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与工作相关的道路交通事故:个人出行新模式的出现——基于法国道路交通事故登记数据的分析

Work-related road traffic accidents: emergence of new modes of personal journey - analysis based on data from a register of road traffic accidents in France.

作者信息

Fort Emmanuel, Connesson Nicolas, Brière Julien, Ndiaye Amina, Gadegbeku Blandine, Charbotel Barbara

机构信息

UMRESTTE UMR T 9405, University Claude Bernard Lyon 1, Villeurbanne, France

UMRESTTE UMR T 9405, University Claude Bernard Lyon 1, Villeurbanne, France.

出版信息

Inj Prev. 2025 May 20;31(3):242-252. doi: 10.1136/ip-2023-045102.

Abstract

INTRODUCTION

According to the 2018-2019 People Mobility Survey, work-related journeys (commuting and on-duty journeys) account for approximately 25% of all journeys. The use of non-motorised (nm) and motorised (m) personal mobility devices (PMDs) has steadily increased since their introduction into the French market in the last decade.

OBJECTIVE

This study aimed to describe the characteristics of work-related road accidents and their evolution since the introduction of new PMDs in France and the increase in the use of scooters.

MATERIALS AND METHODS

This was a retrospective, cross-sectional study using data from the Rhône Road Trauma Registry. Data were collected from 2015 to 2020. We included the data for the victims aged 18-70 years who were injured in work-related road accidents.

RESULTS

We identified 11 296 individuals aged 18-70 years who experienced work-related road accidents. An injury report was provided for a total of 11 277 patients. A total of 546 passengers and 78 drivers of other motorised vehicles (buses/trams, construction equipment and tractors) were excluded from the analysis. Seven patients died at the time of the accident and seven died after hospitalisation. Of the 10 653 (94.4%) victims, there were pedestrians (5.1%) or riders of bicycles (16.9%), scooters (3.8%), other PMDs (roller blades, skateboards, monowheels, gyropods and hoverboards; 0.4%) and motorised two wheelers (21.4%), or drivers of car (45.3%), and truck (1.5%). More than half of the scooter riders and 80% of other PMD riders were men. More than 60% of other PMD riders and 53% of scooter riders were under 34 years of age. Most scooter road accidents occurred during commuting (95.6%). 65% of the scooter accidents and 50% of other PMD accidents did not have opponents. Overall, one-quarter of the victims experienced accidents without opponents. Most scooter riders had injuries to their upper limbs (59.2%), lower limbs (46.8%), face (21.2%) or head (17.9%).

DISCUSSION

This original study on work-related road accidents allowed us to characterise the increase in work-related road accidents associated with new modes of travel, particularly scooters. The results observed for users of scooters and other PMDs in this study were generally consistent with those found in the scientific literature. Despite limited data, the results suggest that accidents involving scooters or other PMDs are of low severity.

CONCLUSION

Many head injuries could be prevented with more widespread use of helmets, among scooter and other PMD users and bicycle users.

摘要

引言

根据2018 - 2019年人员流动调查,与工作相关的出行(通勤和上班行程)约占所有出行的25%。自非机动(nm)和机动(m)个人移动设备(PMD)在过去十年引入法国市场以来,其使用量稳步增长。

目的

本研究旨在描述自法国引入新型PMD以及滑板车使用增加以来,与工作相关的道路交通事故的特征及其演变情况。

材料与方法

这是一项回顾性横断面研究,使用了罗纳道路创伤登记处的数据。数据收集时间为2015年至2020年。我们纳入了在与工作相关的道路交通事故中受伤的18 - 70岁受害者的数据。

结果

我们确定了11296名18 - 70岁经历过与工作相关道路交通事故的个体。共为11277名患者提供了伤情报告。分析中排除了546名乘客以及78名其他机动车辆(公交车/电车、建筑设备和拖拉机)的司机。7名患者在事故发生时死亡,7名在住院后死亡。在10653名(94.4%)受害者中,有行人(5.1%)、自行车骑行者(16.9%)、滑板车骑行者(3.8%)、其他PMD(轮滑鞋、滑板、独轮车、陀螺球和悬浮滑板;0.4%)和机动两轮车骑行者(21.4%),或汽车司机(45.3%)以及卡车司机(1.5%)。超过一半的滑板车骑行者和80%的其他PMD骑行者为男性。超过60%的其他PMD骑行者和53%的滑板车骑行者年龄在34岁以下。大多数滑板车道路事故发生在通勤期间(95.6%)。65%的滑板车事故和50%的其他PMD事故没有对方车辆。总体而言,四分之一的受害者遭遇的事故没有对方车辆。大多数滑板车骑行者上肢(59.2%)、下肢(46.8%)、面部(21.2%)或头部(17.9%)受伤。

讨论

这项关于与工作相关道路交通事故的原创性研究使我们能够描述与新出行方式,特别是滑板车相关的与工作相关道路交通事故的增加情况。本研究中观察到的滑板车和其他PMD使用者的结果与科学文献中的结果总体一致。尽管数据有限,但结果表明涉及滑板车或其他PMD的事故严重程度较低。

结论

在滑板车、其他PMD使用者以及自行车使用者中更广泛地使用头盔,可以预防许多头部受伤情况。

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