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Permutation Entropy Applied to Fitbit Data: Long-Term Sleep Analysis on One Healthy Subject

机译:应用于Fitbit数据的排列熵:对一个健康主题的长期睡眠分析

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In this work we exploited an algorithm, already present in the literature, and based on the notion of signal permutation entropy, to analyze a very long time series of sleep data from a single subject. The aim of the work is to explore methods for personalizing alerts related to sleep anomalies, and recommendations for improving sleep quality. As a matter of fact, sleep duration and sleep quality may differently affect daily performance of different people, as well as daily activities may differently affect sleeping during the night. Data have been collected from a Fitbit Alta HR activity tracker worn by the subject for about three years. Results show that personalized inferences may be very different from the generic (population-based) ones, and that correlations found may suggest subject-specific life-style modifications useful to improve sleep quality.
机译:在这项工作中,我们已经利用了一种算法,已经存在于文献中,并基于信号置换熵的概念,分析来自单个主题的一个很长的时间阶段睡眠数据。这项工作的目的是探索个性化与睡眠异常相关的警报的方法,以及提高睡眠质量的建议。事实上,睡眠时间和睡眠质量可能会影响不同人的日常表现,以及日常活动可能会在夜间睡眠不同。已从受试者佩戴约三年的Fitbit Alta HR活动跟踪器收集数据。结果表明,个性化推断可能与通用(基于人口)的普通(基于人口)的推断非常不同,并且发现的相关性可能表明特定于主题的生活方式修改,可用于提高睡眠质量。

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