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Adaptive ECG interval extraction

机译:自适应心电图间隔提取

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摘要

ECG intervals such as QRS, QT and PR provide significant information and are widely used as clinical parameters for diagnosing cardiac diseases. This paper presents a novel QRS detection technique based on Curve Length Transform (CLT) and a refined delineation of P-wave and T-wave using Discrete Wavelet Transform (DWT). The proposed technique was verified using the PhysioNet database. The QRS detection achieved a sensitivity of 98.59% and a positive predictivity of 97.86%. The QRS duration, QT interval and PR interval had a mean error of −1.56± 28.8ms, −5.39± 42.4ms and 0.86± 40.3ms respectively. The proposed algorithm is computationally efficient and is simpler to implement in hardware, hence, will lead to a faster execution time, smaller design area and consequently low power consumption.
机译:ECG间隔(例如QRS,QT和PR)可提供重要信息,并被广泛用作诊断心脏病的临床参数。本文提出了一种基于曲线长度变换(CLT)的新颖QRS检测技术,并使用离散小波变换(DWT)精确描绘了P波和T波。所提出的技术已使用PhysioNet数据库进行了验证。 QRS检测的灵敏度为98.59%,阳性预测率为97.86%。 QRS持续时间,QT间隔和PR间隔的平均误差分别为-1.56±28.8ms,-5.39±42.4ms和0.86±40.3ms。所提出的算法在计算上是有效的,并且在硬件上更易于实现,因此将导致执行时间更快,设计面积更小并且因此功耗更低。

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