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心音的无分段心音图分类。

Heart sound classification from unsegmented phonocardiograms.

机构信息

School of Engineering and Computer Science, University of Hull, Hull, United Kingdom.

出版信息

Physiol Meas. 2017 Jul 31;38(8):1658-1670. doi: 10.1088/1361-6579/aa724c.

Abstract

OBJECTIVE

Most algorithms for automated analysis of phonocardiograms (PCG) require segmentation of the signal into the characteristic heart sounds. The aim was to assess the feasibility for accurate classification of heart sounds on short, unsegmented recordings.

APPROACH

PCG segments of 5 s duration from the PhysioNet/Computing in Cardiology Challenge database were analysed. Initially the 5 s segment at the start of each recording (seg 1) was analysed. Segments were zero-mean but otherwise had no pre-processing or segmentation. Normalised spectral amplitude was determined by fast Fourier transform and wavelet entropy by wavelet analysis. For each of these a simple single feature threshold-based classifier was implemented and the frequency/scale and thresholds for optimum classification accuracy determined. The analysis was then repeated using relatively noise free 5 s segments (seg 2) of each recording. Spectral amplitude and wavelet entropy features were then combined in a classification tree.

MAIN RESULTS

There were significant differences between normal and abnormal recordings for both wavelet entropy and spectral amplitude across scales and frequency. In the wavelet domain the differences between groups were greatest at highest frequencies (wavelet scale 1, pseudo frequency 1 kHz) whereas in the frequency domain the differences were greatest at low frequencies (12 Hz). Abnormal recordings had significantly reduced high frequency wavelet entropy: (Median (interquartile range)) 6.63 (2.42) versus 8.36 (1.91), p  <  0.0001, suggesting the presence of discrete high frequency components in these recordings. Abnormal recordings exhibited significantly greater low frequency (12 Hz) spectral amplitude: 0.24 (0.22) versus 0.09 (0.15), p  <  0.0001. Classification accuracy (mean of specificity and sensitivity) was greatest for wavelet entropy: 76% (specificity 54%, sensitivity 98%) versus 70% (specificity 65%, sensitivity 75%) and was further improved by selecting the lowest noise segment (seg 2): 80% (specificity 65%, sensitivity 94%) versus 71% (specificity 63%, sensitivity 79%). Classification tree with combined features gave accuracy 79% (specificity 80%, sensitivity 77%).

SIGNIFICANCE

The feasibility of accurate classification without segmentation of the characteristic heart sounds has been demonstrated. Classification accuracy is comparable to other algorithms but achieved without the complexity of segmentation.

摘要

目的

大多数用于心音图(PCG)自动分析的算法都需要将信号分割为特征心音。本研究旨在评估在未经分割的短记录上准确分类心音的可行性。

方法

对 PhysioNet/Computing in Cardiology Challenge 数据库中的 5s 时长 PCG 段进行分析。首先分析每个记录起始处的 5s 段(段 1)。段为零均值,但未经预处理或分割。通过快速傅里叶变换确定归一化频谱幅度,通过小波分析确定小波熵。为每个特征实现了一个简单的基于单特征阈值的分类器,并确定了最佳分类精度的频率/比例和阈值。然后,使用每个记录中相对无噪声的 5s 段(段 2)重复该分析。然后将频谱幅度和小波熵特征组合在分类树中。

主要结果

在小波和频域中,正常和异常记录之间在整个频率和尺度上的小波熵和频谱幅度均存在显著差异。在小波域中,组间差异在最高频率(小波尺度 1,伪频率 1kHz)最大,而在频域中,差异在最低频率(12Hz)最大。异常记录的高频小波熵显著降低:(中位数(四分位距))6.63(2.42)比 8.36(1.91),p  <  0.0001,表明这些记录中存在离散的高频成分。异常记录的低频(12Hz)频谱幅度显著增加:0.24(0.22)比 0.09(0.15),p  <  0.0001。分类准确性(特异性和敏感性的平均值)以小波熵最高:76%(特异性 54%,敏感性 98%)比 70%(特异性 65%,敏感性 75%),通过选择最低噪声段(段 2)进一步提高:80%(特异性 65%,敏感性 94%)比 71%(特异性 63%,敏感性 79%)。结合特征的分类树的准确性为 79%(特异性 80%,敏感性 77%)。

意义

本研究证明了在不分割特征心音的情况下进行准确分类的可行性。分类准确性可与其他算法相媲美,但无需复杂的分割。

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