Litcius/Paper detail

How Gender Affects Motor Vehicle Crashes: A Case Study from San Antonio, Texas

Khondoker Billah, Hatim O. Sharif, Samer Dessouky

2022Sustainability12 citationsDOIOpen Access PDF

Abstract

Traffic crashes are among the leading causes of injuries and fatalities worldwide. The main assumption of this study is that traffic crash rates, injury severity, and driving behaviors differ by the driver’s gender. Utilizing ten years (2011–2020) of data from the Texas Crash Record and Information System database, this study investigates how some of the most prominent driving behaviors leading to crashes and severe injuries (distracted driving, speeding, lane departure, and driving under influence) vary by gender in San Antonio, Texas. The spatial distribution of crashes associated with these driving behaviors by gender is also investigated, as well as the influence of some environmental and temporal variables on crash frequency and injury severity. This study adopted bivariate analysis and logistic regression modeling to identify the effect of different variables on crash occurrence and severity by gender. Male drivers were more likely to be involved in a speeding/DUI/lane departure-related crash and subsequent severe injuries. However, female drivers were slightly more associated with distracted-driving crashes and subsequent injuries. Nighttime, interstate/highway roads, the weekend period, and divider/marked lanes as the primary traffic control significantly increased the crash and injury risk of male drivers. Driving behavior-related crashes were mostly concentrated on some interstate road segments, major intersections, and interchanges. The results from this study can be used by authorities and policy-makers to prioritize the use of limited resources, and to run more effective education campaigns to a targeted audience.

Topics & Concepts

CrashPoison controlInjury preventionBivariate analysisLogistic regressionTransport engineeringHuman factors and ergonomicsOccupational safety and healthAggressive drivingEngineeringEnvironmental healthMedicineComputer scienceProgramming languagePathologyMachine learningInternal medicineTraffic and Road SafetyUrban Transport and AccessibilityInjury Epidemiology and Prevention