Coult Jason, Blackwood Jennifer, Rea Thomas D, Kudenchuk Peter J, Kwok Heemun
IEEE J Biomed Health Inform. 2020 Mar;24(3):768-774. doi: 10.1109/JBHI.2019.2918790. Epub 2019 May 24.
Interruptions in chest compressions during treatment of out-of-hospital cardiac arrest are associated with lower likelihood of successful resuscitation. Real-time automated detection of chest compressions may improve CPR administration during resuscitation, and could facilitate application of next-generation ECG algorithms that employ different parameters depending on compression state. In contrast to accelerometer sensors, transthoracic impedance (TTI) is commonly acquired by defibrillators. We sought to develop and evaluate the performance of a TTI-based algorithm to automatically detect chest compressions.
Five-second TTI segments were collected from patients with out-of-hospital cardiac arrest treated by one of four defibrillator models. Segments with and without chest compressions were collected prior to each of the first four defibrillation shocks (when available) from each case. Patients were divided randomly into 40% training and 60% validation groups. From the training segments, we identified spectral and time-domain features of the TTI associated with compressions. We used logistic regression to predict compression state from these features. Performance was measured by sensitivity and specificity in the validation set. The relationship between performance and TTI segment length was also evaluated.
The algorithm was trained using 1859 segments from 460 training patients. Validation sensitivity and specificity were >98% using 2727 segments from 691 validation patients. Validation performance was significantly reduced using segments shorter than 3.2 s.
A novel method can reliably detect the presence of chest compressions using TTI. These results suggest potential to provide real-time feedback in order to improve CPR performance or facilitate next-generation ECG rhythm algorithms during resuscitation.
院外心脏骤停治疗期间胸外按压中断与复苏成功可能性较低相关。胸外按压的实时自动检测可能会改善复苏期间的心肺复苏实施情况,并有助于应用根据按压状态采用不同参数的下一代心电图算法。与加速度计传感器不同,经胸阻抗(TTI)通常由除颤器获取。我们试图开发并评估一种基于TTI的算法自动检测胸外按压的性能。
从使用四种除颤器型号之一治疗的院外心脏骤停患者中收集5秒的TTI片段。在每个病例的前四次除颤电击(如有)之前,收集有和没有胸外按压的片段。患者被随机分为40%的训练组和60%的验证组。从训练片段中,我们识别出与按压相关的TTI的频谱和时域特征。我们使用逻辑回归从这些特征预测按压状态。在验证集中通过敏感性和特异性来衡量性能。还评估了性能与TTI片段长度之间的关系。
该算法使用来自460名训练患者的1859个片段进行训练。使用来自691名验证患者的2727个片段,验证敏感性和特异性>98%。使用短于3.2秒的片段时,验证性能显著降低。
一种新方法可以使用TTI可靠地检测胸外按压的存在。这些结果表明在复苏期间提供实时反馈以改善心肺复苏性能或促进下一代心电图节律算法的潜力。