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New predictors of sleep efficiency

机译:睡眠效率的新预测因子

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Sleep efficiency is a commonly and widely used measure to objectively evaluate sleep quality. Monitoring sleep efficiency can provide significant information about health conditions. As an attempt to facilitate less cumbersome monitoring of sleep efficiency, our study aimed to suggest new predictors of sleep efficiency that enable reliable and unconstrained estimation of sleep efficiency during awake resting period. We hypothesized that the autonomic nervous system activity observed before falling asleep might be associated with sleep efficiency. To assess autonomic activity, heart rate variability and breathing parameters were analyzed for 5 min. Using the extracted parameters as explanatory variables, stepwise multiple linear regression analyses and k-fold cross-validation tests were performed with 240 electrocardiographic and thoracic volume change signal recordings to develop the sleep efficiency prediction model. The developed model's sleep efficiency predictability was evaluated using 60 piezoelectric sensor signal recordings. The regression model, established using the ratio of the power of the low-and high-frequency bands of the heart rate variability signal and the average peak inspiratory flow value, provided an absolute error (mean +/- SD) of 2.18% +/- 1.61% and a Pearson's correlation coefficient of 0.94 (p < 0.01) between the sleep efficiency predictive values and the reference values. Our study is the first to achieve reliable and unconstrained prediction of sleep efficiency without overnight recording. This method has the potential to be utilized for home-based, long-term monitoring of sleep efficiency and to support reasonable decision-making regarding the execution of sleep efficiency improvement strategies.
机译:睡眠效率是一种普遍而广泛使用的措施,客观地评估睡眠质量。监控睡眠效率可以提供有关健康状况的重要信息。为了促进对睡眠效率的不太繁琐的监测,我们的研究旨在建议睡眠效率的新预测因子,在清醒休息期间可以可靠和无约束的睡眠效率估计。我们假设在入睡之前观察到的自主神经系统活动可能与睡眠效率相关。为了评估自主神经活动,分析了心率变异性和呼吸参数5分钟。使用提取的参数作为解释变量,使用240个心电图和胸体积变化信号记录进行逐步多元线性回归分析和k折交叉验证测试,以开发睡眠效率预测模型。使用60压电传感器信号记录评估开发的模型的睡眠效率可预测性。回归模型,建立了使用心率可变性信号的低频带的功率与平均峰值吸气流量的比率,提供了2.18%+ /的绝对误差(平均值+/-SD) - 在睡眠效率预测值和参考值之间,1.61%和Pearson的相关系数为0.94(p <0.01)。我们的研究是第一个在没有隔夜录制的情况下实现对睡眠效率的可靠和不受约束的预测。该方法有可能用于对睡眠效率的基于家庭,长期监测,并支持有关睡眠效率改善策略的执行合理的决策。

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