Bae Dae Hee, Lee Hyoung Youn, Jung Yong Hun, Jeung Kyung Woon, Lee Byung Kook, Youn Chun Song, Kang Byung Soo, Heo Tag, Min Yong Il
Department of Emergency Medicine, Chonnam National University Hospital, 42 Jebong-ro, Donggu, Gwangju, Republic of Korea.
Department of Emergency Medicine, Chonnam National University Hospital, 42 Jebong-ro, Donggu, Gwangju, Republic of Korea; Department of Emergency Medicine, Chonnam National Univeristy Medical School, 160 Baekseo-ro, Donggu, Gwangju, Republic of Korea.
Resuscitation. 2021 Feb;159:60-68. doi: 10.1016/j.resuscitation.2020.12.022. Epub 2020 Dec 31.
Early prognostication after cardiac arrest would be useful. We aimed to develop a scoring model for early prognostication in unselected adult cardiac arrest patients.
We retrospectively analysed data of adult non-traumatic cardiac arrest patients treated at a tertiary hospital between 2014 and 2018. The primary outcome was poor outcome at hospital discharge (cerebral performance category, 3-5). Using multivariable logistic regression analysis, independent predictors were identified among known outcome predictors, that were available at intensive care unit admission, in patients admitted in the first 3 years (derivation set, N = 671), and a scoring system was developed with the variables that were retained in the final model. The scoring model was validated in patients admitted in the last 2 years (validation set, N = 311).
The poor outcome rates at hospital discharge were similar between the derivation (66.0%) and validation sets (64.3%). Age <59 years, witnessed collapse, shockable rhythm, adrenaline dose <2 mg, low-flow duration <18 min, reactive pupillary light reflex, Glasgow Coma Scale motor score ≥2, and levels of creatinine <1.21 mg dl, potassium <4.4 mEq l, phosphate <5.8 mg dl, haemoglobin ≥13.2 g dl, and lactate <8 mmol l were retained in the final multivariable model and used to develop the scoring system. Our model demonstrated excellent discrimination in the validation set (area under the curve of 0.942, 95% confidence interval 0.917-0.968).
We developed a scoring model for early prognostication in unselected adult cardiac arrest patients. Further validations in various cohorts are needed.
心脏骤停后的早期预后评估会很有帮助。我们旨在为未选择的成年心脏骤停患者开发一种早期预后评估的评分模型。
我们回顾性分析了2014年至2018年在一家三级医院接受治疗的成年非创伤性心脏骤停患者的数据。主要结局是出院时预后不良(脑功能分类,3 - 5级)。在前3年入院的患者(推导集,N = 671)中,利用多变量逻辑回归分析在重症监护病房入院时已知的结局预测因素中确定独立预测因素,并使用最终模型中保留的变量开发评分系统。该评分模型在最后2年入院的患者(验证集,N = 311)中进行验证。
推导集(66.0%)和验证集(64.3%)出院时的预后不良率相似。年龄<59岁、有目击者在场的心脏骤停、可除颤心律、肾上腺素剂量<2mg、低血流持续时间<18分钟、瞳孔对光反射有反应、格拉斯哥昏迷量表运动评分≥2,以及肌酐水平<1.21mg/dl、钾<4.4mEq/l、磷酸盐<5.8mg/dl、血红蛋白≥13.2g/dl和乳酸<8mmol/l被保留在最终多变量模型中并用于开发评分系统。我们的模型在验证集中显示出出色的区分能力(曲线下面积为0.942,95%置信区间为0.917 - 0.968)。
我们为未选择的成年心脏骤停患者开发了一种早期预后评估的评分模型。需要在不同队列中进行进一步验证。