Risdal Martin, Aase Sven Ole, Stavland Mette, Eftestøl Trygve
Department of Electrical and Computer Engineering, University of Stavanger, Stavanger 4036, Norway.
IEEE Trans Biomed Eng. 2007 Dec;54(12):2237-45. doi: 10.1109/tbme.2007.908328.
It has been suggested to develop automated external defibrillators with the ability to monitor cardiopulmonary resuscitation (CPR) performance online and give corrective feedback in order to improve the resuscitation quality. Thoracic impedance changes are closely correlated to lung volume changes and can be used to monitor the ventilatory activity. We developed a pattern-recognition-based detection system that uses thoracic impedance to accurately detect ventilation during ongoing CPR. The detection system was developed and evaluated on recordings of real-world resuscitation efforts of cardiac arrest patients where ventilations were manually annotated by human experts. The annotated ventilations were detected with an overall positive predictive value of 95.5% for a sensitivity of 90.4%. During chest compressions, the detection system achieved a mean positive predictive value of 94.8% for a sensitivity of 88.7%. The results suggest that accurate ventilation detection during CPR based on the proposed approach is feasible, and that the performance is not significantly degraded in the presence of chest compressions.
有人建议开发一种自动体外除颤器,使其具备在线监测心肺复苏(CPR)操作并给予纠正反馈的能力,以提高复苏质量。胸廓阻抗变化与肺容积变化密切相关,可用于监测通气活动。我们开发了一种基于模式识别的检测系统,该系统利用胸廓阻抗在进行心肺复苏时准确检测通气情况。该检测系统是根据心脏骤停患者实际复苏过程的记录开发和评估的,其中通气情况由专家人工标注。对于90.4%的敏感度,标注通气的检测总体阳性预测值为95.5%。在胸外按压期间,检测系统对于88.7%的敏感度,平均阳性预测值为94.8%。结果表明,基于所提出方法在心肺复苏期间进行准确的通气检测是可行的,并且在存在胸外按压的情况下性能不会显著下降。