Fan Dayong, Yang Jiachen, Zhang Junbao, Lv Zhihan, Huang Haojun, Qi Jun, Yang Po
School of Electronic Automation and Information EngineeringTianjin universityTianjin30072China.
School of Computer ScienceZhongyuan University of TechnologyZhengzhou45007China.
IEEE J Transl Eng Health Med. 2018 Jan 26;6:1600112. doi: 10.1109/JTEHM.2017.2688458. eCollection 2018.
Continuous respiratory monitoring is an important tool for clinical monitoring. The most widely used flow measure device is nasal cannulae connected to a pressure transducer. However, most of these devices are not easy to carry and continue working in uncontrolled environments which is also a problem. For portable breathing equipment, due to the volume limit, the pressure signals acquired by using the airway tube may be too weak and contain some noise, leading to huge errors in respiratory flow measures. In this paper, a cost-effective portable pressure sensor-based respiratory measure device is designed. This device has a new airway tube design, which enables the pressure drop efficiently after the air flowing through the airway tube. Also, a new back propagation (BP) neural network-based algorithm is proposed to stabilize the device calibration and remove pressure signal noise. For improving the reliability and accuracy of proposed respiratory device, a through experimental evaluation and a case study of the proposed BP neural network algorithm have been carried out. The results show that giving proper parameters setting, the proposed BP neural network algorithm is capable of efficiently improving the reliability of newly designed respiratory device.
持续呼吸监测是临床监测的一项重要工具。使用最广泛的流量测量设备是连接到压力传感器的鼻导管。然而,这些设备大多不易携带,且在不受控制的环境中难以持续工作,这也是一个问题。对于便携式呼吸设备,由于体积限制,使用气道管获取的压力信号可能太弱且包含一些噪声,导致呼吸流量测量出现巨大误差。本文设计了一种基于便携式压力传感器的经济高效的呼吸测量设备。该设备采用了一种新的气道管设计,使空气流经气道管后能有效实现压力降。此外,还提出了一种基于反向传播(BP)神经网络的新算法,以稳定设备校准并去除压力信号噪声。为提高所提出的呼吸设备的可靠性和准确性,对所提出的BP神经网络算法进行了全面的实验评估和案例研究。结果表明,在进行适当的参数设置后,所提出的BP神经网络算法能够有效提高新设计呼吸设备的可靠性。