QRS复合体诊断心房颤动的多动力学分析

Youssef Trardi, B. Ananou, Z. Haddi, M. Ouladsine
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引用次数: 4

摘要

提出了一种基于QRS复合体多动态分析的房颤诊断算法。这种方法背后的思想是通过QRS复杂信号的不同动力学,利用几个线性和非线性函数产生各种心跳时间序列特征。这些从这些动态中提取的特征将通过基于机器学习的算法(如支持向量机(SVM)和多核学习(MKL))连接起来,以检测AF事件的发生。在包括84例24小时心电图记录的长期心房颤动数据库上对这些方法的性能进行了评估。然后,将每条记录分成连续的1分钟的片段来馈送分类器模型。SVM对MKL的敏感性、特异性和阳性分类分别为96.54%、99.69%和99.62%,对MKL的敏感性、特异性和阳性分类分别为95.47%、99.89%和99.87%。因此,这些医学导向的检测器对医疗保健专业人员筛查房颤病理具有临床价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Dynamics Analysis of QRS Complex for Atrial Fibrillation Diagnosis
This paper presents an effective atrial fibrillation (AF) diagnosis algorithm based on multi-dynamics analysis of QRS complex. The idea behind this approach is to produce a variety of heartbeat time series features employing several linear and nonlinear functions via different dynamics of the QRS complex signal. These extracted features from these dynamics will be connected through machine learning based algorithms such as Support Vector Machine (SVM) and Multiple Kernel Learning (MKL), to detect AF episode occurrences. The reported performances of these methods were evaluated on the Long-Term AF Database which includes 84 of 24-hour ECG recording. Thereafter, each record was divided into consecutive intervals of one-minute segments to feed the classifier models. The obtained sensitivity, specificity and positive classification using SVM were 96.54%, 99.69%, and 99.62%, respectively, and for MKL they reached 95.47%, 99.89%, and 99.87%, respectively. Therefore, these medical-oriented detectors can be clinically valuable to healthcare professional for screening AF pathology.
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