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Using support vector machines on photoplethysmographic signals to discriminate between hypovolemia and euvolemia

机译:使用在光电溶血信号上使用支持向量机辨别缓解血症和大血症之间

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摘要

Identifying trauma patients at risk of imminent hemorrhagic shock is a challenging task in intraoperative and battlefield settings given the variability of traditional vital signs, such as heart rate and blood pressure, and their inability to detect blood loss at an early stage. To this end, we acquired N = 58 photoplethysmographic (PPG) recordings from both trauma patients with suspected hemorrhage admitted to the hospital, and healthy volunteers subjected to blood withdrawal of 0.9 L. We propose four features to characterize each recording: goodness of fit (r(2)), the slope of the trend line, percentage change, and the absolute change between amplitude estimates in the heart rate frequency range at the first and last time points. Also, we propose a machine learning algorithm to distinguish between blood loss and no blood loss. The optimal overall accuracy of discriminating between hypovolemia and euvolemia was 88.38%, while sensitivity and specificity were 88.86% and 87.90%, respectively. In addition, the proposed features and algorithm performed well even when moderate blood volume was withdrawn. The results suggest that the proposed features and algorithm are suitable for the automatic discrimination between hypovolemia and euvolemia, and can be beneficial and applicable in both intraoperative/emergency and combat casualty care.
机译:鉴定出现迫在眉睫的出血休克风险的创伤患者是术中和战场设置的具有挑战性的任务,鉴于传统的生命体征的可变性,如心率和血压,以及它们在早期阶段的失血损失。为此,我们获得了来自涉及医院的疑似出血的Trauma患者的N = 58个光增性肌科(PPG)记录,并且健康的志愿者对0.9升进行血液撤离。我们提出了四个特征来表征每个记录:适合的良好( R(2)),趋势线的斜率,变化百分比,心率频率范围内的幅度估计的绝对变化在第一和最后一次点。此外,我们提出了一种机器学习算法,区分失血和没有失血。低血症和Euvelemia之间辨别的最佳总体准确性为88.38%,而敏感性和特异性分别为88.86%和87.90%。此外,即使拔出中度血量,所提出的特征和算法也表现良好。结果表明,所提出的特征和算法适用于缓解血症和Euvelemia之间的自动歧视,并且可以在术中/紧急情况和战斗伤亡保健中有益和适用。

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