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A Novel Enveloped-Form Feature Extraction Technique for Heart Murmur Classification

机译:一种用于心脏杂音分类的新型包络特征提取技术

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Analysis of heart sound (HS) signal is a significant approach for detecting cardiovascular diseases (CVDs). Specifically, heart murmurs are regarded as the first indication of pathological occurrences and carry important diagnostic information. With the aids of computer and artificial intelligence technologies, a lot of HS analysis methods are suggested, which principally fall into two kinds: acoustic analysis and time-frequency analysis. However, most of existing methods are associated poorly with diagnostic information in heart murmurs, which restricts severely further interpretations. Aiming to handle this bottleneck problem, a novel enveloped-form heart murmur feature extraction methods is proposed, which extracts features merely and directly from heart murmurs. Initially, the influences of fundamental HSs are eliminated and the envelopes of heart murmurs are acquired, by employing discrete wavelet transform, Shannon envelope, as well as detecting and selecting peaks of heart murmurs. Thereafter, two key features SP and TS (the ratios of start position and time span of the envelopes of heart murmurs to the length of a HS cycle respectively) are extracted directly from the envelopes of heart murmurs, which are according to that the envelopes of different heart murmurs are of diverse shapes. By applying the key features to artificial neural network for classification and CVD diagnosis, the diagnostic accuracy is up to 96 %, which significantly validates the practicability and effectiveness of the proposed method.
机译:心音(HS)信号分析是检测心血管疾病(CVD)的重要方法。具体而言,心脏杂音被视为病理事件的第一指征,并带有重要的诊断信息。借助计算机和人工智能技术,提出了许多HS分析方法,主要分为声学分析和时频分析两类。但是,大多数现有方法与心脏杂音中的诊断信息关联不佳,这严重限制了进一步的解释。为了解决这一瓶颈问题,提出了一种新颖的信封形心脏杂音特征提取方法,该方法仅从心脏杂音中直接提取特征。最初,通过使用离散小波变换,Shannon包络以及检测和选择心脏杂音的峰值,消除了基本HS的影响,并获得了心脏杂音的包络。此后,直接从心脏杂音的包络中提取两个关键特征SP和TS(心脏杂音的包络的起始位置和时间跨度与HS周期的长度之比),这取决于它们的包络不同的心脏杂音具有不同的形状。通过将关键特征应用于人工神经网络进行分类和CVD诊断,诊断准确性高达96%,这大大验证了该方法的实用性和有效性。

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