光容积脉搏波(PPG)信号特征提取算法在冠心病检测中的研究

Muhammad Fadhil Ihsan, Satria Mandala, M. Pramudyo
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引用次数: 8

摘要

冠心病(CHD)是最危险的心脏疾病,这种疾病发生时,向心脏肌肉供应的含氧和营养物质被心脏血管或冠状动脉中的斑块阻塞。目前,冠心病的诊断方法有很多种,从心电图到心导管。然而,它也有一些缺点,包括快速诊断和侵入性手术的不灵活性。心率变异性(HRV)是心血管疾病的有力指标;因此,正常心率(或血容量)活动的任何变化都是潜在心血管功能障碍的主要标志。通过一系列的波和峰检测,光体积脉搏图(PPG)检测血压、血氧饱和度和心输出量。近年来,利用心电信号检测冠心病的研究多于利用PPG信号检测冠心病的研究,特别是对PPG信号进行特征提取的研究,这对冠心病检测的准确性有很大影响。本研究提出了一种基于光容积脉搏波特征提取算法检测冠心病的文献研究。在特征提取方面,将讨论呼吸频率间隔、HRV特征和时域特征三种算法。HRV特征的准确率为94.4%,灵敏度为100%,特异性为90.9%,是三种使用决策树分类器的最佳特征提取方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of Feature Extraction Algorithms on Photoplethysmography (PPG) Signals to Detect Coronary Heart Disease
Coronary Heart Disease (CHD) is the most dangerous heart disease, this disease occurs, when the blood supply containing oxygen and nutrients to the heart muscle blocked by plaque in the heart blood vessels or coronary arteries. Currently, there are many ways of diagnosing coronary heart disease, starting from using ECG to Cardiac catheterization. However, it has some drawbacks, including the inflexibility of diagnosing quickly and invasive procedures. Heart rate variability (HRV) is a strong indication of cardiovascular diseases; as a result, any change in the normal heart rate (or blood volume) activity is a major marker for a potential cardiovascular malfunction. Through a series of waves and peak detection, photoplethysmography (PPG) detects blood pressure, oxygen saturation, and cardiac output. In recent years, there have been more studies using ECG signals to detect CHD compared to PPG signals, especially those discussing feature extraction on PPG signals in detecting CHD because this greatly affects the accuracy of CHD detection. In this study, proposed a literature study of feature extraction algorithm for detecting coronary heart disease using photoplethysmography. For the feature extraction, three algorithm will be discussed are respiratory rate (RR) interval, HRV Features and Time Domain Features. HRV features, with 94.4% accuracy, 100% sensitivity, and 90.9% specificity, is the best feature extraction approach of the three proposed techniques using decision tree classifier.
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