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Impedance Based Automatic Detection of Ventilations During Mechanical Cardiopulmonary Resuscitation

机译:机械心肺复苏过程中基于阻抗的通气自动检测

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Monitoring ventilation rate is key to improve the quality of cardiopulmonary resuscitation (CPR) and increase the probability of survival in the event of an out-of-hospital cardiac arrest (OHCA). Ventilations produce discernible fluctuations in the thoracic impedance signal recorded by defibrillators. Impedance-based detection of ventilations during CPR is challenging due to chest compression artifacts. This study presents a method for an accurate detection of ventilations when chest compressions are delivered using a piston-driven mechanical device. Data from 223 OHCA patients were analyzed and 399 analysis segments totaling 3101 minutes of mechanical CPR were extracted. A total of 18327 ventilations were annotated using concurrent capnogram recordings. An adaptive least mean squares filter was used to remove compression artifacts. Potential ventilations were detected using a greedy peak detector, and the ventilation waveform was characterized using 8 waveform features. These features were used in a logistic regression classifier to discriminate true ventilations from false positives produced by the greedy peak detector. The classifier was trained and tested using patient wise 10-fold cross validation (CV), and 100 random CV partitions were created to statistically characterize the performance metrics. The peak detector presented a sensitivity (Se) of 99.30%, but a positive predictive value (PPV) of 54.43%. The best classifier configuration used 6 features and improved the mean (sd) Se and PPV of the detector to 93.20% (0.06) and 94.43% (0.04), respectively. When used to measure per minute ventilation rates for feedback to the rescuer, the mean (sd) absolute error in ventilation rate was 0.61 (1.64) min−1. The first impedance-based method to accurately detect ventilations and give feedback on ventilation rate during mechanical CPR has been demonstrated.
机译:监测通气率对于提高心肺复苏质量(CPR)和增加院外心脏骤停(OHCA)的存活率至关重要。通气会在除颤器记录的胸阻抗信号中产生明显的波动。由于胸部按压伪影,在心肺复苏过程中基于阻抗的通气检测具有挑战性。这项研究提出了一种在使用活塞驱动的机械装置进行胸部按压时准确检测通气的方法。分析了来自223位OHCA患者的数据,并提取了399个分析段,共计3101分钟的机械性CPR。使用同时进行的二氧化碳描记图记录对总共18327次通气进行了注释。自适应最小均方滤波器用于去除压缩伪影。使用贪婪峰值检测器检测潜在的通气,并使用8个波形特征来表征通气波形。这些功能用于logistic回归分类器,以将真实通气与贪婪峰值检测器产生的误报区分开。使用患者的10倍交叉验证(CV)对分类器进行了训练和测试,并创建了100个随机CV分区以统计地表征性能指标。峰值检测器的灵敏度(Se)为99.30%,但阳性预测值(PPV)为54.43%。最佳分类器配置使用6个功能,并将检测器的平均(sd)Se和PPV分别提高到93.20%(0.06)和94.43%(0.04)。当用于测量每分钟的通气速率以向救助者反馈时,通气速率的平均(sd)绝对误差为0.61(1.64)min -1 。已经证明了第一种基于阻抗的方法,可以在机械CPR时准确检测通气并提供通气率反馈。

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