Extraction of Acoustic Features via Empirical Wavelet Transform to Determine Stenosis Degree of the Left Anterior Descending Artery Based on the Diastolic Heart Sounds of 75 Participants.

IF 1.1 4区 医学 Q4 CARDIAC & CARDIOVASCULAR SYSTEMS
Haixia Li, Yafang Zhang, Guofeng Ren, Yun Tian, Yan Chai, Xiaoyan Wang
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引用次数: 0

Abstract

Objectives: This study aimed to develop a method for extracting acoustic features to assess left anterior descending artery (LAD) stenosis severity.

Methods: Heart sound data were collected from 75 participants (10 diastoles per participant) using a high-signal-to-noise ratio micro-electro-mechanical systems stethoscope. The diastolic signals were preprocessed, and empirical wavelet transform was applied to decompose their power spectra into three modes (0-150, 150-500, and > 500 Hz). The spectral energies (e(1), e(2), e(3)) of these modes were analyzed, and support vector machine (SVM) and extreme gradient boosting (XGBoost) machine learning algorithms were used to classify LAD stenosis into mild (< 50%), moderate (50%-75%), and severe (> 75%).

Results: Spectral energies e(2) and e(3) significantly increased with stenosis severity, and XGBoost outperformed SVM, achieving a test accuracy of 0.8133 and areas under the curve of 0.9358, 0.9644, and 0.9580 for mild, moderate, and severe stenosis, respectively.

Conclusion: Empirical wavelet transform-extracted spectral energies of e(2) and e(3), combined with XGBoost, effectively determine LAD stenosis degree, offering a non-invasive screening tool.

基于75例受试者舒张期心音声学特征提取经验小波变换确定左前降支狭窄程度
目的:本研究旨在建立一种提取声学特征来评估左前降支(LAD)狭窄严重程度的方法。方法:采用高信噪比微机电系统听诊器收集75名参与者(每位参与者10张舒张)的心音数据。对舒张期信号进行预处理,利用经验小波变换将其功率谱分解为0 ~ 150hz、150 ~ 500hz和> ~ 500hz三种模式。分析三种模式的谱能(e(1)、e(2)、e(3)),利用支持向量机(SVM)和极限梯度增强(XGBoost)机器学习算法将LAD狭窄划分为轻度(75%)。结果:光谱能量e(2)和e(3)随狭窄程度的增加而显著增加,XGBoost优于SVM,轻度、中度和重度狭窄的测试精度分别为0.8133,曲线下面积分别为0.9358、0.9644和0.9580。结论:经验小波变换提取的e(2)和e(3)的光谱能量,结合XGBoost可有效判断LAD狭窄程度,是一种无创的筛查工具。
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来源期刊
CiteScore
3.40
自引率
0.00%
发文量
88
审稿时长
6-12 weeks
期刊介绍: The ANNALS OF NONINVASIVE ELECTROCARDIOLOGY (A.N.E) is an online only journal that incorporates ongoing advances in the clinical application and technology of traditional and new ECG-based techniques in the diagnosis and treatment of cardiac patients. ANE is the first journal in an evolving subspecialty that incorporates ongoing advances in the clinical application and technology of traditional and new ECG-based techniques in the diagnosis and treatment of cardiac patients. The publication includes topics related to 12-lead, exercise and high-resolution electrocardiography, arrhythmias, ischemia, repolarization phenomena, heart rate variability, circadian rhythms, bioengineering technology, signal-averaged ECGs, T-wave alternans and automatic external defibrillation. ANE publishes peer-reviewed articles of interest to clinicians and researchers in the field of noninvasive electrocardiology. Original research, clinical studies, state-of-the-art reviews, case reports, technical notes, and letters to the editors will be published to meet future demands in this field.
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