School of Civil Engineering and Transportation, South China University of Technology, Guangzhou, China; Department of Civil Engineering, The University of Hong Kong, Hong Kong, China.
Department of Civil Engineering, The University of Hong Kong, Hong Kong, China.
Accid Anal Prev. 2022 Feb;165:106518. doi: 10.1016/j.aap.2021.106518. Epub 2021 Dec 8.
One major challenge faced by neighborhood-level bicycle safety analysis is the lack of complete and reliable exposure data for the entire area under investigation. Although the conventional travel-diary surveys, together with the emerging smartphone fitness applications and bike-sharing systems, provide straightforward and valuable opportunities to estimate territory-wide bicycle activities, the obtained ridership suffers inherently from underreporting.
We introduced the Bayesian simultaneous-equation model as a sound methodological alternative here to address the uncertainty arising from incomplete exposure data when modeling bicycle crashes. The proposed method was successfully fitted to a crowdsourced dataset of 792 bicycle-motor vehicle (BMV) crashes aggregated from 209 neighborhoods over a 3-year period in Hong Kong.
Our analysis empirically demonstrated the bias due to omission of activity-based exposure measures or to the direct use of cycling distance extracted from the travel-diary survey without correcting for incompleteness. By modeling bicycle activities and the frequency of BMV crashes simultaneously, we also provided new evidence that an expansion of bicycle infrastructure was likely associated with a significant increase in cycling levels and a substantial reduction in the risk of BMV crashes, despite a slight increase in the absolute number of BMV crashes.
Our approach is promising in adjusting for the uncertainty in raw exposure data, extrapolating the missing exposure values, and untangling the linkage among built environment, bicycle activities, and the frequency of BMV crashes within a unified framework. To promote safer cycling, designated facilities should be provided to consecutively separate cyclists from motor vehicles.
社区层面自行车安全分析面临的一个主要挑战是缺乏完整可靠的调查区域暴露数据。虽然传统的出行日记调查,以及新兴的智能手机健身应用程序和共享单车系统,为估算全地域自行车活动提供了直接而有价值的机会,但获得的骑行量不可避免地存在漏报。
我们在这里引入贝叶斯联立方程模型作为一种合理的方法选择,以解决在建模自行车碰撞时因暴露数据不完整而产生的不确定性。该方法成功应用于香港 209 个社区为期 3 年的 792 起自行车与机动车(BMV)碰撞的众包数据集。
我们的分析经验证了由于忽略基于活动的暴露测量或直接使用出行日记调查中提取的骑行距离而导致的偏差,而没有对不完整性进行修正。通过同时建模自行车活动和 BMV 碰撞的频率,我们还提供了新的证据,即自行车基础设施的扩展可能与骑行水平的显著增加和 BMV 碰撞风险的大幅降低相关,尽管 BMV 碰撞的绝对数量略有增加。
我们的方法在调整原始暴露数据的不确定性、推断缺失的暴露值以及在统一框架中理清建筑环境、自行车活动和 BMV 碰撞频率之间的联系方面具有很大的潜力。为了促进更安全的骑行,应该提供指定的设施,将自行车与机动车连续隔开。