Department of Emergency Medicine, University of British Columbia, Vancouver, British Columbia, Canada.
Traffic Inj Prev. 2012;13(3):219-29. doi: 10.1080/15389588.2011.645383.
Several traffic safety research techniques require researchers to separate crash-involved drivers into culpable and nonculpable. Nonculpable drivers are assumed to be randomly involved in crashes by external factors and to approximate a noncollision control population. If this is true, factors that increase crash risk should be found more often in culpable than in nonculpable drivers. Though a culpability scoring tool has been developed for research purposes, that tool does not adequately address winter driving conditions (Robertson and Drummer 1994). Moreover, traditional culpability scoring requires assessors to read and score individual collision reports. The purpose of this study is to develop and validate an automated, rule-based Canadian culpability scoring tool that is capable of rapidly scoring police crash reports from large administrative datasets.
We used an iterative approach to develop and validate our tool. First, the Robertson-Drummer culpability scoring tool was modified to include the extensive police report data collected in the British Columbia Traffic Accident System (TAS) and to account for winter driving conditions. This was done in consultation with traffic safety experts. The scoring tool was automated, employing a rule-based decision model that avoids interpretation of free-text reports. The scoring tool was applied to 73 collisions (134 drivers). Two experts also reviewed these collisions and determined the culpability of each driver. Discrepant cases were discussed to understand why the scoring tool differed from the expert assessment and the scoring tool was modified accordingly. The final tool was compared with expert assessment on another sample of 96 crashes. The tool was also applied to a sample of 2086 crash-involved drivers with known blood alcohol concentrations (BACs) and the adjusted odds of culpability were calculated for several BAC ranges.
The final scoring tool included 7 factors and had content validity for traffic safety experts. It had excellent agreement with expert scoring on the first set of collisions (kappa = 0.83, 95% confidence interval [CI]: 0.75-0.91) and on the second set (kappa = 0.84, 95% CI: 0.77-0.92). When applied to crash-involved drivers with known BAC levels, the scoring tool exhibited predictive validity: the odds of culpability increased with higher BACs, consistent with the known dose effect of BAC on crash risk.
We have developed an automated culpability scoring tool contextualized to Canadian driving conditions. This tool will allow road safety researchers to assess collision responsibility in large administrative data sets derived from police reports.
有几种交通安全研究技术需要研究人员将涉及事故的驾驶员分为有责和无责。无责驾驶员被认为是由于外部因素而随机卷入事故的,并且近似于无碰撞控制人群。如果这是事实,那么增加事故风险的因素应该在有责驾驶员中比在无责驾驶员中更常见。尽管已经为研究目的开发了一种有责性评分工具,但该工具不能充分解决冬季驾驶条件(Robertson 和 Drummer,1994 年)。此外,传统的有责性评分需要评估员阅读和评分个别碰撞报告。本研究的目的是开发和验证一种能够快速对来自大型管理数据集的警方碰撞报告进行评分的自动化、基于规则的加拿大有责性评分工具。
我们使用迭代方法来开发和验证我们的工具。首先,对 Robertson-Drummer 有责性评分工具进行了修改,以纳入不列颠哥伦比亚省交通事故系统(TAS)收集的广泛的警方报告数据,并考虑到冬季驾驶条件。这是在与交通安全专家协商后进行的。评分工具是自动化的,采用基于规则的决策模型,避免对自由文本报告进行解释。该评分工具应用于 73 起碰撞(134 名驾驶员)。两位专家还审查了这些碰撞,并确定了每位驾驶员的有责性。对有争议的案例进行了讨论,以了解评分工具与专家评估的差异,并相应地修改了评分工具。最终工具在另一组 96 起碰撞的样本上与专家评估进行了比较。该工具还应用于已知血液酒精浓度(BAC)的 2086 名碰撞驾驶员样本,计算了几个 BAC 范围的有责性调整几率。
最终的评分工具包括 7 个因素,对交通安全专家具有内容有效性。它在第一组碰撞的专家评分上具有极好的一致性(kappa = 0.83,95%置信区间 [CI]:0.75-0.91),在第二组碰撞上也具有极好的一致性(kappa = 0.84,95% CI:0.77-0.92)。当应用于已知 BAC 水平的碰撞驾驶员时,评分工具表现出预测有效性:有责性几率随 BAC 升高而增加,这与 BAC 对碰撞风险的已知剂量效应一致。
我们开发了一种上下文与加拿大驾驶条件相关的自动化有责性评分工具。该工具将使道路安全研究人员能够在源自警方报告的大型管理数据集上评估碰撞责任。