State Key Laboratory of Organ Failure Research, Department of Biostatistics, School of Public Health, Southern Medical University, Guangzhou, 510515, China.
BMC Public Health. 2024 Mar 27;24(1):901. doi: 10.1186/s12889-024-18382-4.
Count time series (e.g., daily deaths) are a very common type of data in environmental health research. The series is generally autocorrelated, while the widely used generalized linear model is based on the assumption of independent outcomes. None of the existing methods for modelling parameter-driven count time series can obtain consistent and reliable standard error of parameter estimates, causing potential inflation of type I error rate.
We proposed a new maximum significant ρ correction (MSRC) method that utilizes information of significant autocorrelation coefficient ρ estimate within 5 orders by moment estimation. A Monte Carlo simulation was conducted to evaluate and compare the finite sample performance of the MSRC and classical unbiased correction (UB-corrected) method. We demonstrated a real-data analysis for assessing the effect of drunk driving regulations on the incidence of road traffic injuries (RTIs) using MSRC in Shenzhen, China. Moreover, there is no previous paper assessing the time-varying intervention effect and considering autocorrelation based on daily data of RTIs.
Both methods had a small bias in the regression coefficients. The autocorrelation coefficient estimated by UB-corrected is slightly underestimated at high autocorrelation (≥ 0.6), leading to the inflation of the type I error rate. The new method well controlled the type I error rate when the sample size reached 340. Moreover, the power of MSRC increased with increasing sample size and effect size and decreasing nuisance parameters, and it approached UB-corrected when ρ was small (≤ 0.4), but became more reliable as autocorrelation increased further. The daily data of RTIs exhibited significant autocorrelation after controlling for potential confounding, and therefore the MSRC was preferable to the UB-corrected. The intervention contributed to a decrease in the incidence of RTIs by 8.34% (95% CI, -5.69-20.51%), 45.07% (95% CI, 25.86-59.30%) and 42.94% (95% CI, 9.56-64.00%) at 1, 3 and 5 years after the implementation of the intervention, respectively.
The proposed MSRC method provides a reliable and consistent approach for modelling parameter-driven time series with autocorrelated count data. It offers improved estimation compared to existing methods. The strict drunk driving regulations can reduce the risk of RTIs.
计数时间序列(例如,每日死亡人数)是环境卫生研究中非常常见的数据类型。该序列通常具有自相关性,而广泛使用的广义线性模型则基于独立结果的假设。现有的用于模拟参数驱动计数时间序列的方法都无法获得一致且可靠的参数估计标准误差,从而导致Ⅰ型错误率的潜在膨胀。
我们提出了一种新的最大显著 ρ 校正(MSRC)方法,该方法利用矩估计在 5 个阶数内的显著自相关系数 ρ 估计值来获取信息。通过蒙特卡罗模拟,评估和比较了 MSRC 和经典无偏校正(UB 校正)方法的有限样本性能。我们使用 MSRC 对中国深圳的酒后驾车法规对道路交通伤害(RTI)发生率的影响进行了实际数据分析。此外,没有以前的论文评估基于 RTI 的每日数据的时变干预效果和考虑自相关性。
两种方法的回归系数都有较小的偏差。UB 校正法估计的自相关系数在自相关度较高(≥0.6)时会略有低估,从而导致Ⅰ型错误率的膨胀。当样本量达到 340 时,新方法很好地控制了Ⅰ型错误率。此外,MSRC 的功效随着样本量和效应量的增加以及干扰参数的减少而增加,当 ρ 较小时(≤0.4),它接近 UB 校正,但随着自相关度的进一步增加,它变得更加可靠。在控制潜在混杂因素后,RTI 的每日数据显示出明显的自相关性,因此 MSRC 优于 UB 校正。该干预措施使实施干预后 1、3 和 5 年 RTI 的发生率分别降低了 8.34%(95%CI,-5.69-20.51%)、45.07%(95%CI,25.86-59.30%)和 42.94%(95%CI,9.56-64.00%)。
所提出的 MSRC 方法为具有自相关计数数据的参数驱动时间序列模型提供了一种可靠且一致的方法。与现有方法相比,它提供了更好的估计。严格的酒后驾车法规可以降低 RTI 的风险。