Sacco William J, Navin D Michael, Fiedler Katherine E, Waddell Robert K, Long William B, Buckman Robert F
ThinkSharp, Inc., 539 Rock Spring Road, Bel Air, MD 21014, USA.
Acad Emerg Med. 2005 Aug;12(8):759-70. doi: 10.1197/j.aem.2005.04.003.
To develop a precise mathematical formulation of resource-constrained triage, denoted the Sacco triage method (STM), to develop an evidence-based application to blunt trauma, and to compare the STM with the simple triage and rapid treatment (START) method.
Resource-constrained triage is modeled mathematically as a classic resource allocation problem. The objective is to maximize expected survivors given constraints on the timing and availability of resources. The model incorporates estimates of time-dependent victim survival probabilities based on an initial assessment and expected deterioration. For application to blunt trauma, an "RPM" score, based on respiratory rate, pulse rate, and motor response, was used to predict survivability. Logistic function-generated survival probability estimates for scene values of RPM were determined from 76,459 blunt-injured patients from the Pennsylvania Trauma Outcome Study (PTOS). The Delphi method provided expert consensus on victim deterioration rates, and the model was solved using linear programming. STM was compared with START across various criteria of process and outcome. Outcome was measured by expected number of survivors in simulated resource-constrained casualty incidents.
In this mathematical simulation, RPM was a more accurate predictor of survivability from blunt trauma than the Injury Severity Score and the Revised Trauma Score, as measured by calibration and discrimination statistics. STM resulted in greater expected survivorship than START in all simulations.
Resource-constrained triage is modeled precisely as an evidence-based, outcome-driven method that maximizes expected survivors in consideration of resources. The lifesaving potential and operational advantages over current methods warrant scrutiny and further research.
开发一种资源受限分诊的精确数学公式,即萨科分诊法(STM),开发一种基于证据的钝性创伤应用方法,并将STM与简单分诊和快速治疗(START)方法进行比较。
资源受限分诊在数学上被建模为一个经典的资源分配问题。目标是在资源的时间和可用性受限的情况下,使预期存活者数量最大化。该模型纳入了基于初始评估和预期病情恶化的时间依赖性受害者存活概率估计。为了应用于钝性创伤,使用了基于呼吸频率、脉搏率和运动反应的“RPM”评分来预测生存能力。从宾夕法尼亚创伤结局研究(PTOS)的76459例钝性损伤患者中确定了RPM现场值的逻辑函数生成的存活概率估计值。德尔菲法就受害者病情恶化率达成了专家共识,并使用线性规划求解该模型。在过程和结果的各种标准方面,将STM与START进行了比较。结果通过模拟资源受限伤亡事件中的预期存活者数量来衡量。
在这个数学模拟中,通过校准和鉴别统计测量,RPM比损伤严重度评分和修订创伤评分更能准确预测钝性创伤的生存能力。在所有模拟中,STM导致的预期存活率高于START。
资源受限分诊被精确建模为一种基于证据、以结果为导向的方法,该方法在考虑资源的情况下使预期存活者数量最大化。与当前方法相比,其挽救生命的潜力和操作优势值得仔细研究和进一步研究。