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Automatic respiratory phase detection for functional electrical stimulation synchronization

机译:自动呼吸相位检测,实现功能性电刺激同步

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Introduction People with cervical or high thoracic spinal cord injury usually have respiratory muscle weakness. When transcutaneous functional electrical stimulation (TFES) synchronized with the patient’s natural breathing is applied to respiratory muscles, their strength and resistance are increased. In this work, we propose a novel method to perform an automatic synchronization, composed of a signal acquisition system and an algorithm that recognizes both respiratory cycle phases during quiet breathing. Methods The respiratory signal acquisition unit consists of a load cell attached to an elastic belt. The algorithm is based on statistical evaluation and linear approximation for detecting the beginning of both inhalation and exhalation phases. Ten volunteers remained steady, breathing quietly for one minute for signal acquisition. Results The system’s automatic detection of inspiratory events reached 87.5% of true positives, 6.7% of false negatives and 5.8% of false positives. Both hit and error ratios obtained in the detection of expiratory events reached 94.3% true positives, 4.9% false positives and 0.8% false negatives. Conclusion The developed algorithm can identify the respiratory phases properly and it can be used in future synchronized TFES applications whether the patient remains in a quasi-static position during treatment.
机译:简介患有颈椎或高胸脊髓损伤的人通常会出现呼吸肌无力。当将与患者自然呼吸同步的经皮功能性电刺激(TFES)应用于呼吸肌时,它们的力量和抵抗力就会增强。在这项工作中,我们提出了一种执行自动同步的新颖方法,该方法由信号采集系统和识别安静呼吸过程中两个呼吸循环阶段的算法组成。方法呼吸信号采集单元由连接至弹性带的称重传感器组成。该算法基于统计评估和线性逼近,用于检测吸气和呼气阶段的开始。十名志愿者保持稳定,安静地呼吸一分钟以获取信号。结果系统对吸气事件的自动检测达到了真阳性的87.5%,假阴性的6.7%和假阳性的5.8%。在检测呼气事件时获得的命中率和错误率均达到94.3%的真阳性,4.9%的假阳性和0.8%的假阴性。结论所开发的算法可以正确识别呼吸阶段,并且可以在未来的同步TFES应用中用于患者在治疗过程中是否保持在准静态位置。

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