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Recurrence Plot and Machine Learning for Signal Quality Assessment of Photoplethysmogram in Mobile Environment

机译:复发图和机器学习用于移动环境中的光电肌标记信号质量评估

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摘要

The purpose of this study was to develop a machine learning model that could accurately evaluate the quality of a photoplethysmogram based on the shape of the photoplethysmogram and the phase relevance in a pulsatile waveform without requiring complicated pre-processing. Photoplethysmograms were recorded for 76 participants (5 min for each participant). All recorded photoplethysmograms were segmented for each beat to obtain a total of 49,561 pulsatile segments. These pulsatile segments were manually labeled as ‘good’ and ‘poor’ classes and converted to a two-dimensional phase space trajectory image using a recurrence plot. The classification model was implemented using a convolutional neural network with a two-layer structure. As a result, the proposed model correctly classified 48,827 segments out of 49,561 segments and misclassified 734 segments, showing a balanced accuracy of 0.975. Sensitivity, specificity, and positive predictive values of the developed model for the test dataset with a ‘poor’ class classification were 0.964, 0.987, and 0.848, respectively. The area under the curve was 0.994. The convolutional neural network model with recurrence plot as input proposed in this study can be used for signal quality assessment as a generalized model with high accuracy through data expansion. It has an advantage in that it does not require complicated pre-processing or a feature detection process.
机译:本研究的目的是开发一种机器学习模型,其可以基于光增生肌谱的形状和脉动波形中的相位相关性来准确地评估光学溶血性谱的质量,而不需要复杂的预处理。记录了36名参与者(每个参与者5分钟的参与者)。将所有记录的光学溶血谱分段为每个节拍,以获得共49,561个脉动段。这些脉动段被手动标记为“良好”和“差”类,并使用复发绘图转换为二维相空间轨迹图像。使用具有双层结构的卷积神经网络实现分类模型。因此,该建议的模型正确分类了48,827个段中的48,827个段,并错误地分类了734个段,显示了0.975的平衡准确性。具有“差”类分类的测试数据集的开发模型的灵敏度,特异性和正预测值分别为0.964,0.987和0.848。曲线下的区域为0.994。具有复发曲线的卷积神经网络模型作为本研究中提出的输入可用于通过数据扩展高精度的信号质量评估作为广义模型。它具有优点在于它不需要复杂的预处理或特征检测过程。

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