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P-Wave Shape Changes Observed in the Surface Electrocardiogram of Subjects with Obstructive Sleep Apnoea

机译:在具有阻塞性睡眠呼吸暂停的受试者的表面心电图中观察到的p波形变化

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Automated detection of sleep apnoea from the surface ECG is a challenge with potentially significant clinical benefit. The objective of this study is to explore a possible relation between P-wave shape changes and the presence of Obstructive Sleep Apnoea (OSA) episodes in ECG records. Our working hypothesis is that apnoea-related phenomena (e.g., hypoxia, changes in intra-thoracic pressure) influence the depolarisation dynamics of the atria, and hence lead to detectable shape changes in the surface P-wave. For this purpose, a P-wave shape clustering algorithm is proposed. It uses the k-means method, an unsupervised classifier, coupled with a shape metric, the CISA (Corrected Integral Shape Averaging) distance, to distinguish apnoeic and non-apnoeic epochs. The method was applied to perform two-clustering on P-wave shapes extracted from ECG segments. The results obtained indicate that shape information from the ECG can be used in a classification approach for OSA detection. The study also raises the question of elucidating the mechanisms of how OSA may alter P-wave shape.
机译:从表面ECG自动检测睡眠呼吸暂停是一种挑战,具有潜在的显着临床益处。本研究的目的是探讨P波形变化与心电图记录中阻塞性睡眠呼吸暂停(OSA)发作之间的可能关系。我们的工作假说是,呼吸暂停相关的现象(例如,缺氧,在胸内压力的变化)影响心房的去极化动力学,并因此导致在表面的P波检测的形状的变化。为此目的,提出了一种p波形聚类算法。它使用K-Means方法是无监督的分类器,与形状度量耦合,CISA(校正的整体形状平均)距离,以区分吞脂和非APNOEIC时期。应用该方法以在从ECG段中提取的P波形上执行双聚类。获得的结果表明,来自ECG的形状信息可用于OSA检测的分类方法。该研究还提出了阐明OSA如何改变P波形的机制的问题。

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