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R-R Interval Outlier Processing for Heart Rate Variability Analysis using Wearable ECG Devices

机译:使用可穿戴式ECG设备进行心率变异性分析的R-R间隔离群值处理

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Electrocardiograms (ECGs) captured by wearable ECG devices readily contain artifacts due to measurement faults. Since artifacts and R waves have quite similar frequency characteristics, R wave misdetection or R-R interval (RRI) miscalculation may result. Aiming at accurate analysis of heart rate variability (HRV), this paper proposes a new RRI outlier processing method consisting of three steps: evaluating RRI reliability, excluding RRI outlier, and complementing missing RRI. In the first step, the method evaluates the measurement status of all detected R waves and calculates RRI reliability based on the measurement status of a combination of the measurement status of two R waves. Since we target wearable ECG devices used in non-medical environment, the method evaluates R waves based on the threshold electric potential for left ventricular hypertrophy, and determines those exceeding the threshold as artifacts. The method accordingly sets lower reliability to RRIs containing R waves evaluated as artifacts. In the second step, the method excludes all RRIs with low reliability as outliers. These steps may be effective for HRV measures in the time domain, but are not sufficient for analyzing HRV measures in the frequency domain. Resampling the time series RRI data, which is essential for analyzing HRV in the frequency domain, may produce outliers if the target RRIs contain missing values. Our method accordingly complements missing RRIs before data resampling based on RRI characteristics. We postulate that consecutive changes in RRIs follow a simple formula consisting of three components: direct current, low frequency, and high frequency. Our method complements missing values according to the formula, which is calculated from RRIs time series regarded as having been properly measured. To confirm the effectiveness of the method before applying it to ECGs recorded by wearable devices, we evaluated all the steps using pseudo-ECGs generated artificially by adding noise and artifacts to open ECG data. Initial evaluation results showed that the proposed method outperformed conventional method regarding the precision of both time and frequency domain measures of HRV.
机译:由于测量错误,可穿戴式ECG设备捕获的心电图(ECG)容易包含伪影。由于伪影和R波具有非常相似的频率特性,可能会导致R波检测错误或R-R间隔(RRI)错误计算。为了准确分析心率变异性(HRV),本文提出了一种新的RRI离群值处理方法,该方法包括三个步骤:评估RRI可靠性(排除RRI离群值)和补充缺失的RRI。在第一步中,该方法评估所有检测到的R波的测量状态,并基于两个R波的测量状态的组合的测量状态来计算RRI可靠性。由于我们的目标是在非医疗环境中使用的可穿戴式ECG设备,因此该方法根据左心室肥大的阈值电势评估R波,并将超过阈值的电波确定为伪影。因此,该方法对包含被评估为伪影的R波的RRI设置较低的可靠性。在第二步中,该方法将可靠性低的所有RRI排除在外。这些步骤对于时域中的HRV量度可能是有效的,但不足以分析频域中的HRV量度。如果目标RRI包含缺失值,则重新采样时间序列RRI数据(对于在频域中分析HRV是必不可少的)可能会导致异常值。因此,我们的方法会根据RRI特征在数据重新采样之前对丢失的RRI进行补充。我们假设RRI的连续变化遵循一个简单的公式,该公式由三个部分组成:直流电,低频和高频。我们的方法根据公式对缺失值进行补充,该公式是根据RRI的时间序列计算得出的,该时间序列被认为已正确测量。为了在将该方法应用于可穿戴设备记录的ECG之前确认该方法的有效性,我们使用人工生成的伪ECG(通过添加噪声和伪像来打开ECG数据)评估了所有步骤。初步评估结果表明,该方法在HRV的时域和频域测量精度上均优于传统方法。

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