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弥合差距:利用二十年的碰撞数据建立基于机制的自行车手损伤风险曲线。

Bridging the gap: Mechanistic-based cyclist injury risk curves using two decades of crash data.

机构信息

VUFO - Traffic Accident Research Institute at TU Dresden, Dresden, Germany.

Waymo LLC, Mountain View, California, USA.

出版信息

Traffic Inj Prev. 2024;25(sup1):S105-S115. doi: 10.1080/15389588.2024.2400276. Epub 2024 Nov 1.

Abstract

OBJECTIVE

Injury risk curves are vital in quantifying the relative safety consequences of real-world collisions. Previous injury risk curves for bicycle-passenger vehicle crashes have predominantly focused on frontal impacts. This creates a gap in cyclist injury risk assessment for other geometric crash configurations. The goal of this study was to create an "omnidirectional" injury risk model, informed by known injury causing mechanisms, that is applicable to most geometric configurations.

METHODS

We used data from years 1999-2022 of the German In-Depth Accident Study (GIDAS). We describe the pattern of injuries for cyclists involved in collisions with passenger vehicles, and we developed injury risk functions at various AIS levels for these collisions. A mechanistic-based approach accounting for biomechanically-relevant variables was used to select model parameters a priori. Cyclist age (including children) and sex were regarded as relevant predictors of injury risk. Speed and impact geometry were captured through a novel predictor, , which transforms the vehicle and cyclist speeds into a single value and incorporates frictional considerations observed during side engagements. Cyclist engagement with the vehicle was captured with a variable demonstrating the potential for a normal projection. We additionally present analyses weighted toward German nationwide data.

RESULTS

We identified 6,576 cyclists involved in collisions with passenger vehicles. AIS3+ cyclist injuries occurred most often in the head, thorax, and lower extremities. was a strong predictor of injury risk. Collisions with a potential for a normal projection were associated with increased risk, though this was only significant at the MAIS2+F severity level. Younger children had slightly higher injury risk compared to young adults, while elderly cyclists had the highest risk of AIS3+ injury. Sex was a significant predictor only for the MAIS2+F injury risk curves.

SIGNIFICANCE

U.S. cyclist fatalities increased 55% from 2010 to 2021. To reduce injuries and fatalities, it is crucial to understand cyclist injury risk. This study builds on previous analyses by including children, incorporating additional mechanistic predictors, broadening the scope of included crashes, and using weighting to generalize these estimates toward national German statistics.

摘要

目的

伤害风险曲线对于量化现实世界碰撞的相对安全后果至关重要。以前的自行车-乘用车碰撞伤害风险曲线主要集中在正面碰撞上。这在评估其他几何碰撞配置下的自行车手受伤风险方面存在差距。本研究的目的是创建一个“全方位”的伤害风险模型,该模型基于已知的伤害发生机制,并适用于大多数几何配置。

方法

我们使用了 1999 年至 2022 年德国深入事故研究(GIDAS)的数据。我们描述了与乘用车碰撞的自行车手受伤的模式,并为这些碰撞开发了不同 AIS 水平的伤害风险函数。一种基于机制的方法,考虑了生物力学相关变量,用于预先选择模型参数。自行车手年龄(包括儿童)和性别被视为伤害风险的相关预测因素。速度和碰撞几何形状通过一个新的预测因子 来捕获,该因子将车辆和自行车手的速度转换为一个单一的值,并包含在侧面碰撞中观察到的摩擦考虑因素。自行车手与车辆的接触情况通过一个潜在的正常投影变量来捕捉。我们还提供了针对德国全国范围内数据进行加权的分析。

结果

我们确定了 6576 名与乘用车碰撞的自行车手。AIS3+自行车手受伤最常见于头部、胸部和下肢。 是伤害风险的一个强有力的预测因子。有潜在正常投影的碰撞与增加的风险相关,尽管这仅在 MAIS2+F 严重程度水平上显著。年幼的儿童与年轻的成年人相比,受伤风险略高,而年长的自行车手则有最高的 AIS3+受伤风险。性别仅对 MAIS2+F 伤害风险曲线是一个显著的预测因素。

意义

美国自行车手的死亡人数从 2010 年到 2021 年增加了 55%。为了减少伤害和死亡,了解自行车手的受伤风险至关重要。本研究通过纳入儿童、纳入更多的机制预测因子、扩大包括的碰撞范围以及使用加权来使这些估计值推广到德国全国统计数据,从而建立在以前的分析之上。

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