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A robust method for online heart sound localization in respiratory sound based on temporal fuzzy c-means

机译:基于时间模糊c-均值的呼吸音在线心音定位的鲁棒方法

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摘要

This work presents a detailed framework to detect the location of heart sound within the respiratory sound based on temporal fuzzy c-means (TFCM) algorithm. In the proposed method, respiratory sound is first divided into frames and for each frame, the logarithmic energy features are calculated. Then, these features are used to classify the respiratory sound as heart sound (HS containing lung sound) and non-HS (only lung sound) by the TFCM algorithm. The TFCM is the modified version fuzzy c-means (FCM) algorithm. While the FCM algorithm uses only the local information about the current frame, the TFCM algorithm uses the temporal information from both the current and the neighboring frames in decision making. To measure the detection performance of the proposed method, several experiments have been conducted on a database of 24 healthy subjects. The experimental results show that the average false-negative rate values are 0.8 +/- A 1.1 and 1.5 +/- A 1.4 %, and the normalized area under detection error curves are and for the TFCM method in the low and medium respiratory flow rates, respectively. These average values are significantly lower than those obtained by FCM algorithm and by the other compared methods in the literature, which demonstrates the efficiency of the proposed TFCM algorithm. On the other hand, the average elapsed time of the TFCM for a data with length of s is 0.2 +/- A 0.05 s, which is slightly higher than that of the FCM and lower than those of the other compared methods.
机译:这项工作提出了一个详细的框架,用于基于时间模糊c均值(TFCM)算法来检测心音在呼吸声中的位置。在所提出的方法中,首先将呼吸声分为几帧,并针对每一帧计算对数能量特征。然后,这些特征通过TFCM算法用于将呼吸音分为心音(HS包含肺音)和非HS(仅肺音)。 TFCM是修改后的模糊c均值(FCM)算法。尽管FCM算法仅使用有关当前帧的本地信息,但TFCM算法在决策时使用来自当前帧和相邻帧的时间信息。为了测量所提出方法的检测性能,已经对24个健康受试者的数据库进行了几次实验。实验结果表明,在中低呼吸流速下,TFCM方法的平均假阴性率分别为0.8 +/- A 1.1和1.5 +/- A 1.4%,并且在检测误差曲线下的归一化面积为。 , 分别。这些平均值明显低于通过FCM算法和文献中其他比较方法获得的平均值,这证明了所提出的TFCM算法的效率。另一方面,对于长度为s的数据,TFCM的平均经过时间为0.2 +/- A 0.05 s,这略高于FCM,但低于其他比较方法。

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