Epidemiology and Health (Nov 2024)

A decision tree model for traffic accident prediction among food delivery riders in Thailand

  • Muslimah Molo,
  • Suttida Changsan,
  • Lila Madares,
  • Ruchirada Changkwanyeun,
  • Supang Wattanasoei,
  • Supa Vittaporn,
  • Patcharin Khamnuan,
  • Surangrat Pongpan,
  • Kasama Pooseesod,
  • Sayambhu Saita

DOI
https://doi.org/10.4178/epih.e2024095
Journal volume & issue
Vol. 46

Abstract

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OBJECTIVES Food delivery riders (FDRs) play a crucial role in the food delivery industry but face considerable challenges, including a rising number of traffic accidents. This study aimed to examine the incidence of traffic accidents and develop a decision tree model to predict the likelihood of traffic accidents among FDRs. METHODS A cross-sectional study was conducted with 257 FDRs in Chiang Mai and Lampang Province, Thailand. Participants were interviewed using questionnaires and provided self-reports of accidents over the previous 6 months. Univariable logistic regression was used to identify factors influencing traffic accidents. Subsequently, a decision tree model was developed to predict traffic accidents using a training and validation dataset split in a 70:30 ratio. RESULTS The results indicated that 45.1% of FDRs had been involved in a traffic accident. The decision tree model identified several significant predictors of traffic accidents, including delivering food in the rain, job stress, fatigue, inadequate sleep, and the use of a modified motorcycle, achieving a prediction accuracy of 66.5%. CONCLUSIONS Based on this model, we recommend several measures to minimize accidents among FDRs: ensuring adequate sleep, implementing work-rest schedules to mitigate fatigue, managing job-related stress effectively, inspecting motorcycle conditions before use, and exercising increased caution when delivering food during rainy conditions.

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