利用主成分分析法提取PPG和BP信号中的呼吸活动

K. V. Madhav, M. R. Ram, E. Krishna, K. Nagarjuna Reddy, K. Reddy
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引用次数: 9

摘要

在心律失常、动态监测、压力测试、睡眠障碍调查和术后低氧血症等高风险情况下,必须监测呼吸活动。心电图(ECG)、血压(BP)和光容积脉搏波(PPG)信号可用于提取呼吸活动,最终将消除额外呼吸传感器的使用。利用一种简单而标准的非参数数学技术——主成分分析(PCA),从PPG和BP信号等复杂数据集中提取呼吸相关信息。PPG和BP信号的呼吸诱导变化(RIV)用计算主成分的系数来描述。利用奇异值比(SVR)趋势来发现周期性,周期性是构成主成分分析数据集的关键参数之一。在MIMIC数据库上的测试结果清楚地表明,提取的呼吸信号与实际呼吸信号之间存在很强的相关性。计算了时域和频域的统计度量,如相对相关系数(RCC)和幅度平方相干性(MSC)以及准确率(AR),以证明呼吸信号以第一主成分的形式存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of respiratory activity from PPG and BP signals using Principal Component Analysis
In high risk situations such as cardiac arrhythmias, ambulatory monitoring, stress tests, sleep disorder investigations and post-operative hypoxemia situations, monitoring of respiratory activity would be mandatory. Electrocardiogram (ECG), blood pressure (BP) and photoplethysmographic (PPG) signals can be used for extraction of respiratory activity, and will eventually eliminate the use of additional respiratory sensor. Using a simple and standard non-parametric mathematical technique, Principal Component Analysis (PCA), the respiratory related information is extracted from complex data sets such as PPG and BP signals. The respiratory induced variations (RIV) of PPG and BP signals are described by coefficients of computed principal components. Singular value ratio (SVR) trend is used to find the periodicity, which is one of the crucial parameters in forming the data sets for PCA. Test results on MIMIC data base clearly indicated a strong correlation between the extracted and actual respiratory signals. Statistical measures in both time and frequency domains such as Relative Correlation Coefficient (RCC) and Magnitude Squared Coherence (MSC) respectively and Accuracy Rate (AR) are calculated to demonstrate the fact, that respiratory signal is present in the form of first principal components.
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