Eksler Vojtech, Lassarre Sylvain
INRETS - GARIG (French National Institute for Transport and Safety Research, Group for the Analysis of Road Risk and its Governance), 23, rue Alfred Nobel - Cité Descartes, 77420 Champs sur Marne, France.
J Safety Res. 2008;39(4):417-27. doi: 10.1016/j.jsr.2008.05.008. Epub 2008 Aug 9.
Road accident outcomes are traditionally analyzed at state or road network level due to a lack of aggregated data and suitable analytical methods. The aim of this paper is to demonstrate usefulness of a simple spatiotemporal modeling of road accident outcomes at small-scale geographical level.
Small-area spatiotemporal Bayesian models commonly used in epidemiological studies reveal the existence of spatial correlation in accident data and provide a mechanism to quantify its effect. The models were run for Belgium data for the period 2000-2005. Two different scale levels and two different exposure variables were considered under Bayesian hierarchical models of annual accident and fatal injury counts. The use of the conditional autoregressive (CAR) formulation of area specific relative risk and trend terms leads to more distinctive patterns of risk and its evolution. The Pearson correlation tests for relative risk rates and temporal trends allows researchers to determine the development of risk disparities in time.
Analysis of spatial effects allowed the identification of clusters with similar risk outcomes pointing toward spatial structure in road accident outcomes and their background mechanisms. From the analysis of temporal trends, different developments in road accident and fatality rates in the three federated regions of Belgium came into light. Increasing spatial disparities in terms of fatal injury risk and decreasing spatial disparities in terms of accident risk with time were further identified.
The application of a space-time model to accident and fatal injury counts at a small-scale level in Belgium allowed identification of several areas with outstandingly high accident (injury) records. This could allow more efficient redistribution of resources and more efficient road safety management in Belgium.
由于缺乏汇总数据和合适的分析方法,道路交通事故结果传统上是在州或道路网络层面进行分析的。本文的目的是证明在小尺度地理层面进行道路交通事故结果的简单时空建模的实用性。
流行病学研究中常用的小区域时空贝叶斯模型揭示了事故数据中存在空间相关性,并提供了一种量化其影响的机制。针对2000 - 2005年比利时的数据运行这些模型。在年度事故和致命伤害计数的贝叶斯层次模型下,考虑了两种不同的尺度水平和两种不同的暴露变量。使用区域特定相对风险和趋势项的条件自回归(CAR)公式会导致更明显的风险模式及其演变。相对风险率和时间趋势的皮尔逊相关性检验使研究人员能够确定风险差异随时间的发展情况。
对空间效应的分析使得能够识别出具有相似风险结果的聚类,这指向了道路交通事故结果中的空间结构及其背景机制。通过对时间趋势的分析,比利时三个联邦地区道路事故和死亡率的不同发展情况得以显现。进一步确定了随着时间推移,致命伤害风险方面的空间差异在增加,而事故风险方面的空间差异在减小。
在比利时小尺度层面将时空模型应用于事故和致命伤害计数,能够识别出几个事故(伤害)记录极高的区域。这可以使比利时的资源再分配更高效,道路安全管理更有效。