Mozhgan Seif , Sedigheh Edalat , Ali Majidpour Azad Shirazi , Somayeh Alipouri , Mohsen Bayati
{"title":"预测伊朗到 2030 年的道路交通伤害负担:发病率、死亡率和残疾调整寿命年数。","authors":"Mozhgan Seif , Sedigheh Edalat , Ali Majidpour Azad Shirazi , Somayeh Alipouri , Mohsen Bayati","doi":"10.1016/j.cjtee.2024.02.004","DOIUrl":null,"url":null,"abstract":"<div><h3>Purpose</h3><p>Road traffic accidents pose a global challenge with substantial human and economic costs. Iran experiences a high incidence of road traffic injuries, leading to a significant burden on society. This study aims to predict the future burden of road traffic injuries in Iran until 2030, providing valuable insights for policy-making and interventions to improve road safety and reduce the associated human and economic costs.</p></div><div><h3>Methods</h3><p>This analytical study utilized time series models, specifically autoregressive integrated moving average (ARIMA) and artificial neural networks (ANNs), to predict the burden of road traffic accidents by analyzing past data to identify patterns and trends in Iran until 2030. The required data related to prevalence, death, and disability-adjusted life years (DALYs) rates were collected from the Institute for Health Metrics and Evaluation database and analyzed using R software and relevant modeling and statistical analysis packages.</p></div><div><h3>Results</h3><p>Both prediction models, ARIMA and ANNs indicate that the prevalence rates (per 100,000) of all road traffic injuries, except for motorcyclist road injuries which have an almost flat trend, remaining at around 430, increase by 2030. Based on estimations of both models, the rates of death and DALYs due to motor vehicle and pedestrian road traffic injuries decrease. For motor vehicle road injuries, estimated trends decrease to approximately 520 DALYs and 10 deaths. Also, for pedestrian road injuries these rates reached approximately 300 DALYs and 6 deaths, according to the models. For cyclists and other road traffic injuries, the predicted DALY rates by the ANN model increase to almost 50 and 8, while predictions conducted by the ARIMA model show a static trend, remaining at 40 and approximately 6.5. Moreover, these rates for the prediction of death rate by the ANN model increased to 0.6 and 0.1, while predictions conducted by the ARIMA model show a static trend, remaining at 0.43 and 0.07. According to the ANN model, the predicted rates of DALY and death for motorcyclists decrease to 100 and approximately 2.7, respectively. On the other hand, predictions made by the ARIMA model show a static trend, with rates remaining at 200 and approximately 3.2, respectively.</p></div><div><h3>Conclusion</h3><p>The prevalence of road traffic injuries is predicted to increase, while the death and DALY rates of road traffic injuries show different patterns. Effective intervention programs and safety measures are necessary to prevent and reduce road traffic accidents. Different interventions should be designed and implemented specifically for different groups of pedestrians, cyclists, motorcyclists, and motor vehicle drivers.</p></div>","PeriodicalId":51555,"journal":{"name":"Chinese Journal of Traumatology","volume":"27 4","pages":"Pages 242-248"},"PeriodicalIF":1.8000,"publicationDate":"2024-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S1008127524000105/pdfft?md5=883a4eb2de840eae416c51c81af87db8&pid=1-s2.0-S1008127524000105-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Prediction of the burden of road traffic injuries in Iran by 2030: Prevalence, death, and disability-adjusted life years\",\"authors\":\"Mozhgan Seif , Sedigheh Edalat , Ali Majidpour Azad Shirazi , Somayeh Alipouri , Mohsen Bayati\",\"doi\":\"10.1016/j.cjtee.2024.02.004\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><h3>Purpose</h3><p>Road traffic accidents pose a global challenge with substantial human and economic costs. Iran experiences a high incidence of road traffic injuries, leading to a significant burden on society. This study aims to predict the future burden of road traffic injuries in Iran until 2030, providing valuable insights for policy-making and interventions to improve road safety and reduce the associated human and economic costs.</p></div><div><h3>Methods</h3><p>This analytical study utilized time series models, specifically autoregressive integrated moving average (ARIMA) and artificial neural networks (ANNs), to predict the burden of road traffic accidents by analyzing past data to identify patterns and trends in Iran until 2030. The required data related to prevalence, death, and disability-adjusted life years (DALYs) rates were collected from the Institute for Health Metrics and Evaluation database and analyzed using R software and relevant modeling and statistical analysis packages.</p></div><div><h3>Results</h3><p>Both prediction models, ARIMA and ANNs indicate that the prevalence rates (per 100,000) of all road traffic injuries, except for motorcyclist road injuries which have an almost flat trend, remaining at around 430, increase by 2030. Based on estimations of both models, the rates of death and DALYs due to motor vehicle and pedestrian road traffic injuries decrease. For motor vehicle road injuries, estimated trends decrease to approximately 520 DALYs and 10 deaths. Also, for pedestrian road injuries these rates reached approximately 300 DALYs and 6 deaths, according to the models. For cyclists and other road traffic injuries, the predicted DALY rates by the ANN model increase to almost 50 and 8, while predictions conducted by the ARIMA model show a static trend, remaining at 40 and approximately 6.5. Moreover, these rates for the prediction of death rate by the ANN model increased to 0.6 and 0.1, while predictions conducted by the ARIMA model show a static trend, remaining at 0.43 and 0.07. According to the ANN model, the predicted rates of DALY and death for motorcyclists decrease to 100 and approximately 2.7, respectively. On the other hand, predictions made by the ARIMA model show a static trend, with rates remaining at 200 and approximately 3.2, respectively.</p></div><div><h3>Conclusion</h3><p>The prevalence of road traffic injuries is predicted to increase, while the death and DALY rates of road traffic injuries show different patterns. Effective intervention programs and safety measures are necessary to prevent and reduce road traffic accidents. 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引用次数: 0
摘要
目的道路交通事故是一项全球性挑战,在全球造成巨大的人员和经济损失。伊朗的道路交通伤害发生率很高,给社会造成了沉重负担。本研究旨在预测伊朗未来至 2030 年的道路交通伤害负担,为改善道路安全、降低相关人力和经济成本的政策制定和干预措施提供有价值的见解:本分析研究利用时间序列模型,特别是自回归综合移动平均线(ARIMA)和人工神经网络(ANN),通过分析过去的数据来预测道路交通事故的负担,从而确定伊朗到 2030 年的模式和趋势。所需的发病率、死亡率和残疾调整生命年(DALYs)率相关数据来自健康指标与评估研究所数据库,并使用 R 软件及相关建模和统计分析软件包进行分析:ARIMA和ANN两种预测模型均表明,到2030年,除摩托车驾驶员道路交通伤害的趋势几乎持平,保持在430左右外,其他所有道路交通伤害的发生率(每10万人)都将上升。根据这两个模型的估计,机动车和行人道路交通伤害造成的死亡率和残疾调整寿命年数都会下降。就机动车道路交通伤害而言,估计趋势是减少到约 520 DALYs 和 10 例死亡。此外,根据模型,行人道路交通伤害的死亡率约为 300 DALYs 和 6 例死亡。对于骑自行车者和其他道路交通伤害,ANN 模型预测的残疾调整寿命年数增加到近 50 年和 8 年,而 ARIMA 模型的预测则呈现静态趋势,保持在 40 年和约 6.5 年。此外,根据 ANN 模型预测的死亡率分别增加到 0.6 和 0.1,而根据 ARIMA 模型预测的死亡率则呈静态趋势,分别保持在 0.43 和 0.07。根据 ANN 模型,摩托车驾驶员的 DALY 和死亡率预测值分别下降到 100 和约 2.7。另一方面,ARIMA 模型的预测结果显示出静态趋势,死亡率分别保持在 200 和约 3.2:结论:预计道路交通伤害的发生率将上升,而道路交通伤害的死亡率和残疾调整寿命年率却呈现出不同的模式。预防和减少道路交通事故需要有效的干预计划和安全措施。应针对行人、骑自行车者、骑摩托车者和机动车驾驶员等不同群体设计和实施不同的干预措施。
Prediction of the burden of road traffic injuries in Iran by 2030: Prevalence, death, and disability-adjusted life years
Purpose
Road traffic accidents pose a global challenge with substantial human and economic costs. Iran experiences a high incidence of road traffic injuries, leading to a significant burden on society. This study aims to predict the future burden of road traffic injuries in Iran until 2030, providing valuable insights for policy-making and interventions to improve road safety and reduce the associated human and economic costs.
Methods
This analytical study utilized time series models, specifically autoregressive integrated moving average (ARIMA) and artificial neural networks (ANNs), to predict the burden of road traffic accidents by analyzing past data to identify patterns and trends in Iran until 2030. The required data related to prevalence, death, and disability-adjusted life years (DALYs) rates were collected from the Institute for Health Metrics and Evaluation database and analyzed using R software and relevant modeling and statistical analysis packages.
Results
Both prediction models, ARIMA and ANNs indicate that the prevalence rates (per 100,000) of all road traffic injuries, except for motorcyclist road injuries which have an almost flat trend, remaining at around 430, increase by 2030. Based on estimations of both models, the rates of death and DALYs due to motor vehicle and pedestrian road traffic injuries decrease. For motor vehicle road injuries, estimated trends decrease to approximately 520 DALYs and 10 deaths. Also, for pedestrian road injuries these rates reached approximately 300 DALYs and 6 deaths, according to the models. For cyclists and other road traffic injuries, the predicted DALY rates by the ANN model increase to almost 50 and 8, while predictions conducted by the ARIMA model show a static trend, remaining at 40 and approximately 6.5. Moreover, these rates for the prediction of death rate by the ANN model increased to 0.6 and 0.1, while predictions conducted by the ARIMA model show a static trend, remaining at 0.43 and 0.07. According to the ANN model, the predicted rates of DALY and death for motorcyclists decrease to 100 and approximately 2.7, respectively. On the other hand, predictions made by the ARIMA model show a static trend, with rates remaining at 200 and approximately 3.2, respectively.
Conclusion
The prevalence of road traffic injuries is predicted to increase, while the death and DALY rates of road traffic injuries show different patterns. Effective intervention programs and safety measures are necessary to prevent and reduce road traffic accidents. Different interventions should be designed and implemented specifically for different groups of pedestrians, cyclists, motorcyclists, and motor vehicle drivers.
期刊介绍:
Chinese Journal of Traumatology (CJT, ISSN 1008-1275) was launched in 1998 and is a peer-reviewed English journal authorized by Chinese Association of Trauma, Chinese Medical Association. It is multidisciplinary and designed to provide the most current and relevant information for both the clinical and basic research in the field of traumatic medicine. CJT primarily publishes expert forums, original papers, case reports and so on. Topics cover trauma system and management, surgical procedures, acute care, rehabilitation, post-traumatic complications, translational medicine, traffic medicine and other related areas. The journal especially emphasizes clinical application, technique, surgical video, guideline, recommendations for more effective surgical approaches.