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首页> 外文期刊>International Journal of Injury Control and Safety Promotion >Estimating the avoidable burden and population attributable fraction of human risk factors of road traffic injuries in iran: application of penalization, bias reduction and sparse data analysis
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Estimating the avoidable burden and population attributable fraction of human risk factors of road traffic injuries in iran: application of penalization, bias reduction and sparse data analysis

机译:估算伊朗道路交通伤害的可避免负担和人类危险因素的人口归因分数:惩罚,偏见减少和稀疏数据分析的应用

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摘要

The aim of this study was to prioritize human risk factors for preventive interventions by estimating the avoidable burden and population attributable fraction (PAF) of each risk factor using penalization and data augmentation method. To avoid the sparse data bias, Bayesian logistic regression via data augmentation methods, were used for multivariable analysis. Informative normal priors adopted from the studies were used for the studied human risk factors. Weakly informative log-f was used for the covariates. The population attributable fraction was calculated based on direct method. The comparative risk assessment methodology of the WHO was used to estimate the potential impact fraction for each risk factor. The most important human factors influencing the traffic-related deaths were overspeeding (OR = 9.6, 95% CI: 2.45-37.7), reckless overtaking (OR = 8.6, 95% CI: 1.82-40.7), and fatigue and drowsiness (OR = 6.7, 95% CI: 1.79-25). The total PAF for the all studied risk factors was about 56% (PAF = 0.567, 95% CI: 0.37-0.7). The greatest avoidable burden was related to fatigue and drowsiness, overspeeding, and not fastening seatbelt. By considering the high contribution of human risk factors in occurrence of fatal traffic injuries appropriate legislation and prevention programs for these risk factors would decrease half of such deaths.
机译:这项研究的目的是通过使用惩罚和数据增强方法估算每种风险因素的可避免负担和人群可归因分数(PAF),从而为预防干预措施确定人类风险因素的优先级。为了避免稀疏的数据偏差,通过数据扩充方法进行贝叶斯逻辑回归用于多变量分析。研究中采用的信息性先验先验用于研究的人类危险因素。弱信息log-f用于协变量。人口归因分数是基于直接方法计算的。世卫组织的比较风险评估方法用于估计每个风险因素的潜在影响分数。影响交通相关死亡的最重要的人为因素是超速(OR = 9.6,95%CI:2.45-37.7),鲁ck超车(OR = 8.6,95%CI:1.82-40.7)以及疲劳和嗜睡(OR = 6.7,95%CI:1.79-25)。所有研究的危险因素的总PAF约为56%(PAF = 0.567,95%CI:0.37-0.7)。可避免的最大负担与疲劳和嗜睡,超速以及不系安全带有关。考虑到人为危险因素在致命交通伤害发生中的巨大贡献,针对这些危险因素的适当立法和预防计划将减少此类死亡的一半。

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