Bayramoglu Burcu, Kaftanci Ismail, Tayfur Ismail, Guven Ramazan, Guzel Ozturk Sinem, Kaplan Zamanov Betul, Atli Dasdelen Berna
Department of Emergency Medicine, Sancaktepe Sehit Prof. Dr. Ilhan Varank Research and Training Hospital, University of Health Sciences, 34785 Istanbul, Türkiye.
Department of Emergency Medicine, Istanbul Cam and Sakura City Research and Training Hospital, University of Health Sciences, 34480 Istanbul, Türkiye.
Diagnostics (Basel). 2025 Aug 29;15(17):2202. doi: 10.3390/diagnostics15172202.
: Cardiopulmonary resuscitation (CPR) is a highly effort-intensive intervention and, in cases of cardiac arrest, the ability to predict a return of spontaneous circulation (ROSC) is of great importance for the efficient use of resources. This real-time assessment approach offers a practical advantage by increasing the applicability of prognostic models during acute resuscitation in an emergency department. : In this study, the data of patients who underwent CPR in the emergency department of a tertiary care hospital between 1 June 2019 and 1 June 2024 and underwent cardiopulmonary resuscitation were retrospectively analyzed. The patients' demographics, comorbidities, CPR characteristics, and laboratory findings were evaluated using logistic regression and ROC curve analysis to identify the predictors of ROSC. : Our study revealed that cases with shockable rhythms and a shorter CPR duration were more likely to achieve ROSC. Elevated levels of albumin, creatine kinase, glucose, hemoglobin, and white blood cells were significantly associated with ROSC, while higher levels of creatinine, base excess, and eosinophils were more common in non-survivors. Atrial fibrillation and neurodegenerative disease were associated with lower ROSC rates. : Although the criteria for the termination of cardiac arrest resuscitation are not definitive, certain patient characteristics and laboratory findings may guide the prediction of ROSC or the identification of cases requiring prolonged CPR. The integration of these real-time predictors into clinical algorithms may support decision making in crowded emergency departments.
心肺复苏(CPR)是一项高强度的干预措施,在心脏骤停的情况下,预测自主循环恢复(ROSC)的能力对于资源的有效利用至关重要。这种实时评估方法通过提高预后模型在急诊科急性复苏期间的适用性,具有实际优势。
在本研究中,对2019年6月1日至2024年6月1日期间在一家三级护理医院急诊科接受心肺复苏的患者数据进行了回顾性分析。使用逻辑回归和ROC曲线分析评估患者的人口统计学、合并症、心肺复苏特征和实验室检查结果,以确定ROSC的预测因素。
我们的研究表明,具有可电击心律且心肺复苏持续时间较短的病例更有可能实现ROSC。白蛋白、肌酸激酶、葡萄糖、血红蛋白和白细胞水平升高与ROSC显著相关,而肌酐、碱剩余和嗜酸性粒细胞水平较高在非存活者中更为常见。心房颤动和神经退行性疾病与较低的ROSC发生率相关。
虽然心脏骤停复苏终止的标准并不明确,但某些患者特征和实验室检查结果可能指导ROSC的预测或识别需要长时间心肺复苏的病例。将这些实时预测因素整合到临床算法中可能有助于在繁忙的急诊科进行决策。