The Key Laboratory of Road and Traffic Engineering, Ministry of Education Tongji University, Shanghai, China.
Int J Environ Res Public Health. 2019 Jul 23;16(14):2632. doi: 10.3390/ijerph16142632.
The existing studies on drivers' injury severity include numerous statistical models that assess potential factors affecting the level of injury. These models should address specific concerns tailored to different crash characteristics. For rear-end crashes, potential correlation in injury severity may present between the two drivers involved in the same crash. Moreover, there may exist unobserved heterogeneity considering parameter effects, which may vary across both crashes and individuals. To address these concerns, a random parameters bivariate ordered probit model has been developed to examine factors affecting injury sustained by two drivers involved in the same rear-end crash between passenger cars. Taking both the within-crash correlation and unobserved heterogeneity into consideration, the proposed model outperforms the two separate ordered probit models with fixed parameters. The value of the correlation parameter demonstrates that there indeed exists significant correlation between two drivers' injuries. Driver age, gender, vehicle, airbag or seat belt use, traffic flow, etc., are found to affect injury severity for both the two drivers. Some differences can also be found between the two drivers, such as the effect of light condition, crash season, crash position, etc. The approach utilized provides a possible use for dealing with similar injury severity analysis in future work.
现有的驾驶员伤害严重程度研究包括许多统计模型,这些模型评估了影响伤害程度的潜在因素。这些模型应该针对特定的关注问题,针对不同的碰撞特征进行调整。对于追尾碰撞,同一碰撞中涉及的两名驾驶员的伤害严重程度之间可能存在潜在的相关性。此外,考虑到参数效应的未观测异质性,参数效应可能在碰撞和个体之间存在差异。为了解决这些问题,已经开发了一个随机参数双变量有序概率模型,以研究影响同一辆乘用车追尾碰撞中两名驾驶员受伤的因素。考虑到了碰撞内的相关性和未观测到的异质性,所提出的模型优于具有固定参数的两个独立的有序概率模型。相关参数的值表明,两名驾驶员的受伤确实存在显著的相关性。驾驶员年龄、性别、车辆、安全气囊或安全带使用情况、交通流量等因素都会影响两名驾驶员的伤害严重程度。还可以发现两名驾驶员之间存在一些差异,例如光线条件、碰撞季节、碰撞位置等的影响。所采用的方法为今后类似的伤害严重程度分析提供了一种可能的处理方法。