Tran Van, Liu Danping, Pradhan Anuj K, Li Kaigang, Bingham C Raymond, Simons-Morton Bruce G, Albert Paul S
Biostatistics and Bioinformatics Branch, Division of Intramural Population Health Research, Eunice Kennedy Shriver National Institute of Child Health and Human Development, Bethesda, MD 20892, USA.
Health Behavior Branch, Division of Intramural Population Health Research, Eunice Kennedy Shriver National Institute of Child Health and Human Development, Bethesda, MD 20892, USA; University of Michigan Transportation Research Institute, Ann Arbor, MI 48109.
Anal Methods Accid Res. 2015 Jan;5-6:17-27. doi: 10.1016/j.amar.2014.12.001.
Signalized intersection management is a common measure of risky driving in simulator studies. In a recent randomized trial, investigators were interested in whether teenage males exposed to a risk-accepting passenger took more intersection risks in a driving simulator compared with those exposed to a risk-averse peer passenger. Analyses in this trial are complicated by the longitudinal or repeated measures that are semi-continuous with clumping at zero. Specifically, the dependent variable in a randomized trial looking at the effect of risk-accepting versus risk-averse peer passengers on teenage simulator driving is comprised of two components. The discrete component measures whether the teen driver stops for a yellow light, and the continuous component measures the time the teen driver, who does not stop, spends in the intersection during a red light. To convey both components of this measure, we apply a two-part regression with correlated random effects model (CREM), consisting of a logistic regression to model whether the driver stops for a yellow light and a linear regression to model the time spent in the intersection during a red light. These two components are related through the correlation of their random effects. Using this novel analysis, we found that those exposed to a risk-averse passenger have a higher proportion of stopping at yellow lights and a longer mean time in the intersection during a red light when they did not stop at the light compared to those exposed to a risk-accepting passenger, consistent with the study hypotheses and previous analyses. Examining the statistical properties of the CREM approach through simulations, we found that in most situations, the CREM achieves greater power than competing approaches. We also examined whether the treatment effect changes across the length of the drive and provided a sample size recommendation for detecting such phenomenon in subsequent trials. Our findings suggest that CREM provides an efficient method for analyzing the complex longitudinal data encountered in driving simulation studies.
在模拟器研究中,信号控制交叉口管理是衡量危险驾驶的常用指标。在最近的一项随机试验中,研究人员感兴趣的是,与接触风险规避同伴乘客的青少年男性相比,接触风险接受型乘客的青少年男性在驾驶模拟器中是否会在交叉口冒更多风险。该试验中的分析因纵向或重复测量而变得复杂,这些测量是半连续的,且在零处有聚集现象。具体而言,一项研究风险接受型与风险规避型同伴乘客对青少年模拟器驾驶影响的随机试验中的因变量由两个部分组成。离散部分衡量青少年驾驶员是否会在黄灯时停车,连续部分衡量未停车的青少年驾驶员在红灯期间在交叉口停留的时间。为了传达该测量的两个部分,我们应用了具有相关随机效应模型(CREM)的两部分回归,该模型由一个逻辑回归来模拟驾驶员是否会在黄灯时停车,以及一个线性回归来模拟在红灯期间在交叉口停留的时间。这两个部分通过其随机效应的相关性相互关联。使用这种新颖的分析方法,我们发现,与接触风险接受型乘客的青少年相比,接触风险规避型乘客的青少年在黄灯时停车的比例更高,并且在未在黄灯时停车的情况下,在红灯期间在交叉口的平均停留时间更长,这与研究假设和先前的分析一致。通过模拟检查CREM方法的统计特性,我们发现,在大多数情况下,CREM比其他竞争方法具有更大的功效。我们还研究了治疗效果在整个驾驶过程中是否会发生变化,并为后续试验中检测此类现象提供了样本量建议。我们的研究结果表明,CREM为分析驾驶模拟研究中遇到的复杂纵向数据提供了一种有效的方法。