Department of Community Health Sciences, Boston University School of Public Health, Boston, Massachusetts, USA
Harvard University John F Kennedy School of Government, Cambridge, Massachusetts, USA.
Inj Prev. 2022 Jun;28(3):249-255. doi: 10.1136/injuryprev-2021-044412. Epub 2021 Dec 7.
Demolishing abandoned buildings has been found to reduce nearby firearm violence. However, these effects might vary within cities and across time scales. We aimed to identify potential moderators of the effects of demolitions on firearm violence using a novel approach that combined machine learning and aerial imagery.
Outcomes were annual counts of fatal and non-fatal shootings in Rochester, New York, from 2000 to 2020. Treatment was demolitions conducted from 2009 to 2019. Units of analysis were 152×152 m grid squares. We used a difference-in-differences approach to test effects: (A) the year after each demolition and (B) as demolitions accumulated over time. As moderators, we used a built environment typology generated by extracting information from aerial imagery using convolutional neural networks, a deep learning approach, combined with -means clustering. We stratified our main models by built environment cluster to test for moderation.
One demolition was associated with a 14% shootings reduction (incident rate ratio (IRR)=0.86, 95% CI 0.83 to 0.90, p<0.001) the following year. Demolitions were also associated with a long-term, 2% reduction in shootings per year for each cumulative demolition (IRR=0.98, 95% CI 0.95 to 1.00, p=0.02). In the stratified models, densely built areas with higher street connectivity displayed following-year effects, but not long-term effects. Areas with lower density and larger parcels displayed long-term effects but not following-year effects.
The built environment might influence the magnitude and duration of the effects of demolitions on firearm violence. Policymakers may consider complementary programmes to help sustain these effects in high-density areas.
拆除废弃建筑物已被证明可以减少附近的枪支暴力。然而,这些效果可能在城市内部和时间尺度上有所不同。我们旨在使用一种结合机器学习和航空图像的新方法,确定拆除对枪支暴力影响的潜在调节因素。
结果是 2000 年至 2020 年期间纽约罗切斯特市的致命和非致命枪击事件的年发生率。治疗是 2009 年至 2019 年期间进行的拆除。分析单位是 152×152m 的网格方块。我们使用差异中的差异方法来检验效果:(A)每次拆除后的当年和(B)随着时间的推移拆除的积累。作为调节因素,我们使用从航空图像中提取信息的卷积神经网络生成的建筑环境类型学,这是一种深度学习方法,结合 -means 聚类。我们对主要模型进行了分层,以检验调节作用。
一次拆除与次年枪击事件减少 14%有关(发病率比 (IRR)=0.86,95%CI 0.83 至 0.90,p<0.001)。拆除还与每年每累计拆除减少 2%的枪击事件有关(IRR=0.98,95%CI 0.95 至 1.00,p=0.02)。在分层模型中,街道连通性较高的密集建筑区域显示出次年效应,但没有长期效应。密度较低和面积较大的区域显示出长期效应,但没有次年效应。
建筑环境可能会影响拆除对枪支暴力影响的大小和持续时间。政策制定者可能会考虑补充方案,以帮助在高密度地区维持这些效果。