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使用新型多模态学习增强计算机辅助检测:心电图、心音图和耦合信号的整合

Enhanced CAD Detection Using Novel Multi-Modal Learning: Integration of ECG, PCG, and Coupling Signals.

作者信息

Sun Chengfa, Liu Xiaolei, Liu Changchun, Wang Xinpei, Liu Yuanyuan, Zhao Shilong, Zhang Ming

机构信息

Department of Biomedical Engineering, School of Control Science and Engineering, Shandong University, Jinan 250061, China.

Department of Electrical Automation Technology, Yantai Vocational College, Yantai 264670, China.

出版信息

Bioengineering (Basel). 2024 Oct 30;11(11):1093. doi: 10.3390/bioengineering11111093.

Abstract

Early and highly precise detection is essential for delaying the progression of coronary artery disease (CAD). Previous methods primarily based on single-modal data inherently lack sufficient information that compromises detection precision. This paper proposes a novel multi-modal learning method aimed to enhance CAD detection by integrating ECG, PCG, and coupling signals. A novel coupling signal is initially generated by operating the deconvolution of ECG and PCG. Then, various entropy features are extracted from ECG, PCG, and its coupling signals, as well as recurrence deep features also encoded by integrating recurrence plots and a parallel-input 2-D CNN. After feature reduction and selection, final classification is performed by combining optimal multi-modal features and support vector machine. This method was validated on simultaneously recorded standard lead-II ECG and PCG signals from 199 subjects. The experimental results demonstrate that the proposed multi-modal method by integrating all signals achieved a notable enhancement in detection performance with best accuracy of 95.96%, notably outperforming results of single-modal and joint analysis with accuracies of 80.41%, 86.51%, 91.44%, and 90.42% using ECG, PCG, coupling signal, and joint ECG and PCG, respectively. This indicates that our multi-modal method provides more sufficient information for CAD detection, with the coupling information playing an important role in classification.

摘要

早期且高度精确的检测对于延缓冠状动脉疾病(CAD)的进展至关重要。以往主要基于单模态数据的方法本质上缺乏足够信息,从而影响检测精度。本文提出一种新颖的多模态学习方法,旨在通过整合心电图(ECG)、心音图(PCG)和耦合信号来增强CAD检测。首先通过对ECG和PCG进行去卷积操作生成一种新颖的耦合信号。然后,从ECG、PCG及其耦合信号中提取各种熵特征,以及通过整合递归图和平行输入二维卷积神经网络(2-D CNN)编码的递归深度特征。经过特征约简和选择后,通过组合最优多模态特征和支持向量机进行最终分类。该方法在来自199名受试者的同步记录的标准II导联ECG和PCG信号上得到验证。实验结果表明,所提出的整合所有信号的多模态方法在检测性能上有显著提升,最佳准确率达到95.96%,明显优于分别使用ECG、PCG、耦合信号以及联合ECG和PCG时的单模态和联合分析结果,其准确率分别为80.41%、86.51%、91.44%和90.42%。这表明我们的多模态方法为CAD检测提供了更充分的信息,其中耦合信息在分类中发挥着重要作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/516b/11591267/adcf6dfc4244/bioengineering-11-01093-g001.jpg

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