Two-channel heart sound segmentation framework using phonocardiogram and pulsatile signals

V. N. Varghees, K. I. Ramachandran
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引用次数: 6

Abstract

Phonocardiogram (PCG) segmentation is the crucial first step in automated heart sound analysis and diagnostic systems. Recently, the cardiac signals (including, electrocardiogram, phonocardiogram and photoplethysmogram) are simultaneously recorded for most cardiac signal processing applications such as cardiovascular diagnostic system, biometric authentication, and emotion/stress recognition. In this paper, we present an effective two-channel heart sound segmentation framework using PCG and pulse signals. The proposed framework comprises the steps of: heart sound signal decomposition using stationary wavelet transform, Shannon entropy envelope extraction, heart sound endpoint determination, systolic peak detection, and heart sound discrimination. The proposed framework is tested and validated using the simultaneously recorded heart sound and pulse signals. Performance evaluation results demonstrate that the proposed heart sound endpoint and systolic peak detection methods can achieves an average Se of 98.98%, +P of 96.80% and Se of 99.57%, +P of 99.37%, respectively. The proposed framework achieves an identification accuracy of 100% in distinguishing the first heart sound (S1) and second heart sound (S2) under clean and noisy signal conditions.
利用心音图和脉搏信号的双通道心音分割框架
心音图(PCG)分割是自动心音分析和诊断系统中至关重要的第一步。近年来,心脏信号(包括心电图、心音图和光容积图)被同时记录,用于心血管诊断系统、生物识别和情绪/压力识别等大多数心脏信号处理应用。在本文中,我们提出了一种有效的利用PCG和脉冲信号的双通道心音分割框架。该框架包括平稳小波变换心音信号分解、香农熵包络提取、心音端点确定、收缩期峰值检测、心音识别等步骤。使用同时记录的心音和脉搏信号对所提出的框架进行了测试和验证。性能评价结果表明,所提出的心音终点和收缩峰检测方法的平均Se为98.98%,+P为96.80%,Se为99.57%,+P为99.37%。该框架在清晰和噪声信号条件下对第一心音(S1)和第二心音(S2)的识别准确率达到100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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