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首页> 外文期刊>Artificial intelligence in medicine >Application of constrained independent component analysis algorithms in electrocardiogram arrhythmias
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Application of constrained independent component analysis algorithms in electrocardiogram arrhythmias

机译:约束独立成分分析算法在心律失常中的应用

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Objectives: The extraction of the atrial activity in atrial fibrillation episodes is a must for clinical purposes. During atrial fibrillation arrhythmia, the independent atrial and ventricular signals are superposed in the electrocardiogram, fulfilling the independent component analysis (ICA) model. We propose three new algorithms that constrain the classical ICA solution to fit the spectral content of the atrial component. This constraint allows the statement of the problem in terms of semiblind source extraction instead of blind source separation (BSS), in the sense that we only recover one source and we exploit the prior information about the sources in the extraction process.rnMethods and materials: The methods used are extensions of classical BSS methods based on second and higher order statistics. We exploit the prior assumption about the sources in order to obtain the source extraction algorithms that are focused on the extraction of the atrial component. The material corresponds to 10 synthetic recordings in order to measure and compare the quality of the different algorithms and 66 real recordings coming from two different databases, one public database from Physionet and one database from the Clinical University Hospital, Valencia, Spain. Results: We have analyzed the performance of the three new algorithms and compared it with the performance of the traditional ICA algorithms. In the case of the synthetic data, it is possible to obtain the mean square error, so the comparison is easier. The new methods outperform the non-constrained versions in addition to simplifying the solution, since they do not need to recover all the components in order to estimate the atrial activity, i.e., the new methods are focused on the extraction of the atrial activity, so the extraction is stopped after the atrial signal is recovered.
机译:目的:提取房颤发作中的心房活动是临床必需的。在房颤心律失常期间,独立的心房和心室信号会叠加在心电图中,从而实现独立成分分析(ICA)模型。我们提出了三种约束传统ICA解决方案以适合心房成分频谱含量的新算法。这种限制允许以半盲源提取而不是盲源分离(BSS)的方式来陈述问题,这意味着我们仅恢复一个源,并且在提取过程中利用了有关源的先验信息。rn方法和材料:所使用的方法是基于二阶和更高阶统计量的经典BSS方法的扩展。我们利用关于源的先验假设,以获得集中于心房成分提取的源提取算法。该材料对应于10个合成记录,以测量和比较不同算法的质量,以及来自两个不同数据库(来自Physionet的一个公共数据库和来自西班牙巴伦西亚的临床大学医院的一个数据库)的66个真实记录。结果:我们分析了这三种新算法的性能,并将其与传统ICA算法的性能进行了比较。在合成数据的情况下,可以获得均方误差,因此比较容易。新方法除了简化解决方案外,还胜过非约束版本,因为它们无需恢复所有组件即可估算心房活动,即,新方法专注于心房活动的提取,因此在心房信号恢复后停止提取。

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