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A novel online method for identifying motion artifact and photoplethysmography signal reconstruction using artificial neural networks and adaptive neuro-fuzzy inference system

机译:一种新的在线方法,用于使用人工神经网络和自适应神经模糊推理系统识别运动伪影和光电到测量信号重建的在线方法

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摘要

Photoplethysmography (PPG) is a noninvasive technique to measure blood volume changes in blood vessels. Despite the wide usage of PPG signal in medical and non-medical applications, this signal can be affected by the motion artifacts leading to data loss. In this paper, we proposed an algorithm to detect motion artifacts and reconstruct the corrupted parts of the signal using real-time modeling based on multilayer perceptron (MLP), radial basis function (RBF) artificial neural networks (ANNs) and adaptive-neuro fuzzy inference system (ANFIS). The developed algorithm was applied to reconstruct the corrupted parts of PPG signals of 23 healthy 25- to 28-year-old volunteers. In the experimental phase, the left- and right-hand PPG signals of the volunteers were simultaneously obtained. While the left hand of the subjects were fixed, they were asked to shake their hands without any predetermined pattern, to simulate the real-life motion accelerations. To statistically and physiologically evaluate the performance of the proposed models, Pearson correlation coefficient (PCC), intraclass correlation coefficient (ICC), Bland-Altman plot (with the 95% limits of agreement), and time-domain feature analysis tests were adopted. The results indicated that the ANFIS with subtractive clustering algorithm shows the best performance in modeling the lost parts of the right-hand signals with an average PCC and ICC of 0.80 and 0.77, respectively, with the reference signal (left-hand signals) over all the tests. Also, the proposed ANFIS-based algorithm had an ability to retrieve the important time-domain PPG signal features, namely mean of inter-beat intervals (NN), standard deviations of NN (SDNN), root mean square of standard deviations (RMSSD) and standard deviation of standard deviations (SDSD) without any significant difference at p < 0.05 level to those of the reference signal (left-hand signal).
机译:光学仪性描记术(PPG)是一种测量血管血量变化的非侵入性技术。尽管在医疗和非医疗应用中使用了PPG信号,但该信号可能受到导致数据丢失的运动伪影的影响。在本文中,我们提出了一种算法来检测运动伪影,并使用基于多层的Perceptron(MLP)的实时建模来重建信号的损坏部分,径向基函数(RBF)人工神经网络(ANNS)和Adaptive-Neuro模糊推理系统(ANFIS)。应用了发达的算法,重建了23个健康25至28岁志愿者的PPG信号的损坏部分。在实验阶段,同时获得志愿者的左手和右手PPG信号。虽然受试者的左手是固定的,但他们被要求在没有任何预定模式的情况下握手,以模拟现实生活动态加速度。在统计和生理学上评估所提出的模型的性能,Pearson相关系数(PCC),脑内相关系数(ICC),Bland-Altman Plot(具有95%的协议限制)和时域特征分析测试。结果表明,带有减法聚类算法的ANFIS显示了在将平均PCC和ICC的右手信号的丢失部件模拟0.80和0.77的右手信号的最佳性能,其中包含参考信号(左侧信号)测试。此外,所提出的基于ANFIS的算法能够检索重要的时域PPG信号特征,即拍拍间隔(NN)的平均值,NN(SDNN)的标准偏差,标准偏差的根均线(RMSD)标准偏差(SDSD)的标准偏差,在P <0.05级别与参考信号(左侧信号)的差异没有任何显着差异。

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