Department of Biostatistics, School of Public Health, Fudan University, Shanghai, China.
BMC Med Res Methodol. 2012 Oct 30;12:165. doi: 10.1186/1471-2288-12-165.
Generalized Additive Model (GAM) provides a flexible and effective technique for modelling nonlinear time-series in studies of the health effects of environmental factors. However, GAM assumes that errors are mutually independent, while time series can be correlated in adjacent time points. Here, a GAM with Autoregressive terms (GAMAR) is introduced to fill this gap.
Parameters in GAMAR are estimated by maximum partial likelihood using modified Newton's method, and the difference between GAM and GAMAR is demonstrated using two simulation studies and a real data example. GAMM is also compared to GAMAR in simulation study 1.
In the simulation studies, the bias of the mean estimates from GAM and GAMAR are similar but GAMAR has better coverage and smaller relative error. While the results from GAMM are similar to GAMAR, the estimation procedure of GAMM is much slower than GAMAR. In the case study, the Pearson residuals from the GAM are correlated, while those from GAMAR are quite close to white noise. In addition, the estimates of the temperature effects are different between GAM and GAMAR.
GAMAR incorporates both explanatory variables and AR terms so it can quantify the nonlinear impact of environmental factors on health outcome as well as the serial correlation between the observations. It can be a useful tool in environmental epidemiological studies.
广义加性模型(GAM)为研究环境因素对健康影响的非线性时间序列提供了一种灵活有效的技术。然而,GAM 假设误差是相互独立的,而时间序列在相邻时间点可能是相关的。在这里,引入了具有自回归项的 GAM(GAMAR)来填补这一空白。
GAMAR 的参数通过使用修正牛顿法的最大部分似然估计进行估计,并通过两个模拟研究和一个实际数据示例来展示 GAM 和 GAMAR 之间的差异。在模拟研究 1 中,还将 GAMM 与 GAMAR 进行了比较。
在模拟研究中,GAM 和 GAMAR 的均值估计的偏差相似,但 GAMAR 的覆盖范围更好,相对误差更小。虽然 GAMM 的结果与 GAMAR 相似,但 GAMM 的估计过程比 GAMAR 慢得多。在案例研究中,GAM 的 Pearson 残差是相关的,而 GAMAR 的残差则非常接近白噪声。此外,GAM 和 GAMAR 对温度效应的估计也不同。
GAMAR 同时包含解释变量和 AR 项,因此它可以量化环境因素对健康结果的非线性影响以及观测值之间的序列相关性。它可以成为环境流行病学研究中的有用工具。