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A Shockable Rhythm Detection Algorithm for Automatic External Defibrillators by Combining a Slope Variability Analyzer with a Band-Pass Digital Filter

机译:通过将斜坡可变性分析仪与带式数字滤波器相结合来实现自动外部除颤器的可靠节奏检测算法

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To make automatic external defibrillators (AEDs) easy to use by the public who is not familiar with emergency treatment and electrocardiogram (ECG) analysis, it is critical to have an accurate shockable rhythm recognition algorithm. This paper presents a novel compositive algorithm by combining a slope variability analyzer with a band-pass digital filter so as to accurately distinguish shockable rhythms from non-shockable rhythms for automatic external defibrillators (AEDs). A total of 35 ECG records from the widely recognized Creighton University Ventricular Tachyarrhythmia Database (CUDB) were used to test the performance of the proposed algorithm. The obtained sensitivity of 94.2% and the specificity of 96.6% both satisfy requirements by the AHA rules on the arrhythmias detection for AEDs, and show a higher performance comparing with the previous HILB algorithm and the slope variability method only. As a conclusion, the proposed compositive algorithm would potentially provide a useful tool for AED systems with a higher accuracy and lower computation requirements.
机译:为了使自动外部除颤器(AED)易于使用的公众不熟悉紧急治疗和心电图(ECG)分析,具有准确的可震性节奏识别算法至关重要。本文通过将斜坡可变性分析仪与带式数字滤波器组合来介绍一种新颖的构成算法,以便准确地区分可震动节奏从不可震动的节奏进行自动外部除颤器(AED)。共有35条来自广泛认可的CREIGHTON UniverycartryCharlythmia数据库(CUDB)的ECG记录用于测试所提出的算法的性能。获得的敏感性为94.2%,特异性为96.6%,对AHA对AED的心律失常检测的规则均满足要求,并显示与先前的HILB算法和斜率变化方法相比的更高性能。作为结论,所提出的合成算法可能为具有更高精度和更低计算要求的AED系统提供有用的工具。

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