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An Efficient Pattern Recognition Kernel-Based Method for Atrial Fibrillation Diagnosis

机译:基于有效模式识别核的心房颤动诊断方法

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The aim of this work is to develop an efficient diagnosis method for atrial fibrillation (AF) arrhythmia based on inter-beat interval time series analysis and relevance vector machine (RVM) classifier. Automatic and fast 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. The published results do not show satisfactory detection accuracy especially for brief duration as short as one minute. Although RVM has been applied on tasks such as computer vision, natural language processing, speech recognition etc., this is the first attempt to adopt RVM for AF diagnosis. Four publicly-accessible sets of clinical data (AF Termination Challenge Database, MIT-BIH AF, Normal Sinus Rhythm RR Interval Database, and MIT-BIH Normal Sinus Rhythm Databases) were used for assessment. All time series were segmented in 1 min RR interval window and then three specific features were calculated. The RVM classifier was trained on 2000 randomly selected samples from the merged database. The results showed that the RVM model performed better than do existing algorithms, with 99.20% for both sensitivity and specificity.
机译:这项工作的目的是开发一种基于心跳间隔时间序列分析和相关矢量机(RVM)分类器的房颤(AF)心律失常的有效诊断方法。自动和快速AF诊断仍然是医疗保健专业人员的主要关注点。已经开发了几种基于单变量和多变量分析的算法来检测房颤。公布的结果显示出令人满意的检测精度,特别是对于短至一分钟的短暂检测。尽管RVM已应用于诸如计算机视觉,自然语言处理,语音识别等任务,但这是首次尝试将RVM用于AF诊断。使用四组可公开访问的临床数据(AF终止挑战数据库,MIT-BIH AF,正常窦性心律RR间隔​​数据库和MIT-BIH正常窦性心律数据库)进行评估。所有时间序列都在1分钟RR间隔窗口中进行了细分,然后计算了三个特定特征。 RVM分类器接受了来自合并数据库的2000个随机选择的样本的训练。结果表明,RVM模型的性能优于现有算法,灵敏度和特异性均达到99.20%。

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