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Automatic sleep staging based on ballistocardiographic signals recorded through bed sensors

机译:根据通过床传感器记录的心动描记信号自动进行睡眠分期

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This study presents different methods for automatic sleep classification based on heart rate variability (HRV), respiration and movement signals recorded through bed sensors. Two methods for feature extraction have been implemented: time variant-autoregressive model (TVAM) and wavelet discrete transform (WDT); the obtained features are fed into two classifiers: Quadratic (QD) and Linear (LD) discriminant for staging sleep in REM, nonREM and WAKE periods. The performances of all the possible combinations of feature extractors and classifiers are compared in terms of accuracy and kappa index, using clinical polysomographyc evaluation as golden standard. 17 recordings from healthy subjects, including also polisomnography, were used to train and test the algorithms. When automatic classification is compared. QD-TVAM algorithm achieved a total accuracy of 76.81 ± 7.51 % and kappa index of 0.55 ± 0.10, while LD-WDT achieved a total accuracy of 79 ± 10% and kappa index of 0.51 ± 0.17. The results suggest that a good sleep evaluation can be achieved through non-conventional recording systems that could be used outside sleep centers.
机译:这项研究提出了基于心率变异性(HRV),通过床传感器记录的呼吸和运动信号进行自动睡眠分类的不同方法。已经实现了两种特征提取方法:时变自回归模型(TVAM)和小波离散变换(WDT)。将获得的特征分为两个分类器:二次(QD)和线性(LD)判别式,用于在REM,nonREM和WAKE阶段分阶段进行睡眠。以临床多导睡眠描记法评估为黄金标准,比较了特征提取器和分类器所有可能组合的性能,并在准确性和kappa指数方面进行了比较。来自健康受试者的17张录音(包括牙釉质)被用来训练和测试算法。比较自动分类时。 QD-TVAM算法的总精度为76.81±7.51%,kappa指数为0.55±0.10,而LD-WDT的总精度为79±10%,kappa指数为0.51±0.17。结果表明,可以在睡眠中心以外使用的非常规记录系统可以实现良好的睡眠评估。

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