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Localised photoplethysmography imaging for heart rate estimation of pre-term infants in the clinic

机译:局部光体积描记术成像可在临床中估计早产儿的心率

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Non-contact vital-sign estimation allows the monitoring of physiological parameters (such as heart rate, respiratory rate, and peripheral oxygen saturation) without contact electrodes or sensors. Our recent work has demonstrated that a convolutional neural network (CNN) can be used t,o detect the presence of a patient and segment the patient's skin area for vital-sign estimation, thus enabling the automatic, continuous monitoring of vital signs in a hospital environment. In a study approved by the local Research Ethical Committee, we made video recordings of pre-term infants nursed in a Neonatal Intensive Care Unit (NICU) at the John Radcliffe Hospital in Oxford. UK. We extended the CNN model to detect the head, torso and diaper of the infants. We extracted multiple photoplethysmographic imaging (PPGi) signals from each body part, analysed their signal quality, and compared them with the PPGi signal derived from the entire skin area. Our results demonstrated the benefits of estimating heart rate combined from multiple regions of interest using data fusion. In the test dataset, we achieved a mean absolute error of 2.4 beats per minute for 80% (31.1 hours) from a total recording time of 38.5 hours for which both reference heart rate and video data were valid.
机译:非接触式生命体征估计无需接触电极或传感器即可监测生理参数(例如心率,呼吸频率和外周血氧饱和度)。我们最近的工作表明,可以使用卷积神经网络(CNN)来检测患者的存在并分割患者的皮肤区域以进行生命体征估计,从而能够自动,连续地监测医院中的生命体征环境。在当地研究道德委员会批准的一项研究中,我们录制了在牛津约翰拉德克利夫医院新生儿重症监护室(NICU)护理的早产儿的录像。英国。我们扩展了CNN模型,以检测婴儿的头部,躯干和尿布。我们从每个身体部位提取了多个光电容积描记成像(PPGi)信号,分析了它们的信号质量,并将它们与从整个皮肤区域获得的PPGi信号进行了比较。我们的结果证明了使用数据融合估计多个感兴趣区域的心率的好处。在测试数据集中,从38.5小时的总记录时间(参考心率和视频数据均有效)的80%(31.1小时)中,我们实现了平均绝对误差为每分钟2.4次心跳2.4。

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