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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Application of recurrence quantification analysis to automatically estimate infant sleep states using a single channel of respiratory data
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Application of recurrence quantification analysis to automatically estimate infant sleep states using a single channel of respiratory data

机译:循环定量分析的应用可通过单通道呼吸数据自动估算婴儿的睡眠状态

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摘要

Previous work has identified that non-linear variables calculated from respiratory data vary between sleep states, and that variables derived from the non-linear analytical tool recurrence quantification analysis (RQA) are accurate infant sleep state discriminators. This study aims to apply these discriminators to automatically classify 30 s epochs of infant sleep as REM, non-REM and wake. Polysomnograms were obtained from 25 healthy infants at 2 weeks, 3, 6 and 12 months of age, and manually sleep staged as wake, REM and non-REM. Inter-breath interval data were extracted from the respiratory inductive plethysmograph, and RQA applied to calculate radius, determinism and laminarity. Time-series statistic and spectral analysis variables were also calculated. A nested crossvalidation method was used to identify the optimal feature subset, and to train and evaluate a linear discriminant analysis-based classifier. The RQA features radius and laminarity and were reliably selected. Mean agreement was 79.7, 84.9, 84.0 and 79.2 % at 2 weeks, 3, 6 and 12 months, and the classifier performed better than a comparison classifier not including RQA variables. The performance of this sleep-staging tool compares favourably with inter-human agreement rates, and improves upon previous systems using only respiratory data. Applications include diagnostic screening and population-based sleep research.
机译:先前的工作已经确定,根据呼吸数据计算出的非线性变量在睡眠状态之间会有所不同,并且从非线性分析工具递归量化分析(RQA)得出的变量是准确的婴儿睡眠状态识别符。这项研究旨在应用这些判别器将30 s婴儿睡眠时间自动分类为REM,非REM和醒来。多导睡眠图是从2个星期,3、6和12个月大的25名健康婴儿那里获得的,并按觉醒,快速眼动和非快速眼动进行了人工睡眠。从呼吸感应体积描记器中提取呼吸间隔时间数据,并应用RQA计算半径,确定性和层流性。还计算了时间序列统计和频谱分析变量。嵌套交叉验证方法用于识别最佳特征子集,并训练和评估基于线性判别分析的分类器。 RQA具有半径和层流特性,并且经过可靠选择。在2周,3、6和12个月时,平均一致性为79.7、84.9、84.0和79.2%,分类器的性能优于不包含RQA变量的比较分类器。该睡眠分期工具的性能优于人际协议率,并且仅使用呼吸数据就可以改善以前的系统。应用包括诊断筛查和基于人群的睡眠研究。

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