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Principal Component Analysis as a Tool for Analyzing Beat-to-Beat Changes in ECG Features: Application to ECG-Derived Respiration

机译:主成分分析作为分析心电图心跳变化的工具:在心电图派生呼吸中的应用

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摘要

An algorithm for analyzing changes in ECG morphology based on principal component analysis (PCA) is presented and applied to the derivation of surrogate respiratory signals from single-lead ECGs. The respiratory-induced variability of ECG features, P waves, QRS complexes, and T waves are described by the PCA. We assessed which ECG features and which principal components yielded the best surrogate for the respiratory signal. Twenty subjects performed controlled breathing for 180 s at 4, 6, 8, 10, 12, and 14 breaths per minute and normal breathing. ECG and breathing signals were recorded. Respiration was derived from the ECG by three algorithms: the PCA-based algorithm and two established algorithms, based on RR intervals and QRS amplitudes. ECG-derived respiration was compared to the recorded breathing signal by magnitude squared coherence and cross-correlation. The top ranking algorithm for both coherence and correlation was the PCA algorithm applied to QRS complexes. Coherence and correlation were significantly larger for this algorithm than the RR algorithm(p < 0.05 and p < 0.0001, respectively) but were not significantly different from the amplitude algorithm. PCA provides a novel algorithm for analysis of both respiratory and nonrespiratory related beat-to-beat changes in different ECG features.
机译:提出了一种基于主成分分析(PCA)的ECG形态变化分析算法,并将其应用于从单导联ECG代入呼吸信号。呼吸诱发的ECG功能,P波,QRS络合物和T波的变异性由PCA描述。我们评估了哪些心电图特征和哪些主要成分产生了最佳的呼吸信号替代指标。 20名受试者每分钟进行4次,6次,8次,10次,12次和14次呼吸以及正常呼吸,进行180 s受控呼吸。记录心电图和呼吸信号。呼吸是通过三种算法从心电图得出的:基于RR间隔和QRS振幅的基于PCA的算法和两种已建立的算法。通过幅度平方相干性和互相关性将心电图派生的呼吸与记录的呼吸信号进行比较。相干性和相关性均排名最高的算法是应用于QRS络合物的PCA算法。该算法的相干性和相关性显着大于RR算法(分别为p <0.05和p <0.0001),但与幅度算法没有显着差异。 PCA提供了一种新颖的算法,用于分析不同ECG功能中呼吸相关的和非呼吸相关的心跳之间的变化。

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