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Recognition of Abnormal Chest Compression Depth Using One-Dimensional Convolutional Neural Networks

机译:用一维卷积神经网络识别异常胸部压缩深度

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摘要

When the displacement of an object is evaluated using sensor data, its movement back to the starting point can be used to correct the measurement error of the sensor. In medicine, the movements of chest compressions also involve a reciprocating movement back to the starting point. The traditional method of evaluating the effects of chest compression depth (CCD) is to use an acceleration sensor or gyroscope to obtain chest compression movement data; from these data, the displacement value can be calculated and the CCD effect evaluated. However, this evaluation procedure suffers from sensor errors and environmental interference, limiting its applicability. Our objective is to reduce the auxiliary computing devices employed for CCD effectiveness evaluation and improve the accuracy of the evaluation results. To this end, we propose a one-dimensional convolutional neural network (1D-CNN) classification method. First, we use the chest compression evaluation criterion to classify the pre-collected sensor signal data, from which the proposed 1D-CNN model learns classification features. After training, the model is used to classify and evaluate sensor signal data instead of distance measurements; this effectively avoids the influence of pressure occlusion and electromagnetic waves. We collect and label 937 valid CCD results from an emergency care simulator. In addition, the proposed 1D-CNN structure is experimentally evaluated and compared against other CNN models and support vector machines. The results show that after sufficient training, the proposed 1D-CNN model can recognize the CCD results with an accuracy rate of more than 95%. The execution time suggests that the model balances accuracy and hardware requirements and can be embedded in portable devices.
机译:当使用传感器数据评估对象的位移时,将其返回起始点的运动可用于校正传感器的测量误差。在医学中,胸部按压的运动也涉及往返起点的往复运动。评估胸部压缩深度(CCD)效果的传统方法是使用加速度传感器或陀螺仪获得胸部压缩运动数据;从这些数据,可以计算位移值并评估CCD效果。然而,该评估程序遭受传感器误差和环境干扰,限制了其适用性。我们的目的是减少用于CCD效能评估的辅助计算装置,提高评估结果的准确性。为此,我们提出了一维卷积神经网络(1D-CNN)分类方法。首先,我们使用胸部压缩评估标准来分类预收集的传感器信号数据,所提出的1D-CNN模型从中学习分类功能。在培训之后,该模型用于分类和评估传感器信号数据而不是距离测量;这有效地避免了压力闭塞和电磁波的影响。我们收集和标记937来自紧急护理模拟器的有效CCD结果。另外,提出的1D-CNN结构是通过实验评估的,并与其他CNN模型进行比较和支持载体机。结果表明,在足够的训练之后,所提出的1D-CNN模型可以识别CCD结果,精度率超过95%。执行时间表明模型余额余额和硬件要求,可以嵌入在便携式设备中。

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