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Deep Learning for Pulse Detection in Out-of-Hospital Cardiac Arrest Using the ECG

机译:使用ECG在院外心脏骤停中进行脉搏检测的深度学习

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Pulse detection during out-of-hospital cardiac arrest is necessary to identify cardiac arrest and detect return of spontaneous circulation. Currently, carotid pulse checking and checking for signs of life are the most widespread procedures for pulse detection, but both have been proven inaccurate and time consuming. Automatic methods that could be integrated in Automated External Defibrillators (AEDs) are needed. In this study we propose a deep neural network classifier to detect pulse using exclusively the ECG. We extracted 3914 segments of 4s from 279 patients, all of them with an organized rhythm. They were annotated as pulsed rhythm or pulseless rhythm based on clinical information. A total of 2372 pulsed rhythms and 1542 pulseless rhythms were included in the study. To train and test the model 3038 (223 patients) and 876 segments (56 patients) were used, respectively. The model was evaluated in terms of Sensitivity (Se) and Specificity (Sp) for pulse detection. The network showed a Se/Sp of 89.4%/97.2% during training process and 91.7%/92.5% for the test set.
机译:院外心脏骤停期间的脉搏检测对于识别心脏骤停和检测自发性循环的恢复是必不可少的。当前,颈动脉脉搏检查和生命迹象检查是脉搏检测最广泛的程序,但事实证明这两种方法都不准确且耗时。需要可以集成在自动体外除颤器(AED)中的自动方法。在这项研究中,我们提出了一种深度神经网络分类器,专门使用ECG来检测脉搏。我们从279例患者中提取了3914个4s片段,所有这些片段都有规律的节律。根据临床信息,它们被标注为脉动节律或无脉动节律。该研究总共包括2372个脉动节律和1542个无脉动节律。为了训练和测试模型,分别使用了3038(223例患者)和876段(56例患者)。根据用于脉冲检测的灵敏度(Se)和特异性(Sp)评估模型。网络在训练过程中显示出Se / Sp的89.4%/ 97.2%,测试集显示为91.7%/ 92.5%。

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