论文标题
机器学习和功能工程,用于预测胸部压缩期间脉搏状态
Machine Learning and Feature Engineering for Predicting Pulse Status during Chest Compressions
论文作者
论文摘要
目的:当前的复苏协议需要在心肺复苏期间暂停胸部压缩(CPR)以检查脉冲。但是,在无脉冲节奏期间暂停心肺复苏术会使患者结局恶化。我们的目标是设计一种基于ECG的算法,该算法可以预测无中断的CPR期间脉冲状态并评估其性能。方法:我们使用除颤器数据评估了383例接受医院外心脏骤停治疗的患者。我们收集了有组织的节奏的配对并紧接相邻的心电图段。在进行脉冲检查之前的10S中,在持续的CPR中收集了段,在脉冲检查期间没有CPR的5S段。通过使用护理人员的脉搏检查发现和记录的血压的音频注释,可以确定具有或没有脉搏的ECG段。我们开发了一种基于带通滤波器的ECG的小波变换来预测临床脉冲状态的算法,并采用了原理成分分析。然后,我们使用3种原理组件模式训练了线性判别模型。使用接收器操作曲线和最初的停滞节奏,对具有和不使用心肺复苏的测试组细分进行了模型性能。结果:训练组中有230例患者(540例脉冲检查),测试组中有153例患者(372例脉冲检查)。总体38%(351/912)的检查具有自发脉冲。在测试数据上有和没有CPR预测脉冲状态的接收器操作特征曲线(AUC)下的区域分别为0.84和0.89。结论:一种新型的基于ECG的算法证明了通过预测出现自发脉冲而不会暂停CPR来改善复苏的潜力。意义:我们的算法可以预测在不间断的CPR期间的脉冲状态,从而使CPR不受暂停的阻碍来检查脉冲并有可能改善复苏性能。
Objective: Current resuscitation protocols require pausing chest compressions during cardiopulmonary resuscitation (CPR) to check for a pulse. However, pausing CPR during a pulseless rhythm can worsen patient outcome. Our objective is to design an ECG-based algorithm that predicts pulse status during uninterrupted CPR and evaluate its performance. Methods: We evaluated 383 patients being treated for out-of-hospital cardiac arrest using defibrillator data. We collected paired and immediately adjacent ECG segments having an organized rhythm. Segments were collected during the 10s period of ongoing CPR prior to a pulse check, and 5s segments without CPR during the pulse check. ECG segments with or without a pulse were identified by the audio annotation of a paramedic's pulse check findings and recorded blood pressures. We developed an algorithm to predict the clinical pulse status based on the wavelet transform of the bandpass-filtered ECG, applying principle component analysis. We then trained a linear discriminant model using 3 principle component modes. Model performance was evaluated on test group segments with and without CPR using receiver operating curves and according to the initial arrest rhythm. Results: There were 230 patients (540 pulse checks) in the training set and 153 patients (372 pulse checks) in the test set. Overall 38% (351/912) of checks had a spontaneous pulse. The areas under the receiver operating characteristic curve (AUCs) for predicting pulse status with and without CPR on test data were 0.84 and 0.89, respectively. Conclusion: A novel ECG-based algorithm demonstrates potential to improve resuscitation by predicting presence of a spontaneous pulse without pausing CPR. Significance: Our algorithm predicts pulse status during uninterrupted CPR, allowing for CPR to proceed unimpeded by pauses to check for a pulse and potentially improving resuscitation performance.