Suppr超能文献

利用潜在类别聚类分析和部分比例优势模型探讨自行车-车辆碰撞中自行车骑手的伤害严重程度。

Exploring bicyclist injury severity in bicycle-vehicle crashes using latent class clustering analysis and partial proportional odds models.

机构信息

USDOT Center for Advanced Multimodal Mobility Solutions and Education (CAMMSE), Department of Civil and Environmental Engineering, University of North Carolina at Charlotte, EPIC Building, Room 3366, 9201 University City Boulevard, Charlotte, NC 28223-0001, United States.

USDOT Center for Advanced Multimodal Mobility Solutions and Education (CAMMSE), Department of Civil and Environmental Engineering, University of North Carolina at Charlotte, EPIC Building, Room 3261, 9201 University City Boulevard, Charlotte, NC 28223-0001, United States.

出版信息

J Safety Res. 2021 Feb;76:101-117. doi: 10.1016/j.jsr.2020.11.012. Epub 2020 Dec 13.

Abstract

INTRODUCTION

Bicyclists are more vulnerable compared to other road users. Therefore, it is critical to investigate the contributing factors to bicyclist injury severity to help provide better biking environment and improve biking safety. According to the data provided by National Highway Traffic Safety Administration (NHTSA), a total of 8,028 bicyclists were killed in bicycle-vehicle crashes from 2007 to 2017. The number of fatal bicyclists had increased rapidly by approximately 11.70% during the past 10 years (NHTSA, 2019).

METHODS

This paper conducts a latent class clustering analysis based on the police reported bicycle-vehicle crash data collected from 2007 to 2014 in North Carolina to identify the heterogeneity inherent in the crash data. First, the most appropriate number of clusters is determined in which each cluster has been characterized by the distribution of the featured variables. Then, partial proportional odds models are developed for each cluster to further analyze the impacts on bicyclist injury severity for specific crash patterns.

RESULTS

Marginal effects are calculated and used to evaluate and interpret the effect of each significant explanatory variable. The model results reveal that variables could have different influence on the bicyclist injury severity between clusters, and that some variables only have significant impacts on particular clusters.

CONCLUSIONS

The results clearly indicate that it is essential to conduct latent class clustering analysis to investigate the impact of explanatory variables on bicyclist injury severity considering unobserved or latent features. In addition, the latent class clustering is found to be able to provide more accurate and insightful information on the bicyclist injury severity analysis. Practical Applications: In order to improve biking safety, regulations need to be established to prevent drinking and lights need to be provided since alcohol and lighting condition are significant factors in severe injuries according to the modeling results.

摘要

引言

与其他道路使用者相比,骑自行车的人更容易受到伤害。因此,研究导致自行车骑行者受伤严重的因素至关重要,这有助于提供更好的骑行环境并提高骑行安全性。根据美国国家公路交通安全管理局(NHTSA)提供的数据,2007 年至 2017 年期间,共有 8028 名骑自行车的人在自行车与车辆碰撞事故中死亡。在过去的 10 年中,致命自行车骑行者的数量迅速增加了约 11.70%(NHTSA,2019)。

方法

本文基于 2007 年至 2014 年北卡罗来纳州警方报告的自行车-车辆碰撞数据,进行潜在类别聚类分析,以识别碰撞数据中固有的异质性。首先,确定最合适的聚类数量,每个聚类都由特征变量的分布来描述。然后,为每个聚类开发部分比例优势模型,以进一步分析特定碰撞模式对自行车骑行者受伤严重程度的影响。

结果

计算边缘效应并用于评估和解释每个显著解释变量的影响。模型结果表明,变量对不同聚类中自行车骑行者受伤严重程度的影响可能不同,并且某些变量仅对特定聚类有显著影响。

结论

结果清楚地表明,在考虑不可观测或潜在特征的情况下,进行潜在类别聚类分析以研究解释变量对自行车骑行者受伤严重程度的影响是必要的。此外,发现潜在类别聚类能够为自行车骑行者受伤严重程度分析提供更准确和有见地的信息。

实际应用

为了提高骑行安全性,需要制定法规以防止饮酒,并提供照明,因为根据建模结果,酒精和照明条件是严重伤害的重要因素。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验