Prediction of time in industrial chemical accidents: A survival analysis

Work. 2023;74(3):1115-1124. doi: 10.3233/WOR-211333.

Abstract

Background: Chemical accidents have imposed casualties and high economic and social consequences to Iranian industries and society.

Objective: This study investigated the effect of risk factors involved in occurrences of the chemical accidents and predicted the time of occurrences in Iranian chemical factories.

Methods: A cross-sectional study was implemented in 574 chemical facilities with more than 25 employees from 2018 to 2020. Collecting data instruments were 2 checklists with 15 and 25 three-point Likert scale questions, respectively. Chi square and Monte Carlo tests assessed the relationships between independent risk factors and dependent hazardous chemical accidents. Cox semi-parametric and log-normal parametric models were used to predict the upcoming time of chemical accidents based on the impacts of risk factors understudy. Data analyses were performed using Stata and R software.

Results: The results showed that safety data sheets, labeling, fire extinguishing system, safe chemicals storage, separation, loading, transportation and training were statistically significant with occurrences of the chemical accidents (P-value < 0.05). Loading and transportation were mostly related to chemical incidents and reduced significantly the expected time of chemical events (P-value = 0.028).

Conclusion: Establishing a comprehensive chemical accidents dataset and strict governmental supervision on chemical safety regulations are suggested to decrease the chemical accidents at regional and local levels in chemical plants.

Keywords: Chemical accidents; risk factors; safety; survival analysis.

MeSH terms

  • Accidents
  • Accidents, Occupational
  • Chemical Hazard Release*
  • Cross-Sectional Studies
  • Humans
  • Iran / epidemiology
  • Survival Analysis