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A composite model of survival from out-of-hospital cardiac arrest using the cardiac arrest registry to enhance survival (CARES)

机译:院外心脏骤停生存的复合模型,使用心脏骤停注册表提高生存率(CARES)

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Objective: Using CARES data, to develop a composite multivariate logistic regression model of survival for projecting survival rates for out-of-hospital arrests of presumed cardiac etiology (OHCA). Methods: This is an analysis of 25,975 OHCA cases (from October 1, 2005 to December 31, 2011) occurring before EMS/first responder arrival and involving attempted resuscitation by responders from 125 EMS agencies. Results: The survival-at-hospital discharge rate was 9% for all cases, 16% for bystander-witnessed cases, 4% for unwitnessed cases, and 32% for bystander-witnessed pVT/VF cases. The model was estimated separately for each set of cases above. Generally, our first equation showed that joint presence of a presenting rhythm of pVT/VF and return of spontaneous circulation in the pre-hospital setting (PREHOSPROSC) is a substantial direct predictor of patient survival (e.g., 55% of such cases survived). Bystander AED use, and, for witnessed cases, bystander CPR and response time are significant but less sizable direct predictors of survival. Our second equation shows that these variables make an additional, indirect contribution to survival by affecting the probability of joint presence of pVT/VF and PREHOSPROSC. The model yields survival rate projections for various improvement scenarios; for example, if all cases had involved bystander AED use (vs. 4% currently), the survival rate would have increased to 14%. Approximately one-half of projected increases come from indirect effects that would have been missed by the conventional single-equation approach. Conclusion: The composite model describes major connections among predictors of survival, and yields specific projections for consideration when allocating scarce resources to impact OHCA survival.
机译:目的:使用CARES数据,开发生存的多元多元logistic回归模型,以预测假定的心脏病因(OHCA)的院外逮捕的生存率。方法:这是对25,975例OHCA病例(从2005年10月1日至2011年12月31日)的分析,这些病例发生在EMS /第一响应者到达之前,涉及125个EMS机构的响应者试图进行复苏。结果:所有病例的住院生存率均为9%,旁观者为16%,无见证者为4%,旁观者为pVT / VF者为32%。针对上述每组案例分别对模型进行了估算。通常,我们的第一个等式表明,在院前环境(PREHOSPROSC)中,pVT / VF呈现节律的同时存在和自发循环的恢复是患者存活率的重要直接预测指标(例如,此类病例中55%存活了)。旁观者AED的使用,以及对于见证病例而言,旁观者的CPR和响应时间是重要的,但生存率的直接预测因素却相对较小。我们的第二个方程表明,这些变量通过影响pVT / VF和PREHOSPROSC联合存在的可能性,对生存做出了额外的间接贡献。该模型可得出各种改进方案的生存率预测;例如,如果所有病例都涉及旁观者使用AED(目前为4%),则生存率将提高到14%。预计增长的大约一半来自间接影响,而传统的单方程方法可能会忽略这些间接影响。结论:复合模型描述了生存预测因素之间的主要联系,并给出了分配稀缺资源影响OHCA生存时需要考虑的具体预测。

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