Augenstein Jeffrey, Perdeck Elana, Stratton James, Digges Kennerly, Bahouth George
William Lehman Injury Research Center, University of Miami, Miami, Florida, USA.
Annu Proc Assoc Adv Automot Med. 2003;47:561-76.
The advent of Automatic Crash Notification Systems (ACN) offers the possibility of immediately locating crashes and of determining the crash characteristics by analyzing the data transmitted from the vehicle. A challenge to EMS decision makers is to identify those crashes with serious injuries and deploy the appropriate rescue and treatment capabilities. The objective of this paper is to determine the crash characteristics that increase the risk of serious injury. Within this paper, regression models are presented which relate occupant, vehicle and impact characteristics to the probability of serious injury using the Maximum Abbreviated Injury Scale Level (MAIS). The accuracy of proposed models were evaluated using National Automotive Sampling System/ Crashworthiness Data System (NASS/CDS) and Crash Injury Research and Engineering Network (CIREN) case data. Cumulatively, the positive prediction rate of models identifying the likelihood of MAIS3 and higher injuries was 74.2%. Crash mode has a significant influence of injury risk. For crashes with 30 mph deltaV, the risk of MAIS3+ injury for each mode is 38.9%, 83.8%, 47.8% and 19.9% for frontal, near side, far side and rear impact crashes, respectively. In addition to deltaV, a number of crash variables were identified that assist in the accurate prediction of the probability of MAIS 3+ injury. These variables include occupant age, partial ejection, safety belt usage, intrusion near the occupant, and crashes with a narrow object. For frontal crashes, added crash variables include air bag deployment, steering wheel deformation, and multiple impact crashes. The quantitative relationship between each of these crash variables and injury risk has been determined and validated by regression analysis based on NASS/CDS and CIREN data.
自动碰撞通知系统(ACN)的出现,使得立即定位碰撞事故并通过分析车辆传输的数据来确定碰撞特征成为可能。紧急医疗服务(EMS)决策者面临的一个挑战是识别那些造成严重伤害的碰撞事故,并部署适当的救援和治疗能力。本文的目的是确定增加严重伤害风险的碰撞特征。在本文中,提出了回归模型,该模型使用最大简略损伤量表水平(MAIS)将乘员、车辆和碰撞特征与严重伤害的概率联系起来。使用国家汽车抽样系统/碰撞worthiness数据系统(NASS/CDS)和碰撞损伤研究与工程网络(CIREN)的案例数据对所提出模型的准确性进行了评估。累计而言,识别MAIS3及更高损伤可能性的模型的阳性预测率为74.2%。碰撞模式对伤害风险有重大影响。对于速度变化量为30英里/小时的碰撞事故,正面、近侧、远侧和后部碰撞事故中每种模式下MAIS3+损伤的风险分别为38.9%、83.8%、47.8%和19.9%。除了速度变化量外,还确定了一些碰撞变量,这些变量有助于准确预测MAIS 3+损伤的概率。这些变量包括乘员年龄、部分弹出、安全带使用情况、乘员附近的侵入以及与狭窄物体的碰撞。对于正面碰撞事故,额外的碰撞变量包括安全气囊展开、方向盘变形和多次碰撞事故。通过基于NASS/CDS和CIREN数据的回归分析,已经确定并验证了这些碰撞变量中的每一个与伤害风险之间的定量关系。