土耳其各省交通事故统计和道路死亡率的探索性空间分析。

Explorative spatial analysis of traffic accident statistics and road mortality among the provinces of Turkey.

机构信息

Afyon Kocatepe University, Faculty of Engineering, Department of Surveying, 03200 Afyonkarahisar, Turkey.

出版信息

J Safety Res. 2009 Oct;40(5):341-51. doi: 10.1016/j.jsr.2009.07.006. Epub 2009 Sep 19.

Abstract

INTRODUCTION

The aim of the study is to describe the inter-province differences in traffic accidents and mortality on roads of Turkey.

METHOD

Two different risk indicators were used to evaluate the road safety performance of the provinces in Turkey. These indicators are the ratios between the number of persons killed in road traffic accidents (1) and the number of accidents (2) (nominators) and their exposure to traffic risk (denominator). Population and the number of registered motor vehicles in the provinces were used as denominators individually. Spatial analyses were performed to the mean annual rate of deaths and to the number of fatal accidents that were calculated for the period of 2001-2006. Empirical Bayes smoothing was used to remove background noise from the raw death and accident rates because of the sparsely populated provinces and small number of accident and death rates of provinces. Global and local spatial autocorrelation analyses were performed to show whether the provinces with high rates of deaths-accidents show clustering or are located closer by chance. The spatial distribution of provinces with high rates of deaths and accidents was nonrandom and detected as clustered with significance of P<0.05 with spatial autocorrelation analyses.

RESULTS

Regions with high concentration of fatal accidents and deaths were located in the provinces that contain the roads connecting the Istanbul, Ankara, and Antalya provinces. Accident and death rates were also modeled with some independent variables such as number of motor vehicles, length of roads, and so forth using geographically weighted regression analysis with forward step-wise elimination. The level of statistical significance was taken as P<0.05. Large differences were found between the rates of deaths and accidents according to denominators in the provinces. The geographically weighted regression analyses did significantly better predictions for both accident rates and death rates than did ordinary least regressions, as indicated by adjusted R(2) values. Geographically weighted regression provided values of 0.89-0.99 adjusted R(2) for death and accident rates, compared with 0.88-0.95, respectively, by ordinary least regressions.

IMPACT ON INDUSTRY

Geographically weighted regression has the potential to reveal local patterns in the spatial distribution of rates, which would be ignored by the ordinary least regression approach. The application of spatial analysis and modeling of accident statistics and death rates at provincial level in Turkey will help to identification of provinces with outstandingly high accident and death rates. This could help more efficient road safety management in Turkey.

摘要

简介

本研究旨在描述土耳其省内交通事故和死亡率的差异。

方法

使用两种不同的风险指标来评估土耳其各省的道路安全绩效。这些指标是道路交通事故死亡人数(1)与事故数量(2)(分子)之比,以及它们与交通风险(分母)的暴露程度。人口和各省注册机动车数量分别作为分母。对 2001-2006 年期间计算的平均年死亡率和致命事故数量进行空间分析。由于人口稀少的省份和事故及死亡率较小的省份,使用经验贝叶斯平滑法从原始死亡率和事故率中去除背景噪声。进行全局和局部空间自相关分析,以显示死亡率-事故率较高的省份是否存在聚类或是否因偶然原因而更接近。通过空间自相关分析发现,高死亡率和事故率的省份的空间分布是随机的,并且具有统计学意义(P<0.05)。

结果

致命事故和死亡高度集中的地区位于连接伊斯坦布尔、安卡拉和安塔利亚省的道路所在的省份。使用地理加权回归分析和逐步向前消除方法,使用一些独立变量(如机动车数量、道路长度等)对事故和死亡率进行建模。统计显著性水平为 P<0.05。根据各省的分母,发现死亡率和事故率之间存在很大差异。地理加权回归分析对事故率和死亡率的预测明显优于普通最小二乘回归,如调整后的 R(2)值所示。地理加权回归为死亡率和事故率提供的调整后的 R(2)值分别为 0.89-0.99,而普通最小二乘回归分别为 0.88-0.95。

对行业的影响

地理加权回归有可能揭示死亡率空间分布的局部模式,而普通最小二乘回归方法可能会忽略这些模式。在土耳其省级应用空间分析和事故统计及死亡率建模将有助于识别事故和死亡率异常高的省份。这有助于在土耳其更有效地进行道路安全管理。

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