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Toward personalized sleep-wake prediction from actigraphy

机译:从书法作品走向个性化的睡眠觉醒预测

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Actigraphy offers a low-cost alternative to conventional polysomnography (PSG) for screening of sleep-wake patterns. Effective use of actigraphy signals requires reliable methods for detecting sleep-wake states from actigraphy measurements. Hence, there is a growing interest in machine learning methods for training predictive models of sleep-wake states from actigraphy data. Existing work has focused on training a single predictive model for the entire population. However, accounting for individual differences, such as age, biological factors, or lifestyle-related variations, calls for personalized models for reliable identification of sleep-wake states from actigraphy data. This study investigates whether personalized models, trained on individual data, can match the performance of generalized models trained on population data. Using a dataset of 54 individuals, we systematically trained and tested personalized and generalized sleep-wake detectors developed using five commonly used machine learning algorithms. Results of our experiments show that personalized sleep-wake predictors are competitive, in terms of their predictive performance, with their generalized counterparts. Our work demonstrates the feasibility of developing reliable personalized sleep-wake states predictors from actigraphy data. This study lays the groundwork for developing personalized models for sleep-wake states detection that are better equipped to handle individual differences.
机译:Actigraphy提供了传统多导睡眠图(PSG)的低成本替代品,用于筛查睡眠唤醒模式。有效使用笔迹信号需要可靠的方法来从笔迹测量中检测睡眠-觉醒状态。因此,对于用于从书法数据训练睡眠-觉醒状态的预测模型的机器学习方法的兴趣日益增长。现有的工作集中在为整个人群训练单一的预测模型。然而,考虑到个体差异,例如年龄,生物学因素或与生活方式有关的变化,需要个性化模型以从书法数据可靠地识别睡眠-觉醒状态。这项研究调查了在个体数据上训练的个性化模型是否可以匹配在人口数据上训练的广义模型的性能。我们使用54个人的数据集,系统地训练和测试了使用五种常用机器学习算法开发的个性化和广义睡眠唤醒检测器。我们的实验结果表明,就其预测性能而言,个性化的睡眠/唤醒预测器与通用的预测器相比具有竞争性。我们的工作证明了从书法数据开发可靠的个性化睡眠-觉醒状态预测因子的可行性。这项研究为开发个性化的睡眠-唤醒状态检测模型奠定了基础,该模型可以更好地处理个体差异。

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