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A multiscale mean shift localization approach for robust extraction of heart sounds in respiratory signals

机译:一种多尺度均值漂移定位方法,可以可靠地提取呼吸信号中的心音

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This paper addresses the problem of heart sound (HS) extraction in different types of single-channel respiratory sound (RS) signals by proposing a multiscale mean shift localization approach. First, the incoming respiratory signal (RS) are identified into linearonlinear portions by using third-order cumulant. Second, the identified linear and nonlinear portions are processed separately to tackle the large variations in the signal characteristics of adventitious sounds. The time-varying mean-shifts of the weighted log likelihood ratios of wavelet features are then calculated to capture the signal dynamics of various noisy RS signals. The proposed approach provides promising results giving an overall false localization rate as low as (1.8 ± 1.8)% for normal lung sound (LS) and (0.1 ± 1.7)% for adventitious sound signals. Therefore, the presented approach successfully attempts to solve the key clinical challenges faced by the existing localization methods in terms of respiratory ailments.
机译:本文通过提出多尺寸平均移位定位方法,解决了不同类型的单通道呼吸声(RS)信号中的心声(HS)提取问题。首先,通过使用三阶累积剂将进入的呼吸信号(RS)识别为线性/非线性部分。其次,分别处理所识别的线性和非线性部分以解决不频率声音的信号特性的大变化。然后计算小波特征的加权对数似然比的时变平均偏移以捕获各种噪声RS信号的信号动态。所提出的方法提供了有希望的结果,对于正常肺部(LS),对正常肺部(LS)的总体假定位率低于(1.8±1.8)%,而不定声信号的百分比(0.1±1.7)%。因此,提出的方法成功地试图解决现有本地化方法面临的关键临床挑战在呼吸疾病方面。

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