Fusion of Multiple Univariate Data Analysis-based Detectors to Build a Specific Fingerprint of Atrial Fibrillation

Z. Haddi, B. Ananou, Youssef Trardi, S. Delliaux, J. Deharo, M. Ouladsine
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Abstract

Automatic and fast atrial fibrillation (AF) diagnosis is still a major concern for the healthcare professional. Several algorithms based on univariate and multivariate analysis have been developed to detect AF. Although the published results do show satisfactory detection accuracy, computational complexity of such methods is still questionable. This study proposes an alternative way to diagnosis AF arrhythmia which is based on the combination of seven univariate data analysis-based detectors followed by a majority voting in order to build a digital fingerprint of AF. Four publicly-accessible sets of clinical data were used for AF assessment. The time series were segmented in 10 s RR interval window. The features of the four databases were merged in order to give rise huge variability and therefore to better characterize AF arrhythmia. Afterwards, a receiver operating characteristic curve analysis has been conducted to fix optimal thresholds for AF detection. Finally, the seven obtained detectors have been concatenated and then a majority rule was applied to yield a final decision on AF diagnosis. The results showed that this strategy performed better than some existing algorithms do, with 98.50% for sensitivity and 95.1 % specificity.
基于单变量数据分析的多个检测器融合构建心房颤动特异性指纹图谱
自动和快速心房颤动(AF)诊断仍然是一个主要关注的医疗保健专业人员。基于单变量和多变量分析的几种算法已被开发用于检测AF。尽管已发表的结果确实显示出令人满意的检测精度,但这些方法的计算复杂性仍然存在疑问。本研究提出了一种诊断房颤心律失常的替代方法,该方法基于七个基于单变量数据分析的检测器的组合,然后进行多数投票,以建立房颤的数字指纹。四组公开可访问的临床数据用于房颤评估。以10s RR区间窗对时间序列进行分割。四个数据库的特征被合并,以产生巨大的可变性,从而更好地表征心律失常。然后,进行接收机工作特性曲线分析,确定AF检测的最佳阈值。最后,将获得的7个检测器进行连接,然后应用多数决原则对房颤诊断做出最终决定。结果表明,该策略优于现有的一些算法,灵敏度为98.50%,特异性为95.1%。
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