A spatial analysis of risk factors associated with road collisions in Ciudad Juarez, Mexico and using a geographically weighted regression approach
Resumen
This study examined changes in the spatial patterns and determinants of road collisions in Ciudad Juarez, Mexico
in 2019 and 2020, encompassing the initial period of COVID-19 mobility restrictions. Kernel density estimation
and local indicators of spatial association were used to compare collision distributions and identify significant
clusters between years. A geographically weighted negative binomial regression model then generated local
coefficients to analyze how demographic, socioeconomic, land use, and road network factors influenced collision
probability spatially. Results show collisions decreased 13.18% in 2020 but clustered differently, validating
restrictions’ impact. Population aged 15–64 and industrial land uses significantly increased risk spatially,
whereas commercial uses decreased. Lower socioeconomic conditions also correlated with higher risk. Younger
populations presented varying collision likelihoods intra-urbanly. This research thus emphasizes how local
contexts shape risk factors’ effects and informs data-driven safety policies accounting for place-specific issues. By
adopting an explicitly spatial modeling approach, localized risk patterns were uncovered not detectable through
traditional methods.
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