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Attractor Structure Discriminates Sleep States: Recurrence Plot Analysis Applied to Infant Breathing Patterns

机译:吸引子结构区分睡眠状态:重复图分析应用于婴儿的呼吸模式。

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摘要

Breathing patterns are characteristically different between infant active sleep (AS) and quiet sleep (QS), and statistical quantifications of interbreath interval (IBI) data have previously been used to discriminate between infant sleep states. It has also been identified that breathing patterns are governed by a nonlinear controller. This study aims to investigate whether nonlinear quantifications of infant IBI data are characteristically different between AS and QS, and whether they may be used to discriminate between these infant sleep states. Polysomnograms were obtained from 24 healthy infants at six months of age. Periods of AS and QS were identified, and IBI data extracted. Recurrence quantification analysis (RQA) was applied to each period, and recurrence calculated for a fixed radius in the range of 0–8 in steps of 0.02, and embedding dimensions of 4, 6, 8, and 16. When a threshold classifier was trained, the RQA variable recurrence was able to correctly classify 94.3% of periods in a test dataset. It was concluded that RQA of IBI data is able to accurately discriminate between infant sleep states. This is a promising step toward development of a minimal-channel automatic sleep state classification system.
机译:婴儿活动睡眠(AS)和安静睡眠(QS)之间的呼吸模式特征不同,呼吸间隔(IBI)数据的统计量化以前已用于区分婴儿睡眠状态。还已经确定,呼吸模式由非线性控制器控制。这项研究旨在调查婴儿IBI数据的非线性量化在AS和QS之间是否具有特征性差异,以及是否可用于区分这些婴儿睡眠状态。多导睡眠图是从六个月大的24名健康婴儿获得的。确定AS和QS的时期,并提取IBI数据。对每个时间段进行递归量化分析(RQA),并以0.02的步长在0–8范围内的固定半径范围内计算递归,并嵌入4、6、8和16的尺寸。训练阈值分类器时,则RQA变量重复能够正确分类测试数据集中94.3%的时间段。结论是,IBI数据的RQA能够准确地区分婴儿睡眠状态。这是开发最小通道自动睡眠状态分类系统的有希望的一步。

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