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一种基于时频谱特征从光电容积脉搏波信号中准确检测心率的鲁棒运动伪影检测算法。

A Robust Motion Artifact Detection Algorithm for Accurate Detection of Heart Rates From Photoplethysmographic Signals Using Time-Frequency Spectral Features.

作者信息

Dao Duy, Salehizadeh S M A, Noh Yeonsik, Chong Jo Woon, Cho Chae Ho, McManus Dave, Darling Chad E, Mendelson Yitzhak, Chon Ki H

出版信息

IEEE J Biomed Health Inform. 2017 Sep;21(5):1242-1253. doi: 10.1109/JBHI.2016.2612059. Epub 2016 Oct 21.

Abstract

Motion and noise artifacts (MNAs) impose limits on the usability of the photoplethysmogram (PPG), particularly in the context of ambulatory monitoring. MNAs can distort PPG, causing erroneous estimation of physiological parameters such as heart rate (HR) and arterial oxygen saturation (SpO2). In this study, we present a novel approach, "TifMA," based on using the time-frequency spectrum of PPG to first detect the MNA-corrupted data and next discard the nonusable part of the corrupted data. The term "nonusable" refers to segments of PPG data from which the HR signal cannot be recovered accurately. Two sequential classification procedures were included in the TifMA algorithm. The first classifier distinguishes between MNA-corrupted and MNA-free PPG data. Once a segment of data is deemed MNA-corrupted, the next classifier determines whether the HR can be recovered from the corrupted segment or not. A support vector machine (SVM) classifier was used to build a decision boundary for the first classification task using data segments from a training dataset. Features from time-frequency spectra of PPG were extracted to build the detection model. Five datasets were considered for evaluating TifMA performance: (1) and (2) were laboratory-controlled PPG recordings from forehead and finger pulse oximeter sensors with subjects making random movements, (3) and (4) were actual patient PPG recordings from UMass Memorial Medical Center with random free movements and (5) was a laboratory-controlled PPG recording dataset measured at the forehead while the subjects ran on a treadmill. The first dataset was used to analyze the noise sensitivity of the algorithm. Datasets 2-4 were used to evaluate the MNA detection phase of the algorithm. The results from the first phase of the algorithm (MNA detection) were compared to results from three existing MNA detection algorithms: the Hjorth, kurtosis-Shannon entropy, and time-domain variability-SVM approaches. This last is an approach recently developed in our laboratory. The proposed TifMA algorithm consistently provided higher detection rates than the other three methods, with accuracies greater than 95% for all data. Moreover, our algorithm was able to pinpoint the start and end times of the MNA with an error of less than 1 s in duration, whereas the next-best algorithm had a detection error of more than 2.2 s. The final, most challenging, dataset was collected to verify the performance of the algorithm in discriminating between corrupted data that were usable for accurate HR estimations and data that were nonusable. It was found that on average 48% of the data segments were found to have MNA, and of these, 38% could be used to provide reliable HR estimation.

摘要

运动和噪声伪影(MNAs)限制了光电容积脉搏波(PPG)的可用性,尤其是在动态监测的情况下。MNAs会使PPG失真,导致心率(HR)和动脉血氧饱和度(SpO2)等生理参数的错误估计。在本研究中,我们提出了一种新方法“TifMA”,该方法基于使用PPG的时频谱首先检测受MNAs干扰的数据,然后丢弃受干扰数据中不可用的部分。术语“不可用”是指无法准确恢复HR信号的PPG数据段。TifMA算法包括两个连续的分类过程。第一个分类器区分受MNAs干扰和未受MNAs干扰的PPG数据。一旦一段数据被判定为受MNAs干扰,下一个分类器将确定是否可以从受干扰的段中恢复HR。使用支持向量机(SVM)分类器,利用训练数据集的数据段为第一个分类任务构建决策边界。提取PPG时频谱的特征来构建检测模型。考虑了五个数据集来评估TifMA的性能:(1)和(2)是来自额头和手指脉搏血氧仪传感器的实验室控制的PPG记录,受试者进行随机运动;(3)和(4)是来自马萨诸塞大学纪念医疗中心的实际患者PPG记录,受试者进行随机自由运动;(5)是在受试者在跑步机上跑步时在额头测量的实验室控制的PPG记录数据集。第一个数据集用于分析算法的噪声敏感性。数据集2-4用于评估算法的MNAs检测阶段。将算法第一阶段(MNAs检测)的结果与三种现有的MNAs检测算法的结果进行比较:Hjorth算法、峰度-香农熵算法和时域变异性-SVM方法。最后一种方法是我们实验室最近开发的。所提出的TifMA算法始终提供比其他三种方法更高的检测率,所有数据的准确率均大于95%。此外,我们的算法能够精确确定MNAs的开始和结束时间,持续时间误差小于1秒,而次优算法的检测误差超过2.2秒。收集最后一个最具挑战性的数据集以验证算法在区分可用于准确HR估计的受干扰数据和不可用数据方面的性能。结果发现,平均48%的数据段被发现存在MNAs,其中38%可用于提供可靠的HR估计。

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