Prevention Research Center, Suite 450, Berkeley, California 94704, USA.
J Stud Alcohol Drugs. 2010 Mar;71(2):237-48. doi: 10.15288/jsad.2010.71.237.
This study examined the influence of on-premise alcohol-outlet densities and of drinking-driver densities on rates of alcohol-related motor vehicle crashes. A traffic-flow model is developed to represent geographic relationships between residential locations of drinking drivers, alcohol outlets, and alcohol-related motor vehicle crashes.
Cross-sectional and time-series cross-sectional spatial analyses were performed using data collected from 144 geographic units over 4 years. Data were obtained from archival and survey sources in six communities. Archival data were obtained within community areas and measured activities of either the resident population or persons visiting these communities. These data included local and highway traffic flow, locations of alcohol outlets, population density, network density of the local roadway system, and single-vehicle nighttime (SVN) crashes. Telephone-survey data obtained from residents of the communities were used to estimate the size of the resident drinking and driving population.
Cross-sectional analyses showed that effects relating on-premise densities to alcohol-related crashes were moderated by highway trafficflow. Depending on levels of highway traffic flow, 10% greater densities were related to 0% to 150% greater rates of SVN crashes. Time-series cross-sectional analyses showed that changes in the population pool of drinking drivers and on-premise densities interacted to increase SVN crash rates.
A simple traffic-flow model can assess the effects of on-premise alcohol-outlet densities and of drinking-driver densities as they vary across communities to produce alcohol-related crashes. Analyses based on these models can usefully guide policy decisions on the sitting of on-premise alcohol outlets.
本研究考察了场所内酒精销售点密度和酒后驾车者密度对与酒精相关的机动车事故率的影响。建立了一个交通流模型,以代表酒后驾车者、酒精销售点和与酒精相关的机动车事故的居住地点之间的地理关系。
使用从 4 年中 144 个地理单位收集的数据进行了横断面和时间序列横断面空间分析。数据来自六个社区的档案和调查来源。档案数据是在社区区域内收集的,测量了居民或访问这些社区的人的活动,包括当地和高速公路交通流量、酒精销售点的位置、人口密度、当地道路系统的网络密度以及单辆夜间(SVN)事故。从社区居民那里获得的电话调查数据用于估计居民饮酒和驾驶人口的规模。
横断面分析表明,与高速公路交通流量有关的场所密度与与酒精相关的碰撞之间的关系受到限制。根据高速公路交通流量的水平,10%的密度增加与 0%至 150%的 SVN 碰撞率增加有关。时间序列横断面分析表明,饮酒司机人数和场所密度的变化相互作用,增加了 SVN 碰撞率。
一个简单的交通流模型可以评估场所内酒精销售点密度和饮酒司机密度在不同社区之间的变化对与酒精相关的碰撞的影响。基于这些模型的分析可以为场所内酒精销售点的位置决策提供有用的指导。