Innovation in Bioengineering Research Group, University of Castilla-La Mancha, Cuenca, Spain.
Physiol Meas. 2012 Dec;33(12):1959-74. doi: 10.1088/0967-3334/33/12/1959. Epub 2012 Nov 9.
Atrial fibrillation (AF) is the most common cardiac arrhythmia in clinical practice, increasing the risk of stroke and all-cause mortality. Its mechanisms are poorly understood, thus leading to different theories and controversial interpretation of its behavior. In this respect, it is unknown why AF is self-terminating in certain individuals, which is called paroxysmal AF (PAF), and not in others. Within the context of biomedical signal analysis, predicting the onset of PAF with a reasonable advance has been a clinical challenge in recent years. By predicting arrhythmia onset, the loss of normal sinus rhythm could be addressed by means of preventive treatments, thus minimizing risks for the patients and improving their quality of life. Traditionally, the study of PAF onset has been undertaken through a variety of features characterizing P-wave spatial diversity from the standard 12-lead electrocardiogram (ECG) or from signal-averaged ECGs. However, the variability of features from the P-wave time course before PAF onset has not been exploited yet. This work introduces a new alternative to assess time diversity of the P-wave features from single-lead ECG recordings. Furthermore, the method is able to assess the risk of arrhythmia 1 h before its onset, which is a relevant advance in order to provide clinically useful PAF risk predictors. Results were in agreement with the electrophysiological changes taking place in the atria. Hence, P-wave features presented an increasing variability as PAF onset approximates, thus suggesting intermittently disturbed conduction in the atrial tissue. In addition, high PAF risk prediction accuracy, greater than 90%, has been reached in the two considered scenarios, i.e. discrimination between healthy individuals and PAF patients and between patients far from PAF and close to PAF onset. Nonetheless, more long-term studies have to be analyzed and validated in future works.
心房颤动(AF)是临床实践中最常见的心律失常,增加了中风和全因死亡率的风险。其机制尚未完全了解,因此导致对其行为的不同理论和有争议的解释。在这方面,尚不清楚为什么 AF 在某些个体中自行终止,这被称为阵发性 AF(PAF),而在其他个体中则不会。在生物医学信号分析的背景下,近年来预测 PAF 的发作具有合理的提前一直是临床挑战。通过预测心律失常的发作,可以通过预防性治疗来解决正常窦性节律的丧失,从而最大程度地降低患者的风险并提高其生活质量。传统上,通过各种特征来研究 PAF 的发作,这些特征可以从标准的 12 导联心电图(ECG)或信号平均 ECG 中描述 P 波的空间多样性。但是,尚未利用 PAF 发作前 P 波时间过程的特征变化性。这项工作引入了一种新的替代方法,可从单导联 ECG 记录评估 P 波特征的时间多样性。此外,该方法能够在发作前 1 小时评估心律失常的风险,这是一个相关的进展,以便提供临床上有用的 PAF 风险预测因子。结果与心房中发生的电生理变化一致。因此,随着 PAF 发作的临近,P 波特征的变化性增加,这表明心房组织中的间歇性传导障碍。此外,在考虑的两种情况下,即区分健康个体和 PAF 患者以及区分远离 PAF 和接近 PAF 发作的患者,已经达到了大于 90%的高 PAF 风险预测准确性。但是,在未来的工作中还需要分析和验证更多的长期研究。