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A Probabilistic Function to Model the Relationship between Quality of Chest Compressions and the Physiological Response for Patients in Cardiac Arrest

机译:概率函数来模拟胸部压缩质量与心脏骤停患者的生理反应关系

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Cardiopulmonary resuscitation quality (CPRQ) parameters can be derived from electric signals obtained during resuscitation. We propose to model a probabilistic relationship between CPRQ parameters and the physiological response as judged by ECG-features, to guide therapy in a clinical context. A total of 821 compression sequences were extracted from 394 out-of-hospital resuscitation episodes. Sequences were categorized as effective if the post sequence cardiac rhythm had better prognosis than the pre-sequence rhythm by a positive difference, otherwise as non effective if the difference was negative. CPRQ parameters related to depth and rate were calculated. Three alternative approaches were designed for the binary classifier based on the CPRQ parameters: quadratic discriminant analysis (QDA), logistic regression (LR) and artificial neural networks (ANN). The positive class discriminant function defined the probability of effective compressions (Pec). The classification accuracies were around 0.6 for all three models. The highest probability estimates of effective chest compressions corresponded to the depth (5-6 cm) and rate (100-120 min-1) currently recommended in the CPR guidelines. We have proposed a novel method to relate the quality of chest compressions to the physiologic response to CPR.
机译:体外复苏质量(CPRQ)参数可以从复苏期间获得的电信号导出。我们建议模拟CPRQ参数与ECG - 特征判断的生理反应之间的概率关系,以在临床背景下引导治疗。从394次外部复苏发作中提取了总共821个压缩序列。如果序列序列心律节律比预序列节律更好,则序列被分类为阳性差异,如果差异为阴性,则无效。计算与深度和速率相关的CPRQ参数。基于CPRQ参数的二进制分类器设计了三种替代方法:二次判别分析(QDA),逻辑回归(LR)和人工神经网络(ANN)。正类判别函数定义了有效按压(PEC)的概率。所有三种型号的分类准确性约为0.6。有效胸部按压的最高概率估计对应于深度(5-6厘米)和速率(100-120分钟 -1 )目前推荐在CPR指南中。我们提出了一种新的方法,将胸部压缩质量与CPR的生理反应相关。

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