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On-Scene Injury Severity Prediction (OSISP) Algorithm for Truck Occupants

机译:卡车乘员的现场伤害严重程度预测(OSISP)算法

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Objective: The aim of this study is to develop an on-scene injury severity prediction (OSISP) algorithm for truck occupants using only accident characteristics that are feasible to assess at the scene of the accident. The purpose of developing this algorithm is to use it as a basis for a field triage tool used in traffic accidents involving trucks. In addition, the model can be valuable for recognizing important factors for improving triage protocols used in Sweden and possibly in other countries with similar traffic environments and prehospital procedures.Methods: The scope is adult truck occupants involved in traffic accidents on Swedish public roads registered in the Swedish Traffic Accident Data Acquisition (STRADA) database for calendar years 2003 to 2013. STRADA contains information reported by the police and medical data on injured road users treated at emergency hospitals. Using data from STRADA, 2 OSISP multivariate logistic regression models for deriving the probability of severe injury (defined here as having an Injury Severity Score [ISS]> 15) were implemented for light and heavy trucks; that is, trucks with weight up to 3,500 kg and 16,500 kg, respectively. A 10-fold cross-validation procedure was used to estimate the performance of the OSISP algorithm in terms of the area under the receiver operating characteristic curve (AUC).Results: The rate of belt use was low, especially for heavy truck occupants. The OSISP models developed for light and heavy trucks achieved cross-validation AUC of 0.81 and 0.74, respectively. The AUC values obtained when the models were evaluated on all data without cross-validation were 0.87 for both light and heavy trucks. The difference in the AUC values with and without use of cross-validation indicates overfitting of the model, which may be a consequence of relatively small data sets. Belt use stands out as the most valuable predictor in both types of trucks; accident type and age are important predictors for light trucks.Conclusions: The OSISP models achieve good discriminating capability for light truck occupants and a reasonable performance for heavy truck occupants. The prediction accuracy may be increased by acquiring more data. Belt use was the strongest predictor of severe injury for both light and heavy truck occupants. There is a need for behavior-based safety programs and/or other means to encourage truck occupants to always wear a seat belt.
机译:目的:本研究的目的是仅使用可在事故现场进行评估的事故特征,为卡车乘员开发现场伤害严重程度预测(OSISP)算法。开发此算法的目的是将其用作涉及卡车的交通事故中的现场分类工具的基础。此外,该模型对于识别改善瑞典以及可能在其他具有类似交通环境和院前程序的国家中使用的分流规程的重要因素也很有价值。方法:范围是在瑞典注册的公共道路上发生交通事故的成年卡车乘员。瑞典交通事故数据采集(STRADA)数据库的日历年为2003年至2013年。STRADA包含警方报告的信息以及急诊医院接受治疗的受伤道路使用者的医疗数据。使用来自STRADA的数据,为轻型和重型卡车实施了2个OSISP多元Logistic回归模型,以得出严重伤害的可能性(这里定义为伤害严重性评分[ISS]> 15);也就是重量分别为3500公斤和16,500公斤的卡车。根据接收器工作特性曲线(AUC)下的面积,使用10倍交叉验证程序来评估OSISP算法的性能。结果:安全带使用率低,特别是对于重型卡车乘员。为轻型和重型卡车开发的OSISP模型的交叉验证AUC分别为0.81和0.74。在不进行交叉验证的情况下,对所有数据进行模型评估时,轻型和重型卡车的AUC值为0.87。使用和不使用交叉验证时,AUC值的差异表明模型过度拟合,这可能是相对较小的数据集的结果。皮带的使用是两种卡车中最有价值的预测指标。结论:OSISP模型对轻型卡车乘员具有良好的识别能力,对重型卡车乘员具有合理的性能。可以通过获取更多数据来提高预测精度。皮带使用是轻型和重型卡车乘员严重受伤的最强预测指标。需要基于行为的安全程序和/或其他手段来鼓励卡车乘员始终系好安全带。

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