Kondo Michelle C, Morrison Christopher, Guerra Erick, Kaufman Elinore J, Wiebe Douglas J
USDA-Forest Service, Northern Research Station, 100 North 20th Street, Ste 205, Philadelphia, PA 19103, USA.
Department of Biostatistics and Epidemiology, Perelman School of Medicine at the University of Pennsylvania, Blockley Hall 9th Floor, 423 Guardian Drive, Philadelphia, PA 19104, USA.
Saf Sci. 2018 Mar;103:225-233. doi: 10.1016/j.ssci.2017.12.002.
US municipalities are increasingly introducing bicycle lanes to promote bicycle use, increase roadway safety and improve public health. The aim of this study was to identify specific locations where bicycle lanes, if created, could most effectively reduce crash rates. Previous research has found that bike lanes reduce crash incidence, but a lack of comprehensive bicycle traffic flow data has limited researchers' ability to assess relationships at high spatial resolution. We used Bayesian conditional autoregressive logit models to relate the odds that a bicycle injury crash occurred on a street segment in Philadelphia, PA (n = 37,673) between 2011 and 2014 to characteristics of the street and adjacent intersections. Statistical models included interaction terms to address the problem of unknown bicycle traffic flows, and found bicycle lanes were associated with reduced crash odds of 48% in streets segments adjacent to 4-exit intersections, of 40% in streets with one- or two-way stop intersections, and of 43% in high traffic volume streets. Presence of bicycle lanes was not associated with change in crash odds at intersections with less or more than 4 exits, at 4-way stop and signalized intersections, on one-way streets and streets with trolley tracks, and on streets with low-moderate traffic volume. The effectiveness of bicycle lanes appears to depend most on the configuration of the adjacent intersections and on the volume of vehicular traffic. Our approach can be used to predict specific street segments on which the greatest absolute reduction in bicycle crash odds could occur by installing new bicycle lanes.
美国各城市越来越多地引入自行车道,以促进自行车使用、提高道路安全性并改善公众健康。本研究的目的是确定若设置自行车道,哪些特定位置能最有效地降低撞车率。先前的研究发现自行车道可降低撞车发生率,但缺乏全面的自行车交通流量数据限制了研究人员在高空间分辨率下评估相关关系的能力。我们使用贝叶斯条件自回归逻辑模型,将2011年至2014年宾夕法尼亚州费城街道段(n = 37,673)发生自行车伤害撞车的几率与街道及相邻十字路口的特征相关联。统计模型包括交互项以解决未知自行车交通流量的问题,结果发现自行车道与4出口十字路口附近街道段撞车几率降低48%、与设有单向或双向停车标志十字路口的街道撞车几率降低40%、与高交通流量街道撞车几率降低43%相关。在出口少于或多于4个的十字路口、四路停车和信号控制十字路口、单向街道和有电车轨道的街道以及中低交通流量街道,自行车道的存在与撞车几率变化无关。自行车道的有效性似乎最取决于相邻十字路口的布局以及车辆交通量。我们的方法可用于预测通过安装新自行车道,自行车撞车几率能实现最大绝对降低的特定街道段。