Sid and Reva Dewberry Department of Civil, Environmental and Infrastructure Engineering, Volgenau School of Engineering, George Mason University, 4400 University Drive, MS 6C1, Fairfax, VA 22030, USA.
Int J Environ Res Public Health. 2020 Jul 6;17(13):4852. doi: 10.3390/ijerph17134852.
The ability to identify factors that influence serious injuries and fatalities would help construction firms triage hazardous situations and direct their resources towards more effective interventions. Therefore, this study used odds ratio analysis and logistic regression modeling on historical accident data to investigate the contributing factors impacting occupational accidents among small electrical contracting enterprises. After conducting a thorough content analysis to ensure the reliability of reports, the authors adopted a purposeful variable selection approach to determine the most significant factors that can explain the fatality rates in different scenarios. Thereafter, this study performed an odds ratio analysis among significant factors to determine which factors increase the likelihood of fatality. For example, it was found that having a fatal accident is 4.4 times more likely when the source is a "vehicle" than when it is a "tool, instrument, or equipment". After validating the consistency of the model, 105 accident scenarios were developed and assessed using the model. The findings revealed which severe accident scenarios happen commonly to people in this trade, with nine scenarios having fatality rates of 50% or more. The highest fatality rates occurred in "fencing, installing lights, signs, etc." tasks in "alteration and rehabilitation" projects where the source of injury was "parts and materials". The proposed analysis/modeling approach can be applied among all specialty contracting companies to identify and prioritize more hazardous situations within specific trades. The proposed model-development process also contributes to the body of knowledge around accident analysis by providing a framework for analyzing accident reports through a multivariate logistic regression model.
识别影响重伤和死亡的因素的能力将有助于建筑公司对危险情况进行分类,并将资源引导到更有效的干预措施上。因此,本研究使用了比值比分析和逻辑回归模型对历史事故数据进行分析,以调查影响小型电气承包企业职业事故的因素。在对报告进行彻底的内容分析以确保其可靠性之后,作者采用了有目的的变量选择方法来确定可以解释不同情况下死亡率的最重要因素。此后,本研究对显著因素进行了比值比分析,以确定哪些因素会增加死亡率的可能性。例如,当来源是“车辆”而不是“工具、仪器或设备”时,发生致命事故的可能性要高出 4.4 倍。在验证了模型的一致性之后,对 105 个事故场景进行了建模和评估。研究结果揭示了哪些严重事故场景在该行业的人们中经常发生,其中九个场景的死亡率为 50%或更高。在“改建和修复”项目中的“围栏、安装灯具、标志等”任务中,受伤源是“零件和材料”时,死亡率最高。所提出的分析/建模方法可以应用于所有专业承包公司,以识别和优先处理特定行业内更危险的情况。所提出的模型开发过程还通过多元逻辑回归模型分析事故报告,为事故分析知识库做出了贡献。