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导致老年人行人致命和严重伤害事故的主要原因是什么?来自贝叶斯网络模型的证据。

What are the leading causes of fatal and severe injury crashes involving older pedestrian? Evidence from Bayesian network model.

机构信息

College of Computing, Engineering and Construction School of Engineering, University of North Florida, 1 UNF Drive, Jacksonville, FL 32224, United States.

Department of Civil and Environmental Engineering, Florida International University, 10555 West Flagler Street, EC 3720, Miami, FL 33174, United States.

出版信息

J Safety Res. 2022 Feb;80:281-292. doi: 10.1016/j.jsr.2021.12.011. Epub 2021 Dec 23.

Abstract

INTRODUCTION

Identifying factors contributing to the risk of older pedestrian fatal/severe injuries, along with their possible interdependency, is the first step towards improving safety. Several previous studies focused on identifying the influence of individual factors while ignoring their interdependencies. This study investigated the leading risk factors associated with older pedestrian fatalities/severe injuries by identifying the interdependency relationship among variables.

METHOD

A Bayesian Logistic Regression (BLR) model was developed to identify significant factors influencing pedestrian fatalities and severe injuries, followed by a Bayesian Network (BN) model to reveal the interdependency relationship among the statistically significant variables and crash severity. Furthermore, the probabilistic inference was conducted to identify the leading cause of fatal and severe injuries involving older pedestrians. The models were developed with data from 913 pedestrian crashes involving older pedestrians at signalized intersections in Florida from 2016 through 2018.

RESULTS

Vehicle maneuver, lighting condition, road type, and shoulder type were directly associated with older pedestrian fatality/severe injury. Vehicle maneuver (going straight ahead) was the most significant factor in influencing the severity of crashes involving older pedestrians. The interdependency of vehicle moving straight, nighttime condition, and two-way divided roadway with curbed shoulders was associated with the highest likelihood of fatal and severe-injury crashes involving older pedestrians.

CONCLUSIONS

The Bayesian Network revealed the interdependency between variables associated with fatal and severe injury-crashes involving older pedestrians. The interdependency relationship with the highest likelihood to cause fatalities/severe-injuries comprised factors with the significant individual contribution to the severity of crashes involving older pedestrians. Practical applications: The interdependencies among variables identified in this research could help devise targeted engineering, education, and enforcement strategies that could potentially have a greater effect on improving the safety of older pedestrians.

摘要

引言

确定导致老年行人死亡/重伤风险的因素,并了解其相互依存关系,是提高安全性的第一步。之前的几项研究侧重于确定单个因素的影响,而忽略了它们的相互依存关系。本研究通过确定变量之间的相互依存关系,调查与老年行人死亡/重伤相关的主要风险因素。

方法

开发了贝叶斯逻辑回归(BLR)模型,以确定影响行人死亡和重伤的显著因素,然后建立贝叶斯网络(BN)模型,以揭示统计显著变量之间的相互依存关系和碰撞严重程度。此外,进行概率推理以确定涉及老年行人的死亡和重伤的主要原因。该模型使用了 2016 年至 2018 年佛罗里达州信号交叉口 913 名老年行人的事故数据进行开发。

结果

车辆行驶、照明条件、道路类型和路肩类型与老年行人的死亡/重伤直接相关。车辆行驶(直走)是影响老年行人事故严重程度的最重要因素。车辆直走、夜间条件和带有路缘的双向分隔道路之间的相互依存关系与涉及老年行人的致命和重伤事故的最高可能性相关。

结论

贝叶斯网络揭示了与老年行人死亡和重伤事故相关的变量之间的相互依存关系。导致致命和重伤事故的相互依存关系包括对涉及老年行人的事故严重程度具有显著个体贡献的因素。

实际应用

本研究中确定的变量之间的相互依存关系有助于制定有针对性的工程、教育和执法策略,这些策略可能对提高老年行人的安全性产生更大的影响。

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