基于多尺度频率分析的心音图信号与正常心音和杂音的鲁棒区分

Divaakar Siva Baala Sundaram, Suganti Shivaram, R. Balasubramani, Anjani Muthyala, S. P. Arunachalam
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引用次数: 0

摘要

心音的电记录,即心音图(PCG)信号包含有关诊断心脏状况的信息。利用几种自动检测算法,探讨了PCG信号的特征特征,以帮助疾病诊断。一个主要的限制是,许多这些方法只在PCG清洁信号上得到了证明,测试数据有限,缺乏多样性,无法提供诊断重要性的信息。需要一种更可靠的方法来表征PCG信号,以帮助区分正常和病变的心脏状况,如心脏杂音等。在这项工作中,假设多尺度频率(MSF)分析可以根据其不同的频率含量区分正常的PCG和有杂音的PCG。采用Peter Bentley心音数据库44.1 kHz采样的正常PCG和杂音心音信号13个样本进行分析。设计了截止频率为200hz的4阶巴特沃斯低通滤波器以去除高频噪声,并使用定制的MATLAB软件对滤波后的数据集进行MSF估计。经Mann-Whitney检验,p < 0.05为有统计学意义。正常PCG的平均MSF为108.94±13.38 Hz,杂音信号的平均MSF为47.71±16.31 Hz。正常与杂音信号间MSF差异有统计学意义(p < 0.01)。需要用更大的数据集验证该技术。MSF技术可以区分正常的PCG和杂音信号。研究结果对不同心脏状况的正常心电图进行分析比较,有助于疾病的诊断。
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Robust Discrimination of Phonocardiogram Signal with Normal Heart Sounds and Murmur Using a Multiscale Frequency Analysis
Electrical recordings of the heart sounds namely, the phonocardiogram (PCG) signals contain information regarding the heart condition of diagnostic importance. Characteristic features of PCG signals have been explored using several automatic detection algorithms to aid in disease diagnosis. A major limitation is that, many of these methods have been demonstrated only on PCG clean signals with limited test data that lacks variety to provide information of diagnostic importance. A more robust method to characterize PCG signal is required that can aid in discriminating normal and diseased heart conditions such as heart murmur etc. In this work, it was hypothesized that a multiscale frequency (MSF) analysis can discriminate normal PCG and PCG with murmur based on their varying frequency content. 13 samples of normal PCG and heart sound signal with murmur from Peter Bentley Heart Sounds Database sampled at 44.1 kHz were used for analysis. A 4th order Butterworth lowpass filter was designed with cutoff frequency at 200 Hz to remove higher frequency noise and MSF estimation was performed on the filtered dataset using custom MATLAB software. Mann-Whitney test was performed for statistical significance at p < 0.05. The mean MSF for normal PCG was 108.94±13.38 Hz and the mean MSF for murmur heart sound signal was 47.71±16.31 Hz. MSF was significantly different between normal and murmur sound signal with p < 0.01. Validation of this technique with larger dataset is required. MSF technique can discriminate normal PCG and murmur sound signal. The results motivate the analysis and comparison of normal PCG’s with different cardiac conditions that can aid in disease diagnosis.
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