基于支持向量机的心脏杂音分类新方法

Zhongwei Jiang, Haibin Wang
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引用次数: 20

摘要

本文提出了一种新的心音频谱分析方法,利用归一化自回归功率谱密度(NAR-PSD)曲线和支持向量机技术对心音进行分类。对6名健康志愿者和30例患者采集的459例心音信号进行检测,其中正常音196例,异常音263例。考虑到心音PSD在频域上的形态学特征,提出了两个诊断参数fmax和fwidth。为了检测心音异常和识别心音,考虑并设计了由4个支持向量机模块组成的多支持向量机分类器。采用本文提出的心音频谱分析方法对正常音和异常音进行分类,具有99.90%的特异性和99.52%的灵敏度,具有较高的分类性能。心音杂音对房颤音的鉴别率为86.88%,对主动脉瓣疾病的鉴别率为89.98%,对二尖瓣疾病的鉴别率为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach on Heart Murmurs Classification with SVM Technique
This paper presents a novel spectral analysis method of heart sounds using the normalized autoregressive power spectral density (NAR-PSD) curve with the support vector machine (SVM) technique for classifying the heart murmurs. The 459 heart sound signals with 196 normal and 263 abnormal sound cases acquired from 6 healthy volunteers and 30 patients were tested. Considering the morphological characteristics of PSD of the heart sound in frequency domain, we proposed two diagnostic parameters fmax and fwidth. In order to detect abnormality of heart sound and to discriminate the heart murmurs, the multi-SVM classifiers composed of four SVM modules were considered and designed. With the proposed cardiac sound spectral analysis method, the high classification performances were achieved by 99.90% specificity and 99.52% sensitivity for classifying normal and abnormal sounds. Furthermore, the rate of discrimination on heart sound murmurs is 86.88% for atrial fibrillation sounds, 89.98% for aortic valvular disorders, and 90% for mitral valvular disorder.
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