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New Bayesian discriminator for detection of atrial tachyarrhythmias

机译:用于检测房性快速性心律失常的新型贝叶斯鉴别器

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摘要

Background - Accurate, rapid detection of atrial tachyarrhythmias has important implications in the use of implantable devices for treatment of cardiac arrhythmia. Currently available detection algorithms for atrial tachyarrhythmias, which use the single-index method, have limited sensitivity and specificity. Methods and Results - In this study, we evaluated the performance of a new Bayesian discriminator algorithm in the detection of atrial fibrillation (AF), atrial flutter (AFL), and sinus rhythm (SR). Bipolar recording of 364 rhythms (AF=156, AFL=88, SR=120) at the high right atrium were collected from 20 patients who underwent electrophysiological procedures. After initial signal processing, a column vector of 5 features for each rhythm were established, based on the regularity, rate, energy distribution, percent time of quiet interval, and baseline reaching of the rectified autocorrelation coefficient functions. Rhythm identification was obtained by use of Bayes decision rule and assumption of Gaussian distribution. For the new Bayesian discriminator, the overall sensitivity for detection of SR, AF, and AFL was 97%, 97%, and 94%, respectively; and the overall specificity for detection of SR, AF, and AFL was 98%, 98%, and 99%, respectively. The overall accuracy of detection of SR, AF, and AFL was 98%, 97% and 98%, respectively. Furthermore, sensitivity, specificity, and accuracy of this algorithm were not affected by a range of white Gaussian noises with different intensities. Conclusions - This new Bayesian discriminator algorithm, based on Bayes decision of multiple features of atrial electrograms, allows rapid on-line and accurate (98%) detection of AF with robust anti-noise performance.
机译:背景-准确,快速地检测房性快速性心律失常对使用植入式设备治疗心律不齐具有重要意义。目前使用单指标法的房速性心律失常检测算法具有有限的敏感性和特异性。方法和结果-在这项研究中,我们评估了一种新的贝叶斯判别算法在检测房颤(AF),房扑(AFL)和窦性心律(SR)方面的性能。从20例接受电生理检查的患者中收集了右上心房的364个节律的双极记录(AF = 156,AFL = 88,SR = 120)。在初始信号处理之后,根据规则,速率,能量分布,静默间隔的百分比时间以及校正后的自相关系数函数的基线达到,为每个节律建立一个具有5个特征的列向量。通过使用贝叶斯决策规则和高斯分布的假设获得节奏识别。对于新的贝叶斯鉴别器,检测SR,AF和AFL的总灵敏度分别为97%,97%和94%。检测SR,AF和AFL的总体特异性分别为98%,98%和99%。 SR,AF和AFL的总体检测准确度分别为98%,97%和98%。此外,该算法的灵敏度,特异性和准确性不受不同强度的一系列高斯白噪声的影响。结论-这种新的贝叶斯判别器算法基于对心电图的多个特征进行贝叶斯决策,可以快速在线且准确(98%)检测房颤,并具有强大的抗噪性能。

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