Traffic accident mortality in Najafabad, Iran: a time series model

Moslem Taheri Soodejani, Marzieh Mahmoodimanesh, L. Abedi, Azimeh Ghaderi
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引用次数: 0

Abstract

Abstract: Background: Road traffic accidents and their related deaths have become a major concern in Iran. Based on estimates, Iranian road traffic accidents lead to about 30,000 deaths annually. Objectives: In this study, we used a time series model to understand the trend of accidents, and ascertain the viability of applying ARIMA models on data from Najafabad, Iran. Methods: This study is a cross-sectional study. We used data from accidents occurring in Najafabad between 2011 and 2017. We used the time series method for determining the trend and forecasting. Non-stationary data in mean and variance were removed using Box-Cox transformation. Autocorrelation function (ACF) and partial autocorrelation function (PACF) plots were used for identifying the models which fit data. All analyses were performed using the Minitab 17. Results: The result of the trend analysis illustration showed a descending trend of the fatalities due to traffic accidents. The highest values of fatalities have occurred in 2011 (97cases). Also, the lowest values of fatalities have occurred in 2014 with 50.51% reduction in comparison to 2011. The ARIMA (0, 1, 1) model was identified as the best-fit model for data. Prediction values of traffic accident fatalities showed a decreasing trend in deaths in the coming years. Conclusions: Applying this information can be useful to policymakers and managers for planning and implementing special interventions to prevent and limit future accidental deaths. Keywords: Road Traffic Accidents, Mortality, Time series, Trend
伊朗纳贾法巴德交通事故死亡率:一个时间序列模型
摘要:背景:道路交通事故及其相关死亡已成为伊朗关注的主要问题。据估计,伊朗道路交通事故每年造成约30 000人死亡。目的:在本研究中,我们使用时间序列模型来了解事故的趋势,并确定在伊朗纳贾法巴德的数据上应用ARIMA模型的可行性。方法:本研究为横断面研究。我们使用了2011年至2017年在纳贾法巴德发生的事故数据。我们采用时间序列法确定趋势并进行预测。采用Box-Cox变换去除均值和方差中的非平稳数据。采用自相关函数(ACF)和部分自相关函数(PACF)图来识别拟合数据的模型。所有分析均使用Minitab 17进行。结果:趋势分析图结果显示交通事故死亡人数呈下降趋势。死亡人数最高的年份是2011年(97例)。此外,2014年的死亡率最低,与2011年相比下降了50.51%。ARIMA(0,1,1)模型被认为是数据的最佳拟合模型。交通事故死亡预测数值显示未来几年死亡人数呈下降趋势。结论:应用这些信息可以帮助决策者和管理人员规划和实施特别干预措施,以预防和限制未来的意外死亡。关键词:道路交通事故;死亡率;时间序列
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来源期刊
自引率
0.00%
发文量
21
审稿时长
24 weeks
期刊介绍: The Journal of Injury and Violence Research (JIVR) is a peer-reviewed open-access medical journal covering all aspects of traumatology includes quantitative and qualitative studies in the field of clinical and basic sciences about trauma, burns, drowning, falls, occupational/road/ sport safety, youth violence, child/elder abuse, child/elder injuries, intimate partner abuse/sexual violence, self-harm, suicide, patient safety, safe communities, consumer safety, disaster management, terrorism, surveillance/burden of injury and all other intentional and unintentional injuries.
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