使用符号聚合法 (SAX) 分析行动记录仪数据的时间型特征

Wen Luo, Ioannis P Androulakis
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摘要

本研究讨论了一种利用符号聚合法(SAX)对动图数据进行时序表征的有效方法。动图是一种对人体休息/活动周期的非侵入式监测,可为睡眠-觉醒行为和昼夜节律提供有价值的见解。然而,动图数据的高维度给存储、处理和分析带来了巨大挑战。为了应对这些挑战,我们应用 SAX 算法将连续的时间序列动图数据转换为符号表示,从而在保留基本模式的同时降低维度。我们分析了美国国家健康与营养调查(NHANES)数据库中涵盖 10,000 多人的行为记录仪数据,并使用无监督聚类来识别独特的时间型模式。SAX 转换促进了机器学习技术的应用,揭示了以活动开始时间、分辨率和强度差异为特征的五个时间型聚类。年龄分布分析表明,群组内的特定年龄组存在偏差,突出了年龄与时序型之间的关系。主要发现包括与年龄相关的时间型变化,与老年人相比,年轻人在睡眠开始时间(SOT)和唤醒时间(WT)上表现出显著差异的延迟时间型,这表明随着年龄的增长,睡眠模式会出现阶段性延迟。这项研究证明了 SAX 在处理大规模行为记录仪数据方面的效率和有效性,实现了稳健的时间型特征描述,可为个性化医疗保健和公共卫生计划提供信息。进一步探索 SAX 与其他生物测量技术的整合,可以加深我们对人类昼夜节律生物学及其对健康和行为影响的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of Chronotypes Using the Symbolic Aggregate approXimation (SAX) on Actigraphy Data
This study discusses an efficient approach to characterizing chronotypes using Symbolic Aggregate approXimation (SAX) on actigraphy data. Actigraphy, a non-invasive monitoring of human rest/activity cycles, provides valuable insights into sleep-wake behaviors and circadian rhythms. However, the high dimensionality of actigraphy data poses significant challenges in storage, processing, and analysis. To address these challenges, we applied the SAX algorithm to transform continuous time-series actigraphy data into a symbolic representation, enabling dimensionality reduction while preserving essential patterns. We analyzed actigraphy data from the National Health and Nutrition Examination Survey (NHANES) database, covering over 10,000 individuals, and used unsupervised clustering to identify distinct chronotype patterns. The SAX transformation facilitated the application of machine learning techniques, revealing five chronotype clusters characterized by differences in activity onset, resolution, and intensity. Age distribution analysis showed biases towards specific age groups within the clusters, highlighting the relationship between age and chronotype. Key findings include age-related Chronotype variations with younger individuals exhibiting delayed chronotypes with significant differences in sleep onset (SOT) and wake time (WT) compared to older adults, suggesting a phase delay in sleep patterns as age decreases and activity transition dynamics where clusters showed distinct patterns in winding up and winding down periods, providing insights into the dynamics of activity transitions. This study demonstrates the efficiency and effectiveness of SAX in processing large-scale actigraphy data, enabling robust chronotype characterization that can inform personalized healthcare and public health initiatives. Further exploration of SAX integration with other biometric measures could deepen our understanding of human circadian biology and its impact on health and behavior.
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