functionals such as the density-ratio or "relative risk" surface. Originally developed with the epidemiological motivation of examining fluctuations in disease risk based on samples of cases and controls collected over a given geographical region, such functions have also been successfully used across a diverse range of disciplines where a relative comparison of spatial density functions has been of interest. This versatility has demanded ongoing developments and improvements to the relevant methodology, including use spatially adaptive smoothers; tests of significantly elevated risk based on asymptotic theory; extension to the spatiotemporal domain; and novel computational methods for their evaluation. In this tutorial paper, we review the current methodology, including the most recent developments in estimation, computation, and inference. All techniques are implemented in the new software package sparr, publicly available for the R language, and we illustrate its use with a pair of epidemiological examples.
核平滑是一种高度灵活和流行的方法,用于估计连续空间数据的概率密度和强度函数。在这个角色中,它也是估计函数的一个组成部分,例如密度比或“相对风险”表面。该方法最初是为了研究基于给定地理区域内收集的病例和对照样本的疾病风险波动而开发的,具有流行病学动机,这种方法也已经在许多不同的学科中成功应用,这些学科都对空间密度函数的相对比较感兴趣。这种多功能性要求对相关方法进行持续的开发和改进,包括使用空间自适应平滑器;基于渐近理论的显著风险检验;扩展到时空域;以及用于评估的新的计算方法。在本教程中,我们将回顾当前的方法,包括最新的估计、计算和推断方法。所有技术都在新的软件包 sparr 中实现,该软件包可用于 R 语言,我们将通过两个流行病学示例来说明其用法。