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A novel heart sound activity detection framework for automated heart sound analysis

机译:用于自动心音分析的新型心音活动检测框架

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摘要

In automated heart sound analysis and diagnosis, a set of clinically valued parameters including sound intensity, frequency content, timing, duration, shape, systolic and diastolic intervals, the ratio of the first heart sound amplitude to second heart sound amplitude (S1/S2), and the ratio of diastolic to systolic duration (D/S) is measured from the PCG signal. The quality of the clinical feature parameters highly rely on accurate determination of boundaries of the acoustic events (heart sounds S1, S2, S3, S4 and murmurs) and the systolic/diastolic pause period in the PCG signal. Therefore, in this paper, we propose a new automated robust heart sound activity detection (HSAD) method based on the total variation filtering, Shannon entropy envelope computation, instantaneous phase based boundary determination, and boundary location adjustment. The proposed HSAD method is validated using different clean and noisy pathological and non-pathological PCG signals. Experiments on a large PCG database show that the HSAD method achieves an average sensitivity (Se) of 99.43% and positive predictivity (+P) of 93.56%. The HSAD method accurately determines boundaries of major acoustic events of the PCG signal with signal-to-noise ratio of 5 dB. Unlike other existing methods, the proposed HSAD method does not use any search-back algorithms. The proposed HSAD method is a quite straightforward and thus it is suitable for real-time wireless cardiac health monitoring and electronic stethoscope devices.
机译:在自动心音分析和诊断中,一组临床上有价值的参数,包括声音强度,频率含量,时间,持续时间,形状,收缩和舒张间隔,第一心音振幅与第二心音振幅的比值(S1 / S2) ,从PCG信号测量舒张期与收缩期的比率(D / S)。临床特征参数的质量高度依赖于声音事件(心音S1,S2,S3,S4和杂音)和PCG信号的收缩/舒张暂停期的边界的准确确定。因此,在本文中,我们提出了一种基于总变化滤波,香农熵包络计算,基于瞬时相位的边界确定和边界位置调整的自动鲁棒心音检测方法。所提出的HSAD方法已使用不同的干净,嘈杂的病理和非病理PCG信号进行了验证。在大型PCG数据库上进行的实验表明,HSAD方法可实现99.43%的平均灵敏度(Se)和93.56%的正预测性(+ P)。 HSAD方法以5 dB的信噪比准确确定PCG信号的主要声学事件的边界。与其他现有方法不同,提出的HSAD方法不使用任何搜索算法。提出的HSAD方法非常简单,因此适用于实时无线心脏健康监测和电子听诊器设备。

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