Atrial Fibrillation Detection Algorithm with Ratio Variation-Based Features

Chen-Wei Huang, Jian-Jiun Ding
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引用次数: 1

Abstract

A two-layer analysis approach of the atrial fibrillation episode detection algorithm tested in the MIT-BIH atrial fibrillation database (MIT-BIH AFDB) is proposed in the paper. We use several methodologies, including gradient varying weighted filter, template matched filter, adaptive threshold, and sliding window to accurately extract the locations and amplitudes of P, Q, R, S, and T peaks, P wave width, and QS width in an ECG complex as basic features. On the other hand, most existing works utilize features of RR intervals, a difference of RR intervals, or amplitude of P wave for AF episode detection. In the proposed algorithm, we exploit the ratio concept to transform basic features into ratio-based features with relative relations because those features are much easier to measure the irregularity of RR intervals and P wave absence precisely in atrial fibrillation episodes. Furthermore, we apply the innovative definition of ratio variation-based features to generate robust and qualitative feature extraction sets. Finally, a rule-based ratio variation hypothesis classifier with techniques of weighted coefficient function, product-form score function, Gini index function, and Gini splitting function is adopted. The performance result of the proposed algorithm, trained and tested in the MIT-BIH AF database, achieves an average sensitivity value of 99.272% and an average specificity value of 98.495%, respectively. The accuracy is superior to that of other various AF episode detection algorithms.
基于比值变化特征的房颤检测算法
本文提出了在MIT-BIH房颤数据库(MIT-BIH AFDB)中测试的房颤发作检测算法的两层分析方法。采用梯度变加权滤波、模板匹配滤波、自适应阈值和滑动窗口等方法,准确提取心电信号中P、Q、R、S和T峰的位置和幅度、P波宽度和QS宽度作为基本特征。另一方面,现有的研究大多利用RR间隔、RR间隔差或P波振幅的特征来检测AF发作。在该算法中,我们利用比率概念将基本特征转化为具有相对关系的基于比率的特征,因为这些特征更容易精确地测量房颤发作时RR间隔的不规则性和P波缺失。此外,我们应用基于比率变化特征的创新定义来生成鲁棒性和定性的特征提取集。最后,采用加权系数函数、产品形式分数函数、基尼指数函数和基尼分裂函数等技术,建立了基于规则的比率变异假设分类器。在MIT-BIH AF数据库中进行训练和测试的性能结果表明,该算法的平均灵敏度值为99.272%,平均特异性值为98.495%。准确度优于其他各种AF事件检测算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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