Coult Jason, Rea Thomas D, Blackwood Jennifer, Kudenchuk Peter J, Liu Chenguang, Kwok Heemun
Department of Medicine, University of Washington, Seattle, WA, USA; Center for Progress in Resuscitation, University of Washington, Seattle, WA, USA.
Department of Medicine, University of Washington, Seattle, WA, USA; Center for Progress in Resuscitation, University of Washington, Seattle, WA, USA; King County Emergency Medical Services, Public Health, Seattle & King County, Seattle, WA, USA.
Comput Biol Med. 2021 Feb;129:104136. doi: 10.1016/j.compbiomed.2020.104136. Epub 2020 Nov 21.
Out-of-hospital ventricular fibrillation (VF) cardiac arrest is a leading cause of death. Quantitative analysis of the VF electrocardiogram (ECG) can predict patient outcomes and could potentially enable a patient-specific, guided approach to resuscitation. However, VF analysis during resuscitation is confounded by cardiopulmonary resuscitation (CPR) artifact in the ECG, challenging continuous application to guide therapy throughout resuscitation. We therefore sought to design a method to predict VF shock outcomes during CPR.
Study data included 4577 5-s VF segments collected during and without CPR prior to defibrillation attempts in N = 1151 arrest patients. Using training data (460 patients), an algorithm was designed to predict the VF shock outcomes of defibrillation success (return of organized ventricular rhythm) and functional survival (Cerebral Performance Category 1-2). The algorithm was designed with variable-frequency notch filters to reduce CPR artifact in the ECG based on real-time chest compression rate. Ten ECG features and three dichotomous patient characteristics were developed to predict outcomes. These variables were combined using support vector machines and logistic regression. Algorithm performance was evaluated by area under the receiver operating characteristic curve (AUC) to predict outcomes in validation data (691 patients).
AUC (95% Confidence Interval) for predicting defibrillation success was 0.74 (0.71-0.77) during CPR and 0.77 (0.74-0.79) without CPR. AUC for predicting functional survival was 0.75 (0.72-0.78) during CPR and 0.76 (0.74-0.79) without CPR.
A novel algorithm predicted defibrillation success and functional survival during ongoing CPR following VF arrest, providing a potential proof-of-concept towards real-time guidance of resuscitation therapy.
院外心室颤动(VF)心脏骤停是主要的死亡原因。对VF心电图(ECG)进行定量分析可预测患者预后,并有可能实现针对患者的指导性复苏方法。然而,复苏期间的VF分析会受到ECG中心肺复苏(CPR)伪迹的干扰,这使得在整个复苏过程中持续应用其来指导治疗具有挑战性。因此,我们试图设计一种方法来预测CPR期间VF电击的结果。
研究数据包括在N = 1151例心脏骤停患者进行除颤尝试期间及未进行CPR时收集的4577个5秒VF片段。利用训练数据(460例患者),设计了一种算法来预测除颤成功(恢复有组织的心室节律)和功能存活(脑功能分级为1 - 2级)的VF电击结果。该算法设计了可变频率陷波滤波器,以根据实时胸外按压速率减少ECG中的CPR伪迹。开发了10个ECG特征和3个二分法患者特征来预测结果。这些变量通过支持向量机和逻辑回归进行组合。通过受试者操作特征曲线下面积(AUC)评估算法性能,以预测验证数据(691例患者)中的结果。
预测除颤成功的AUC(95%置信区间)在CPR期间为0.74(0.71 - 0.77),未进行CPR时为0.77(0.74 - 0.79)。预测功能存活的AUC在CPR期间为0.75(0.72 - 0.78),未进行CPR时为0.76(0.74 - 0.79)。
一种新算法可预测VF心脏骤停后正在进行的CPR期间的除颤成功和功能存活,为复苏治疗的实时指导提供了潜在的概念验证。