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Real-Time Estimation of the ECG-Derived Respiration (EDR) Signal using a New Algorithm for Baseline Wander Noise Removal

机译:ECG衍生呼吸(EDR)信号的实时估计使用新的基线漫游噪声拆除算法

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Numerous methods have been reported for deriving respiratory information such as respiratory rate from the electrocardiogram (ECG). In this paper the authors present a real-time algorithm for estimation and removal of baseline wander (BW) noise and obtaining the ECG-derived respiration (EDR) signal for estimation of a patient's respiratory rate. This algorithm utilizes a real-time "T-P knot" baseline wander removal technique which is based on the repetitive backward subtraction of the estimated baseline from the ECG signal. The estimated baseline is interpolated from the ECG signal at midpoints between each detected R-wave. As each segment of the estimated baseline signal is subtracted from the ECG, a "flattened" ECG signal is produced for which the amplitude of each R-wave is analyzed. The respiration signal is estimated from the amplitude modulation of R-waves caused by breathing. Testing of the algorithm was conducted in a pseudo real-time environment using MATLAB, and test results are presented for simultaneously recorded ECG and respiration recordings from the PhysioNet/PhysioBank Fantasia database. Test data from patients were chosen with particularly large baseline wander components to ensure the reliability of the algorithm under adverse ECG recording conditions. The algorithm yielded EDR signals with a respiration rate of 4.4 breaths/min. for Fantasia patient record f2y10 and 10.1 breaths/min. for Fantasia patient record f2y06. These were in good agreement with the simultaneously recorded respiration data provided in the Fantasia database thus confirming the efficacy of the algorithm.
机译:许多方法已经报道了用于导出呼吸信息诸如从心电图(ECG)的呼吸率。在本文中作者提出用于估计和去除的基线漂移(BW)的噪声和获得用于患者的呼吸率的估计ECG导出的呼吸(EDR)信号实时算法。该算法利用了实时“T-P结”,其是基于从ECG信号的估计基准的重复向后减法基线变动去除技术。所估计的基线从ECG信号在每个检测到的R波之间的中点插值。作为估计的基准信号的每一段被从ECG中减去,“扁平” ECG信号产生为其中各R波的振幅进行了分析。呼吸信号从由呼吸引起的R波的幅度调制来估计。该算法的测试使用MATLAB在伪实时环境中进行,而测试结果中给出了从PhysioNet / PhysioBank幻想曲数据库同时记录心电图和呼吸记录。从患者的测试数据与特别大的基线漂移分量选择,以保证不利的ECG记录条件下的算法的可靠性。该算法产生EDR信号与4.4次/ min的呼吸率。对于花样患者记录f2y10和10.1次/分。对于幻想曲病历f2y06。这些是在与所述花样数据库提供从而证实了该算法的效力同时记录的呼吸数据吻合良好。

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