Reduction of motion artifacts from pulse oximeter signals using tunable Q-factor wavelet transform technique

M. R. Ram, K. Sivani, K. Reddy
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引用次数: 4

Abstract

Pulse Oximeter (PO) employed in critical care units is crucial equipment to measure the vital parameters like oxygen blood saturation levels and heart rate of the patient. Using PO device, required medical data is acquired using the photoplethysmographic (PPG) data utilizing PPG sensors attached on forehead/ to finger/at earlobe of the patient and then Ratio parameter (R) is computed pertaining to amplitudes of acquired red and IR PPG signals. Further, ‘R’ is used to estimate oxygen saturation levels with the help of calibration curve. Subject movements while recording the medical data may result in erroneous estimation of required estimation parameter and in turn may result in wrong diagnosis by the clinician. Reduction of Motion Artifacts (MA) component from raw PPG data recorded may guarantee error-free measurement of oxygen blood saturation level (SpO2). MA's can be removed from raw PPG signal (corrupted) using band pass filtering method, but the persisting in-band noise component cannot be removed. In this paper, authors propose a filtering method using tunable Q-factor wavelet transform (TQWT) to remove MA components. Advantage of TQWT sytems from the fact that, the realization of practical narrow band pass filter with a specific Q-factor value can be designed, which motivated the authors to use for this application. Experimental results have shown a good acceptance for the proposed method as the MA reduced PPG signals obtained are having efficient morphological features. SpO2 is estimated from MA reduced PPGs by utilizing the calibration curve. The superiority of proposed technique has been proved by comparing the experimental results with results obtained using basic least mean squares (LMS) method. Signal data can be acquired with different MA components (bending, horizontal and vertical movements of patient's finger) is considered for experiment analysis. Obtained SpO2 parameter calculations proved the efficacy of estimation technique in measurement of reliable and accurate SpO2, helpful for medical diagnosis.
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利用可调q因子小波变换技术减少脉搏血氧计信号中的运动伪影
脉搏血氧仪(PO)是在重症监护病房测量患者血氧饱和度、心率等重要参数的重要设备。使用PO设备,利用附着在患者额头/手指/耳垂上的PPG传感器,使用光电体积脉搏图(PPG)数据获取所需的医疗数据,然后计算与获取的红色和红外PPG信号幅度相关的比率参数(R)。此外,“R”用于借助校准曲线估计氧饱和度水平。受试者在记录医疗数据时的运动可能导致对所需估计参数的错误估计,进而可能导致临床医生的错误诊断。从记录的原始PPG数据中减少运动伪影(MA)成分可以保证血氧饱和度(SpO2)的无误差测量。使用带通滤波方法可以从原始PPG信号(损坏)中去除MA,但无法去除持续存在的带内噪声成分。本文提出了一种利用可调q因子小波变换(TQWT)去除MA分量的滤波方法。TQWT系统的优势在于可以设计出具有特定q因子值的实用窄带通滤波器,这促使作者将其用于该应用。实验结果表明,该方法具有良好的可接受性,得到的MA约简PPG信号具有有效的形态学特征。利用校准曲线从MA还原PPGs中估计SpO2。将实验结果与基本最小均二乘法(LMS)的结果进行了比较,证明了该方法的优越性。考虑不同MA分量(患者手指的弯曲、水平和垂直运动)可获取信号数据进行实验分析。得到的SpO2参数计算结果证明了估计技术测量SpO2可靠、准确的有效性,有助于医学诊断。
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