Sofianopoulou Eleni, Pless-Mulloli Tanja, Rushton Stephen, Diggle Peter J
Am J Epidemiol. 2017 Jul 1;186(1):101-108. doi: 10.1093/aje/kww246.
Many measures of chronic diseases, including respiratory disease, exhibit seasonal variation together with residual correlation between consecutive time periods and neighboring areas. We demonstrate a strategy for modeling data that exhibit both seasonal trend and spatiotemporal correlation, using an application to respiratory prescribing. We analyzed 55 months (2002-2006) of prescribing data from the northeast of England, in the United Kingdom. We estimated the seasonal pattern of prescribing by fitting a dynamic harmonic regression (DHR) model to salbutamol prescribing in relation to temperature. We compared the output of DHR models to static sinusoidal regression models. We used the DHR-fitted values as an offset in mixed-effects models that aimed to account for the remaining spatiotemporal variation in prescribing rates. As diagnostic checks, we assessed spatial and temporal correlation separately and jointly. Our application of a DHR model resulted in a better fit to the seasonal variation of prescribing than was obtained with a static model. After adjusting for the fitted values from the DHR model, we did not detect any remaining spatiotemporal correlation in the model's residuals. Using a DHR model and temperature data to account for the periodicity of prescribing proved to be an efficient way to capture its seasonal variation. The diagnostic procedures indicated that there was no need to model any remaining correlation explicitly.
许多慢性病指标,包括呼吸系统疾病,都呈现出季节性变化,且连续时间段和相邻区域之间存在残余相关性。我们展示了一种针对呈现季节性趋势和时空相关性的数据进行建模的策略,并将其应用于呼吸科处方。我们分析了英国英格兰东北部55个月(2002 - 2006年)的处方数据。我们通过对沙丁胺醇处方与温度进行动态谐波回归(DHR)模型拟合来估计处方的季节性模式。我们将DHR模型的输出与静态正弦回归模型进行比较。我们将DHR拟合值用作混合效应模型中的偏移量,该模型旨在解释处方率中剩余的时空变化。作为诊断检查,我们分别和联合评估了空间和时间相关性。我们应用DHR模型对处方季节性变化的拟合效果优于静态模型。在对DHR模型的拟合值进行调整后,我们在模型残差中未检测到任何剩余的时空相关性。使用DHR模型和温度数据来解释处方的周期性被证明是捕捉其季节性变化的有效方法。诊断程序表明无需对任何剩余相关性进行显式建模。