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Predicting severe injury using vehicle telemetry data

机译:使用车辆遥测数据预测严重伤害

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BACKGROUND: In 2010, the National Highway Traffic Safety Administration standardized collision data collected by event data recorders, which may help determine appropriate emergency medical service (EMS) response. Previous models (e.g., General Motors ) predict severe injury (Injury Severity Score [ISS] > 15) using occupant demographics and collision data. Occupant information is not automatically available, and 12% of calls from advanced automatic collision notification providers are unanswered. To better inform EMS triage, our goal was to create a predictive model only using vehicle collision data. METHODS: Using the National Automotive Sampling System Crashworthiness Data System data set, we included front-seat occupants in late-model vehicles (2000 and later) in nonrollover and rollover crashes in years 2000 to 2010. Telematic (change in velocity, direction of force, seat belt use, vehicle type and curb weight, as well as multiple impact) and nontelematic variables (maximum intrusion, narrow impact, and passenger ejection) were included. Missing data were multiply imputed. The University of Washington model was tested to predict severe injury before application of guidelines (Step 0) and for occupants who did not meet Steps 1 and 2 criteria (Step 3) of the Centers for Disease Control and Prevention Field Triage Guidelines. A probability threshold of 20% was chosen in accordance with Centers for Disease Control and Prevention recommendations. RESULTS: There were 28,633 crashes, involving 33,956 vehicles and 52,033 occupants, of whom 9.9% had severe injury. At Step 0, the University of Washington model sensitivity was 40.0% and positive predictive value (PPV) was 20.7%. At Step 3, the sensitivity was 32.3 % and PPV was 10.1%. Model analysis excluding nontelematic variables decreased sensitivity and PPV. The sensitivity of the re-created General Motors model was 38.5% at Step 0 and 28.1% at Step 3. CONCLUSION: We designed a model using only vehicle collision data that was predictive of severe injury at collision notification and in the field and was comparable with an existing model. These models demonstrate the potential use of advanced automatic collision notification in planning EMS response. LEVEL OF EVIDENCE: Prognostic study, level II.
机译:背景:2010年,美国国家公路交通安全管理局对事件数据记录器收集的碰撞数据进行了标准化,这可能有助于确定适当的紧急医疗服务(EMS)响应。先前的模型(例如,通用汽车公司)使用乘员人口统计数据和碰撞数据来预测严重伤害(伤害严重度评分[ISS]> 15)。乘员信息不会自动提供,并且高级自动碰撞通知提供商的12%的呼叫都无法应答。为了更好地告知EMS分类,我们的目标是仅使用车辆碰撞数据创建预测模型。方法:使用国家汽车采样系统耐撞性数据系统数据集,我们纳入了2000年至2010年发生非侧翻和侧翻事故的后期模型车辆(2000年及以后)中的前座乘员。远程信息处理(速度,力的方向变化) ,安全带的使用,车辆类型和路缘重量以及多重撞击)和非电性变量(最大侵入,狭窄撞击和乘客弹出)都包括在内。缺失的数据被多次推算。在应用指南(步骤0)之前以及未达到疾病控制和预防中心分类指南的步骤1和2标准(步骤3)的居住者中,对华盛顿大学的模型进行了预测,以预测严重伤害。根据疾病控制与预防中心的建议,选择的概率阈值为20%。结果:发生了28,633起车祸,涉及33,956辆汽车和52,033名乘员,其中9.9%受到严重伤害。在步骤0,华盛顿大学模型的敏感性为40.0%,阳性预测值(PPV)为20.7%。在步骤3中,灵敏度为32.3%,PPV为10.1%。排除非电信变量的模型分析会降低灵敏度和PPV。重新创建的通用汽车模型的灵敏度在第0步为38.5%,在第3步为28.1%。结论:我们仅使用预测碰撞通知和现场严重伤害的车辆碰撞数据设计了一个模型,该模型具有可比性现有模型。这些模型演示了在计划EMS响应中高级自动冲突通知的潜在用途。证据级别:预后研究,II级。

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