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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Graphics-Processor-Unit-Based Parallelization of Optimized Baseline Wander Filtering Algorithms for Long-Term Electrocardiography
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Graphics-Processor-Unit-Based Parallelization of Optimized Baseline Wander Filtering Algorithms for Long-Term Electrocardiography

机译:长期心电图的优化基线漂移检测算法的基于图形处理器单元的并行化

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Long-term electrocardiogram (ECG) often suffers from relevant noise. Baseline wander in particular is pronounced in ECG recordings using dry or esophageal electrodes, which are dedicated for prolonged registration. While analog high-pass filters introduce phase distortions, reliable offline filtering of the baseline wander implies a computational burden that has to be put in relation to the increase in signal-to-baseline ratio (SBR). Here, we present a graphics processor unit (GPU)-based parallelization method to speed up offline baseline wander filter algorithms, namely the wavelet, finite, and infinite impulse response, moving mean, and moving median filter. Individual filter parameters were optimized with respect to the SBR increase based on ECGs from the Physionet database superimposed to autoregressive modeled, real baseline wander. A Monte-Carlo simulation showed that for low input SBR the moving median filter outperforms any other method but negatively affects ECG wave detection. In contrast, the infinite impulse response filter is preferred in case of high input SBR. However, the parallelized wavelet filter is processed 500 and four times faster than these two algorithms on the GPU, respectively, and offers superior baseline wander suppression in low SBR situations. Using a signal segment of 64 mega samples that is filtered as entire unit, wavelet filtering of a seven-day high-resolution ECG is computed within less than 3 s. Taking the high filtering speed into account, the GPU wavelet filter is the most efficient method to remove baseline wander present in long-term ECGs, with which computational burden can be strongly reduced.
机译:长期心电图(ECG)通常会受到相关噪音的困扰。在使用干电极或食管电极的ECG记录中,基线漂移尤其明显,专用于延长配准。尽管模拟高通滤波器会引入相位失真,但是可靠的离线基线漂移滤波意味着与信号基线比(SBR)的增加有关的计算负担。在这里,我们提出一种基于图形处理器单元(GPU)的并行化方法,以加速离线基线漂移滤波器算法,即小波,有限和无限脉冲响应,移动平均值和移动中值滤波器。根据Physionet数据库中的ECG与自回归建模的实际基线漂移相叠加,针对SBR的增加对各个过滤器参数进行了优化。蒙特卡洛模拟显示,对于低输入SBR,移动中值滤波器的性能优于任何其他方法,但会对ECG波检测产生负面影响。相反,在高输入SBR的情况下,首选无限脉冲响应滤波器。但是,并行小波滤波器的处理速度分别比这两种算法在GPU上快500倍和四倍,并在低SBR情况下提供了出色的基线漂移抑制。使用64兆样本的信号片段作为整体进行滤波,可以在不到3秒的时间内计算出7天高分辨率ECG的小波滤波。考虑到高滤波速度,GPU小波滤波器是消除长期ECG中存在基线漂移的最有效方法,可大大减少计算负担。

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