An automated method for detecting systolic peaks from arterial blood pressure signals

Dandu Sriram Raju, M. Manikandan, Ramkumar Barathram
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引用次数: 11

Abstract

In this paper, we present an automatic method for determining time-location of systolic peak in arterial blood pressure (ABP) signals. The method consists of four major steps: Gaussian derivative filtering, nonlinear peak amplification, Gaussian derivative based peak finding scheme, and peak position adjustment procedure. The method is tested and validated using the standard MIT-BIR Polysomnographic database containing a wide range of ABP signals, artifacts and high-frequency noises. Our results demonstrate that the proposed method can achieve better peak detection performance while maintaining very small detection error rates for both clean and noisy ABP signals. The method achieves an average sensitivity of 99.89% and positive predictivity of 99.59% on test ABP datasets consisting of 67,125 beats. Unlike other existing methods, our method is quite straightforward and simple in the sense that it does not use search-back algorithms with secondary thresholds.
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一种从动脉血压信号中检测收缩压峰值的自动方法
在本文中,我们提出了一种自动确定动脉血压(ABP)信号中收缩压峰值的时间定位方法。该方法包括四个主要步骤:高斯导数滤波、非线性峰值放大、基于高斯导数的寻峰方案和峰值位置调整。使用标准的MIT-BIR多导睡眠图数据库对该方法进行了测试和验证,该数据库包含广泛的ABP信号、伪影和高频噪声。我们的研究结果表明,该方法可以在保持非常小的检测错误率的同时,获得更好的峰值检测性能。该方法在67,125次心跳测试ABP数据集上的平均灵敏度为99.89%,阳性预测率为99.59%。与其他现有方法不同,我们的方法非常直接和简单,因为它不使用具有次要阈值的搜索回退算法。
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