Sze N N, Wong S C
Department of Civil Engineering, The University of Hong Kong, Pokfulam Road, Hong Kong, China.
Accid Anal Prev. 2007 Nov;39(6):1267-78. doi: 10.1016/j.aap.2007.03.017. Epub 2007 Apr 25.
This study attempts to evaluate the injury risk of pedestrian casualties in traffic crashes and to explore the factors that contribute to mortality and severe injury, using the comprehensive historical crash record that is maintained by the Hong Kong Transport Department. The injury, demographic, crash, environmental, geometric, and traffic characteristics of 73,746 pedestrian casualties that were involved in traffic crashes from 1991 to 2004 are considered. Binary logistic regression is used to determine the associations between the probability of fatality and severe injury and all contributory factors. A consideration of the influence of implicit attributes on the trend of pedestrian injury risk, temporal confounding, and interaction effects is progressively incorporated into the predictive model. To verify the goodness-of-fit of the proposed model, the Hosmer-Lemeshow test and logistic regression diagnostics are conducted. It is revealed that there is a decreasing trend in pedestrian injury risk, controlling for the influences of demographic, road environment, and other risk factors. In addition, the influences of pedestrian behavior, traffic congestion, and junction type on pedestrian injury risk are subject to temporal variation.
本研究试图利用香港运输署保存的全面历史撞车记录,评估交通事故中行人伤亡的受伤风险,并探究导致死亡和重伤的因素。研究考虑了1991年至2004年期间涉及交通事故的73746名行人伤亡者的受伤情况、人口统计学特征、撞车情况、环境、几何形状和交通特征。采用二元逻辑回归来确定死亡和重伤概率与所有促成因素之间的关联。预测模型逐步纳入了对隐性属性对行人受伤风险趋势、时间混杂因素和交互作用影响的考量。为验证所提模型的拟合优度,进行了霍斯默-莱梅肖检验和逻辑回归诊断。结果显示,在控制了人口统计学、道路环境和其他风险因素的影响后,行人受伤风险呈下降趋势。此外,行人行为、交通拥堵和路口类型对行人受伤风险的影响存在时间变化。