Department of Clinical Medicine, Miguel Hernández University, San Juan de Alicante, 03550 Alicante, Spain.
Department of Pathology and Surgery, Miguel Hernández University, San Juan de Alicante, 03550 Alicante, Spain.
Int J Environ Res Public Health. 2020 Dec 18;17(24):9518. doi: 10.3390/ijerph17249518.
Predictive factors for fatal traffic accidents have been determined, but not addressed collectively through a predictive model to help determine the probability of mortality and thereby ascertain key points for intervening and decreasing that probability. Data on all road traffic accidents with victims involving a private car or van occurring in Spain in 2015 (164,790 subjects and 79,664 accidents) were analyzed, evaluating 30-day mortality following the accident. As candidate predictors of mortality, variables associated with the accident (weekend, time, number of vehicles, road, brightness, and weather) associated with the vehicle (type and age of vehicle, and other types of vehicles in the accident) and associated with individuals (gender, age, seat belt, and position in the vehicle) were examined. The sample was divided into two groups. In one group, a logistic regression model adapted to a points system was constructed and internally validated, and in the other group the model was externally validated. The points system obtained good discrimination and calibration in both the internal and the external validation. Consequently, a simple tool is available to determine the risk of mortality following a traffic accident, which could be validated in other countries.
已经确定了导致致命交通事故的预测因素,但尚未通过预测模型综合解决这些因素,以帮助确定死亡率的概率,并确定干预和降低该概率的关键点。分析了 2015 年在西班牙发生的涉及私家车或货车的所有道路交通碰撞事故的数据(涉及 164790 名受试者和 79664 起事故),评估了事故后 30 天的死亡率。将与事故相关的变量(周末、时间、车辆数量、道路、亮度和天气)、与车辆相关的变量(车辆类型和年龄以及事故中的其他车辆类型)以及与个人相关的变量(性别、年龄、安全带和车辆中的位置)作为死亡率的预测因子进行了评估。将样本分为两组。在一组中,构建并内部验证了一个适应点系统的逻辑回归模型,在另一组中,对该模型进行了外部验证。该点系统在内部和外部验证中均具有良好的区分度和校准度。因此,现在有一个简单的工具可以确定交通事故后死亡的风险,该工具可以在其他国家进行验证。