Kim Joonghee, Kim Kyuseok, Callaway Clifton W, Doh Kibbeum, Choi Jungho, Park Jongdae, Jo You Hwan, Lee Jae Hyuk
Department of Emergency Medicine, Seoul National University Bundang Hospital, 166 Gumi-ro, Bundang-gu, Seongnam-si, Gyeonggi-do 463-707, Republic of Korea.
Department of Emergency Medicine, Seoul National University Bundang Hospital, 166 Gumi-ro, Bundang-gu, Seongnam-si, Gyeonggi-do 463-707, Republic of Korea.
Resuscitation. 2017 Feb;111:127-133. doi: 10.1016/j.resuscitation.2016.09.007. Epub 2016 Sep 19.
The probability of the return of spontaneous circulation (ROSC) and subsequent favourable outcomes changes dynamically during advanced cardiac life support (ACLS). We sought to model these changes using time-to-event analysis in out-of-hospital cardiac arrest (OHCA) patients.
Adult (≥18 years old), non-traumatic OHCA patients without prehospital ROSC were included. Utstein variables and initial arterial blood gas measurements were used as predictors. The incidence rate of ROSC during the first 30min of ACLS in the emergency department (ED) was modelled using spline-based parametric survival analysis. Conditional probabilities of subsequent outcomes after ROSC (1-week and 1-month survival and 6-month neurologic recovery) were modelled using multivariable logistic regression. The ROSC and conditional probability models were then combined to estimate the likelihood of achieving ROSC and subsequent outcomes by providing k additional minutes of effort.
A total of 727 patients were analyzed. The incidence rate of ROSC increased rapidly until the 10th minute of ED ACLS, and it subsequently decreased. The conditional probabilities of subsequent outcomes after ROSC were also dependent on the duration of resuscitation with odds ratios for 1-week and 1-month survival and neurologic recovery of 0.93 (95% CI: 0.90-0.96, p<0.001), 0.93 (0.88-0.97, p=0.001) and 0.93 (0.87-0.99, p=0.031) per 1-min increase, respectively. Calibration testing of the combined models showed good correlation between mean predicted probability and actual prevalence.
The probability of ROSC and favourable subsequent outcomes changed according to a multiphasic pattern over the first 30min of ACLS, and modelling of the dynamic changes was feasible.
在高级心脏生命支持(ACLS)过程中,自主循环恢复(ROSC)及后续良好预后的概率会动态变化。我们试图通过对院外心脏骤停(OHCA)患者进行事件发生时间分析来模拟这些变化。
纳入成年(≥18岁)、非创伤性且院外无ROSC的OHCA患者。使用Utstein变量和初始动脉血气测量值作为预测指标。采用基于样条的参数生存分析对急诊科(ED)ACLS最初30分钟内ROSC的发生率进行建模。使用多变量逻辑回归对ROSC后后续结局(1周和1个月生存率以及6个月神经功能恢复)的条件概率进行建模。然后将ROSC和条件概率模型相结合,以估计通过额外进行k分钟的抢救努力实现ROSC及后续结局的可能性。
共分析了727例患者。ED进行ACLS至第10分钟时ROSC发生率迅速上升,随后下降。ROSC后后续结局的条件概率也取决于复苏持续时间,每增加1分钟,1周和1个月生存率以及神经功能恢复的比值比分别为0.93(95%CI:0.90 - 0.96,p<0.001)、0.93(0.88 - 0.97,p = 0.001)和0.93(0.87 - 0.99,p = 0.031)。联合模型的校准测试显示平均预测概率与实际患病率之间具有良好的相关性。
在ACLS最初30分钟内,ROSC及后续良好结局的概率呈多相模式变化,对这些动态变化进行建模是可行的。